25 results on '"Liampa, Irene"'
Search Results
2. A Miniaturized System for Rapid, Isothermal Detection of SARS-CoV-2 in Human and Environmental Samples
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Staples, Jake, primary, Dourou, Athanasia-Maria, additional, Liampa, Irene, additional, Sjaarda, Calvin, additional, Moslinger, Emily, additional, Wong, Henry, additional, Sheth, Prameet M., additional, Arhondakis, Stilianos, additional, and Prakash, Ravi, additional
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- 2023
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3. Reliable detection of SARS-CoV-2 RNA using RT-(q)PCR critically depends on primer design and PCR test parameters: an evaluation study of novel primers
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Voogd, Sanne, Liampa, Irene, Borger, Pieter, Dourou, Athanasia Maria, Arhondakis, Stilianos, Louwen, Rogier, Voogd, Sanne, Liampa, Irene, Borger, Pieter, Dourou, Athanasia Maria, Arhondakis, Stilianos, and Louwen, Rogier
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Objectives To assess the performance of newly developed polymerase chain reaction (PCR) primers to detect severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) RNA, using gel electrophoresis and sequencing. Our results were compared against those obtained with the primers developed by Charité Berlin and ones commercially available in the ApplexTM SARS-CoV-2 assay. Design Evaluation study Setting This evaluation study was conducted at the Erasmus MC an academic hospital in the southwest of the Netherlands. Samples were obtained from a Medical Diagnostic Center also stationed in the South-West of the Netherlands that offers routine microbiology diagnostics (e.g., serology, molecular testing, bacterial cultures) for approximately 1,500 primary health care facilities. The primer sequences were designed by BioCoS, a biotechnology company providing bioinformatics services for biomarker discovery and primer design. Participants 150 symptomatic patients suspicious for a SARS-CoV-2 infection who presented themselves at a general practitioner or at a geriatric specialist were included. Main outcome measures Presence or absence of SARS-CoV-2 RNA in oro-nasopharyngeal swabs as detected by RT-(q)PCR, gel electrophoresis and sequencing of the PCR amplicons after which the positive predicted value (PPV), negative predicted value (NPV), positive percentage agreement (PPA) and negative percentage agreement (NPA) of each primerset was determined. Results Gel electrophoresis of RT-(q)PCR amplicons and sequencing methods demonstrated that the newly discovered and designed triplet STAMINA primersets by BioCoS in the ORF1ab (PPV,100%; NPV, 80%), E- (PPV 100%; NPV 73.85%) and N-gene (PPV 100%; NPV 60%) harbored an increased PPA compared to the triplet Charité Berlin primersets designed in the RdRp- (PPV 100%; NPV 67.61%), E- (PPV 100%; NPV 71.64%) and N-gene (PPV 96.97%; NPV 39.17%), by using the AllplexTM SARS-CoV-2 assay as a criterion
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- 2022
4. Transcriptomics in Toxicogenomics, Part III : Data Modelling for Risk Assessment
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Serra, Angela, Fratello, Michele, Cattelani, Luca, Liampa, Irene, Melagraki, Georgia, Kohonen, Pekka, Nymark, Penny, Federico, Antonio, Kinaret, Pia Anneli Sofia, Jagiello, Karolina, Ha, My Kieu, Choi, Jang-Sik, Sanabria, Natasha, Gulumian, Mary, Puzyn, Tomasz, Yoon, Tae-Hyun, Sarimveis, Haralambos, Grafström, Roland, Afantitis, Antreas, Greco, Dario, and Institute of Biotechnology
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benchmark dose analysis ,TOXICITY PREDICTION ,QSAR ,EXPRESSION DATA ,deep learning ,GENE-COEXPRESSION NETWORK ,data modelling ,DRUG DISCOVERY ,transcriptomics ,VARIABLE SELECTION ,machine learning ,toxicogenomics ,CONNECTIVITY MAP ,MICROARRAY DATA ,FEATURE-SELECTION ,1182 Biochemistry, cell and molecular biology ,NONNEGATIVE MATRIX FACTORIZATION ,DOSE-RESPONSE ,network analysis ,data integration ,read-across - Abstract
Transcriptomics data are relevant to address a number of challenges in Toxicogenomics (TGx). After careful planning of exposure conditions and data preprocessing, the TGx data can be used in predictive toxicology, where more advanced modelling techniques are applied. The large volume of molecular profiles produced by omics-based technologies allows the development and application of artificial intelligence (AI) methods in TGx. Indeed, the publicly available omics datasets are constantly increasing together with a plethora of different methods that are made available to facilitate their analysis, interpretation and the generation of accurate and stable predictive models. In this review, we present the state-of-the-art of data modelling applied to transcriptomics data in TGx. We show how the benchmark dose (BMD) analysis can be applied to TGx data. We review read across and adverse outcome pathways (AOP) modelling methodologies. We discuss how network-based approaches can be successfully employed to clarify the mechanism of action (MOA) or specific biomarkers of exposure. We also describe the main AI methodologies applied to TGx data to create predictive classification and regression models and we address current challenges. Finally, we present a short description of deep learning (DL) and data integration methodologies applied in these contexts. Modelling of TGx data represents a valuable tool for more accurate chemical safety assessment. This review is the third part of a three-article series on Transcriptomics in Toxicogenomics.
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- 2020
5. Transcriptomics in Toxicogenomics, Part I : Experimental Design, Technologies, Publicly Available Data, and Regulatory Aspects
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Kinaret, Pia Anneli Sofia, Serra, Angela, Federico, Antonio, Kohonen, Pekka, Nymark, Penny, Liampa, Irene, Ha, My Kieu, Choi, Jang-Sik, Jagiello, Karolina, Sanabria, Natasha, Melagraki, Georgia, Cattelani, Luca, Fratello, Michele, Sarimveis, Haralambos, Afantitis, Antreas, Yoon, Tae-Hyun, Gulumian, Mary, Grafström, Roland, Puzyn, Tomasz, Greco, Dario, and Institute of Biotechnology
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WALLED CARBON NANOTUBES ,alternative risk assessment ,engineered nanomaterials (ENM) ,high throughput ,MICROARRAY EXPERIMENTS ,transcriptomics ,TIO2 NANOPARTICLES ,PULMONARY INFLAMMATION ,SAMPLE-SIZE ,CONNECTIVITY MAP ,1182 Biochemistry, cell and molecular biology ,RNA-SEQ ,RISK-ASSESSMENT ,sequencing experimental design ,MESSENGER-RNA ,toxicogenomics (TGx) ,microarrays ,toxicology ,GENE-EXPRESSION - Abstract
The starting point of successful hazard assessment is the generation of unbiased and trustworthy data. Conventional toxicity testing deals with extensive observations of phenotypic endpoints in vivo and complementing in vitro models. The increasing development of novel materials and chemical compounds dictates the need for a better understanding of the molecular changes occurring in exposed biological systems. Transcriptomics enables the exploration of organisms' responses to environmental, chemical, and physical agents by observing the molecular alterations in more detail. Toxicogenomics integrates classical toxicology with omics assays, thus allowing the characterization of the mechanism of action (MOA) of chemical compounds, novel small molecules, and engineered nanomaterials (ENMs). Lack of standardization in data generation and analysis currently hampers the full exploitation of toxicogenomics-based evidence in risk assessment. To fill this gap, TGx methods need to take into account appropriate experimental design and possible pitfalls in the transcriptomic analyses as well as data generation and sharing that adhere to the FAIR (Findable, Accessible, Interoperable, and Reusable) principles. In this review, we summarize the recent advancements in the design and analysis of DNA microarray, RNA sequencing (RNA-Seq), and single-cell RNA-Seq (scRNA-Seq) data. We provide guidelines on exposure time, dose and complex endpoint selection, sample quality considerations and sample randomization. Furthermore, we summarize publicly available data resources and highlight applications of TGx data to understand and predict chemical toxicity potential. Additionally, we discuss the efforts to implement TGx into regulatory decision making to promote alternative methods for risk assessment and to support the 3R (reduction, refinement, and replacement) concept. This review is the first part of a three-article series on Transcriptomics in Toxicogenomics. These initial considerations on Experimental Design, Technologies, Publicly Available Data, Regulatory Aspects, are the starting point for further rigorous and reliable data preprocessing and modeling, described in the second and third part of the review series.
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- 2020
6. Can an InChI for Nano Address the Need for a Simplified Representation of Complex Nanomaterials across Experimental and Nanoinformatics Studies?
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Lynch, Iseult, primary, Afantitis, Antreas, additional, Exner, Thomas, additional, Himly, Martin, additional, Lobaskin, Vladimir, additional, Doganis, Philip, additional, Maier, Dieter, additional, Sanabria, Natasha, additional, Papadiamantis, Anastasios G., additional, Rybinska-Fryca, Anna, additional, Gromelski, Maciej, additional, Puzyn, Tomasz, additional, Willighagen, Egon, additional, Johnston, Blair D., additional, Gulumian, Mary, additional, Matzke, Marianne, additional, Green Etxabe, Amaia, additional, Bossa, Nathan, additional, Serra, Angela, additional, Liampa, Irene, additional, Harper, Stacey, additional, Tämm, Kaido, additional, Jensen, Alexander CØ, additional, Kohonen, Pekka, additional, Slater, Luke, additional, Tsoumanis, Andreas, additional, Greco, Dario, additional, Winkler, David A., additional, Sarimveis, Haralambos, additional, and Melagraki, Georgia, additional
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- 2020
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7. Entropic Ranks: A Methodology for Enhanced, Threshold-Free, Information-Rich Data Partition and Interpretation
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de Lastic, Hector-Xavier, primary, Liampa, Irene, additional, G. Georgakilas, Alexandros, additional, Zervakis, Michalis, additional, and Chatziioannou, Aristotelis, additional
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- 2020
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8. Entropic Ranks: A Methodology for Enhanced, Threshold-Free, Information-Rich Data Partition and Interpretation
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de Lastic, Hector - Xavier, primary, Liampa, Irene, additional, Georgakilas, Alexandros G., additional, Zervakis, Michalis, additional, and Chatziioannou, Aristotelis, additional
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- 2020
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9. Transcriptomics in Toxicogenomics, Part II: Preprocessing and Differential Expression Analysis for High Quality Data
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Federico, Antonio, primary, Serra, Angela, additional, Ha, My Kieu, additional, Kohonen, Pekka, additional, Choi, Jang-Sik, additional, Liampa, Irene, additional, Nymark, Penny, additional, Sanabria, Natasha, additional, Cattelani, Luca, additional, Fratello, Michele, additional, Kinaret, Pia Anneli Sofia, additional, Jagiello, Karolina, additional, Puzyn, Tomasz, additional, Melagraki, Georgia, additional, Gulumian, Mary, additional, Afantitis, Antreas, additional, Sarimveis, Haralambos, additional, Yoon, Tae-Hyun, additional, Grafström, Roland, additional, and Greco, Dario, additional
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- 2020
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10. Transcriptomics in Toxicogenomics, Part I: Experimental Design, Technologies, Publicly Available Data, and Regulatory Aspects
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Kinaret, Pia Anneli Sofia, primary, Serra, Angela, additional, Federico, Antonio, additional, Kohonen, Pekka, additional, Nymark, Penny, additional, Liampa, Irene, additional, Ha, My Kieu, additional, Choi, Jang-Sik, additional, Jagiello, Karolina, additional, Sanabria, Natasha, additional, Melagraki, Georgia, additional, Cattelani, Luca, additional, Fratello, Michele, additional, Sarimveis, Haralambos, additional, Afantitis, Antreas, additional, Yoon, Tae-Hyun, additional, Gulumian, Mary, additional, Grafström, Roland, additional, Puzyn, Tomasz, additional, and Greco, Dario, additional
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- 2020
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11. Transcriptomics in Toxicogenomics, Part III: Data Modelling for Risk Assessment
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Serra, Angela, primary, Fratello, Michele, additional, Cattelani, Luca, additional, Liampa, Irene, additional, Melagraki, Georgia, additional, Kohonen, Pekka, additional, Nymark, Penny, additional, Federico, Antonio, additional, Kinaret, Pia Anneli Sofia, additional, Jagiello, Karolina, additional, Ha, My Kieu, additional, Choi, Jang-Sik, additional, Sanabria, Natasha, additional, Gulumian, Mary, additional, Puzyn, Tomasz, additional, Yoon, Tae-Hyun, additional, Sarimveis, Haralambos, additional, Grafström, Roland, additional, Afantitis, Antreas, additional, and Greco, Dario, additional
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- 2020
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12. D6.1 - A workflow and checklist for experimental design and informatics workflow for risk assessment for use in WP9
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Sarimveis, Haralambos, Liampa, Irene, Tsiros, Periklis, Doganis, Philip, Karatzas, Pantelis, Varsou, Dimitra-Danai, Bossa, Nathan, and Lynch, Iseult
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Informatics ,H2020 ,NanoCommons ,Experimental design ,Workflows ,Risk assessment - Abstract
The development of safe and effective nanomaterials (NMs) is highly important for both industry and regulatory agencies, especially considering their continuously growing economic potential, and their wide range of industrial, consumer, medical, and diagnostic NM applications. The basic methodology for performing risk assessment (RA) for NMs is similar to the philosophy used for conventional chemicals RA, i.e. compare the level of exposure with the hazard assessment. However, exposure and hazard assessments for NMs are more challenging than for conventional chemicals, because of the complex NM structures, which are dynamic as many of their properties are context-dependent (extrinsic), and can be modified or evolve during their life-cycle. In this deliverable (D6.1) we describe a number of computationally oriented tools and methodologies that can be used for exposure modelling, hazard prediction and eventually for RA. Additionally, we present checklists and best practices for the most efficient use of the tools and workflows, as well as optimal combinations of these tools for performing RA for NMs. We report here on the current status of development and integration of existing RA tools into the NanoCommons knowledge infrastructure, and outline the strategy that will be used in the subsequent months of the project for further development, for supporting case studies to demonstrate the utility of the RA tools, and Transnational Access (TA) activities.
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- 2020
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13. Transcriptomics in Toxicogenomics, Part II: Preprocessing and Differential Expression Analysis for High Quality Data
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Federico, Antonio, Serra, Angela, Ha, My Kieu, Kohonen, Pekka, Choi, Jang-Sik, Liampa, Irene, Nymark, Penny, Sanabria, Natasha, Cattelani, Luca, Fratello, Michele, Kinaret, Pia Anneli Sofia, Jagiello, Karolina, Puzyn, Tomasz, Melagraki, Georgia, Gulumian, Mary, Afantitis, Antreas, Sarimveis, Haralambos, Yoon, Tae-Hyun, Grafström, Roland, Greco, Dario, Lääketieteen ja terveysteknologian tiedekunta - Faculty of Medicine and Health Technology, and Tampere University
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batch effect ,Biolääketieteet - Biomedicine ,Review ,quality check ,differential expression ,lcsh:Chemistry ,transcriptomics ,normalization ,lcsh:QD1-999 ,toxicogenomics ,data preprocessing ,scRNA-Seq ,RNA-Seq ,microarray - Abstract
Preprocessing of transcriptomics data plays a pivotal role in the development of toxicogenomics-driven tools for chemical toxicity assessment. The generation and exploitation of large volumes of molecular profiles, following an appropriate experimental design, allows the employment of toxicogenomics (TGx) approaches for a thorough characterisation of the mechanism of action (MOA) of different compounds. To date, a plethora of data preprocessing methodologies have been suggested. However, in most cases, building the optimal analytical workflow is not straightforward. A careful selection of the right tools must be carried out, since it will affect the downstream analyses and modelling approaches. Transcriptomics data preprocessing spans across multiple steps such as quality check, filtering, normalization, batch effect detection and correction. Currently, there is a lack of standard guidelines for data preprocessing in the TGx field. Defining the optimal tools and procedures to be employed in the transcriptomics data preprocessing will lead to the generation of homogeneous and unbiased data, allowing the development of more reliable, robust and accurate predictive models. In this review, we outline methods for the preprocessing of three main transcriptomic technologies including microarray, bulk RNA-Sequencing (RNA-Seq), and single cell RNA-Sequencing (scRNA-Seq). Moreover, we discuss the most common methods for the identification of differentially expressed genes and to perform a functional enrichment analysis. This review is the second part of a three-article series on Transcriptomics in Toxicogenomics.
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- 2020
14. Can an InChI for Nano Address the Need for a Simplified Representation of Complex Nanomaterials across Experimental and Nanoinformatics Studies?
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Lynch, Iseult, Anreas Afantitis, Exner, Thomas, Himley, Martin, Lobaskin, Vladimir, Doganis, Phillip, Maier, Dieter, Sanabria, Natasha, Rybinska-Fryca, Anna, Gromelski, Maciej, Puzyn, Tomasz, Willighagen, Egon, Johnston, Blair, Gulumian, Mary, Matzke, Marianne, Etxabe, Amaia Green, Bossa, Nathan, Serra, Angela, Liampa, Irene, Harper, Stacey, Tämm, Kaido, Jensen, Alexander CØ, Kohonen, Pekka, Slater, Luke, Tsoumanis, Andreas, Greco, Dario, Winkler, David, Haralambos Sarimveis, and Melagraki, Georgia
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FOS: Nanotechnology ,100708 Nanomaterials - Abstract
Chemoinformatics has developed efficient ways of representing chemical structures for small molecules as simple text strings, simplified molecular-input line-entry system (SMILES) and the IUPAC International Chemical Identifier (InChI), which are machine-readable. In particular, InChIs have been extended to encode formalized representations of mixtures and reactions, and work is ongoing to represent polymers and other macromolecules in this way. The next frontier is encoding the multi-component structures of nanomaterials (NMs) in a machine-readable format to enable linking of datasets for nanoinformatics and regulatory applications. A workshop organized by the H2020 research infrastructure NanoCommons and the nanoinformatics project NanoSolveIT analysed issues involved in developing an InChI for NMs (NInChI). The layers needed to captureNMstructures include but are not limited to: core composition (possibly multi-layered); surface topography; surface coatings or functionalization; doping with other chemicals; and representation of impurities. NM distributions (size, shape, composition, surface properties, etc.), types of chemical linkages connecting surface functionalization and coating molecules to the core, and various crystallographic forms exhibited by NMs also need to be considered. Six case studies were conducted to elucidate requirements for unambiguous description of NMs. The suggested NInChI layers are intended to stimulate further analysis that will lead to the first version of a “nano” extension to the InChI standard.
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- 2020
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15. Blood-based omic profiling supports female susceptibility to tobacco smoke-induced cardiovascular diseases
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Chatziioannou, Aristotelis, Georgiadis, Panagiotis, Hebels, Dennie G, Liampa, Irene, Valavanis, Ioannis, Bergdahl, Ingvar A, Johansson, Anders, Palli, Domenico, Chadeau-Hyam, Marc, Siskos, Alexandros P., Keun, Hector, Botsivali, Maria, de Kok, Theo M C M, Pérez, Almudena Espín, Kleinjans, Jos C S, Vineis, Paolo, Kyrtopoulos, Soterios A, Gottschalk, Ralph, Van Leeuwen, Danitsja, Timmermans, Leen, Bendinelli, Benedetta, Kelly, Rachel S., Vermeulen, Roel, Portengen, Lutzen, Saberi-Hosnijeh, Fatemeh, Melin, Beatrice, Hallmans, Goran, Lenner, Per, Athersuch, Toby J., Kogevinas, Manolis, Stephanou, Euripides G., Myridakis, Antonis, Fazzo, Lucia, De Santis, Marco, Comba, Pietro, Kiviranta, Hannu, Rantakokko, Panu, Airaksinen, Riikka, Ruokojarvi, Paivi, Gilthorpe, Mark, Fleming, Sarah, Fleming, Thomas D, Tu, Yu Kang, Jonsson, Bo A. G., Lundh, Thomas, Chen, Wei J., Lee, Wen Chung, Hsiao, Chuhsing Kate, Chien, Kuo Liong, Kuo, Po Hsiu, Hung, Hung, Liao, Shu Fen, LS IRAS EEPI GRA (Gezh.risico-analyse), Sub IRAS EEPI Algemeen, LS Knijn, dIRAS RA-2, CBITE, RS: MERLN - Cell Biology - Inspired Tissue Engineering (CBITE), Toxicogenomics, RS: GROW - R1 - Prevention, RS: FHML MaCSBio, RS: FPN MaCSBio, RS: FSE MaCSBio, and Promovendi ODB
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0301 basic medicine ,Adult ,Epigenomics ,Male ,SEX-DIFFERENCES ,PLATELET ACTIVATION ,Disease ,Biology ,OBSTRUCTIVE PULMONARY-DISEASE ,Article ,Epigenesis, Genetic ,Transcriptome ,03 medical and health sciences ,LUNG-CANCER ,Sex Factors ,RISK-FACTOR ,Humans ,Cardiac and Cardiovascular Systems ,CORONARY-HEART-DISEASE ,Gene Regulatory Networks ,Platelet activation ,Epigenetics ,GENE-EXPRESSION ,Aged ,Regulation of gene expression ,Kardiologi ,Science & Technology ,Multidisciplinary ,Gene Expression Profiling ,Public Health, Global Health, Social Medicine and Epidemiology ,DNA Methylation ,Middle Aged ,Multidisciplinary Sciences ,Gene expression profiling ,Folkhälsovetenskap, global hälsa, socialmedicin och epidemiologi ,030104 developmental biology ,MYOCARDIAL-INFARCTION ,Gene Expression Regulation ,Cardiovascular Diseases ,DNA methylation ,Immunology ,Science & Technology - Other Topics ,CpG Islands ,Female ,Tobacco Smoke Pollution ,CIGARETTE-SMOKING ,HEME OXYGENASE-1 - Abstract
We recently reported that differential gene expression and DNA methylation profiles in blood leukocytes of apparently healthy smokers predicts with remarkable efficiency diseases and conditions known to be causally associated with smoking, suggesting that blood-based omic profiling of human populations may be useful for linking environmental exposures to potential health effects. Here we report on the sex-specific effects of tobacco smoking on transcriptomic and epigenetic features derived from genome-wide profiling in white blood cells, identifying 26 expression probes and 92 CpG sites, almost all of which are affected only in female smokers. Strikingly, these features relate to numerous genes with a key role in the pathogenesis of cardiovascular disease, especially thrombin signaling, including the thrombin receptors on platelets F2R (coagulation factor II (thrombin) receptor; PAR1) and GP5 (glycoprotein 5), as well as HMOX1 (haem oxygenase 1) and BCL2L1 (BCL2-like 1) which are involved in protection against oxidative stress and apoptosis, respectively. These results are in concordance with epidemiological evidence of higher female susceptibility to tobacco-induced cardiovascular disease and underline the potential of blood-based omic profiling in hazard and risk assessment.
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- 2017
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16. Additional file 3: Figure S1. of Evolving DNA methylation and gene expression markers of B-cell chronic lymphocytic leukemia are present in pre-diagnostic blood samples more than 10Â years prior to diagnosis
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Georgiadis, Panagiotis, Liampa, Irene, Hebels, Dennie, Krauskopf, Julian, Chatziioannou, Aristotelis, Valavanis, Ioannis, Kok, Theo De, Kleinjans, Jos, Bergdahl, Ingvar, Melin, Beatrice, Spaeth, Florentin, Palli, Domenico, R.C.H. Vermeulen, J. Vlaanderen, Chadeau-Hyam, Marc, Vineis, Paolo, and Soterios Kyrtopoulos
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The ontological tree based on DM genes. Figure S2. Methylation of HOX and IRX gene clusters in the short- and long-TtD subgroups. Figure S3. B-cell distribution in controls and CLL cases. (PDF 1281 kb)
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- 2017
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17. Evolving DNA methylation and gene expression markers of B-cell chronic lymphocytic leukemia are present in pre-diagnostic blood samples more than 10 years prior to diagnosis
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Georgiadis, Panagiotis, Liampa, Irene, Hebels, Dennie G, Krauskopf, Julian, Chatziioannou, Aristotelis, Valavanis, Ioannis, de Kok, Theo M C M, Kleinjans, Jos C S, Bergdahl, Ingvar A, Melin, Beatrice, Spaeth, Florentin, Palli, Domenico, Vermeulen, R C H, Vlaanderen, J, Chadeau-Hyam, Marc, Vineis, Paolo, Kyrtopoulos, Soterios A, EnviroGenomarkers consortium, Georgiadis, Panagiotis, Liampa, Irene, Hebels, Dennie G, Krauskopf, Julian, Chatziioannou, Aristotelis, Valavanis, Ioannis, de Kok, Theo M C M, Kleinjans, Jos C S, Bergdahl, Ingvar A, Melin, Beatrice, Spaeth, Florentin, Palli, Domenico, Vermeulen, R C H, Vlaanderen, J, Chadeau-Hyam, Marc, Vineis, Paolo, Kyrtopoulos, Soterios A, and EnviroGenomarkers consortium
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BACKGROUND: B-cell chronic lymphocytic leukemia (CLL) is a common type of adult leukemia. It often follows an indolent course and is preceded by monoclonal B-cell lymphocytosis, an asymptomatic condition, however it is not known what causes subjects with this condition to progress to CLL. Hence the discovery of prediagnostic markers has the potential to improve the identification of subjects likely to develop CLL and may also provide insights into the pathogenesis of the disease of potential clinical relevance.RESULTS: We employed peripheral blood buffy coats of 347 apparently healthy subjects, of whom 28 were diagnosed with CLL 2.0-15.7 years after enrollment, to derive for the first time genome-wide DNA methylation, as well as gene and miRNA expression, profiles associated with the risk of future disease. After adjustment for white blood cell composition, we identified 722 differentially methylated CpG sites and 15 differentially expressed genes (Bonferroni-corrected p < 0.05) as well as 2 miRNAs (FDR < 0.05) which were associated with the risk of future CLL. The majority of these signals have also been observed in clinical CLL, suggesting the presence in prediagnostic blood of CLL-like cells. Future CLL cases who, at enrollment, had a relatively low B-cell fraction (<10%), and were therefore less likely to have been suffering from undiagnosed CLL or a precursor condition, showed profiles involving smaller numbers of the same differential signals with intensities, after adjusting for B-cell content, generally smaller than those observed in the full set of cases. A similar picture was obtained when the differential profiles of cases with time-to-diagnosis above the overall median period of 7.4 years were compared with those with shorted time-to-disease. Differentially methylated genes of major functional significance include numerous genes that encode for transcription factors, especially members of the homeobox family, while differentially expre
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- 2017
18. Blood-based omic profiling supports female susceptibility to tobacco smoke-induced cardiovascular diseases
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LS IRAS EEPI GRA (Gezh.risico-analyse), Sub IRAS EEPI Algemeen, LS Knijn, dIRAS RA-2, Chatziioannou, Aristotelis, Georgiadis, Panagiotis, Hebels, Dennie G, Liampa, Irene, Valavanis, Ioannis, Bergdahl, Ingvar A, Johansson, Anders, Palli, Domenico, Chadeau-Hyam, Marc, Siskos, Alexandros P., Keun, Hector, Botsivali, Maria, de Kok, Theo M C M, Pérez, Almudena Espín, Kleinjans, Jos C S, Vineis, Paolo, Kyrtopoulos, Soterios A, Gottschalk, Ralph, Van Leeuwen, Danitsja, Timmermans, Leen, Bendinelli, Benedetta, Kelly, Rachel S., Vermeulen, Roel, Portengen, Lutzen, Saberi-Hosnijeh, Fatemeh, Melin, Beatrice, Hallmans, Goran, Lenner, Per, Athersuch, Toby J., Kogevinas, Manolis, Stephanou, Euripides G., Myridakis, Antonis, Fazzo, Lucia, De Santis, Marco, Comba, Pietro, Kiviranta, Hannu, Rantakokko, Panu, Airaksinen, Riikka, Ruokojarvi, Paivi, Gilthorpe, Mark, Fleming, Sarah, Fleming, Thomas D, Tu, Yu Kang, Jonsson, Bo A. G., Lundh, Thomas, Chen, Wei J., Lee, Wen Chung, Hsiao, Chuhsing Kate, Chien, Kuo Liong, Kuo, Po Hsiu, Hung, Hung, Liao, Shu Fen, LS IRAS EEPI GRA (Gezh.risico-analyse), Sub IRAS EEPI Algemeen, LS Knijn, dIRAS RA-2, Chatziioannou, Aristotelis, Georgiadis, Panagiotis, Hebels, Dennie G, Liampa, Irene, Valavanis, Ioannis, Bergdahl, Ingvar A, Johansson, Anders, Palli, Domenico, Chadeau-Hyam, Marc, Siskos, Alexandros P., Keun, Hector, Botsivali, Maria, de Kok, Theo M C M, Pérez, Almudena Espín, Kleinjans, Jos C S, Vineis, Paolo, Kyrtopoulos, Soterios A, Gottschalk, Ralph, Van Leeuwen, Danitsja, Timmermans, Leen, Bendinelli, Benedetta, Kelly, Rachel S., Vermeulen, Roel, Portengen, Lutzen, Saberi-Hosnijeh, Fatemeh, Melin, Beatrice, Hallmans, Goran, Lenner, Per, Athersuch, Toby J., Kogevinas, Manolis, Stephanou, Euripides G., Myridakis, Antonis, Fazzo, Lucia, De Santis, Marco, Comba, Pietro, Kiviranta, Hannu, Rantakokko, Panu, Airaksinen, Riikka, Ruokojarvi, Paivi, Gilthorpe, Mark, Fleming, Sarah, Fleming, Thomas D, Tu, Yu Kang, Jonsson, Bo A. G., Lundh, Thomas, Chen, Wei J., Lee, Wen Chung, Hsiao, Chuhsing Kate, Chien, Kuo Liong, Kuo, Po Hsiu, Hung, Hung, and Liao, Shu Fen
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- 2017
19. Evolving DNA methylation and gene expression markers of B-cell chronic lymphocytic leukemia are present in pre-diagnostic blood samples more than 10 years prior to diagnosis
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LS IRAS EEPI GRA (Gezh.risico-analyse), dIRAS RA-2, Georgiadis, Panagiotis, Liampa, Irene, Hebels, Dennie G, Krauskopf, Julian, Chatziioannou, Aristotelis, Valavanis, Ioannis, de Kok, Theo M C M, Kleinjans, Jos C S, Bergdahl, Ingvar A, Melin, Beatrice, Spaeth, Florentin, Palli, Domenico, Vermeulen, R C H, Vlaanderen, J, Chadeau-Hyam, Marc, Vineis, Paolo, Kyrtopoulos, Soterios A, EnviroGenomarkers consortium, LS IRAS EEPI GRA (Gezh.risico-analyse), dIRAS RA-2, Georgiadis, Panagiotis, Liampa, Irene, Hebels, Dennie G, Krauskopf, Julian, Chatziioannou, Aristotelis, Valavanis, Ioannis, de Kok, Theo M C M, Kleinjans, Jos C S, Bergdahl, Ingvar A, Melin, Beatrice, Spaeth, Florentin, Palli, Domenico, Vermeulen, R C H, Vlaanderen, J, Chadeau-Hyam, Marc, Vineis, Paolo, Kyrtopoulos, Soterios A, and EnviroGenomarkers consortium
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- 2017
20. Omics for prediction of environmental health effects: Blood leukocyte-based cross-omic profiling reliably predicts diseases associated with tobacco smoking
- Author
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Georgiadis, Panagiotis, Hebels, Dennie G, Valavanis, Ioannis, Liampa, Irene, Bergdahl, Ingvar A, Johansson, Anders, Palli, Domenico, Chadeau-Hyam, Marc, Chatziioannou, Aristotelis, Jennen, Danyel G J, Krauskopf, Julian, Jetten, Marlon J, Kleinjans, Jos C S, Vineis, Paolo, Kyrtopoulos, Soterios A, EnviroGenomarkers consortium, Georgiadis, Panagiotis, Hebels, Dennie G, Valavanis, Ioannis, Liampa, Irene, Bergdahl, Ingvar A, Johansson, Anders, Palli, Domenico, Chadeau-Hyam, Marc, Chatziioannou, Aristotelis, Jennen, Danyel G J, Krauskopf, Julian, Jetten, Marlon J, Kleinjans, Jos C S, Vineis, Paolo, Kyrtopoulos, Soterios A, and EnviroGenomarkers consortium
- Abstract
The utility of blood-based omic profiles for linking environmental exposures to their potential health effects was evaluated in 649 individuals, drawn from the general population, in relation to tobacco smoking, an exposure with well-characterised health effects. Using disease connectivity analysis, we found that the combination of smoking-modified, genome-wide gene (including miRNA) expression and DNA methylation profiles predicts with remarkable reliability most diseases and conditions independently known to be causally associated with smoking (indicative estimates of sensitivity and positive predictive value 94% and 84%, respectively). Bioinformatics analysis reveals the importance of a small number of smoking-modified, master-regulatory genes and suggest a central role for altered ubiquitination. The smoking-induced gene expression profiles overlap significantly with profiles present in blood cells of patients with lung cancer or coronary heart disease, diseases strongly associated with tobacco smoking. These results provide proof-of-principle support to the suggestion that omic profiling in peripheral blood has the potential of identifying early, disease-related perturbations caused by toxic exposures and may be a useful tool in hazard and risk assessment.
- Published
- 2016
21. Omics for prediction of environmental health effects: Blood leukocyte-based cross-omic profiling reliably predicts diseases associated with tobacco smoking
- Author
-
dIRAS RA-I&I RA, dIRAS RA-2, Georgiadis, Panagiotis, Hebels, Dennie G, Valavanis, Ioannis, Liampa, Irene, Bergdahl, Ingvar A, Johansson, Anders, Palli, Domenico, Chadeau-Hyam, Marc, Chatziioannou, Aristotelis, Jennen, Danyel G J, Krauskopf, Julian, Jetten, Marlon J, Kleinjans, Jos C S, Vineis, Paolo, Kyrtopoulos, Soterios A, EnviroGenomarkers consortium, dIRAS RA-I&I RA, dIRAS RA-2, Georgiadis, Panagiotis, Hebels, Dennie G, Valavanis, Ioannis, Liampa, Irene, Bergdahl, Ingvar A, Johansson, Anders, Palli, Domenico, Chadeau-Hyam, Marc, Chatziioannou, Aristotelis, Jennen, Danyel G J, Krauskopf, Julian, Jetten, Marlon J, Kleinjans, Jos C S, Vineis, Paolo, Kyrtopoulos, Soterios A, and EnviroGenomarkers consortium
- Published
- 2016
22. [Untitled]
- Author
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Kinaret, Pia Anneli Sofia, Serra, Angela, Federico, Antonio, Kohonen, Pekka, Nymark, Penny, Liampa, Irene, Ha, My Kieu, Choi, Jang-Sik, Jagiello, Karolina, Sanabria, Natasha, Melagraki, Georgia, Cattelani, Luca, Fratello, Michele, Sarimveis, Haralambos, Afantitis, Antreas, Yoon, Tae-Hyun, Gulumian, Mary, Grafström, Roland, Puzyn, Tomasz, and Greco, Dario
- Subjects
experimental design ,Standardization ,Computer science ,Test data generation ,General Chemical Engineering ,Interoperability ,Review ,high throughput ,02 engineering and technology ,lcsh:Chemistry ,transcriptomics ,03 medical and health sciences ,General Materials Science ,toxicogenomics (TGx) ,microarrays ,030304 developmental biology ,0303 health sciences ,Physics ,alternative risk assessment ,engineered nanomaterials (ENM) ,sequencing ,021001 nanoscience & nanotechnology ,Data science ,Data resources ,Sample quality ,Trustworthiness ,lcsh:QD1-999 ,Data pre-processing ,0210 nano-technology ,Toxicogenomics ,Engineering sciences. Technology ,toxicology - Abstract
The starting point of successful hazard assessment is the generation of unbiased and trustworthy data. Conventional toxicity testing deals with extensive observations of phenotypic endpoints in vivo and complementing in vitro models. The increasing development of novel materials and chemical compounds dictates the need for a better understanding of the molecular changes occurring in exposed biological systems. Transcriptomics enables the exploration of organisms’ responses to environmental, chemical, and physical agents by observing the molecular alterations in more detail. Toxicogenomics integrates classical toxicology with omics assays, thus allowing the characterization of the mechanism of action (MOA) of chemical compounds, novel small molecules, and engineered nanomaterials (ENMs). Lack of standardization in data generation and analysis currently hampers the full exploitation of toxicogenomics-based evidence in risk assessment. To fill this gap, TGx methods need to take into account appropriate experimental design and possible pitfalls in the transcriptomic analyses as well as data generation and sharing that adhere to the FAIR (Findable, Accessible, Interoperable, and Reusable) principles. In this review, we summarize the recent advancements in the design and analysis of DNA microarray, RNA sequencing (RNA-Seq), and single-cell RNA-Seq (scRNA-Seq) data. We provide guidelines on exposure time, dose and complex endpoint selection, sample quality considerations and sample randomization. Furthermore, we summarize publicly available data resources and highlight applications of TGx data to understand and predict chemical toxicity potential. Additionally, we discuss the efforts to implement TGx into regulatory decision making to promote alternative methods for risk assessment and to support the 3R (reduction, refinement, and replacement) concept. This review is the first part of a three-article series on Transcriptomics in Toxicogenomics. These initial considerations on Experimental Design, Technologies, Publicly Available Data, Regulatory Aspects, are the starting point for further rigorous and reliable data preprocessing and modeling, described in the second and third part of the review series.
23. Additional file 1: of Evolving DNA methylation and gene expression markers of B-cell chronic lymphocytic leukemia are present in pre-diagnostic blood samples more than 10Â years prior to diagnosis
- Author
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Georgiadis, Panagiotis, Liampa, Irene, Hebels, Dennie, Krauskopf, Julian, Chatziioannou, Aristotelis, Valavanis, Ioannis, Kok, Theo De, Kleinjans, Jos, Bergdahl, Ingvar, Melin, Beatrice, Spaeth, Florentin, Palli, Domenico, R.C.H. Vermeulen, J. Vlaanderen, Chadeau-Hyam, Marc, Vineis, Paolo, and Soterios Kyrtopoulos
- Subjects
3. Good health - Abstract
Text. Results on WBC composition in case and control subjects, omic profiles in different subgroups of subjects and assessment of the profile robustness across the cohorts. (PDF 614 kb)
24. Evolving DNA methylation and gene expression markers of B-cell chronic lymphocytic leukemia are present in pre-diagnostic blood samples more than 10 years prior to diagnosis.
- Author
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Georgiadis P, Liampa I, Hebels DG, Krauskopf J, Chatziioannou A, Valavanis I, de Kok TMCM, Kleinjans JCS, Bergdahl IA, Melin B, Spaeth F, Palli D, Vermeulen RCH, Vlaanderen J, Chadeau-Hyam M, Vineis P, and Kyrtopoulos SA
- Subjects
- DNA Methylation, Gene Expression Regulation, Neoplastic, MicroRNAs genetics, Prognosis, Time Factors, Humans, Biomarkers, Tumor genetics, Gene Expression Profiling, Leukemia, Lymphocytic, Chronic, B-Cell blood, Leukemia, Lymphocytic, Chronic, B-Cell diagnosis, Leukemia, Lymphocytic, Chronic, B-Cell genetics
- Abstract
Background: B-cell chronic lymphocytic leukemia (CLL) is a common type of adult leukemia. It often follows an indolent course and is preceded by monoclonal B-cell lymphocytosis, an asymptomatic condition, however it is not known what causes subjects with this condition to progress to CLL. Hence the discovery of prediagnostic markers has the potential to improve the identification of subjects likely to develop CLL and may also provide insights into the pathogenesis of the disease of potential clinical relevance., Results: We employed peripheral blood buffy coats of 347 apparently healthy subjects, of whom 28 were diagnosed with CLL 2.0-15.7 years after enrollment, to derive for the first time genome-wide DNA methylation, as well as gene and miRNA expression, profiles associated with the risk of future disease. After adjustment for white blood cell composition, we identified 722 differentially methylated CpG sites and 15 differentially expressed genes (Bonferroni-corrected p < 0.05) as well as 2 miRNAs (FDR < 0.05) which were associated with the risk of future CLL. The majority of these signals have also been observed in clinical CLL, suggesting the presence in prediagnostic blood of CLL-like cells. Future CLL cases who, at enrollment, had a relatively low B-cell fraction (<10%), and were therefore less likely to have been suffering from undiagnosed CLL or a precursor condition, showed profiles involving smaller numbers of the same differential signals with intensities, after adjusting for B-cell content, generally smaller than those observed in the full set of cases. A similar picture was obtained when the differential profiles of cases with time-to-diagnosis above the overall median period of 7.4 years were compared with those with shorted time-to-disease. Differentially methylated genes of major functional significance include numerous genes that encode for transcription factors, especially members of the homeobox family, while differentially expressed genes include, among others, multiple genes related to WNT signaling as well as the miRNAs miR-150-5p and miR-155-5p., Conclusions: Our findings demonstrate the presence in prediagnostic blood of future CLL patients, more than 10 years before diagnosis, of CLL-like cells which evolve as preclinical disease progresses, and point to early molecular alterations with a pathogenetic potential.
- Published
- 2017
- Full Text
- View/download PDF
25. Omics for prediction of environmental health effects: Blood leukocyte-based cross-omic profiling reliably predicts diseases associated with tobacco smoking.
- Author
-
Georgiadis P, Hebels DG, Valavanis I, Liampa I, Bergdahl IA, Johansson A, Palli D, Chadeau-Hyam M, Chatziioannou A, Jennen DG, Krauskopf J, Jetten MJ, Kleinjans JC, Vineis P, and Kyrtopoulos SA
- Subjects
- Computational Biology methods, Coronary Artery Disease genetics, Environmental Exposure, Environmental Health, Female, Genetic Predisposition to Disease, Humans, Lung Neoplasms genetics, Male, Middle Aged, Smoking blood, DNA Methylation, Gene Expression Profiling methods, Genome-Wide Association Study methods, Smoking genetics
- Abstract
The utility of blood-based omic profiles for linking environmental exposures to their potential health effects was evaluated in 649 individuals, drawn from the general population, in relation to tobacco smoking, an exposure with well-characterised health effects. Using disease connectivity analysis, we found that the combination of smoking-modified, genome-wide gene (including miRNA) expression and DNA methylation profiles predicts with remarkable reliability most diseases and conditions independently known to be causally associated with smoking (indicative estimates of sensitivity and positive predictive value 94% and 84%, respectively). Bioinformatics analysis reveals the importance of a small number of smoking-modified, master-regulatory genes and suggest a central role for altered ubiquitination. The smoking-induced gene expression profiles overlap significantly with profiles present in blood cells of patients with lung cancer or coronary heart disease, diseases strongly associated with tobacco smoking. These results provide proof-of-principle support to the suggestion that omic profiling in peripheral blood has the potential of identifying early, disease-related perturbations caused by toxic exposures and may be a useful tool in hazard and risk assessment.
- Published
- 2016
- Full Text
- View/download PDF
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