Omics-Based Strategies in Precision Medicine: Toward a Paradigm Shift in Inborn Errors of Metabolism Investigations
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Abdellah Tebani | Carlos Afonso | Stéphane Marret | Soumeya Bekri | S. Marret | C. Afonso | S. Bekri | A. Tebani
[1] Matej Oresic,et al. Data standards can boost metabolomics research, and if there is a will, there is a way , 2015, Metabolomics.
[2] Mathieu Foquet,et al. Improved fabrication of zero-mode waveguides for single-molecule detection , 2008 .
[3] Lennart Martens,et al. Bringing proteomics into the clinic: The need for the field to finally take itself seriously , 2013, Proteomics. Clinical applications.
[4] F. Sanger,et al. DNA sequencing with chain-terminating inhibitors. , 1977, Proceedings of the National Academy of Sciences of the United States of America.
[5] O. Thas,et al. Next‐generation technologies and data analytical approaches for epigenomics , 2014, Environmental and molecular mutagenesis.
[6] Oliver Fiehn,et al. Toward Merging Untargeted and Targeted Methods in Mass Spectrometry-Based Metabolomics and Lipidomics. , 2016, Analytical chemistry.
[7] Alexis B. Carter,et al. Computational Pathology: A Path Ahead. , 2016, Archives of pathology & laboratory medicine.
[8] Abdellah Tebani,et al. Clinical Metabolomics: The New Metabolic Window for Inborn Errors of Metabolism Investigations in the Post-Genomic Era , 2016, International journal of molecular sciences.
[9] Lennart Martens,et al. Computational quality control tools for mass spectrometry proteomics , 2017, Proteomics.
[10] William A Fera. The next IT challenge. , 2010, Journal of AHIMA.
[11] Andreas Scherer,et al. Batch Effects and Noise in Microarray Experiments: Sources and Solutions , 2009 .
[12] Andrea Superti-Furga,et al. Exome Sequencing and the Management of Neurometabolic Disorders. , 2016, The New England journal of medicine.
[13] Clifford A. Meyer,et al. Identifying and mitigating bias in next-generation sequencing methods for chromatin biology , 2014, Nature Reviews Genetics.
[14] Jörg D. Hoheisel,et al. Clinical proteomics: Promises, challenges and limitations of affinity arrays , 2015, Proteomics. Clinical applications.
[15] Manlio Vinciguerra,et al. Circadian transcriptome analysis in human fibroblasts from Hunter syndrome and impact of iduronate-2-sulfatase treatment , 2013, BMC Medical Genomics.
[16] Russ B. Altman,et al. A research roadmap for next-generation sequencing informatics , 2016, Science Translational Medicine.
[17] Li Li,et al. Deep Patient: An Unsupervised Representation to Predict the Future of Patients from the Electronic Health Records , 2016, Scientific Reports.
[18] C. Sabatti,et al. The Human Phenome Project , 2003, Nature Genetics.
[19] Mark J. P. Chaisson,et al. Resolving the complexity of the human genome using single-molecule sequencing , 2014, Nature.
[20] G. Omenn,et al. Evolution of Translational Omics: Lessons Learned and the Path Forward , 2013 .
[21] P. Gonzalez-Alegre,et al. Towards precision medicine , 2017 .
[22] G. Poste. Bring on the biomarkers , 2011, Nature.
[23] Richard D. Smith,et al. A Spectrum of Views on Clinical Mass Spectrometry. , 2016, Clinical chemistry.
[24] P Cartwright,et al. High-throughput DNA sequencing on a capillary array electrophoresis system. , 1997, Journal of capillary electrophoresis.
[25] Van Regenmortel Mh. Reductionism and complexity in molecular biology. Scientists now have the tools to unravel biological and overcome the limitations of reductionism. , 2004 .
[26] Melissa Haendel,et al. A sea of standards for omics data: sink or swim? , 2013, J. Am. Medical Informatics Assoc..
[27] David Broadhurst,et al. The importance of experimental design and QC samples in large-scale and MS-driven untargeted metabolomic studies of humans. , 2012, Bioanalysis.
[28] Gabi Kastenmüller,et al. Network-based approach for analyzing intra- and interfluid metabolite associations in human blood, urine, and saliva. , 2015, Journal of proteome research.
[29] Christodoulos A. Floudas,et al. Proteome-wide post-translational modification statistics: frequency analysis and curation of the swiss-prot database , 2011, Scientific reports.
[30] A. Sivachenko,et al. Sensitive detection of somatic point mutations in impure and heterogeneous cancer samples , 2013, Nature Biotechnology.
[31] Hiroaki Kitano,et al. Databases for multilevel biophysiology research available at Physiome.jp , 2015, Front. Physiol..
[32] Wei Liu,et al. Topologically inferring pathway activity toward precise cancer classification via integrating genomic and metabolomic data: prostate cancer as a case , 2015, Scientific Reports.
[33] B. Misra,et al. Updates in metabolomics tools and resources: 2014–2015 , 2016, Electrophoresis.
[34] Michael Neumaier,et al. Clinical applications of MS‐based protein quantification , 2016, Proteomics. Clinical applications.
[35] Jill P. Mesirov,et al. Criteria for the use of omics-based predictors in clinical trials , 2013, Nature.
[36] Teuvo Kohonen,et al. The self-organizing map , 1990, Neurocomputing.
[37] D. Mccormick. Sequence the Human Genome , 1986, Bio/Technology.
[38] J. M. Prober,et al. A system for rapid DNA sequencing with fluorescent chain-terminating dideoxynucleotides. , 1987, Science.
[39] Colleen E. Clancy,et al. Multiscale Modeling in the Clinic: Drug Design and Development , 2016, Annals of Biomedical Engineering.
[40] R A Gibbs,et al. Automated DNA sequencing methods involving polymerase chain reaction. , 1989, Clinical chemistry.
[41] S. Lewis,et al. Use of Model Organism and Disease Databases to Support Matchmaking for Human Disease Gene Discovery , 2015, Human mutation.
[42] Subha Madhavan,et al. An informatics research agenda to support precision medicine: seven key areas , 2016, J. Am. Medical Informatics Assoc..
[43] Dana C. Crawford,et al. Unravelling the human genome–phenome relationship using phenome-wide association studies , 2016, Nature Reviews Genetics.
[44] R. Hargreaves,et al. Clinical biomarkers in drug discovery and development , 2003, Nature Reviews Drug Discovery.
[45] S. Wold,et al. Orthogonal projections to latent structures (O‐PLS) , 2002 .
[46] Mones Abu-Asab,et al. Computational Tools for Parsimony Phylogenetic Analysis of Omics Data. , 2015, Omics : a journal of integrative biology.
[47] Russ B. Altman,et al. Unmet needs: Research helps regulators do their jobs , 2015, Science Translational Medicine.
[48] J. A. Hartigan,et al. A k-means clustering algorithm , 1979 .
[49] Tudor Groza,et al. Getting Ready for the Human Phenome Project: The 2012 Forum of the Human Variome Project , 2013, Human mutation.
[50] Kevin Mills,et al. Proteomic Discovery and Development of a Multiplexed Targeted MRM-LC-MS/MS Assay for Urine Biomarkers of Extracellular Matrix Disruption in Mucopolysaccharidoses I, II, and VI. , 2015, Analytical chemistry.
[51] M Benson,et al. Clinical implications of omics and systems medicine: focus on predictive and individualized treatment , 2016, Journal of internal medicine.
[52] D. Goldstein,et al. Uncovering the roles of rare variants in common disease through whole-genome sequencing , 2010, Nature Reviews Genetics.
[53] Elias Zerhouni,et al. The need for global regulatory harmonization: A public health imperative , 2016, Science Translational Medicine.
[54] Sverre Sandberg,et al. From biomarkers to medical tests: the changing landscape of test evaluation. , 2014, Clinica chimica acta; international journal of clinical chemistry.
[55] Lennart Martens,et al. qcML: An Exchange Format for Quality Control Metrics from Mass Spectrometry Experiments , 2014, Molecular & Cellular Proteomics.
[56] M. DePristo,et al. The Genome Analysis Toolkit: a MapReduce framework for analyzing next-generation DNA sequencing data. , 2010, Genome research.
[57] Adrian Bird,et al. Perceptions of epigenetics , 2007, Nature.
[58] T. Lundstedt,et al. Multi-Organ Contribution to the Metabolic Plasma Profile Using Hierarchical Modelling , 2015, PloS one.
[59] Riccardo Miotto,et al. Translational bioinformatics in the era of real-time biomedical, health care and wellness data streams , 2016, Briefings Bioinform..
[60] J. Kreuder,et al. Metabonomics of newborn screening dried blood spot samples: a novel approach in the screening and diagnostics of inborn errors of metabolism. , 2012, Analytical chemistry.
[61] Alexander Scherl,et al. Clinical protein mass spectrometry. , 2015, Methods.
[62] H. Bayley,et al. Continuous base identification for single-molecule nanopore DNA sequencing. , 2009, Nature nanotechnology.
[63] Gunnar E. Carlsson,et al. Topology and data , 2009 .
[64] Nathan C. Sheffield,et al. Multi-Omics of Single Cells: Strategies and Applications , 2016, Trends in biotechnology.
[65] Euan A. Ashley,et al. A precision metric for clinical genome sequencing , 2016, bioRxiv.
[66] Emma L. Schymanski,et al. Mass spectral databases for LC/MS- and GC/MS-based metabolomics: state of the field and future prospects , 2016 .
[67] Christian Gieger,et al. Epigenetics meets metabolomics: an epigenome-wide association study with blood serum metabolic traits , 2013, Human molecular genetics.
[68] Marc H V Van Regenmortel,et al. Reductionism and complexity in molecular biology. Scientists now have the tools to unravel biological and overcome the limitations of reductionism. , 2004, EMBO reports.
[69] Michael E. Lassman,et al. The clinical utility of mass spectrometry based protein assays. , 2016, Clinica chimica acta; international journal of clinical chemistry.
[70] Peter Szolovits,et al. Genetic Misdiagnoses and the Potential for Health Disparities. , 2016, The New England journal of medicine.
[71] Dian Donnai,et al. NANS-mediated synthesis of sialic acid is required for brain and skeletal development , 2016, Nature Genetics.
[72] Nicola Brunetti-Pierri,et al. Inborn errors of metabolism: the flux from Mendelian to complex diseases , 2006, Nature Reviews Genetics.
[73] Adam R Ferguson,et al. Topological data analysis for discovery in preclinical spinal cord injury and traumatic brain injury , 2015, Nature Communications.
[74] Jose D. Herazo-Maya,et al. Integrative phenotyping framework (iPF): integrative clustering of multiple omics data identifies novel lung disease subphenotypes , 2015, BMC Genomics.
[75] Peter N. Robinson,et al. The Human Phenotype Ontology: Semantic Unification of Common and Rare Disease , 2015, American journal of human genetics.
[76] Ahmet Zehir,et al. Translational Bioinformatics and Clinical Research (Biomedical) Informatics. , 2016, Clinics in laboratory medicine.
[77] H. Stranneheim,et al. Exome and genome sequencing: a revolution for the discovery and diagnosis of monogenic disorders , 2016, Journal of internal medicine.
[78] Xiaoqian Jiang,et al. A community assessment of privacy preserving techniques for human genomes , 2014, BMC Medical Informatics and Decision Making.
[79] Fabian J Theis,et al. Computational analysis of cell-to-cell heterogeneity in single-cell RNA-sequencing data reveals hidden subpopulations of cells , 2015, Nature Biotechnology.
[80] Manfred Spraul,et al. NMR-Based Screening for Inborn Errors of Metabolism: Initial Results from a Study on Turkish Neonates. , 2014, JIMD reports.
[81] Michael Q. Zhang,et al. Integrative analysis of 111 reference human epigenomes , 2015, Nature.
[82] Liron Pantanowitz,et al. Pathology Informatics Essentials for Residents: A flexible informatics curriculum linked to Accreditation Council for Graduate Medical Education milestones , 2016, Journal of pathology informatics.
[83] Dustin E. Schones,et al. High-Resolution Profiling of Histone Methylations in the Human Genome , 2007, Cell.
[84] R. Tracy. ‘Deep phenotyping’: characterizing populations in the era of genomics and systems biology , 2008, Current opinion in lipidology.
[85] Eneida A. Mendonça,et al. Genetic data and electronic health records: a discussion of ethical, logistical and technological considerations , 2013, J. Am. Medical Informatics Assoc..
[86] H. Hotelling. Analysis of a complex of statistical variables into principal components. , 1933 .
[87] D. DeMets,et al. Biomarkers and surrogate endpoints: Preferred definitions and conceptual framework , 2001, Clinical pharmacology and therapeutics.
[88] John P A Ioannidis,et al. Improving Validation Practices in “Omics” Research , 2011, Science.
[89] Eric W. Deutsch,et al. File Formats Commonly Used in Mass Spectrometry Proteomics* , 2012, Molecular & Cellular Proteomics.
[90] J. Lindon,et al. 'Metabonomics': understanding the metabolic responses of living systems to pathophysiological stimuli via multivariate statistical analysis of biological NMR spectroscopic data. , 1999, Xenobiotica; the fate of foreign compounds in biological systems.
[91] Adam D. Kennedy,et al. Untargeted metabolomic analysis for the clinical screening of inborn errors of metabolism , 2015, Journal of Inherited Metabolic Disease.
[92] Rudi Balling,et al. Revolutionizing medicine in the 21st century through systems approaches. , 2012, Biotechnology journal.
[93] Gabi Kastenmüller,et al. Biochemical insights from population studies with genetics and metabolomics. , 2016, Archives of biochemistry and biophysics.
[94] S. Omholt,et al. Phenomics: the next challenge , 2010, Nature Reviews Genetics.
[95] Lennart Martens,et al. Human Proteome Project Mass Spectrometry Data Interpretation Guidelines 2.1. , 2016, Journal of proteome research.
[96] Pascal Borry,et al. Whole-genome sequencing in newborn screening? A statement on the continued importance of targeted approaches in newborn screening programmes , 2015, European Journal of Human Genetics.
[97] M. Ritchie,et al. Methods of integrating data to uncover genotype–phenotype interactions , 2015, Nature Reviews Genetics.
[98] B. Williams,et al. Mapping and quantifying mammalian transcriptomes by RNA-Seq , 2008, Nature Methods.
[99] John P. Overington,et al. An atlas of genetic influences on human blood metabolites , 2014, Nature Genetics.
[100] Michael J. Becich,et al. Next generation sequencing in clinical medicine: Challenges and lessons for pathology and biomedical informatics , 2012, Journal of pathology informatics.
[101] Rafael Artuch,et al. Targeted Next Generation Sequencing in Patients with Inborn Errors of Metabolism , 2016, PloS one.
[102] Benjamin S. Glicksberg,et al. Identification of type 2 diabetes subgroups through topological analysis of patient similarity , 2015, Science Translational Medicine.
[103] Ludovic Duponchel,et al. Topological data analysis: A promising big data exploration tool in biology, analytical chemistry and physical chemistry. , 2016, Analytica chimica acta.
[104] Arnald Alonso,et al. Analytical Methods in Untargeted Metabolomics: State of the Art in 2015 , 2015, Front. Bioeng. Biotechnol..
[105] Aurélie Labbe,et al. An evaluation of methods correcting for cell-type heterogeneity in DNA methylation studies , 2015, Genome Biology.
[106] M. Gerstein,et al. RNA-Seq: a revolutionary tool for transcriptomics , 2009, Nature Reviews Genetics.
[107] F. Collins,et al. A new initiative on precision medicine. , 2015, The New England journal of medicine.
[108] T. Veenstra,et al. Cancer biomarker discovery: Opportunities and pitfalls in analytical methods , 2011, Electrophoresis.
[109] Marie-Claude Potier,et al. Transcriptomic Approach to Lesch-Nyhan Disease , 2014, Nucleosides, nucleotides & nucleic acids.
[110] Nataša Pržulj,et al. Methods for biological data integration: perspectives and challenges , 2015, Journal of The Royal Society Interface.
[111] Abdel-Baset Halim,et al. Biomarkers in Drug Development: A Useful Tool but Discrepant Results May Have a Major Impact , 2011 .
[112] T Lecroq,et al. Bioinformatics Methods and Tools to Advance Clinical Care , 2015, Yearbook of Medical Informatics.
[113] Chris Sander,et al. Human SRMAtlas: A Resource of Targeted Assays to Quantify the Complete Human Proteome , 2016, Cell.
[114] Luigi Bouchard,et al. Epigenome-wide analysis in familial hypercholesterolemia identified new loci associated with high-density lipoprotein cholesterol concentration. , 2012, Epigenomics.
[115] Christian Gieger,et al. The Human Blood Metabolome-Transcriptome Interface , 2015, PLoS genetics.
[116] Beril Talim,et al. Use of whole-exome sequencing to determine the genetic basis of multiple mitochondrial respiratory chain complex deficiencies. , 2014, JAMA.
[117] D. Jouan-Rimbaud Bouveresse,et al. Independent components analysis with the JADE algorithm , 2012 .
[118] M. Filip,et al. A Comprehensive View of the Epigenetic Landscape. Part II: Histone Post-translational Modification, Nucleosome Level, and Chromatin Regulation by ncRNAs , 2014, Neurotoxicity Research.
[119] Ju Han Kim. Connecting the dots in translational bioinformatics: TBC 2014 collection , 2015, BMC Medical Genomics.
[120] Euan A. Ashley,et al. Medical implications of technical accuracy in genome sequencing , 2016, Genome Medicine.
[121] Ines Thiele,et al. A compendium of inborn errors of metabolism mapped onto the human metabolic network. , 2012, Molecular bioSystems.
[122] Howard Y. Chang,et al. ATAC‐seq: A Method for Assaying Chromatin Accessibility Genome‐Wide , 2015, Current protocols in molecular biology.
[123] Evan G. Williams,et al. Systems proteomics of liver mitochondria function , 2016, Science.
[124] Hugo Y. K. Lam,et al. Personal Omics Profiling Reveals Dynamic Molecular and Medical Phenotypes , 2012, Cell.
[125] Eric E. Schadt,et al. A Next Generation Multiscale View of Inborn Errors of Metabolism. , 2016, Cell metabolism.
[126] Amanda G. Paulovich,et al. An Automated and Multiplexed Method for High Throughput Peptide Immunoaffinity Enrichment and Multiple Reaction Monitoring Mass Spectrometry-based Quantification of Protein Biomarkers* , 2009, Molecular & Cellular Proteomics.
[127] Teresa M. Przytycka,et al. Chapter 5: Network Biology Approach to Complex Diseases , 2012, PLoS Comput. Biol..
[128] S. Wold,et al. PLS-regression: a basic tool of chemometrics , 2001 .
[129] Rémy Bruggmann,et al. New insights into the performance of human whole-exome capture platforms , 2015, Nucleic acids research.
[130] Alan Garny,et al. Toward a VPH/Physiome ToolKit , 2010, Wiley interdisciplinary reviews. Systems biology and medicine.
[131] E. Andres Houseman,et al. Reference-free cell mixture adjustments in analysis of DNA methylation data , 2014, Bioinform..
[132] Marek Ostaszewski,et al. Integration and Visualization of Translational Medicine Data for Better Understanding of Human Diseases , 2016, Big Data.
[133] Jun S. Liu,et al. The Genotype-Tissue Expression (GTEx) pilot analysis: Multitissue gene regulation in humans , 2015, Science.
[134] Tyrone D. Cannon,et al. Phenomics: the systematic study of phenotypes on a genome-wide scale , 2009, Neuroscience.
[135] Lennart Martens,et al. Toward More Transparent and Reproducible Omics Studies Through a Common Metadata Checklist and Data Publications , 2013, Big Data.
[136] International Human Genome Sequencing Consortium. Initial sequencing and analysis of the human genome , 2001, Nature.
[137] M. Filip,et al. A Comprehensive View of the Epigenetic Landscape Part I: DNA Methylation, Passive and Active DNA Demethylation Pathways and Histone Variants , 2014, Neurotoxicity Research.
[138] S. C. Johnson. Hierarchical clustering schemes , 1967, Psychometrika.
[139] M. Tewari,et al. The Limits of Reductionism in Medicine: Could Systems Biology Offer an Alternative? , 2006, PLoS medicine.
[140] Henry Rodriguez,et al. Four areas of engagement requiring strengthening in modern proteomics today. , 2014, Journal of proteome research.
[141] Yegappan Lakshmanan,et al. Urine proteomic analysis in cystinuric children with renal stones. , 2015, Journal of pediatric urology.
[142] E. Mardis. Next-generation sequencing platforms. , 2013, Annual review of analytical chemistry.
[143] Hanlee P. Ji,et al. Haplotyping germline and cancer genomes using high-throughput linked-read sequencing , 2015, Nature Biotechnology.
[144] Francesco Vallania,et al. Performance of common analysis methods for detecting low-frequency single nucleotide variants in targeted next-generation sequence data. , 2014, The Journal of molecular diagnostics : JMD.
[145] Corinna Cortes,et al. Support-Vector Networks , 1995, Machine Learning.
[146] F. Crick,et al. The structure of DNA. , 1953, Cold Spring Harbor symposia on quantitative biology.
[147] F Baganz,et al. Systematic functional analysis of the yeast genome. , 1998, Trends in biotechnology.
[148] C. Webber,et al. Systematic Phenomics Analysis Deconvolutes Genes Mutated in Intellectual Disability into Biologically Coherent Modules. , 2016, American journal of human genetics.
[149] Ara W. Darzi,et al. Metabolic phenotyping in clinical and surgical environments , 2012, Nature.
[150] M. Snyder,et al. High-throughput sequencing technologies. , 2015, Molecular cell.
[151] J. McPherson,et al. Coming of age: ten years of next-generation sequencing technologies , 2016, Nature Reviews Genetics.
[152] Saumya S. Jamuar,et al. Next-generation sequencing using a pre-designed gene panel for the molecular diagnosis of congenital disorders in pediatric patients , 2015, Human Genomics.
[153] J. Loeber,et al. Current status of newborn screening worldwide: 2015. , 2015, Seminars in perinatology.
[154] P. Y. Lum,et al. Extracting insights from the shape of complex data using topology , 2013, Scientific Reports.
[155] Rongxin Zhang,et al. Epigenetics: the language of the cell? , 2014, Epigenomics.
[156] H. Kitano. Systems Biology: A Brief Overview , 2002, Science.
[157] David P Bick,et al. Making a definitive diagnosis: Successful clinical application of whole exome sequencing in a child with intractable inflammatory bowel disease , 2011, Genetics in Medicine.
[158] Matthew Bower,et al. Clinical validation of targeted next-generation sequencing for inherited disorders. , 2015, Archives of pathology & laboratory medicine.
[159] Gad Getz,et al. Computational pathology: an emerging definition. , 2014, Archives of pathology & laboratory medicine.
[160] R. Lister,et al. Highly Integrated Single-Base Resolution Maps of the Epigenome in Arabidopsis , 2008, Cell.
[161] Richard Durbin,et al. Extending reference assembly models , 2015, Genome Biology.
[162] Jody C. May,et al. Advanced Multidimensional Separations in Mass Spectrometry: Navigating the Big Data Deluge. , 2016, Annual review of analytical chemistry.
[163] Magalie S Leduc,et al. Clinical whole-exome sequencing for the diagnosis of mendelian disorders. , 2013, The New England journal of medicine.
[164] R. Gerlai. Phenomics: fiction or the future? , 2002, Trends in Neurosciences.
[165] Forbes D Porter,et al. Microarray expression analysis and identification of serum biomarkers for Niemann-Pick disease, type C1. , 2012, Human molecular genetics.
[166] F. van Nieuwerburgh,et al. Library construction for next-generation sequencing: overviews and challenges. , 2014, BioTechniques.
[167] E. Marcotte,et al. Insights into the regulation of protein abundance from proteomic and transcriptomic analyses , 2012, Nature Reviews Genetics.
[168] Mahesh Yaragatti,et al. Identification of active transcriptional regulatory modules by the functional assay of DNA from nucleosome-free regions. , 2008, Genome research.
[169] P. James,et al. Protein identification in the post-genome era: the rapid rise of proteomics , 1997, Quarterly Reviews of Biophysics.
[170] Bairong Shen,et al. Evaluation and Comparison of Multiple Aligners for Next-Generation Sequencing Data Analysis , 2014, BioMed research international.
[171] Fabian J Theis,et al. Multi-omic signature of body weight change: results from a population-based cohort study , 2015, BMC Medicine.
[172] Miguel A. Aon,et al. Complex Systems Biology of Networks: The Riddle and the Challenge , 2014 .
[173] Natasa Przulj,et al. Integrative methods for analyzing big data in precision medicine , 2016, Proteomics.
[174] Olli Simell,et al. Exploring the transcriptomic variation caused by the Finnish founder mutation of lysinuric protein intolerance (LPI). , 2012, Molecular genetics and metabolism.
[175] Dan Xie,et al. Variation and Genetic Control of Protein Abundance in Humans , 2013, Nature.
[176] Mary Goldman,et al. Rapid and efficient analysis of 20,000 RNA-seq samples with Toil , 2016, bioRxiv.
[177] Pär Stattin,et al. Constrained randomization and multivariate effect projections improve information extraction and biomarker pattern discovery in metabolomics studies involving dependent samples , 2015, Metabolomics.
[178] Michael R. Speicher,et al. A survey of tools for variant analysis of next-generation genome sequencing data , 2013, Briefings Bioinform..
[179] V. Bansal,et al. The importance of phase information for human genomics , 2011, Nature Reviews Genetics.
[180] Christopher A. Miller,et al. VarScan 2: somatic mutation and copy number alteration discovery in cancer by exome sequencing. , 2012, Genome research.
[181] Aleksandar Milosavljevic,et al. Atlas2 Cloud: a framework for personal genome analysis in the cloud , 2012, BMC Genomics.
[182] D. Jeffery,et al. US Food and Drug Administration Perspectives on Clinical Mass Spectrometry. , 2016, Clinical chemistry.
[183] Ian D. Wilson,et al. Metabolic Phenotyping in Health and Disease , 2008, Cell.
[184] Abdellah Tebani,et al. Optimization of a liquid chromatography ion mobility-mass spectrometry method for untargeted metabolomics using experimental design and multivariate data analysis. , 2016, Analytica chimica acta.
[185] Alejandro Lucia,et al. A Transcriptomic Approach to Search for Novel Phenotypic Regulators in McArdle Disease , 2012, PloS one.
[186] Kwanjeera Wanichthanarak,et al. Genomic, Proteomic, and Metabolomic Data Integration Strategies , 2015, Biomarker insights.