39 results on '"Schülter, E"'
Search Results
2. Clinical use, efficacy, and durability of maraviroc for antiretroviral therapy in routine care: A European survey
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Luca, A, Pezzotti, P, Boucher, Charles, Döring, M, Incardona, F, Kaiser, R, Lengauer, T, Pfeifer, N, Schülter, E, Vandamme, AM, Zazzi, M, Geretti, AM, Luca, A, Pezzotti, P, Boucher, Charles, Döring, M, Incardona, F, Kaiser, R, Lengauer, T, Pfeifer, N, Schülter, E, Vandamme, AM, Zazzi, M, and Geretti, AM
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- 2019
3. Transmission of Human Immunodeficiency Virus I Drug Resistance - a Case Report. What are the Clinical Implications?
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Anadol E, Kaiser R, Verheyen J, Schülter E, Emmelkamp J, Schwarze-Zander C, Kupfer B, Wasmuth JC, and Rockstroh JK
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transmitted resistance ,Drug Resistance ,Human immunodeficiency virus I ,T215 D ,Medicine - Abstract
Abstract The success of first-line antiretroviral therapy can be challenged by the acquisition of primary drug resistance. Here we report a case where baseline genotypic resistance testing detected resistance conferring nucleoside/nucleotide reverse transcriptase inhibitor (NRTI)-associated mutations, but no primary mutations for protease inhibitor (PI). Subsequent PI-based HAART with boosted saquinavir led to virological treatment success with persistently undetectable viral load. After treatment simplification from saquinavir to an atazanavir based PI-therapy and no change in backbone therapy rapid virological breakthrough occurred. Retrospective analysis displayed preexisting gag cleavage site mutations which may have reduced the genetic barrier in a clinical relevant manner in combination with the already existing NRTI resistance mutations. Alternatively, this effect could be explained with a different antiviral potency for the respective PIs used.
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- 2010
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4. Improved darunavir genotypic mutation score predicting treatment response for patients infected with HIRaben-1 subtype B and non-subtype B receiving a salvage regimen
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De Luca, A. Flandre, P. Dunn, D. Zazzi, M. Wensing, A. Santoro, M.M. Günthard, H.F. Wittkop, L. Kordossis, T. Garcia, F. Castagna, A. Cozzi-Lepri, A. Churchill, D. De Wit, S. Brockmeyer, N.H. Imaz, A. Mussini, C. Obel, N. Perno, C.F. Roca, B. Reiss, P. Schülter, E. Torti, C. van Sighem, A. Zangerle, R. Descamps, D. Mocroft, A. Kirk, O. Sabin, C. Casadi, W. Casabona, J. Miró, J.M. Touloumi, G. Garrido, M. Teira, R. Wit, F. Warszawski, J. Meyer, L. Dabis, F. Krause, M.M. Ghosn, J. Leport, C. Prins, M. Bucher, H. Gibb, D. Fätkenheuer, G. del Amo, J. Thorne, C. Stephan, C. Pérez-Hoyos, S. Hamouda, O. Bartmeyer, B. Chkhartishvili, N. Noguera-Julian, A. Antinori, A. d'Arminio Monforte, A. Prieto, L. Conejo, P.R. Soriano-Arandes, A. Battegay, M. Kouyos, R. Tookey, P. Konopnick, D. Goetghebuer, T. Sönnerborg, A. Haerry, D. Costagliola, D. Raben, D. Chêne, G. Ceccherini-Silberstein, F. Günthard, H. Judd, A. Barger, D. Schwimmer, C. Termote, M. Campbell, M. Frederiksen, C.M. Friis-Møller, N. Kjaer, J. Brandt, R.S. Berenguer, J. Bohlius, J. Bouteloup, V. Davies, M.-A. Dorrucci, M. Egger, M. Furrer, H. Guiguet, M. Grabar, S. Lambotte, O. Leroy, V. Lodi, S. Matheron, S. Monge, S. Nakagawa, F. Paredes, R. Phillips, A. Puoti, M. Schomaker, M. Smit, C. Sterne, J. Thiebaut, R. van der Valk, M. Wyss, N. Aubert, V. Battegay, M. Bernasconi, E. Böni, J. Burton-Jeangros, C. Calmy, A. Cavassini, M. Dollenmaier, G. Egger, M. Elzi, L. Fehr, J. Fellay, J. Furrer, H. Fux, C.A. Gorgievski, M. Günthard, H. Haerry, D. Hasse, B. Hirsch, H.H. Hoffmann, M. Hösli, I. Kahlert, C. Kaiser, L. Keiser, O. Klimkait, T. Kouyos, R. Kovari, H. Ledergerber, B. Martinetti, G. Martinez de Tejada, B. Metzner, K. Müller, N. Nadal, D. Nicca, D. Pantaleo, G. Rauch, A. Regenass, S. Rickenbach, M. Rudin, C. Schöni-Affolter, F. Schmid, P. Schüpbach, J. Speck, R. Tarr, P. Telenti, A. Trkola, A. Vernazza, P. Weber, R. Yerly, S. CHAIN COHERE in EuroCoord
- Abstract
Objectives: The objective of this studywas to improve the prediction of the impact of HIV-1 protease mutations in different viral subtypes on virological response to darunavir. Methods: Darunavir-containing treatment change episodes (TCEs) in patients previously failing PIs were selected from large European databases. HIV-1 subtype B-infected patients were used as the derivation dataset and HIV- 1 non-B-infected patients were used as the validation dataset. The adjusted association of each mutation with week 8 HIV RNA change from baseline was analysed by linear regression. A prediction model was derived based on best subset least squares estimation with mutational weights corresponding to regression coefficients. Virological outcome prediction accuracy was compared with that from existing genotypic resistance interpretation systems (GISs) (ANRS 2013, Rega 9.1.0 and HIVdb 7.0). Results: TCEs were selected from 681 subtype B-infected and 199 non-B-infected adults. Accompanying drugs were NRTIs in 87%, NNRTIs in 27%and raltegravir ormaraviroc or enfuvirtide in 53%. The predictionmodel included weighted protease mutations, HIV RNA, CD4 and activity of accompanying drugs. The model's association with week 8 HIV RNA change in the subtype B (derivation) set was R2=0.47 [average squared error (ASE)=0.67, P>10-6]; in the non-B (validation) set, ASE was 0.91. Accuracy investigated by means of area under the receiver operating characteristic curves with a binary response (above the threshold value of HIV RNA reduction) showed that our finalmodel outperformed models with existing interpretation systems in both training and validation sets. Conclusions: A model with a new darunavir-weighted mutation score outperformed existing GISs in both B and non-B subtypes in predicting virological response to darunavir. © The Author 2016.
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- 2016
5. Detection of drug resistance mutations at low plasma HIV-1 RNA load in a European multicentre cohort study
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Prosperi, Mc1, Mackie, N, Di Giambenedetto, S, Zazzi, M, Camacho, R, Fanti, I, Torti, C, Sönnerborg, A, Kaiser, R, Codoñer, Fm, Van Laethem, K, Bansi, L, van de Vijver DA, Geretti, Am, De Luca, A, Giacometti A, SEHERE c. o. n. s. o. r. t. i. u. m., Butini, L, del Gobbo, R, Menzo, S, Tacconi, D, Corbelli, G, Zanussi, S, Monno, L, Punzi, G, Maggiolo, F, Callegaro, A, Calza, L, Carla Re, M, Pristerà, R, Turconi, P, Mandas, A, Tini, S, Zoncada, A, Paolini, E, Amadio, G, Sighinolfi, L, Zuccati, G, Morfini, M, Manetti, R, Corsi, P, Galli, L, Di Pietro, M, Bartalesi, F, Colao, G, Tosti, A, Di Biagio, A, Setti, M, Bruzzone, B, Penco, G, Trezzi, M, Orani, A, Pardelli, R, De Gennaro, M, Chiodera, A, Scalzini, A, Palvarini, L, Almi, P, Todaro, G, d'Arminio Monforte, A, Cicconi, P, Rusconi, S, Gismondo, Mr, Micheli, V, Biondi, Ml, Gianotti, N, Capetti, A, Meraviglia, P, Boeri, E, Mussini, C, Pecorari, M, Soria, A, Vecchi, L, Santirocchi, M, Brustia, D, Ravanini, P, Bello, Fd, Romano, N, Mancuso, S, Calzetti, C, Maserati, R, Filice, G, Baldanti, F, Francisci, D, Parruti, G, Polilli, E, Sacchini, D, Martinelli, C, Consolini, R, Vatteroni, L, Vivarelli, A, Dionisio, D, Nerli, A, Lenzi, L, Magnani, G, Ortolani, P, Andreoni, M, Palamara, G, Fimiani, C, Palmisano, L, Fadda, G, Vullo, Vincenzo, Turriziani, O, Montano, M, Cenderello, G, Gonnelli, A, Palumbo, M, Ghisetti, V, Bonora, S, Foglie, Pd, Rossi, C, Grossi, P, Seminari, E, Poletti, F, Mondino, V, Malena, M, Lattuada, E, Lengauer, T, Däumer, M, Hoffmann, D, Schülter, E, Müller, C, Oette, M, Reuter, S, Esser, S, Fätkenheuer, G, Rockstroh, J, Incardona, F, Rosen Zvi, M, Clotet, B, Thalme, A, Svedhem, V, Bratt, G, Gargiulo, F, Lapadula, G, Manca, N, Paraninfo, G, Quiros Roldan, E, Carosi, G, Castelnuovo, F, Vandamme, Am, Van Wijngaerden, E, Ainsworth, J, Anderson, J, Babiker, A, Dunn, D, Easterbrook, P, Fisher, M, Gazzard, B, Garrett, N, Gilson, R, Gompels, M, Hill, T, Johnson, M, Leen, C, Orkin, C, Phillips, A, Pillay, D, Porter, K, Post, F, Sabin, C, Sadiq, T, Schwenk, A, Walsh, J, Delpech, V, Palfreeman, A, Glabay, A, Lynch, J, Hand, J, de Souza, C, Perry, N, Tilbury, S, Churchill, D, Nelson, M, Waxman, M, Mandalia, S, Kall, M, Korat, H, Taylor, C, Ibrahim, F, Campbell, L, James, L, Brima, N, Williams, I, Youle, M, Lampe, F, Smith, C, Grabowska, H, Chaloner, C, Puradiredja, Di, Weber, J, Ramzan, F, Carder, M, Wilson, A, Dooley, D, Asboe, D, Pozniak, A, Cameron, S, Cane, P, Chadwick, D, Clark, D, Collins, S, Lazarus, L, Dolling, D, Fearnhill, E, Castro, H, Coughlin, K, Zuckerman, M, Booth, C, Goldberg, D, Hale, A, Kaye, S, Kellam, P, Leigh Brown, A, Smit, E, Templeton, K, Tilston, P, Tong, W, Zhang, H, Ushiro Lumb, I, Oliver, T, Bibby, D, Mitchell, S, Mbisa, T, Wildfire, A, Tandy, R, Shepherd, J, Maclean, A, Bennett, D, Hopkins, M, Garcia Diaz, A, Kirk, S, Sloot, P. M., Virology, Prosperi, M, Mackie, N, di Giambenedetto, S, Zazzi, M, Camacho, R, Fanti, I, Torti, C, Sönnerborg, A, Kaiser, R, Codoñer, F, van laethem, K, Bansi, L, van de Vijver, D, Geretti, A, de luca, A, and Mancuso, S
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Male ,Drug Resistance ,HIV Infections ,Drug resistance ,Cohort Studies ,0302 clinical medicine ,Genotype ,HIV Infection ,Pharmacology (medical) ,030212 general & internal medicine ,Viral ,0303 health sciences ,Proteolytic enzymes ,Genotypic testing ,HIV ,Viral load ,Adult ,Anti-HIV Agents ,CD4 Lymphocyte Count ,Europe ,Female ,HIV-1 ,Humans ,RNA, Viral ,Viral Proteins ,Drug Resistance, Viral ,Mutation, Missense ,Viral Load ,Pharmacology ,Infectious Diseases ,3. Good health ,Cohort ,Cohort study ,Human ,Microbiology (medical) ,Biology ,Settore MED/17 - MALATTIE INFETTIVE ,03 medical and health sciences ,SDG 3 - Good Health and Well-being ,Viral Protein ,030306 microbiology ,Anti-HIV Agent ,Virology ,Reverse transcriptase ,Regimen ,genotypic testing ,viral load ,Immunology ,Mutation ,RNA ,Missense ,Cohort Studie - Abstract
Background and objectives: Guidelines indicate a plasma HIV-1 RNA load of 500-1000 copies/mL as the minimal threshold for antiretroviral drug resistance testing. Resistance testing at lower viral load levels may be useful to guide timely treatment switches, although data on the clinical utility of this remain limited. We report here the influence of viral load levels on the probability of detecting drug resistance mutations (DRMs) and other mutations by routine genotypic testing in a large multicentre European cohort, with a focus on tests performed at a viral load
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- 2011
6. Comparison of classifier fusion methods for predicting response to anti HIV-1 therapy
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Altmann, A., Rosen Zvi, M., Prosperi, M., Aharoni, E., Neuvirth, H., Schülter, E., Büch, J., Struck, D., Peres, Y., Incardona, F., Sönnerborg, A., Kaiser, R., Maurizio Zazzi, and Lengauer, T.
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Genetics and Genomics/Medical Genetics ,Internet ,Models, Statistical ,Genotype ,Anti-HIV Agents ,Science ,Drug Resistance ,Computational Biology ,Genome, Viral ,Genetics and Genomics/Bioinformatics ,Infectious Diseases/HIV Infection and AIDS ,Artificial Intelligence ,Mutation ,Infectious Diseases/Viral Infections ,Methods ,Medicine ,Diagnosis, Computer-Assisted ,Mathematics/Statistics ,Research Article - Abstract
BackgroundAnalysis of the viral genome for drug resistance mutations is state-of-the-art for guiding treatment selection for human immunodeficiency virus type 1 (HIV-1)-infected patients. These mutations alter the structure of viral target proteins and reduce or in the worst case completely inhibit the effect of antiretroviral compounds while maintaining the ability for effective replication. Modern anti-HIV-1 regimens comprise multiple drugs in order to prevent or at least delay the development of resistance mutations. However, commonly used HIV-1 genotype interpretation systems provide only classifications for single drugs. The EuResist initiative has collected data from about 18,500 patients to train three classifiers for predicting response to combination antiretroviral therapy, given the viral genotype and further information. In this work we compare different classifier fusion methods for combining the individual classifiers.Principal findingsThe individual classifiers yielded similar performance, and all the combination approaches considered performed equally well. The gain in performance due to combining methods did not reach statistical significance compared to the single best individual classifier on the complete training set. However, on smaller training set sizes (200 to 1,600 instances compared to 2,700) the combination significantly outperformed the individual classifiers (pConclusionThe combined EuResist prediction engine is freely available at http://engine.euresist.org.
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- 2008
7. Superinfection with drug-resistant HIV is rare and does not contribute substantially to therapy failure in a large European cohort
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Bartha, I. (István), Assel, M. (Matthias), Sloot, P.M.A. (Peter), Zazzi, M. (Maurizio), Torti, C. (Carlo), Schülter, E. (E.), Luca, A. (Angelo), Sonnerborg, A. (Anders), Abecasis, A.B. (Ana), Laethem, K. (Kristel) van, Rosi, A. (Andrea), Svärd, J. (Jenny), Paredes, R. (Roger), Vijver, D.A.M.C. (David) van de, Vandamme, A.M. (Anne Mieke), Müller, V., Bartha, I. (István), Assel, M. (Matthias), Sloot, P.M.A. (Peter), Zazzi, M. (Maurizio), Torti, C. (Carlo), Schülter, E. (E.), Luca, A. (Angelo), Sonnerborg, A. (Anders), Abecasis, A.B. (Ana), Laethem, K. (Kristel) van, Rosi, A. (Andrea), Svärd, J. (Jenny), Paredes, R. (Roger), Vijver, D.A.M.C. (David) van de, Vandamme, A.M. (Anne Mieke), and Müller, V.
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Background: Superinfection with drug resistant HIV strains could potentially contribute to compromised therapy in patients initially infected with drug-sensitive virus and receiving antiretroviral therapy. To investigate the importance of this potential route to drug resistance, we developed a bioinformatics pipeline to detect superinfection from routinely collected genotyping data, and assessed whether superinfection contributed to increased drug resistance in a large European cohort of viremic, drug treated patients. Methods: We used sequence data from routine genotypic tests spanning the protease and partial reverse transcriptase regions in the Virolab and EuResist databases that collated data from five European countries. Superinfection was indicated when sequences of a patient failed to cluster together in phylogenetic trees constructed with selected sets of control sequences. A subset of the indicated cases was validated by re-sequencing pol and env regions from the original samples. Results: 4425 patients had at least two sequences in the database, with a total of 13816 distinct sequence entries (of which 86% belonged to subtype B). We identified 107 patients with phylogenetic evidence for superinfection. In 14 of these cases, we analyzed newly amplified sequences from the original samples for validation purposes: only 2 cases were verified as superinfections in the repeated analyses, the other 12 cases turned out to involve sample or sequence misidentification. Resistance to drugs used at the time of strain replacement did not change in these two patients. A third case could not be validated by re-sequencing, but was supported as superinfection by an intermediate sequence with high degenerate base pair count within the t
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- 2013
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8. Superinfection with drug-resistant HIV is rare and does not contribute substantially to therapy failure in a large European cohort
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Bartha, I, Assel, M, Sloot, Pma, Zazzi, M, Torti, C, Schülter, E, De Luca, Andrea, Sönnerborg, A, Abecasis, Ab, Van Laethem, K, Rosi, A, Svärd, J, Paredes, R, Van De Vijver, Damc, Vandamme, A, Müller, V., De Luca, Andrea (ORCID:0000-0002-8311-6935), Bartha, I, Assel, M, Sloot, Pma, Zazzi, M, Torti, C, Schülter, E, De Luca, Andrea, Sönnerborg, A, Abecasis, Ab, Van Laethem, K, Rosi, A, Svärd, J, Paredes, R, Van De Vijver, Damc, Vandamme, A, Müller, V., and De Luca, Andrea (ORCID:0000-0002-8311-6935)
- Abstract
Superinfection with drug resistant HIV strains could potentially contribute to compromised therapy in patients initially infected with drug-sensitive virus and receiving antiretroviral therapy. To investigate the importance of this potential route to drug resistance, we developed a bioinformatics pipeline to detect superinfection from routinely collected genotyping data, and assessed whether superinfection contributed to increased drug resistance in a large European cohort of viremic, drug treated patients.
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- 2013
9. HIV-1 Subtype Is an Independent Predictor of Reverse Transcriptase Mutation K65R in HIV-1 Patients Treated with Combination Antiretroviral Therapy Including Tenofovir
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Theys, K, Vercauteren, J, Snoeck, J, Zazzi, M, Camacho, Rj, Torti, C, Schülter, E, Clotet, B, Sönnerborg, A, De Luca, Andrea, Grossman, Z, Struck, D, Vandamme, A, Abecasis, Ab, De Luca, Andrea (ORCID:0000-0002-8311-6935), Theys, K, Vercauteren, J, Snoeck, J, Zazzi, M, Camacho, Rj, Torti, C, Schülter, E, Clotet, B, Sönnerborg, A, De Luca, Andrea, Grossman, Z, Struck, D, Vandamme, A, Abecasis, Ab, and De Luca, Andrea (ORCID:0000-0002-8311-6935)
- Abstract
Subtype-dependent selection of HIV-1 reverse transcriptase resistance mutation K65R was previously observed in cell culture and small clinical investigations. We compared K65R prevalence across subtypes A, B, C, F, G, and CRF02_AG separately in a cohort of 3,076 patients on combination therapy including tenofovir. K65R selection was significantly higher in HIV-1 subtype C. This could not be explained by clinical and demographic factors in multivariate analysis, suggesting subtype sequence-specific K65R pathways.
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- 2013
10. THU-221 - Hepatitis C Virus Screening Project of Patients on Current Anti-HCV Therapy
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Knops, E., Kalaghatgi, P., Neumann-Fraune, M., Heger, E., Schuelter, E., Lengauer, T., Keitel, V., Goeser, T., Schuebel, N., von Hahn, T., Peuser, I., Qurishi, N., Römer, K., Scholten, S., Daeumer, M., zur Wiesch, J.S., Baumgarten, A., Obermeier, M., Walter, H., Kaiser, R., and Sierra, S.
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- 2016
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11. Prediction of response to antiretroviral therapy by human experts and by the EuResist data-driven expert system (the EVE study)
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Zazzi, M, primary, Kaiser, R, additional, Sönnerborg, A, additional, Struck, D, additional, Altmann, A, additional, Prosperi, M, additional, Rosen-Zvi, M, additional, Petroczi, A, additional, Peres, Y, additional, Schülter, E, additional, Boucher, CA, additional, Brun-Vezinet, F, additional, Harrigan, PR, additional, Morris, L, additional, Obermeier, M, additional, Perno, C-F, additional, Phanuphak, P, additional, Pillay, D, additional, Shafer, RW, additional, Vandamme, A-M, additional, van Laethem, K, additional, Wensing, AMJ, additional, Lengauer, T, additional, and Incardona, F, additional
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- 2010
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12. HIV-1 Subtype Is an Independent Predictor of Reverse Transcriptase Mutation K65R in HIV-1 Patients Treated with Combination Antiretroviral Therapy Including Tenofovir
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Theys, K., Vercauteren, J., Snoeck, J., Zazzi, M., Camacho, R. J., Torti, C., Schülter, E., Clotet, B., Sönnerborg, A., De Luca, A., Grossman, Z., Struck, D., Vandamme, A.-M., and Abecasis, A. B.
- Abstract
ABSTRACTSubtype-dependent selection of HIV-1 reverse transcriptase resistance mutation K65R was previously observed in cell culture and small clinical investigations. We compared K65R prevalence across subtypes A, B, C, F, G, and CRF02_AG separately in a cohort of 3,076 patients on combination therapy including tenofovir. K65R selection was significantly higher in HIV-1 subtype C. This could not be explained by clinical and demographic factors in multivariate analysis, suggesting subtype sequence-specific K65R pathways.
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- 2012
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13. Investigation of expert rule bases, logistic regression, and non-linear machine learning techniques for predicting response to antiretroviral treatment
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Mc, Prosperi, Altmann A, Rosen-Zvi M, Aharoni E, Borgulya G, Bazso F, Sönnerborg A, Schülter E, Struck D, Ulivi G, Anne-Mieke Vandamme, Vercauteren J, Zazzi M, and EuResist and Virolab study groups
14. Prediction of response to antiretroviral therapy by human experts and by the EuResist data-driven expert system (the EVE study)
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Maurizio Zazzi, Kaiser, R., Sönnerborg, A., Struck, D., Altmann, A., Prosperi, M., Rosen Zvi, M., Petroczi, A., Peres, Y., Schülter, E., Boucher, Ca, Brun Vezinet, F., Harrigan, Pr, Morris, L., Obermeier, M., Perno, Cf, Phanuphak, P., Pillay, D., Shafer, Rw, Vandamme A, M., Laethem, K., Wensing, Amj, Lengauer, T., and Incardona, F.
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Male ,Treatment Outcome ,Databases, Factual ,HIV-1 ,Humans ,Expert Systems ,Female ,HIV Infections ,Viral Load ,Settore MED/07 - Microbiologia e Microbiologia Clinica ,Probability - Abstract
The EuResist expert system is a novel data-driven online system for computing the probability of 8-week success for any given pair of HIV-1 genotype and combination antiretroviral therapy regimen plus optional patient information. The objective of this study was to compare the EuResist system vs. human experts (EVE) for the ability to predict response to treatment.The EuResist system was compared with 10 HIV-1 drug resistance experts for the ability to predict 8-week response to 25 treatment cases derived from the EuResist database validation data set. All current and past patient data were made available to simulate clinical practice. The experts were asked to provide a qualitative and quantitative estimate of the probability of treatment success.There were 15 treatment successes and 10 treatment failures. In the classification task, the number of mislabelled cases was six for EuResist and 6-13 for the human experts [mean±standard deviation (SD) 9.1±1.9]. The accuracy of EuResist was higher than the average for the experts (0.76 vs. 0.64, respectively). The quantitative estimates computed by EuResist were significantly correlated (Pearson r=0.695, P0.0001) with the mean quantitative estimates provided by the experts. However, the agreement among experts was only moderate (for the classification task, inter-rater κ=0.355; for the quantitative estimation, mean±SD coefficient of variation=55.9±22.4%).With this limited data set, the EuResist engine performed comparably to or better than human experts. The system warrants further investigation as a treatment-decision support tool in clinical practice.
15. Improved darunavir genotypic mutation score predicting treatment response for patients infected with HIRaben-1 subtype B and non-subtype B receiving a salvage regimen
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De Luca A., Flandre P., Dunn D., Zazzi M., Wensing A., Santoro M. M., Gunthard H. F., Wittkop L., Kordossis T., Garcia F., Castagna A., Cozzi-Lepri A., Churchill D., De Wit S., Brockmeyer N. H., Imaz A., Mussini C., Obel N., Perno C. F., Roca B., Reiss P., Schulter E., Torti C., van Sighem A., Zangerle R., Descamps D., Mocroft A., Kirk O., Sabin C., Casadi W., Casabona J., Miro J. M., Touloumi G., Garrido M., Teira R., Wit F., Warszawski J., Meyer L., Dabis F., Krause M. M., Ghosn J., Leport C., Prins M., Bucher H., Gibb D., Fatkenheuer G., del Amo J., Thorne C., Stephan C., Perez-Hoyos S., Hamouda O., Bartmeyer B., Chkhartishvili N., Noguera-Julian A., Antinori A., d'Arminio Monforte A., Prieto L., Conejo P. R., Soriano-Arandes A., Battegay M., Kouyos R., Tookey P., Konopnick D., Goetghebuer T., Sonnerborg A., Haerry D., de Wit S., Costagliola D., Raben D., Chene G., Ceccherini-Silberstein F., Gunthard H., Judd A., Barger D., Schwimmer C., Termote M., Campbell M., Frederiksen C. M., Friis-Moller N., Kjaer J., Brandt R. S., Berenguer J., Bohlius J., Bouteloup V., Davies M. -A., Dorrucci M., Egger M., Furrer H., Guiguet M., Grabar S., Lambotte O., Leroy V., Lodi S., Matheron S., Monge S., Nakagawa F., Paredes R., Phillips A., Puoti M., Schomaker M., Smit C., Sterne J., Thiebaut R., van der Valk M., Wyss N., Aubert V., Bernasconi E., Boni J., Burton-Jeangros C., Calmy A., Cavassini M., Dollenmaier G., Elzi L., Fehr J., Fellay J., Fux C. A., Gorgievski M., Hasse B., Hirsch H. H., Hoffmann M., Hosli I., Kahlert C., Kaiser L., Keiser O., Klimkait T., Kovari H., Ledergerber B., Martinetti G., Martinez de Tejada B., Metzner K., Muller N., Nadal D., Nicca D., Pantaleo G., Rauch A., Regenass S., Rickenbach M., Rudin C., Schoni-Affolter F., Schmid P., Schupbach J., Speck R., Tarr P., Telenti A., Trkola A., Vernazza P., Weber R., Yerly S., De Luca, A, Flandre, P, Dunn, D, Zazzi, M, Wensing, A, Santoro, M, Gunthard, H, Wittkop, L, Kordossis, T, Garcia, F, Castagna, A, Cozzi-Lepri, A, Churchill, D, De Wit, S, Brockmeyer, N, Imaz, A, Mussini, C, Obel, N, Perno, C, Roca, B, Reiss, P, Schulter, E, Torti, C, van Sighem, A, Zangerle, R, Descamps, D, Mocroft, A, Kirk, O, Sabin, C, Casadi, W, Casabona, J, Miro, J, Touloumi, G, Garrido, M, Teira, R, Wit, F, Warszawski, J, Meyer, L, Dabis, F, Krause, M, Ghosn, J, Leport, C, Prins, M, Bucher, H, Gibb, D, Fatkenheuer, G, del Amo, J, Thorne, C, Stephan, C, Perez-Hoyos, S, Hamouda, O, Bartmeyer, B, Chkhartishvili, N, Noguera-Julian, A, Antinori, A, d'Arminio Monforte, A, Prieto, L, Conejo, P, Soriano-Arandes, A, Battegay, M, Kouyos, R, Tookey, P, Konopnick, D, Goetghebuer, T, Sonnerborg, A, Haerry, D, de Wit, S, Costagliola, D, Raben, D, Chene, G, Ceccherini-Silberstein, F, Judd, A, Barger, D, Schwimmer, C, Termote, M, Campbell, M, Frederiksen, C, Friis-Moller, N, Kjaer, J, Brandt, R, Berenguer, J, Bohlius, J, Bouteloup, V, Davies, M, Dorrucci, M, Egger, M, Furrer, H, Guiguet, M, Grabar, S, Lambotte, O, Leroy, V, Lodi, S, Matheron, S, Monge, S, Nakagawa, F, Paredes, R, Phillips, A, Puoti, M, Schomaker, M, Smit, C, Sterne, J, Thiebaut, R, van der Valk, M, Wyss, N, Aubert, V, Bernasconi, E, Boni, J, Burton-Jeangros, C, Calmy, A, Cavassini, M, Dollenmaier, G, Elzi, L, Fehr, J, Fellay, J, Fux, C, Gorgievski, M, Hasse, B, Hirsch, H, Hoffmann, M, Hosli, I, Kahlert, C, Kaiser, L, Keiser, O, Klimkait, T, Kovari, H, Ledergerber, B, Martinetti, G, Martinez de Tejada, B, Metzner, K, Muller, N, Nadal, D, Nicca, D, Pantaleo, G, Rauch, A, Regenass, S, Rickenbach, M, Rudin, C, Schoni-Affolter, F, Schmid, P, Schupbach, J, Speck, R, Tarr, P, Telenti, A, Trkola, A, Vernazza, P, Weber, R, Yerly, S, University of Zurich, De Luca, Andrea, Santoro, Mm, Günthard, Hf, Brockmeyer, Nh, Perno, Cf, Schülter, E, on behalf of CHAIN and COHERE in, Eurocoord, AII - Amsterdam institute for Infection and Immunity, APH - Amsterdam Public Health, Global Health, Infectious diseases, and Medical Microbiology and Infection Prevention
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0301 basic medicine ,Oncology ,Male ,Enfuvirtide ,Genotyping Techniques ,HIV Infections ,2726 Microbiology (medical) ,10234 Clinic for Infectious Diseases ,0302 clinical medicine ,HIV Protease ,Genotype ,2736 Pharmacology (medical) ,Medicine ,HIV Infection ,Pharmacology (medical) ,030212 general & internal medicine ,Non-U.S. Gov't ,Darunavir ,Aged, 80 and over ,Microbial Sensitivity Test ,Medicine (all) ,Research Support, Non-U.S. Gov't ,Proteolytic enzymes ,Middle Aged ,Settore MED/07 - Microbiologia e Microbiologia Clinica ,Prognosis ,Europe ,3004 Pharmacology ,Treatment Outcome ,Infectious Diseases ,Mutation (genetic algorithm) ,Female ,Human ,medicine.drug ,Microbiology (medical) ,Adult ,medicine.medical_specialty ,Adolescent ,Pharmacology ,Prognosi ,Anti-HIV Agents ,610 Medicine & health ,Microbial Sensitivity Tests ,Settore MED/17 - MALATTIE INFETTIVE ,Research Support ,Article ,03 medical and health sciences ,Young Adult ,Internal medicine ,Linear regression ,Drug Resistance, Viral ,Journal Article ,Humans ,Aged ,Receiver operating characteristic ,business.industry ,Anti-HIV Agent ,2725 Infectious Diseases ,Raltegravir ,030112 virology ,Virology ,HIV Darunavir ,Mutation ,HIV-1 ,genotypic ,Genotyping Technique ,business - Abstract
Objectives: The objective of this studywas to improve the prediction of the impact of HIV-1 protease mutations in different viral subtypes on virological response to darunavir. Methods: Darunavir-containing treatment change episodes (TCEs) in patients previously failing PIs were selected from large European databases. HIV-1 subtype B-infected patients were used as the derivation dataset and HIV- 1 non-B-infected patients were used as the validation dataset. The adjusted association of each mutation with week 8 HIV RNA change from baseline was analysed by linear regression. A prediction model was derived based on best subset least squares estimation with mutational weights corresponding to regression coefficients. Virological outcome prediction accuracy was compared with that from existing genotypic resistance interpretation systems (GISs) (ANRS 2013, Rega 9.1.0 and HIVdb 7.0). Results: TCEs were selected from 681 subtype B-infected and 199 non-B-infected adults. Accompanying drugs were NRTIs in 87%, NNRTIs in 27%and raltegravir ormaraviroc or enfuvirtide in 53%. The predictionmodel included weighted protease mutations, HIV RNA, CD4 and activity of accompanying drugs. The model's association with week 8 HIV RNA change in the subtype B (derivation) set was R2=0.47 [average squared error (ASE)=0.67, P>10-6]; in the non-B (validation) set, ASE was 0.91. Accuracy investigated by means of area under the receiver operating characteristic curves with a binary response (above the threshold value of HIV RNA reduction) showed that our finalmodel outperformed models with existing interpretation systems in both training and validation sets. Conclusions: A model with a new darunavir-weighted mutation score outperformed existing GISs in both B and non-B subtypes in predicting virological response to darunavir.
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- 2016
16. Investigation of expert rule bases, logistic regression, and non-linear machine learning techniques for predicting response to antiretroviral treatment
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Ehud Aharoni, Jurgen Vercauteren, Anne-Mieke Vandamme, Giovanni Ulivi, Andre Altmann, Daniel Struck, Eugen Schülter, Gabor Borgulya, Anders Sönnerborg, Mattia Prosperi, Fulop Bazso, Maurizio Zazzi, Michal Rosen-Zvi, Prosperi, Mc, Altmann, A, ROSEN ZVI, M, Aharoni, E, Borgulya, G, Bazso, F, Sönnerborg, A, Schülter, E, Struck, D, Ulivi, Giovanni, Vandamme, Am, Vercauteren, J, and Zazzi, M.
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Adult ,Male ,Databases, Factual ,Anti-HIV Agents ,Treatment outcome ,Human immunodeficiency virus (HIV) ,Drug Resistance ,HIV Infections ,Machine learning ,computer.software_genre ,medicine.disease_cause ,Logistic regression ,Acquired immunodeficiency syndrome (AIDS) ,Artificial Intelligence ,Antiretroviral treatment ,Medicine ,Data Mining ,Humans ,Pharmacology (medical) ,Pharmacology ,Models, Statistical ,business.industry ,Flexibility (personality) ,Viral Load ,medicine.disease ,Regimen ,Infectious Diseases ,Logistic Models ,Treatment Outcome ,HIV-1 ,Female ,Artificial intelligence ,business ,computer - Abstract
BackgroundThe extreme flexibility of the HIV type-1 (HIV-1) genome makes it challenging to build the ideal antiretroviral treatment regimen. Interpretation of HIV-1 genotypic drug resistance is evolving from rule-based systems guided by expert opinion to data-driven engines developed through machine learning methods.MethodsThe aim of the study was to investigate linear and non-linear statistical learning models for classifying short-term virological outcome of antiretroviral treatment. To optimize the model, different feature selection methods were considered. Robust extra-sample error estimation and different loss functions were used to assess model performance. The results were compared with widely used rule-based genotypic interpretation systems (Stanford HIVdb, Rega and ANRS).ResultsA set of 3,143 treatment change episodes were extracted from the EuResist database. The dataset included patient demographics, treatment history and viral genotypes. A logistic regression model using high order interaction variables performed better than rule-based genotypic interpretation systems (accuracy 75.63% versus 71.74–73.89%, area under the receiver operating characteristic curve [AUC] 0.76 versus 0.68–0.70) and was equivalent to a random forest model (accuracy 76.16%, AUC 0.77). However, when rule-based genotypic interpretation systems were coupled with additional patient attributes, and the combination was provided as input to the logistic regression model, the performance increased significantly, becoming comparable to the fully data-driven methods.ConclusionsPatient-derived supplementary features significantly improved the accuracy of the prediction of response to treatment, both with rule-based and data-driven interpretation systems. Fully data-driven models derived from large-scale data sources show promise as antiretroviral treatment decision support tools.
17. Clinical use, efficacy, and durability of maraviroc for antiretroviral therapy in routine care: A European survey.
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De Luca A, Pezzotti P, Boucher C, Döring M, Incardona F, Kaiser R, Lengauer T, Pfeifer N, Schülter E, Vandamme AM, Zazzi M, and Geretti AM
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- Adult, Anti-HIV Agents pharmacology, Female, HIV Infections virology, HIV-1 drug effects, Humans, Male, Maraviroc pharmacology, Microbial Sensitivity Tests, Middle Aged, Public Health Surveillance, Treatment Failure, Treatment Outcome, Viral Load, Viral Tropism, Anti-HIV Agents therapeutic use, HIV Infections drug therapy, HIV Infections epidemiology, Maraviroc therapeutic use
- Abstract
Objectives: The study aimed to survey maraviroc use and assess effectiveness and durability of maraviroc-containing antiretroviral treatment (ART) in routine practice across Europe., Methods: Data were retrieved from 26 cohorts in 8 countries comprising adults who started maraviroc in 2005-2016 and had ≥1 follow-up visit. Available V3 sequences were re-analysed centrally for tropism determination by geno2pheno[coreceptor]. Treatment failure (TF) was defined as either virological failure (viral load >50 copies/mL) or maraviroc discontinuation for any reason over 48 weeks. Predictors of TF were explored by logistic regression analysis. Time to maraviroc discontinuation was estimated by Kaplan-Meier survival analysis., Results: At maraviroc initiation (baseline), among 1,381 patients, 67.1% had experienced ≥3 ART classes and 45.6% had a viral load <50 copies/mL. Maraviroc was occasionally added to the existing regimen as a single agent (7.3%) but it was more commonly introduced alongside other new agents, and was often (70.4%) used with protease inhibitors. Accompanying drugs comprised 1 (40.2%), 2 (48.6%) or ≥3 (11.2%) ART classes. Among 1,273 patients with available tropism data, 17.6% showed non-R5 virus. Non-standard maraviroc use also comprised reported once daily dosing (20.0%) and a total daily dose of 150mg (12.1%). Over 48 weeks, 41.4% of patients met the definition of TF, although the 1-year estimated retention on maraviroc was 82.1% (95% confidence interval 79.9-84.2). Among 1,010 subjects on maraviroc at week 48, the viral load was >50 copies/mL in 19.9% and >200 copies/mL in 10.7%. Independent predictors of TF comprised a low nadir CD4 count, a detectable baseline viral load, previous PI experience, non-R5 tropism, having ≥3 active drugs in the accompanying regimen, and a more recent calendar year of maraviroc initiation., Conclusions: This study reports on the largest observation cohort of patients who started maraviroc across 8 European countries. In this overall highly treatment-experienced population, with a small but appreciable subset that received maraviroc outside of standard treatment guidelines, maraviroc was safe and reasonably effective, with relatively low rates of discontinuation over 48 weeks and only 2 cases of serum transaminase elevations reported as reasons for discontinuation., Competing Interests: I have read the journal's policy and the authors of this manuscript have the following competing interests: Dr. Boucher reports personal fees and research grant from ViiV, outside the submitted work. Dr. Geretti reports grants from BMS, grants and personal fees from Gilead Sciences, personal fees from Cepheid, grants and personal fees from Roche Pharma, grants and personal fees from ViiV Healthcare, grants and personal fees from Janssen, outside the submitted work; Dr. Kaiser reports grants from Gilead Sciences and ViiV Healthcare, personal fees from Janssen-Cilag, MSD, ROCHE, ABBVIE, Siemens and ViiV Healthcare, outside the submitted work; Dr. Vandamme received a personal fee from Gilead outside the submitted work; Dr. Zazzi reports grants from Gilead Sciences and ViiV Healthcare, personal fees from Janssen-Cilag and ViiV Healthcare, outside the submitted work; Dr. Incardona reports grants from Gilead Sciences, Janssen and ViiV Healthcare, outside the submitted work; she received salary from InformaPRO, Rome. This does not alter our adherence to PLOS ONE policies on sharing data and materials.
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- 2019
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18. Improved darunavir genotypic mutation score predicting treatment response for patients infected with HIV-1 subtype B and non-subtype B receiving a salvage regimen.
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De Luca A, Flandre P, Dunn D, Zazzi M, Wensing A, Santoro MM, Günthard HF, Wittkop L, Kordossis T, Garcia F, Castagna A, Cozzi-Lepri A, Churchill D, De Wit S, Brockmeyer NH, Imaz A, Mussini C, Obel N, Perno CF, Roca B, Reiss P, Schülter E, Torti C, van Sighem A, Zangerle R, and Descamps D
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- Adolescent, Adult, Aged, Aged, 80 and over, Anti-HIV Agents therapeutic use, Darunavir therapeutic use, Europe, Female, HIV Infections drug therapy, HIV Protease genetics, HIV-1 genetics, HIV-1 isolation & purification, Humans, Male, Microbial Sensitivity Tests methods, Middle Aged, Prognosis, Treatment Outcome, Young Adult, Anti-HIV Agents pharmacology, Darunavir pharmacology, Drug Resistance, Viral, Genotyping Techniques methods, HIV Infections virology, HIV-1 drug effects, Mutation
- Abstract
Objectives: The objective of this study was to improve the prediction of the impact of HIV-1 protease mutations in different viral subtypes on virological response to darunavir., Methods: Darunavir-containing treatment change episodes (TCEs) in patients previously failing PIs were selected from large European databases. HIV-1 subtype B-infected patients were used as the derivation dataset and HIV-1 non-B-infected patients were used as the validation dataset. The adjusted association of each mutation with week 8 HIV RNA change from baseline was analysed by linear regression. A prediction model was derived based on best subset least squares estimation with mutational weights corresponding to regression coefficients. Virological outcome prediction accuracy was compared with that from existing genotypic resistance interpretation systems (GISs) (ANRS 2013, Rega 9.1.0 and HIVdb 7.0)., Results: TCEs were selected from 681 subtype B-infected and 199 non-B-infected adults. Accompanying drugs were NRTIs in 87%, NNRTIs in 27% and raltegravir or maraviroc or enfuvirtide in 53%. The prediction model included weighted protease mutations, HIV RNA, CD4 and activity of accompanying drugs. The model's association with week 8 HIV RNA change in the subtype B (derivation) set was R(2) = 0.47 [average squared error (ASE) = 0.67, P < 10(-6)]; in the non-B (validation) set, ASE was 0.91. Accuracy investigated by means of area under the receiver operating characteristic curves with a binary response (above the threshold value of HIV RNA reduction) showed that our final model outperformed models with existing interpretation systems in both training and validation sets., Conclusions: A model with a new darunavir-weighted mutation score outperformed existing GISs in both B and non-B subtypes in predicting virological response to darunavir., (© The Author 2016. Published by Oxford University Press on behalf of the British Society for Antimicrobial Chemotherapy. All rights reserved. For Permissions, please e-mail: journals.permissions@oup.com.)
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- 2016
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19. Factors influencing the efficacy of rilpivirine in HIV-1 subtype C in low- and middle-income countries.
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Neogi U, Häggblom A, Singh K, Rogers LC, Rao SD, Amogne W, Schülter E, Zazzi M, Arnold E, Sarafianos SG, and Sönnerborg A
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- Anti-HIV Agents pharmacology, Developing Countries, Drug Resistance, Viral, Ethiopia, Europe, HIV Infections virology, HIV Reverse Transcriptase metabolism, HIV-1 isolation & purification, Humans, India, Inhibitory Concentration 50, Microbial Sensitivity Tests, Protein Binding, Rilpivirine pharmacology, Treatment Failure, Anti-HIV Agents therapeutic use, Genotype, HIV Infections drug therapy, HIV-1 classification, HIV-1 genetics, Rilpivirine therapeutic use
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Objectives: The use of the NNRTI rilpivirine in low- and middle-income countries (LMICs) is under debate. The main objective of this study was to provide further clinical insights and biochemical evidence on the usefulness of rilpivirine in LMICs., Patients and Methods: Rilpivirine resistance was assessed in 5340 therapy-naive and 13,750 first-generation NNRTI-failed patients from Europe and therapy-naive HIV-1 subtype C (HIV-1C)-infected individuals from India (n = 617) and Ethiopia (n = 127). Rilpivirine inhibition and binding affinity assays were performed using patient-derived HIV-1C reverse transcriptases (RTs)., Results: Primary rilpivirine resistance was rare, but the proportion of patients with >100,000 HIV-1 RNA copies/mL pre-ART was high in patients from India and Ethiopia, limiting the usefulness of rilpivirine as a first-line drug in LMICs. In patients failing first-line NNRTI treatments, cross-resistance patterns suggested that 73% of the patients could benefit from switching to rilpivirine-based therapy. In vitro inhibition assays showed ∼ 2-fold higher rilpivirine IC50 for HIV-1C RT than HIV-1B RT. Pre-steady-state determination of rilpivirine-binding affinities revealed 3.7-fold lower rilpivirine binding to HIV-1C than HIV-1B RT. Structural analysis indicated that naturally occurring polymorphisms close to the NNRTI-binding pocket may reduce rilpivirine binding, leading to lower susceptibility of HIV-1C to rilpivirine., Conclusions: Our clinical and biochemical findings indicate that the usefulness of rilpivirine has limitations in HIV-1C-dominated epidemics in LMICs, but the drug could still be beneficial in patients failing first-line therapy if genotypic resistance testing is performed., (© The Author 2015. Published by Oxford University Press on behalf of the British Society for Antimicrobial Chemotherapy. All rights reserved. For Permissions, please e-mail: journals.permissions@oup.com.)
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- 2016
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20. Proviral DNA as a Target for HIV-1 Resistance Analysis.
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Lübke N, Di Cristanziano V, Sierra S, Knops E, Schülter E, Jensen B, Oette M, Lengauer T, and Kaiser R
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- Anti-HIV Agents therapeutic use, Antiretroviral Therapy, Highly Active, Female, HIV Infections drug therapy, Humans, Male, Middle Aged, Mutation, Proviruses drug effects, Proviruses isolation & purification, RNA, Viral blood, RNA, Viral isolation & purification, RNA-Directed DNA Polymerase genetics, Viral Load, Viremia drug therapy, Anti-HIV Agents pharmacology, DNA, Viral genetics, Drug Resistance, Viral genetics, HIV Infections virology, HIV-1 drug effects, HIV-1 genetics, Proviruses genetics
- Abstract
Background: Resistance analysis from viral RNA is restricted to detectable viral load. Therefore, analysis from proviral DNA could help in cases with low-level or suppressed viremia., Methods: Viral plasma RNA and the corresponding cellular proviral DNA of 78 EDTA samples from 48 therapy-naïve (TN) and 30 therapy-experienced (TE) HIV-1-infected patients were isolated and analyzed for their resistance profiles in the protease and reverse transcriptase genes., Results: Overall, 175 drug-resistance mutations (DRMs) were detected in 25/30 TE (83.3%) and 5/48 TN (10.4%) samples. The TE patients displayed a mean number of 6.68 DRMs in RNA and 5.20 in DNA. In the TN patients, a mean of 0.8 DRMs was found in RNA and 1.0 in DNA; 75% of the DRMs were detected in RNA and DNA simultaneously. In the TE samples, 76% of the DRMs were detected simultaneously in RNA and DNA, 23% exclusively in RNA and 1% in DNA only. The TN samples revealed a significantly higher frequency of DRMs in DNA than in RNA., Conclusions: Proviral DNA resistance testing provides additional resistance information for TN patients. It is also a reliable alternative for TE patients with unsuccessful RNA testing and can provide valuable information when no records are available.
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- 2015
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21. Time on drug analysis based on real life data.
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Schülter E, Kaiser R, Zazzi M, Sönnerborg A, Camacho R, and Verheyen J
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Introduction: The health condition of HIV-1 infected patients has improved during the last years, but lifelong antiretroviral treatment is still needed. However resistance, multiple side effects and drug to drug interactions of antiretrovirals challenge the establishment of a long lasting regimen. The average running time of each antiretroviral drug composing the therapy episodes combination antiretroviral therapy (cART) may be seen as an indicator of effectiveness and tolerability., Materials and Methods: To evaluate the running time of each drug used in HIV-1 treatment, we extracted therapy episodes from the latest release of the EuResist database (www.euresist.org). The evaluation period was from Oct 2006 to Oct 2012. Inclusion criteria for this analysis were continuous patient monitoring for at least two years (i.e. latest therapy start in Oct 2010), and the extraction of at least 100 cases per drug analyzed. Drug intake interruptions of less than a month were ignored., Results: At the time of data extraction (Feb 2013), the EuResist database contained data from 61,953 patients of which 11,499 fulfilled the inclusion criteria. We obtained 37,035 drug treatment lines from 38,153 cARTs and the overall average length of drug intake was 18.7 months. For each single drug these average durations measured in months were: 18.3 (3TC); 20.8 (ABC); 12.3 (d4T); 14.3 (ddI); 23.2 (FTC); 23.0 (TDF); 13.4 (ZDV); 19.8 (EFV); 21.9 (ETR); 17.7 (NVP); 19.2 (ATV); 22.7 (DRV); 18.7 (FPV); 17.9 (LPV); 15.2 (SQV); 14.6 (TPV); 22.6 (RAL); 21.9 (MVC) and 8.9 (T20). Overall drug discontinuation rates at one, two and three years were 35.0, 48.8 and 95.8%, respectively. Average discontinuation rates for the different drug classes at two years these were: 46.2% for NRTIs; 49.7% for NNRTIs; 55.4% for PIs and 37.6% for Raltegravir/Maraviroc., Conclusions: In this cohort the overall frequency of therapy changes is high. After two years of treatment, on average 49% of the patients change at least one drug in their cART. Thus, we have to expect numerous changes in the long term perspective of treatments. The observed differences in durations suggest that newer drugs might have advantages over older ones. However possible reasons and confounding factors (such as number of past treatment lines, co-medication, risk group, etc.) were not addressed at this time of the analysis.
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- 2014
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22. Novel tetra-peptide insertion in Gag-p6 ALIX-binding motif in HIV-1 subtype C associated with protease inhibitor failure in Indian patients.
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Neogi U, Rao SD, Bontell I, Verheyen J, Rao VR, Gore SC, Soni N, Shet A, Schülter E, Ekstrand ML, Wondwossen A, Kaiser R, Madhusudhan MS, Prasad VR, and Sonnerborg A
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- Adult, Cohort Studies, Female, Genotype, HIV-1 classification, HIV-1 isolation & purification, Humans, India, Male, Middle Aged, Treatment Failure, Drug Resistance, Viral, HIV Infections drug therapy, HIV Infections virology, HIV Protease Inhibitors therapeutic use, HIV-1 genetics, Mutagenesis, Insertional, gag Gene Products, Human Immunodeficiency Virus genetics
- Abstract
A novel tetra-peptide insertion was identified in Gag-p6 ALIX-binding region, which appeared in protease inhibitor failure Indian HIV-1C sequences (odds ratio=17.1, P < 0.001) but was naturally present in half of untreated Ethiopian HIV-1C sequences. The insertion is predicted to restore ALIX-mediated virus release pathway, which is lacking in HIV-1C. The clinical importance of the insertion needs to be evaluated in HIV-1C dominating regions wherein the use of protease inhibitor drugs are being scaled up.
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- 2014
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23. Estimating trends in the proportion of transmitted and acquired HIV drug resistance in a long term observational cohort in Germany.
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Schmidt D, Kollan C, Fätkenheuer G, Schülter E, Stellbrink HJ, Noah C, Jensen BE, Stoll M, Bogner JR, Eberle J, Meixenberger K, Kücherer C, Hamouda O, and Bartmeyer B
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- Adult, Anti-HIV Agents therapeutic use, Antiretroviral Therapy, Highly Active, Cohort Studies, Female, Genotype, Germany, HIV Infections drug therapy, Humans, Male, Mutation, Risk Factors, Viral Load, Anti-HIV Agents pharmacology, Drug Resistance, Viral, HIV Infections transmission, HIV Infections virology, HIV-1 drug effects, HIV-1 genetics
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Objective: We assessed trends in the proportion of transmitted (TDR) and acquired (ADR) HIV drug resistance and associated mutations between 2001 and 2011 in the German ClinSurv-HIV Drug Resistance Study., Method: The German ClinSurv-HIV Drug Resistance Study is a subset of the German ClinSurv-HIV Cohort. For the ClinSurv-HIV Drug Resistance Study all available sequences isolated from patients in five study centres of the long term observational ClinSurv-HIV Cohort were included. TDR was estimated using the first viral sequence of antiretroviral treatment (ART) naïve patients. One HIV sequence/patient/year of ART experienced patients was considered to estimate the proportion of ADR. Trends in the proportion of HIV drug resistance were calculated by logistic regression., Results: 9,528 patients were included into the analysis. HIV-sequences of antiretroviral naïve and treatment experienced patients were available from 34% (3,267/9,528) of patients. The proportion of TDR over time was stable at 10.4% (95% CI 9.1-11.8; p for trend = 0.6; 2001-2011). The proportion of ADR among all treated patients was 16%, whereas it was high among those with available HIV genotypic resistance test (64%; 1,310/2,049 sequences; 95% CI 62-66) but declined significantly over time (OR 0.8; 95% CI 0.77-0.83; p for trend<0.001; 2001-2011). Viral load monitoring subsequent to resistance testing was performed in the majority of treated patients (96%) and most of them (67%) were treated successfully., Conclusions: The proportion of TDR was stable in this study population. ADR declined significantly over time. This decline might have been influenced by broader resistance testing, resistance test guided therapy and the availability of more therapeutic options and not by a decline in the proportion of TDR within the study population.
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- 2014
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24. Superinfection with drug-resistant HIV is rare and does not contribute substantially to therapy failure in a large European cohort.
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Bartha I, Assel M, Sloot PM, Zazzi M, Torti C, Schülter E, De Luca A, Sönnerborg A, Abecasis AB, Van Laethem K, Rosi A, Svärd J, Paredes R, van de Vijver DA, Vandamme AM, and Müller V
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- Adult, Anti-HIV Agents therapeutic use, Female, Genotype, HIV Infections drug therapy, HIV-1 classification, HIV-1 drug effects, HIV-1 genetics, Humans, Male, Phylogeny, Superinfection drug therapy, Treatment Failure, Drug Resistance, Viral, HIV Infections virology, HIV-1 physiology, Superinfection virology
- Abstract
Background: Superinfection with drug resistant HIV strains could potentially contribute to compromised therapy in patients initially infected with drug-sensitive virus and receiving antiretroviral therapy. To investigate the importance of this potential route to drug resistance, we developed a bioinformatics pipeline to detect superinfection from routinely collected genotyping data, and assessed whether superinfection contributed to increased drug resistance in a large European cohort of viremic, drug treated patients., Methods: We used sequence data from routine genotypic tests spanning the protease and partial reverse transcriptase regions in the Virolab and EuResist databases that collated data from five European countries. Superinfection was indicated when sequences of a patient failed to cluster together in phylogenetic trees constructed with selected sets of control sequences. A subset of the indicated cases was validated by re-sequencing pol and env regions from the original samples., Results: 4425 patients had at least two sequences in the database, with a total of 13816 distinct sequence entries (of which 86% belonged to subtype B). We identified 107 patients with phylogenetic evidence for superinfection. In 14 of these cases, we analyzed newly amplified sequences from the original samples for validation purposes: only 2 cases were verified as superinfections in the repeated analyses, the other 12 cases turned out to involve sample or sequence misidentification. Resistance to drugs used at the time of strain replacement did not change in these two patients. A third case could not be validated by re-sequencing, but was supported as superinfection by an intermediate sequence with high degenerate base pair count within the time frame of strain switching. Drug resistance increased in this single patient., Conclusions: Routine genotyping data are informative for the detection of HIV superinfection; however, most cases of non-monophyletic clustering in patient phylogenies arise from sample or sequence mix-up rather than from superinfection, which emphasizes the importance of validation. Non-transient superinfection was rare in our mainly treatment experienced cohort, and we found a single case of possible transmitted drug resistance by this route. We therefore conclude that in our large cohort, superinfection with drug resistant HIV did not compromise the efficiency of antiretroviral treatment.
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- 2013
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25. HIV-1 subtype is an independent predictor of reverse transcriptase mutation K65R in HIV-1 patients treated with combination antiretroviral therapy including tenofovir.
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Theys K, Vercauteren J, Snoeck J, Zazzi M, Camacho RJ, Torti C, Schülter E, Clotet B, Sönnerborg A, De Luca A, Grossman Z, Struck D, Vandamme AM, and Abecasis AB
- Subjects
- Adenine therapeutic use, Adult, Drug Resistance, Viral genetics, Drug Therapy, Combination, Female, Genetic Variation, HIV Infections drug therapy, HIV Infections virology, HIV-1 classification, HIV-1 drug effects, HIV-1 enzymology, HIV-1 genetics, Humans, Male, Middle Aged, Molecular Sequence Data, RNA-Directed DNA Polymerase genetics, Reverse Transcriptase Inhibitors pharmacology, Tenofovir, Adenine analogs & derivatives, Anti-HIV Agents therapeutic use, HIV Reverse Transcriptase genetics, Organophosphonates therapeutic use, Reverse Transcriptase Inhibitors therapeutic use
- Abstract
Subtype-dependent selection of HIV-1 reverse transcriptase resistance mutation K65R was previously observed in cell culture and small clinical investigations. We compared K65R prevalence across subtypes A, B, C, F, G, and CRF02_AG separately in a cohort of 3,076 patients on combination therapy including tenofovir. K65R selection was significantly higher in HIV-1 subtype C. This could not be explained by clinical and demographic factors in multivariate analysis, suggesting subtype sequence-specific K65R pathways.
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- 2013
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26. Endogenous or exogenous spreading of HIV-1 in Nordrhein-Westfalen, Germany, investigated by phylodynamic analysis of the RESINA Study cohort.
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Lawyer G, Schülter E, Kaiser R, Reuter S, Oette M, and Lengauer T
- Subjects
- Cohort Studies, Endemic Diseases, Female, Germany epidemiology, HIV Infections virology, Heterosexuality, Homosexuality, Male, Humans, Male, Prospective Studies, Substance Abuse, Intravenous complications, HIV Infections epidemiology, HIV Infections transmission, HIV-1 genetics, Molecular Epidemiology
- Abstract
HIV's genetic instability means that sequence similarity can illuminate the underlying transmission network. Previous application of such methods to samples from the United Kingdom has suggested that as many as 86% of UK infections arose outside of the country, a conclusion contrary to usual patterns of disease spread. We investigated transmission networks in the Resina cohort, a 2,747 member sample from Nordrhein-Westfalen, Germany, sequenced at therapy start. Transmission networks were determined by thresholding the pairwise genetic distance in the pol gene at 96.8% identity. At first blush the results concurred with the UK studies. Closer examination revealed four large and growing transmission networks that encompassed all major transmission groups. One of these formed a supercluster containing 71% of the sex with men (MSM) subjects when the network was thresholded at levels roughly equivalent to those used in the UK studies, though methodological differences suggest that this threshold may be too generous in the current data. Examination of the endo- versus exogenesis hypothesis by testing whether infections that were exogenous to Cologne or to Dusseldorf were endogenous to the greater region supported endogenous spread in MSM subjects and exogenous spread in the endemic transmission group. In intravenous drug using group subjects, it depended on viral strain, with subtype B sequences appearing to have origin exogenous to the Resina data, while non-B sequences (primarily subtype A) were almost completely endogenous to their local community. These results suggest that, at least in Germany, the question of endogenous versus exogenous linkages depends on subject group.
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- 2012
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27. Mutational patterns in the frameshift-regulating site of HIV-1 selected by protease inhibitors.
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Knops E, Brakier-Gingras L, Schülter E, Pfister H, Kaiser R, and Verheyen J
- Subjects
- HIV-1 isolation & purification, Humans, Drug Resistance, Viral, HIV Infections virology, HIV Protease Inhibitors pharmacology, HIV-1 drug effects, HIV-1 genetics, Mutation, Missense, gag Gene Products, Human Immunodeficiency Virus genetics
- Abstract
Sustained suppression of viral replication in HIV-1 infected patients is especially hampered by the emergence of HIV-1 drug resistance. The mechanisms of drug resistance mainly involve mutations directly altering the interaction of viral enzymes and inhibitors. However, protease inhibitors do not only select for mutations in the protease but also for mutations in the precursor Gag and Pol proteins. In this study, we analysed the frameshift-regulating site of HIV-1 subtype B isolates, which also encodes for Gag and Pol proteins, classified as either treatment-naïve (TN) or protease inhibitor resistant (PI-R). HIV-1 Gag cleavage site mutations (G435E, K436N, I437V, L449F/V) especially correlated with protease inhibitor resistance mutations, but also Pol cleavage site mutations (D05G, D05S) could be assigned to specific protease resistance profiles. Additionally, two Gag non-cleavage site mutations (S440F, H441P) were observed more often in HIV-1 isolates carrying protease resistance mutations. However, in dual luciferase assays, the frameshift efficiencies of specific clones did not reveal any effect from these mutations. Nevertheless, two patterns of mutations modestly increased the frameshift rates in vitro, but were not specifically accumulating in PI-resistant HIV-1 isolates. In summary, HIV-1 Gag cleavage site mutations were dominantly selected in PI-resistant HIV-1 isolates but also Pol cleavage site mutations influenced resistance profiles in the protease. Additionally, Gag non-cleavage site mutations accumulated in PI-resistant HIV-1 isolates, but were not related to an increased frameshift efficiency.
- Published
- 2012
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28. Predicting response to antiretroviral treatment by machine learning: the EuResist project.
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Zazzi M, Incardona F, Rosen-Zvi M, Prosperi M, Lengauer T, Altmann A, Sonnerborg A, Lavee T, Schülter E, and Kaiser R
- Subjects
- Anti-HIV Agents pharmacology, Anti-HIV Agents therapeutic use, Genotype, HIV Infections drug therapy, HIV-1 isolation & purification, Humans, Artificial Intelligence, Drug Resistance, Viral, HIV Infections virology, HIV-1 drug effects, HIV-1 genetics, Microbial Sensitivity Tests methods
- Abstract
For a long time, the clinical management of antiretroviral drug resistance was based on sequence analysis of the HIV genome followed by estimating drug susceptibility from the mutational pattern that was detected. The large number of anti-HIV drugs and HIV drug resistance mutations has prompted the development of computer-aided genotype interpretation systems, typically comprising rules handcrafted by experts via careful examination of in vitro and in vivo resistance data. More recently, machine learning approaches have been applied to establish data-driven engines able to indicate the most effective treatments for any patient and virus combination. Systems of this kind, currently including the Resistance Response Database Initiative and the EuResist engine, must learn from the large data sets of patient histories and can provide an objective and accurate estimate of the virological response to different antiretroviral regimens. The EuResist engine was developed by a European consortium of HIV and bioinformatics experts and compares favorably with the most commonly used genotype interpretation systems and HIV drug resistance experts. Next-generation treatment response prediction engines may valuably assist the HIV specialist in the challenging task of establishing effective regimens for patients harboring drug-resistant virus strains. The extensive collection and accurate processing of increasingly large patient data sets are eagerly awaited to further train and translate these systems from prototype engines into real-life treatment decision support tools., (Copyright © 2012 S. Karger AG, Basel.)
- Published
- 2012
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29. Efficacy of antiretroviral therapy switch in HIV-infected patients: a 10-year analysis of the EuResist Cohort.
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Oette M, Schülter E, Rosen-Zvi M, Peres Y, Zazzi M, Sönnerborg A, Struck D, Altmann A, and Kaiser R
- Subjects
- Cohort Studies, Female, Humans, Male, Treatment Outcome, Viral Load, Anti-HIV Agents administration & dosage, Antiretroviral Therapy, Highly Active methods, HIV Infections drug therapy
- Abstract
Introduction: Highly active antiretroviral therapy (HAART) has been shown to be effective in many recent trials. However, there is limited data on time trends of HAART efficacy after treatment change., Methods: Data from different European cohorts were compiled within the EuResist Project. The efficacy of HAART defined by suppression of viral replication at 24 weeks after therapy switch was analyzed considering previous treatment modifications from 1999 to 2008., Results: Altogether, 12,323 treatment change episodes in 7,342 patients were included in the analysis. In 1999, HAART after treatment switch was effective in 38.0% of the patients who had previously undergone 1-5 therapies. This figure rose to 85.0% in 2008. In patients with more than 5 previous therapies, efficacy rose from 23.9 to 76.2% in the same time period. In patients with detectable viral load at therapy switch, the efficacy rose from 23.3 to 66.7% with 1-5 previous treatments and from 14.4 to 55.6% with more than 5 previous treatments., Conclusion: The results of this large cohort show that the outcome of HAART switch has improved considerably over the last years. This result was particularly observed in the context after viral rebound. Thus, changing HAART is no longer associated with a high risk of treatment failure., (Copyright © 2012 S. Karger AG, Basel.)
- Published
- 2012
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30. The SnoB study: frequency of baseline raltegravir resistance mutations prevalence in different non-B subtypes.
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Sierra S, Lübke N, Walter H, Schülter E, Reuter S, Fätkenheuer G, Bickel M, da Silva H, Kaiser R, and Esser S
- Subjects
- Adolescent, Adult, Aged, Cell Line, Tumor, Child, Child, Preschool, DNA Mutational Analysis, Female, HIV Infections blood, HIV Infections drug therapy, HIV Infections epidemiology, HIV Infections virology, HIV Integrase genetics, HIV Integrase Inhibitors pharmacology, HIV-1 classification, HIV-1 pathogenicity, Humans, Infant, Infant, Newborn, Male, Microbial Sensitivity Tests, Middle Aged, Mutation, Phenotype, Polymorphism, Genetic, Prevalence, Prospective Studies, RNA, Viral blood, RNA, Viral genetics, Raltegravir Potassium, Young Adult, Drug Resistance, Viral, HIV-1 drug effects, HIV-1 genetics, Pyrrolidinones pharmacology
- Abstract
The SnoB study analysed the variability of the integrase (IN) gene of non-B viruses from treatment-naïve patients to determine whether non-B subtypes carry natural resistance mutations to raltegravir (RAL). Plasma viral RNA from 427 patients was gained, and IN sequences were subtyped and screened for subtype-specific highly-variable residues. Seven viruses of different subtypes were phenotypically tested for RAL susceptibility; 359/427 samples could be sequenced. One hundred and seventy samples (47%) were classified as non-B subtypes. No primary RAL resistance-associated mutations (RRAMs) were detected. Certain secondary mutations were found, mostly related to specific non-B subtypes. L74 M was significantly more prevalent in subtype 02_AG, T97A in A and 06_cpx, V151I in 06_cpx, and G163R in 12_BF. Various additional mutations were also detected and could be associated with the subtype too. While K156 N and S230 N were correlated with B subtype, V72I, L74I, T112I, T125A, V201I and T206S were more frequent in certain non-B subtypes. The resistance factors (RF) of 7 viral strains of different subtypes ranged from 1.0 to 1.9. No primary or secondary but subtype-associated additional RRAMs were present. No correlation between RF and additional RRAMs was found. The prevalence of RRAMs was higher in non-B samples. However, the RFs for the analysed non-B subtypes showed lower values to those reported relevant to clinical failure. As the role of baseline secondary and additional mutations on RAL therapy failure is actually not known, baseline IN screening is necessary., (© Springer-Verlag 2011)
- Published
- 2011
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31. HIV prevalence and route of transmission in Turkish immigrants living in North-Rhine Westphalia, Germany.
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Schülter E, Oette M, Balduin M, Reuter S, Rockstroh J, Fätkenheuer G, Esser S, Lengauer T, Agacfidan A, Pfister H, Kaiser R, and Akgül B
- Subjects
- Adult, Aged, Anti-Retroviral Agents pharmacology, Databases, Factual, Drug Resistance, Multiple, Viral, Female, Germany epidemiology, HIV Infections virology, HIV-1 classification, HIV-1 drug effects, Heterosexuality, Humans, Male, Middle Aged, Mutation, Phylogeny, Prevalence, Self Report, Sex Factors, Turkey ethnology, Young Adult, pol Gene Products, Human Immunodeficiency Virus genetics, Emigrants and Immigrants statistics & numerical data, HIV Infections ethnology, HIV Infections transmission, HIV-1 pathogenicity
- Abstract
The high number of Turkish immigrants in the German state North-Rhine Westphalia (NRW) compelled us to look for HIV-infected patients with Turkish nationality. In the AREVIR database, we found 127 (107 men, 20 women) Turkish HIV patients living in NRW. In order to investigate transmission clusters and their correlation to gender, nationality and self-reported transmission mode, a phylogenetic analysis including pol gene sequences was performed. Subtype distribution and the number of HIV drug resistance mutations in the Turkish patient group were found to be similar to the proportion in the non-Turkish patients. Great differences were observed in self-reported mode of transmission in the heterosexual Turkish male subgroup. Neighbour-joining tree of pol gene sequences gave indication that 59% of these reported heterosexual transmissions cluster with those of men having sex with men in the database. This is the first study analysing HIV type distribution, drug resistance mutations and transmission mode in a Turkish immigrant population., (© Springer-Verlag 2011)
- Published
- 2011
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32. Antiretroviral therapy optimisation without genotype resistance testing: a perspective on treatment history based models.
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Prosperi MC, Rosen-Zvi M, Altmann A, Zazzi M, Di Giambenedetto S, Kaiser R, Schülter E, Struck D, Sloot P, van de Vijver DA, Vandamme AM, and Sönnerborg A
- Subjects
- Adult, Female, Genotype, HIV-1 genetics, Humans, Male, Middle Aged, RNA, Viral blood, ROC Curve, Anti-HIV Agents therapeutic use, Drug Resistance, Viral genetics, HIV Infections drug therapy
- Abstract
Background: Although genotypic resistance testing (GRT) is recommended to guide combination antiretroviral therapy (cART), funding and/or facilities to perform GRT may not be available in low to middle income countries. Since treatment history (TH) impacts response to subsequent therapy, we investigated a set of statistical learning models to optimise cART in the absence of GRT information., Methods and Findings: The EuResist database was used to extract 8-week and 24-week treatment change episodes (TCE) with GRT and additional clinical, demographic and TH information. Random Forest (RF) classification was used to predict 8- and 24-week success, defined as undetectable HIV-1 RNA, comparing nested models including (i) GRT+TH and (ii) TH without GRT, using multiple cross-validation and area under the receiver operating characteristic curve (AUC). Virological success was achieved in 68.2% and 68.0% of TCE at 8- and 24-weeks (n = 2,831 and 2,579), respectively. RF (i) and (ii) showed comparable performances, with an average (st.dev.) AUC 0.77 (0.031) vs. 0.757 (0.035) at 8-weeks, 0.834 (0.027) vs. 0.821 (0.025) at 24-weeks. Sensitivity analyses, carried out on a data subset that included antiretroviral regimens commonly used in low to middle income countries, confirmed our findings. Training on subtype B and validation on non-B isolates resulted in a decline of performance for models (i) and (ii)., Conclusions: Treatment history-based RF prediction models are comparable to GRT-based for classification of virological outcome. These results may be relevant for therapy optimisation in areas where availability of GRT is limited. Further investigations are required in order to account for different demographics, subtypes and different therapy switching strategies.
- Published
- 2010
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33. Evolution of protease inhibitor resistance in the gag and pol genes of HIV subtype G isolates.
- Author
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Knops E, Däumer M, Awerkiew S, Kartashev V, Schülter E, Kutsev S, Brakier-Gingras L, Kaiser R, Pfister H, and Verheyen J
- Subjects
- Amino Acid Substitution, Evolution, Molecular, Genotype, HIV isolation & purification, HIV Infections virology, Humans, Molecular Sequence Data, Mutation, Missense, Polymorphism, Genetic, Russia, Sequence Analysis, DNA, gag Gene Products, Human Immunodeficiency Virus, Drug Resistance, Viral, HIV drug effects, HIV genetics, Protease Inhibitors pharmacology, pol Gene Products, Human Immunodeficiency Virus genetics
- Abstract
Objectives: To analyse HIV Gag cleavage site (CS) and non-CS mutations in HIV non-B isolates from patients failing antiretroviral therapy., Patients and Methods: Twenty-one HIV isolates were obtained from patients infected with HIV subtype G during an outbreak in Russia 20 years ago. Most patients were failing antiretroviral therapy when genotyping was performed., Results: HIV Gag CS mutations accumulated in protease inhibitor (PI)-resistant HIV isolates and were correlated with the presence of three or more PI resistance mutations. Only 1 of 11 HIV isolates carrying major protease mutations did not harbour treatment-associated CS mutations. Natural polymorphism 453T, often found in HIV non-B subtypes, seems to favour the selection of CS mutation 453I rather than treatment-associated CS mutation 453L. Resistance-associated non-CS mutations (123E and 200I) were also observed in PI-resistant clinical isolates. Non-CS mutations in the frameshift-regulating site, which controls the synthesis of Gag-Pol, did not affect frameshift efficiency in dual luciferase assays. Of note, one of four HIV isolates from patients failing PI therapies without protease mutations harboured Gag mutations associated with PI resistance (123E and 436R) and reverse transcriptase inhibitor mutations conferring resistance to the backbone drug., Conclusions: HIV Gag CS mutations commonly occurred in HIV isolates from patients failing PI therapies and natural polymorphisms at the same position influence their emergence. Non-CS mutations previously associated with PI resistance were also observed in clinical isolates. Gag mutations might indicate the evolution of PI resistance even in the absence of protease mutations.
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- 2010
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34. The evolution of protease mutation 76V is associated with protease mutation 46I and gag mutation 431V.
- Author
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Knops E, Kemper I, Schülter E, Pfister H, Kaiser R, and Verheyen J
- Subjects
- Evolution, Molecular, Female, HIV Infections drug therapy, HIV Protease Inhibitors therapeutic use, Humans, Lopinavir, Male, Molecular Sequence Data, Mutation, Pyrimidinones therapeutic use, Sequence Analysis, DNA, Drug Resistance, Viral genetics, HIV Infections genetics, HIV-1 genetics, gag Gene Products, Human Immunodeficiency Virus genetics, pol Gene Products, Human Immunodeficiency Virus genetics
- Abstract
Recently, first-line lopinavir failure was observed due to protease mutation 76V. In the present study, we found 76V associated with protease mutation 46I and gag cleavage-site mutation 431V. Longitudinal analysis of patients failing protease inhibitor therapies demonstrated that 76V strictly occurs either together with 46I and/or 431V or in HIV isolates already harbouring one of both mutations. Therefore, all three mutations seem to cooperate in terms of protease inhibitor resistance.
- Published
- 2010
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35. Evolution of raltegravir resistance during therapy.
- Author
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Sichtig N, Sierra S, Kaiser R, Däumer M, Reuter S, Schülter E, Altmann A, Fätkenheuer G, Dittmer U, Pfister H, and Esser S
- Subjects
- Amino Acid Substitution genetics, DNA Mutational Analysis, HIV Integrase genetics, HIV-1 isolation & purification, Humans, Molecular Sequence Data, Mutation, Missense, Raltegravir Potassium, Sequence Analysis, DNA, Drug Resistance, Viral, HIV Infections drug therapy, HIV Infections virology, HIV-1 drug effects, HIV-1 genetics, Pyrrolidinones pharmacology, Pyrrolidinones therapeutic use
- Abstract
Objectives: We investigated the prevalence of raltegravir resistance-associated mutations at baseline and their evolution during raltegravir therapy in patients infected with different HIV-1 subtypes., Methods: At pre-treatment screening, the integrase gene from plasma samples from patients infected with subtype B and non-B viruses was analysed. Raltegravir resistance evolution was further evaluated in 10 heavily pre-treated patients., Results: Two hundred and nine plasma samples from 94 subtype B and 115 non-B patients were sequenced. No signature/primary raltegravir resistance mutations were detected at baseline. The secondary mutations L74M, T97A, V151I and G163R were observed with a frequency of <4%. The primary mutations N155H, Q148R/H or Q143R were observed during raltegravir therapy. The Q148R/H was detected only in subtype B. A switch of the primary mutation during raltegravir treatment was not restricted to the subtype B viruses. The prevalence of each primary mutation varied depending on the length of the raltegravir therapy. The Q148R/H was mostly detected after short exposure to raltegravir, while the Y143R was observed only after prolonged raltegravir exposure. We detected an association between the presence of the T206S in the baseline genotype and the absence of the primary Q148R/H mutation or any secondary mutation accompanying the N155H following raltegravir failure., Conclusions: A number of secondary and additional mutations were found in baseline genotypes. During therapy, when the virus was not optimally suppressed, resistance mutations developed, which were dependent on subtype and time on raltegravir.
- Published
- 2009
- Full Text
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36. Predicting the response to combination antiretroviral therapy: retrospective validation of geno2pheno-THEO on a large clinical database.
- Author
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Altmann A, Däumer M, Beerenwinkel N, Peres Y, Schülter E, Büch J, Rhee SY, Sönnerborg A, Fessel WJ, Shafer RW, Zazzi M, Kaiser R, and Lengauer T
- Subjects
- Drug Therapy, Combination, Genetic Predisposition to Disease, Genotype, Humans, Predictive Value of Tests, ROC Curve, Reproducibility of Results, Retrospective Studies, Software, Anti-HIV Agents administration & dosage, Anti-HIV Agents pharmacology, Decision Support Systems, Clinical, HIV Infections drug therapy, HIV-1 genetics
- Abstract
Background: Expert-based genotypic interpretation systems are standard methods for guiding treatment selection for patients infected with human immunodeficiency virus type 1. We previously introduced the software pipeline geno2pheno-THEO (g2p-THEO), which on the basis of viral sequence predicts the response to treatment with a combination of antiretroviral compounds by applying methods from statistical learning and the estimated potential of the virus to escape from drug pressure., Methods: We retrospectively validated the statistical model used by g2p-THEO in approximately 7600 independent treatment-sequence pairs extracted from the EuResist integrated database, ranging from 1990 to 2007. Results were compared with the 3 most widely used expert-based interpretation systems: Stanford HIVdb, ANRS, and Rega., Results: The difference in receiver operating characteristic curves between g2p-THEO and expert-based approaches was significant (P < .001; paired Wilcoxon test). Indeed, at 80% specificity, g2p-THEO found 16.2%-19.8% more successful regimens than did the expert-based approaches. The increased performance of g2p-THEO was confirmed in a 2001-2007 data set from which most obsolete therapies had been removed., Conclusion: Finding drug combinations that increase the chances of therapeutic success is the main reason for using decision support systems. The present analysis of a large data set derived from clinical practice demonstrates that g2p-THEO solves this task significantly better than state-of-the-art expert-based systems. The tool is available at http://www.geno2pheno.org.
- Published
- 2009
- Full Text
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37. Investigation of expert rule bases, logistic regression, and non-linear machine learning techniques for predicting response to antiretroviral treatment.
- Author
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Prosperi MC, Altmann A, Rosen-Zvi M, Aharoni E, Borgulya G, Bazso F, Sönnerborg A, Schülter E, Struck D, Ulivi G, Vandamme AM, Vercauteren J, and Zazzi M
- Subjects
- Adult, Databases, Factual, Female, HIV Infections virology, Humans, Logistic Models, Male, Treatment Outcome, Viral Load, Anti-HIV Agents therapeutic use, Artificial Intelligence, HIV Infections drug therapy, HIV-1 genetics, Models, Statistical
- Abstract
Background: The extreme flexibility of the HIV type-1 (HIV-1) genome makes it challenging to build the ideal antiretroviral treatment regimen. Interpretation of HIV-1 genotypic drug resistance is evolving from rule-based systems guided by expert opinion to data-driven engines developed through machine learning methods., Methods: The aim of the study was to investigate linear and non-linear statistical learning models for classifying short-term virological outcome of antiretroviral treatment. To optimize the model, different feature selection methods were considered. Robust extra-sample error estimation and different loss functions were used to assess model performance. The results were compared with widely used rule-based genotypic interpretation systems (Stanford HIVdb, Rega and ANRS)., Results: A set of 3,143 treatment change episodes were extracted from the EuResist database. The dataset included patient demographics, treatment history and viral genotypes. A logistic regression model using high order interaction variables performed better than rule-based genotypic interpretation systems (accuracy 75.63% versus 71.74-73.89%, area under the receiver operating characteristic curve [AUC] 0.76 versus 0.68-0.70) and was equivalent to a random forest model (accuracy 76.16%, AUC 0.77). However, when rule-based genotypic interpretation systems were coupled with additional patient attributes, and the combination was provided as input to the logistic regression model, the performance increased significantly, becoming comparable to the fully data-driven methods., Conclusions: Patient-derived supplementary features significantly improved the accuracy of the prediction of response to treatment, both with rule-based and data-driven interpretation systems. Fully data-driven models derived from large-scale data sources show promise as antiretroviral treatment decision support tools.
- Published
- 2009
38. Advantages of predicted phenotypes and statistical learning models in inferring virological response to antiretroviral therapy from HIV genotype.
- Author
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Altmann A, Sing T, Vermeiren H, Winters B, Van Craenenbroeck E, Van der Borght K, Rhee SY, Shafer RW, Schülter E, Kaiser R, Peres Y, Sönnerborg A, Fessel WJ, Incardona F, Zazzi M, Bacheler L, Van Vlijmen H, and Lengauer T
- Subjects
- Algorithms, Computer Simulation, Drug Therapy, Combination, Humans, Models, Biological, Predictive Value of Tests, Sequence Analysis, Anti-Retroviral Agents therapeutic use, HIV drug effects, HIV genetics, HIV Infections drug therapy, HIV Infections virology, Models, Statistical
- Abstract
Background: Inferring response to antiretroviral therapy from the viral genotype alone is challenging. The utility of an intermediate step of predicting in vitro drug susceptibility is currently controversial. Here, we provide a retrospective comparison of approaches using either genotype or predicted phenotypes alone, or in combination., Methods: Treatment change episodes were extracted from two large databases from the USA (Stanford-California) and Europe (EuResistDB) comprising data from 6,706 and 13,811 patients, respectively. Response to antiretroviral treatment was dichotomized according to two definitions. Using the viral sequence and the treatment regimen as input, three expert algorithms (ANRS, Rega and HIVdb) were used to generate genotype-based encodings and VircoTYPE() 4.0 (Virco BVBA, Mechelen, Belgium) was used to generate a predicted -phenotype-based encoding. Single drug classifications were combined into a treatment score via simple summation and statistical learning using random forests. Classification performance was studied on Stanford-California data using cross-validation and, in addition, on the independent EuResistDB data., Results: In all experiments, predicted phenotype was among the most sensitive approaches. Combining single drug classifications by statistical learning was significantly superior to unweighted summation (P<2.2x10(-16)). Classification performance could be increased further by combining predicted phenotypes and expert encodings but not by combinations of expert encodings alone. These results were confirmed on an independent test set comprising data solely from EuResistDB., Conclusions: This study demonstrates consistent performance advantages in utilizing predicted phenotype in most scenarios over methods based on genotype alone in inferring virological response. Moreover, all approaches under study benefit significantly from statistical learning for merging single drug classifications into treatment scores.
- Published
- 2009
39. Selecting anti-HIV therapies based on a variety of genomic and clinical factors.
- Author
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Rosen-Zvi M, Altmann A, Prosperi M, Aharoni E, Neuvirth H, Sönnerborg A, Schülter E, Struck D, Peres Y, Incardona F, Kaiser R, Zazzi M, and Lengauer T
- Subjects
- Humans, Anti-HIV Agents therapeutic use, Chromosome Mapping methods, Decision Support Systems, Clinical, Genetic Predisposition to Disease genetics, HIV Infections drug therapy, HIV Infections genetics, Outcome Assessment, Health Care methods, Pharmacogenetics methods
- Abstract
Motivation: Optimizing HIV therapies is crucial since the virus rapidly develops mutations to evade drug pressure. Recent studies have shown that genotypic information might not be sufficient for the design of therapies and that other clinical and demographical factors may play a role in therapy failure. This study is designed to assess the improvement in prediction achieved when such information is taken into account. We use these factors to generate a prediction engine using a variety of machine learning methods and to determine which clinical conditions are most misleading in terms of predicting the outcome of a therapy., Results: Three different machine learning techniques were used: generative-discriminative method, regression with derived evolutionary features, and regression with a mixture of effects. All three methods had similar performances with an area under the receiver operating characteristic curve (AUC) of 0.77. A set of three similar engines limited to genotypic information only achieved an AUC of 0.75. A straightforward combination of the three engines consistently improves the prediction, with significantly better prediction when the full set of features is employed. The combined engine improves on predictions obtained from an online state-of-the-art resistance interpretation system. Moreover, engines tend to disagree more on the outcome of failure therapies than regarding successful ones. Careful analysis of the differences between the engines revealed those mutations and drugs most closely associated with uncertainty of the therapy outcome., Availability: The combined prediction engine will be available from July 2008, see http://engine.euresist.org.
- Published
- 2008
- Full Text
- View/download PDF
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