16 results on '"Ruffieux, H."'
Search Results
2. A patient-centric modeling framework captures recovery from SARS-CoV-2 infection
- Author
-
Ruffieux, H., Hanson, A. L., Lodge, S., Lawler, N. G., Whiley, L., Gray, N., Nolan, T. H., Bergamaschi, L., Mescia, F., Turner, L., de Sa, A., Pelly, V. S., Kotagiri, P., Kingston, N., Bradley, J. R., Holmes, E., Wist, J., Nicholson, J. K., Lyons, P. A., Smith, K. G. C., Richardson, S., Bantug, G. R., and Hess, C.
- Subjects
Immunology ,Immunology and Allergy - Abstract
The biology driving individual patient responses to severe acute respiratory syndrome coronavirus 2 infection remains ill understood. Here, we developed a patient-centric framework leveraging detailed longitudinal phenotyping data and covering a year after disease onset, from 215 infected individuals with differing disease severities. Our analyses revealed distinct ‘systemic recovery’ profiles, with specific progression and resolution of the inflammatory, immune cell, metabolic and clinical responses. In particular, we found a strong inter-patient and intra-patient temporal covariation of innate immune cell numbers, kynurenine metabolites and lipid metabolites, which highlighted candidate immunologic and metabolic pathways influencing the restoration of homeostasis, the risk of death and that of long COVID. Based on these data, we identified a composite signature predictive of systemic recovery, using a joint model on cellular and molecular parameters measured soon after disease onset. New predictions can be generated using the online tool http://shiny.mrc-bsu.cam.ac.uk/apps/covid-19-systemic-recovery-prediction-app, designed to test our findings prospectively.
- Published
- 2023
3. Longitudinal analysis reveals that delayed bystander CD8+ T cell activation and early immune pathology distinguish severe COVID-19 from mild disease
- Author
-
Bergamaschi, L., Mescia, F., Turner, L., Hanson, A. L., Kotagiri, P., Dunmore, B. J., Ruffieux, H., de Sa, A., Huhn, O., Morgan, M. D., Gerber, P. P., Wills, M. R., Baker, S., Calero-Nieto, F. J., Doffinger, R., Dougan, G., Elmer, A., Goodfellow, I. G., Gupta, R. K., Hosmillo, M., Hunter, K., Kingston, N., Lehner, P. J., Matheson, N. J., Nicholson, J. K., Petrunkina, A. M., Richardson, S., Saunders, C., Thaventhiran, J. E. D., Toonen, E. J. M., Weekes, M. P., Gottgens, B., Toshner, M., Hess, C., Bradley, J. R., Lyons, P. A., Smith, K. G. C., Allison, J., Ansaripour, A., Betancourt, A., Bong, S. -H., Bower, G., Bucke, A., Bullman, B., Bunclark, K., Butcher, H., Calder, J., Canna, L., Caputo, D., Clapham-Riley, D., Cossetti, C., Coudert, J. D., de Bie, E. M. D. D., Dewhurst, E., di Stefano, G., Domingo, J., Epping, M., Fahey, C., Fawke, S., Fuller, S., Furlong, A., Gleadall, N., Graf, S., Graves, B., Gray, J., Grenfell, R., Harris, J., Hewitt, S., Hinch, A., Hodgson, J., Holmes, E., Huang, C., Ivers, T., Jackson, S., Jarvis, I., Jones, E., Kennet, J., Jose, S., Josipovic, M., Kasanicki, M., Kourampa, J., Laurenti, E., Legchenko, E., Le Gresley, E., Lewis, D., Linger, R., Mackay, M., Marioni, J. C., Marsden, J., Martin, J., Matara, C., Meadows, A., Meloy, S., Mende, N., Michael, A., Michel, R., Mwaura, L., Muldoon, F., Nice, F., O'Brien, C., O'Donnell, C., Okecha, G., Omarjee, O., Ovington, N., Owehand, W. H., Papadia, S., Patterson, C., Perera, M., Phelan, I., Pointon, L., Polgarova, P., Polwarth, G., Pond, N., Price, J., Publico, C., Rastall, R., Ribeiro, C., Richoz, N., Romashova, V., Rossi, S., Rowlands, J., Ruffolo, V., Yarkoni, N. S., Sharma, R., Shih, J., Selvan, M., Spencer, S., Stefanucci, L., Stark, H., Stephens, J., Stirrups, K. E., Strezlecki, M., Summers, C., Sutcliffe, R., Tilly, T., Tong, Z., Tordesillas, H., Treacy, C., Townsend, P., Walker, N., Webster, J., Wilson, N. K., Wood, J., Wylot, M., Yong, C., Mescia, Federica [0000-0002-2759-4027], Hanson, Aimee [0000-0002-0231-8771], Ruffieux, Helene [0000-0002-7113-2540], Morgan, Michael [0000-0003-0757-0711], Wills, Mark [0000-0001-8548-5729], Baker, Stephen [0000-0003-1308-5755], Dougan, Gordon [0000-0003-0022-965X], Gupta, Ravindra [0000-0001-9751-1808], Hosmillo, Myra [0000-0002-3514-7681], Kingston, Nathalie [0000-0002-9190-2231], Lehner, Paul [0000-0001-9383-1054], Matheson, Nicholas [0000-0002-3318-1851], Richardson, Sylvia [0000-0003-1998-492X], Thaventhiran, James [0000-0001-8616-074X], Weekes, Michael [0000-0003-3196-5545], Gottgens, Berthold [0000-0001-6302-5705], Toshner, Mark [0000-0002-3969-6143], Bradley, John [0000-0002-7774-8805], Lyons, Paul [0000-0001-7035-8997], Smith, Kenneth [0000-0003-3829-4326], Apollo - University of Cambridge Repository, and Collaboration, Cambridge Institute of Therapeutic Immunology and Infectious Disease-National Institute of Health Research (CITIID-NIHR) COVID BioResource
- Subjects
0301 basic medicine ,Pathology ,medicine.medical_specialty ,Immunology ,Disease ,macromolecular substances ,immune pathology ,Biology ,CD8-Positive T-Lymphocytes ,Systemic inflammation ,Lymphocyte Activation ,Severity of Illness Index ,Article ,Oxidative Phosphorylation ,03 medical and health sciences ,recovery ,0302 clinical medicine ,Immunophenotyping ,Immune system ,Immunopathology ,Bystander effect ,medicine ,Immunology and Allergy ,Humans ,complement ,Longitudinal Studies ,systemic inflammation ,bystander CD8+ T cell ,SARS-CoV-2 ,Gene Expression Profiling ,Interleukin ,COVID-19 ,interferon ,Prognosis ,TNF-α ,Biomarkers ,Cytokines ,Disease Susceptibility ,Host-Pathogen Interactions ,Inflammation Mediators ,Phenotype ,Reactive Oxygen Species ,Transcriptome ,030104 developmental biology ,Infectious Diseases ,030220 oncology & carcinogenesis ,Tumor necrosis factor alpha ,medicine.symptom - Abstract
The kinetics of the immune changes in COVID-19 across severity groups have not been rigorously assessed. Using immunophenotyping, RNA sequencing, and serum cytokine analysis, we analyzed serial samples from 207 SARS-CoV2-infected individuals with a range of disease severities over 12 weeks from symptom onset. An early robust bystander CD8+ T cell immune response, without systemic inflammation, characterized asymptomatic or mild disease. Hospitalized individuals had delayed bystander responses and systemic inflammation that was already evident near symptom onset, indicating that immunopathology may be inevitable in some individuals. Viral load did not correlate with this early pathological response but did correlate with subsequent disease severity. Immune recovery is complex, with profound persistent cellular abnormalities in severe disease correlating with altered inflammatory responses, with signatures associated with increased oxidative phosphorylation replacing those driven by cytokines tumor necrosis factor (TNF) and interleukin (IL)-6. These late immunometabolic and immune defects may have clinical implications., Graphical abstract, The immune changes that underlie COVID-19 severity have not been fully defined. By analyzing a longitudinal cohort of COVID-19 patients and integrating inflammatory factors, immunophenotyping, and transcriptome data, Bergamaschi et al. identify both early and persistent immune changes that distinguish mild and/or asymptomatic from more severe disease.
- Published
- 2021
4. Longitudinal analysis reveals that delayed bystander CD8+ T cell activation and early immune pathology distinguish severe COVID-19 from mild disease
- Author
-
Bergamaschi, L, Mescia, F, Turner, L, Hanson, AL, Kotagiri, P, Dunmore, BJ, Ruffieux, H, De Sa, A, Huhn, O, Morgan, MD, Gerber, PP, Wills, MR, Baker, S, Calero-Nieto, FJ, Doffinger, R, Dougan, G, Elmer, A, Goodfellow, IG, Gupta, RK, Hosmillo, M, Hunter, K, Kingston, N, Lehner, PJ, Matheson, NJ, Nicholson, JK, Petrunkina, AM, Richardson, S, Saunders, C, Thaventhiran, JED, Toonen, EJM, Weekes, MP, Gottgens, B, Toshner, M, Hess, C, Bradley, JR, Lyons, PA, Smith, KGC, Bergamaschi, L, Mescia, F, Turner, L, Hanson, AL, Kotagiri, P, Dunmore, BJ, Ruffieux, H, De Sa, A, Huhn, O, Morgan, MD, Gerber, PP, Wills, MR, Baker, S, Calero-Nieto, FJ, Doffinger, R, Dougan, G, Elmer, A, Goodfellow, IG, Gupta, RK, Hosmillo, M, Hunter, K, Kingston, N, Lehner, PJ, Matheson, NJ, Nicholson, JK, Petrunkina, AM, Richardson, S, Saunders, C, Thaventhiran, JED, Toonen, EJM, Weekes, MP, Gottgens, B, Toshner, M, Hess, C, Bradley, JR, Lyons, PA, and Smith, KGC
- Abstract
The kinetics of the immune changes in COVID-19 across severity groups have not been rigorously assessed. Using immunophenotyping, RNA sequencing, and serum cytokine analysis, we analyzed serial samples from 207 SARS-CoV2-infected individuals with a range of disease severities over 12 weeks from symptom onset. An early robust bystander CD8+ T cell immune response, without systemic inflammation, characterized asymptomatic or mild disease. Hospitalized individuals had delayed bystander responses and systemic inflammation that was already evident near symptom onset, indicating that immunopathology may be inevitable in some individuals. Viral load did not correlate with this early pathological response but did correlate with subsequent disease severity. Immune recovery is complex, with profound persistent cellular abnormalities in severe disease correlating with altered inflammatory responses, with signatures associated with increased oxidative phosphorylation replacing those driven by cytokines tumor necrosis factor (TNF) and interleukin (IL)-6. These late immunometabolic and immune defects may have clinical implications.
- Published
- 2021
5. Sensitivity to Immune Checkpoint Blockade and Progression-Free Survival is associated with baseline CD8+ T cell clone size and cytotoxicity
- Author
-
Watson, RA, primary, Tong, O, additional, Cooper, R, additional, Taylor, CA, additional, Sharma, PK, additional, Verge de Los Aires, A, additional, Mahé, EA, additional, Ruffieux, H, additional, Nassiri, I, additional, Middleton, MR, additional, and Fairfax, BP, additional
- Published
- 2020
- Full Text
- View/download PDF
6. Efficient inference for genetic association studies with multiple outcomes
- Author
-
Ruffieux, H��l��ne, Davison, Anthony C., Hager, J��rg, and Irincheeva, Irina
- Subjects
FOS: Computer and information sciences ,Applications (stat.AP) - Abstract
Combined inference for heterogeneous high-dimensional data is critical in modern biology, where clinical and various kinds of molecular data may be available from a single study. Classical genetic association studies regress a single clinical outcome on many genetic variants one by one, but there is an increasing demand for joint analysis of many molecular outcomes and genetic variants in order to unravel functional interactions. Unfortunately, most existing approaches to joint modelling are either too simplistic to be powerful or are impracticable for computational reasons. Inspired by Richardson et al. (2010, Bayesian Statistics 9), we consider a sparse multivariate regression model that allows simultaneous selection of predictors and associated responses. As Markov chain Monte Carlo (MCMC) inference on such models can be prohibitively slow when the number of genetic variants exceeds a few thousand, we propose a variational inference approach which produces posterior information very close to that of MCMC inference, at a much reduced computational cost. Extensive numerical experiments show that our approach outperforms popular variable selection methods and tailored Bayesian procedures, dealing within hours with problems involving hundreds of thousands of genetic variants and tens to hundreds of clinical or molecular outcomes.
- Published
- 2016
- Full Text
- View/download PDF
7. A modeling framework for detecting and leveraging node-level information in Bayesian network inference.
- Author
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Xi X and Ruffieux H
- Abstract
Bayesian graphical models are powerful tools to infer complex relationships in high dimension, yet are often fraught with computational and statistical challenges. If exploited in a principled way, the increasing information collected alongside the data of primary interest constitutes an opportunity to mitigate these difficulties by guiding the detection of dependence structures. For instance, gene network inference may be informed by the use of publicly available summary statistics on the regulation of genes by genetic variants. Here we present a novel Gaussian graphical modeling framework to identify and leverage information on the centrality of nodes in conditional independence graphs. Specifically, we consider a fully joint hierarchical model to simultaneously infer (i) sparse precision matrices and (ii) the relevance of node-level information for uncovering the sought-after network structure. We encode such information as candidate auxiliary variables using a spike-and-slab submodel on the propensity of nodes to be hubs, which allows hypothesis-free selection and interpretation of a sparse subset of relevant variables. As efficient exploration of large posterior spaces is needed for real-world applications, we develop a variational expectation conditional maximization algorithm that scales inference to hundreds of samples, nodes and auxiliary variables. We illustrate and exploit the advantages of our approach in simulations and in a gene network study which identifies hub genes involved in biological pathways relevant to immune-mediated diseases., (© The Author 2024. Published by Oxford University Press.)
- Published
- 2024
- Full Text
- View/download PDF
8. Iron dysregulation and inflammatory stress erythropoiesis associates with long-term outcome of COVID-19.
- Author
-
Hanson AL, Mulè MP, Ruffieux H, Mescia F, Bergamaschi L, Pelly VS, Turner L, Kotagiri P, Göttgens B, Hess C, Gleadall N, Bradley JR, Nathan JA, Lyons PA, Drakesmith H, and Smith KGC
- Subjects
- Humans, Erythropoiesis, SARS-CoV-2, Research Personnel, Disease Progression, Iron, COVID-19
- Abstract
Persistent symptoms following SARS-CoV-2 infection are increasingly reported, although the drivers of post-acute sequelae (PASC) of COVID-19 are unclear. Here we assessed 214 individuals infected with SARS-CoV-2, with varying disease severity, for one year from COVID-19 symptom onset to determine the early correlates of PASC. A multivariate signature detected beyond two weeks of disease, encompassing unresolving inflammation, anemia, low serum iron, altered iron-homeostasis gene expression and emerging stress erythropoiesis; differentiated those who reported PASC months later, irrespective of COVID-19 severity. A whole-blood heme-metabolism signature, enriched in hospitalized patients at month 1-3 post onset, coincided with pronounced iron-deficient reticulocytosis. Lymphopenia and low numbers of dendritic cells persisted in those with PASC, and single-cell analysis reported iron maldistribution, suggesting monocyte iron loading and increased iron demand in proliferating lymphocytes. Thus, defects in iron homeostasis, dysregulated erythropoiesis and immune dysfunction due to COVID-19 possibly contribute to inefficient oxygen transport, inflammatory disequilibrium and persisting symptomatology, and may be therapeutically tractable., (© 2024. The Author(s).)
- Published
- 2024
- Full Text
- View/download PDF
9. A patient-centric modeling framework captures recovery from SARS-CoV-2 infection.
- Author
-
Ruffieux H, Hanson AL, Lodge S, Lawler NG, Whiley L, Gray N, Nolan TH, Bergamaschi L, Mescia F, Turner L, de Sa A, Pelly VS, Kotagiri P, Kingston N, Bradley JR, Holmes E, Wist J, Nicholson JK, Lyons PA, Smith KGC, Richardson S, Bantug GR, and Hess C
- Subjects
- Humans, SARS-CoV-2, Post-Acute COVID-19 Syndrome, Kynurenine, Patient-Centered Care, COVID-19
- Abstract
The biology driving individual patient responses to severe acute respiratory syndrome coronavirus 2 infection remains ill understood. Here, we developed a patient-centric framework leveraging detailed longitudinal phenotyping data and covering a year after disease onset, from 215 infected individuals with differing disease severities. Our analyses revealed distinct 'systemic recovery' profiles, with specific progression and resolution of the inflammatory, immune cell, metabolic and clinical responses. In particular, we found a strong inter-patient and intra-patient temporal covariation of innate immune cell numbers, kynurenine metabolites and lipid metabolites, which highlighted candidate immunologic and metabolic pathways influencing the restoration of homeostasis, the risk of death and that of long COVID. Based on these data, we identified a composite signature predictive of systemic recovery, using a joint model on cellular and molecular parameters measured soon after disease onset. New predictions can be generated using the online tool http://shiny.mrc-bsu.cam.ac.uk/apps/covid-19-systemic-recovery-prediction-app , designed to test our findings prospectively., (© 2023. The Author(s).)
- Published
- 2023
- Full Text
- View/download PDF
10. Immune checkpoint blockade sensitivity and progression-free survival associates with baseline CD8 + T cell clone size and cytotoxicity.
- Author
-
Watson RA, Tong O, Cooper R, Taylor CA, Sharma PK, de Los Aires AV, Mahé EA, Ruffieux H, Nassiri I, Middleton MR, and Fairfax BP
- Subjects
- CD8-Positive T-Lymphocytes immunology, Humans, Progression-Free Survival, Antibodies, Monoclonal, Humanized pharmacology, CD8-Positive T-Lymphocytes drug effects, Immune Checkpoint Inhibitors pharmacology, Ipilimumab pharmacology, Nivolumab pharmacology
- Abstract
The antitumor action of immune checkpoint blockade (ICB) is primarily mediated by CD8
+ T cells. How sensitivity to ICB varies across CD8+ T cell subsets and clonotypes and the relationship of these with clinical outcome is unclear. To explore this, we used single-cell V(D)J and RNA-sequencing to track gene expression changes elicited by ICB across individual peripheral CD8+ T cell clones, identify baseline markers of CD8+ T cell clonal sensitivity, and chart how CD8+ T cell transcriptional changes vary according to phenotypic subset and clonal size. We identified seven subsets of CD8+ T cells with divergent reactivity to ICB and found that the cytotoxic effector subset showed the greatest number of differentially expressed genes while remaining stable in clonal size after ICB. At the level of CD8+ T cell clonotypes, we found a relationship between transcriptional changes and clone size, with large clones showing a greater number of differentially regulated genes enriched for pathways including T cell receptor (TCR) signaling. Cytotoxic CD8+ effector clones were more likely to persist following ICB and were more likely to correspond with public tumor-infiltrating lymphocyte clonotypes. Last, we demonstrated that individuals whose CD8+ T cell pretreatment showed low cytotoxicity and had fewer expanded clones typically had worse outcomes after ICB treatment. This work further advances understanding of the molecular determinants of ICB response, assisting in the search for peripheral prognostic biomarkers and highlighting the importance of the baseline CD8+ immune landscape in determining ICB response in metastatic melanoma.- Published
- 2021
- Full Text
- View/download PDF
11. Longitudinal analysis reveals that delayed bystander CD8+ T cell activation and early immune pathology distinguish severe COVID-19 from mild disease.
- Author
-
Bergamaschi L, Mescia F, Turner L, Hanson AL, Kotagiri P, Dunmore BJ, Ruffieux H, De Sa A, Huhn O, Morgan MD, Gerber PP, Wills MR, Baker S, Calero-Nieto FJ, Doffinger R, Dougan G, Elmer A, Goodfellow IG, Gupta RK, Hosmillo M, Hunter K, Kingston N, Lehner PJ, Matheson NJ, Nicholson JK, Petrunkina AM, Richardson S, Saunders C, Thaventhiran JED, Toonen EJM, Weekes MP, Göttgens B, Toshner M, Hess C, Bradley JR, Lyons PA, and Smith KGC
- Subjects
- Biomarkers, CD8-Positive T-Lymphocytes metabolism, COVID-19 diagnosis, COVID-19 genetics, Cytokines metabolism, Disease Susceptibility, Gene Expression Profiling, Humans, Inflammation Mediators metabolism, Longitudinal Studies, Lymphocyte Activation genetics, Oxidative Phosphorylation, Phenotype, Prognosis, Reactive Oxygen Species metabolism, Severity of Illness Index, Transcriptome, CD8-Positive T-Lymphocytes immunology, COVID-19 immunology, COVID-19 virology, Host-Pathogen Interactions immunology, Lymphocyte Activation immunology, SARS-CoV-2 immunology
- Abstract
The kinetics of the immune changes in COVID-19 across severity groups have not been rigorously assessed. Using immunophenotyping, RNA sequencing, and serum cytokine analysis, we analyzed serial samples from 207 SARS-CoV2-infected individuals with a range of disease severities over 12 weeks from symptom onset. An early robust bystander CD8
+ T cell immune response, without systemic inflammation, characterized asymptomatic or mild disease. Hospitalized individuals had delayed bystander responses and systemic inflammation that was already evident near symptom onset, indicating that immunopathology may be inevitable in some individuals. Viral load did not correlate with this early pathological response but did correlate with subsequent disease severity. Immune recovery is complex, with profound persistent cellular abnormalities in severe disease correlating with altered inflammatory responses, with signatures associated with increased oxidative phosphorylation replacing those driven by cytokines tumor necrosis factor (TNF) and interleukin (IL)-6. These late immunometabolic and immune defects may have clinical implications., Competing Interests: Declaration of interests The authors declare they have no competing interests. E.J.M. Toonen is an employee of Hycult Biotechnology b.v., (Crown Copyright © 2021. Published by Elsevier Inc. All rights reserved.)- Published
- 2021
- Full Text
- View/download PDF
12. EPISPOT: An epigenome-driven approach for detecting and interpreting hotspots in molecular QTL studies.
- Author
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Ruffieux H, Fairfax BP, Nassiri I, Vigorito E, Wallace C, Richardson S, and Bottolo L
- Subjects
- Bayes Theorem, Chromosome Mapping, Humans, Algorithms, Computer Simulation, Epigenome, Models, Genetic, Mutation, Phenotype, Quantitative Trait Loci
- Abstract
We present EPISPOT, a fully joint framework which exploits large panels of epigenetic annotations as variant-level information to enhance molecular quantitative trait locus (QTL) mapping. Thanks to a purpose-built Bayesian inferential algorithm, EPISPOT accommodates functional information for both cis and trans actions, including QTL hotspot effects. It effectively couples simultaneous QTL analysis of thousands of genetic variants and molecular traits with hypothesis-free selection of biologically interpretable annotations which directly contribute to the QTL effects. This unified, epigenome-aided learning boosts statistical power and sheds light on the regulatory basis of the uncovered hits; EPISPOT therefore marks an essential step toward improving the challenging detection and functional interpretation of trans-acting genetic variants and hotspots. We illustrate the advantages of EPISPOT in simulations emulating real-data conditions and in a monocyte expression QTL study, which confirms known hotspots and finds other signals, as well as plausible mechanisms of action. In particular, by highlighting the role of monocyte DNase-I sensitivity sites from >150 epigenetic annotations, we clarify the mediation effects and cell-type specificity of major hotspots close to the lysozyme gene. Our approach forgoes the daunting and underpowered task of one-annotation-at-a-time enrichment analyses for prioritizing cis and trans QTL hits and is tailored to any transcriptomic, proteomic, or metabolomic QTL problem. By enabling principled epigenome-driven QTL mapping transcriptome-wide, EPISPOT helps progress toward a better functional understanding of genetic regulation., (Copyright © 2021 The Author(s). Published by Elsevier Inc. All rights reserved.)
- Published
- 2021
- Full Text
- View/download PDF
13. A fully joint Bayesian quantitative trait locus mapping of human protein abundance in plasma.
- Author
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Ruffieux H, Carayol J, Popescu R, Harper ME, Dent R, Saris WHM, Astrup A, Hager J, Davison AC, and Valsesia A
- Subjects
- Biomarkers blood, Genome-Wide Association Study, Humans, Bayes Theorem, Blood Proteins genetics, Quantitative Trait Loci
- Abstract
Molecular quantitative trait locus (QTL) analyses are increasingly popular to explore the genetic architecture of complex traits, but existing studies do not leverage shared regulatory patterns and suffer from a large multiplicity burden, which hampers the detection of weak signals such as trans associations. Here, we present a fully multivariate proteomic QTL (pQTL) analysis performed with our recently proposed Bayesian method LOCUS on data from two clinical cohorts, with plasma protein levels quantified by mass-spectrometry and aptamer-based assays. Our two-stage study identifies 136 pQTL associations in the first cohort, of which >80% replicate in the second independent cohort and have significant enrichment with functional genomic elements and disease risk loci. Moreover, 78% of the pQTLs whose protein abundance was quantified by both proteomic techniques are confirmed across assays. Our thorough comparisons with standard univariate QTL mapping on (1) these data and (2) synthetic data emulating the real data show how LOCUS borrows strength across correlated protein levels and markers on a genome-wide scale to effectively increase statistical power. Notably, 15% of the pQTLs uncovered by LOCUS would be missed by the univariate approach, including several trans and pleiotropic hits with successful independent validation. Finally, the analysis of extensive clinical data from the two cohorts indicates that the genetically-driven proteins identified by LOCUS are enriched in associations with low-grade inflammation, insulin resistance and dyslipidemia and might therefore act as endophenotypes for metabolic diseases. While considerations on the clinical role of the pQTLs are beyond the scope of our work, these findings generate useful hypotheses to be explored in future research; all results are accessible online from our searchable database. Thanks to its efficient variational Bayes implementation, LOCUS can analyze jointly thousands of traits and millions of markers. Its applicability goes beyond pQTL studies, opening new perspectives for large-scale genome-wide association and QTL analyses. Diet, Obesity and Genes (DiOGenes) trial registration number: NCT00390637., Competing Interests: I have read the journal’s policy and the authors of this manuscript have the following competing interests: JH, JC (until 11/2019) AV (until 11/2019) and HR (until 07/2019) are/were full-time employees at Nestlé Research. WS reports research support from several food companies (Nestlé, DSM, Unilever, Nutrition et Santé and Danone), and pharmaceutical companies (GSK, Novartis and Novo Nordisk). He is an unpaid scientific advisor for the International Life Science Institute, ILSI Europe. AA reports personal fees from Acino, Switzerland, BioCare Copenhagen, DK, Dutch Beer Institute, NL, Gelesis, USA, Groupe Éthique et Santé, France, McCain Foods Limited, USA, Pfizer, USA, Weight Watchers, USA, Zaluvida, Switzerland, Navamedic, DK, Novo Nordisk, DK, and Saniona, DK; personal fees, grants and other from Gelesis, USA; grants from Arla Foods, DK, Danish Dairy Research Council, and Nordea Foundation. He is co-inventor/-owner of patents pending to University of Copenhagen; Co-owner of University of Copenhagen spin- outs Flaxslim and Gluco-diet.dk, recipient of stock options in Gelesis, USA, and co-author of books on diet and personalized nutrition for weight loss.
- Published
- 2020
- Full Text
- View/download PDF
14. A Global-Local Approach for Detecting Hotspots in Multiple-Response Regression.
- Author
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Ruffieux H, Davison AC, Hager J, Inshaw J, Fairfax BP, Richardson S, and Bottolo L
- Abstract
We tackle modelling and inference for variable selection in regression problems with many predictors and many responses. We focus on detecting hotspots , that is, predictors associated with several responses. Such a task is critical in statistical genetics, as hotspot genetic variants shape the architecture of the genome by controlling the expression of many genes and may initiate decisive functional mechanisms underlying disease endpoints. Existing hierarchical regression approaches designed to model hotspots suffer from two limitations: their discrimination of hotspots is sensitive to the choice of top-level scale parameters for the propensity of predictors to be hotspots, and they do not scale to large predictor and response vectors, for example, of dimensions 10
3 -105 in genetic applications. We address these shortcomings by introducing a flexible hierarchical regression framework that is tailored to the detection of hotspots and scalable to the above dimensions. Our proposal implements a fully Bayesian model for hotspots based on the horseshoe shrinkage prior. Its global-local formulation shrinks noise globally and, hence, accommodates the highly sparse nature of genetic analyses while being robust to individual signals, thus leaving the effects of hotspots unshrunk. Inference is carried out using a fast variational algorithm coupled with a novel simulated annealing procedure that allows efficient exploration of multimodal distributions.- Published
- 2020
- Full Text
- View/download PDF
15. Genome-wide gene-based analyses of weight loss interventions identify a potential role for NKX6.3 in metabolism.
- Author
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Valsesia A, Wang QP, Gheldof N, Carayol J, Ruffieux H, Clark T, Shenton V, Oyston LJ, Lefebvre G, Metairon S, Chabert C, Walter O, Mironova P, Lau P, Descombes P, Viguerie N, Langin D, Harper ME, Astrup A, Saris WH, Dent R, Neely GG, and Hager J
- Subjects
- Adult, Animals, Bayes Theorem, Cohort Studies, Drosophila Proteins genetics, Drosophila melanogaster metabolism, Female, Homeodomain Proteins genetics, Humans, Male, Middle Aged, Polymorphism, Single Nucleotide genetics, Risk Factors, Transcription Factors genetics, Triglycerides metabolism, Genome-Wide Association Study, Homeodomain Proteins metabolism, Transcription Factors metabolism, Weight Loss genetics
- Abstract
Hundreds of genetic variants have been associated with Body Mass Index (BMI) through genome-wide association studies (GWAS) using observational cohorts. However, the genetic contribution to efficient weight loss in response to dietary intervention remains unknown. We perform a GWAS in two large low-caloric diet intervention cohorts of obese participants. Two loci close to NKX6.3/MIR486 and RBSG4 are identified in the Canadian discovery cohort (n = 1166) and replicated in the DiOGenes cohort (n = 789). Modulation of HGTX (NKX6.3 ortholog) levels in Drosophila melanogaster leads to significantly altered triglyceride levels. Additional tissue-specific experiments demonstrate an action through the oenocytes, fly hepatocyte-like cells that regulate lipid metabolism. Our results identify genetic variants associated with the efficacy of weight loss in obese subjects and identify a role for NKX6.3 in lipid metabolism, and thereby possibly weight control.
- Published
- 2019
- Full Text
- View/download PDF
16. Efficient inference for genetic association studies with multiple outcomes.
- Author
-
Ruffieux H, Davison AC, Hager J, and Irincheeva I
- Subjects
- Humans, Genetic Association Studies methods, Genetic Variation, Markov Chains, Models, Statistical, Monte Carlo Method
- Abstract
Combined inference for heterogeneous high-dimensional data is critical in modern biology, where clinical and various kinds of molecular data may be available from a single study. Classical genetic association studies regress a single clinical outcome on many genetic variants one by one, but there is an increasing demand for joint analysis of many molecular outcomes and genetic variants in order to unravel functional interactions. Unfortunately, most existing approaches to joint modeling are either too simplistic to be powerful or are impracticable for computational reasons. Inspired by Richardson and others (2010, Bayesian Statistics 9), we consider a sparse multivariate regression model that allows simultaneous selection of predictors and associated responses. As Markov chain Monte Carlo (MCMC) inference on such models can be prohibitively slow when the number of genetic variants exceeds a few thousand, we propose a variational inference approach which produces posterior information very close to that of MCMC inference, at a much reduced computational cost. Extensive numerical experiments show that our approach outperforms popular variable selection methods and tailored Bayesian procedures, dealing within hours with problems involving hundreds of thousands of genetic variants and tens to hundreds of clinical or molecular outcomes., (© The Author 2017. Published by Oxford University Press. All rights reserved. For permissions, please e-mail: journals.permissions@oup.com.)
- Published
- 2017
- Full Text
- View/download PDF
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