The Transcriptomic Toolbox: Resources for Interpreting Large Gene Expression Data within a Precision Medicine Context for Metabolic Disease Atherosclerosis

As one of the most widespread metabolic diseases, atherosclerosis affects nearly everyone as they age; arteries gradually narrow from plaque accumulation over time reducing oxygenated blood flow to central and periphery causing heart disease, stroke, kidney problems, and even pulmonary disease. Pers...

Full description

Bibliographic Details
Main Authors: Caralina Marín de Evsikova, Isaac D. Raplee, John Lockhart, Gilberto Jaimes, Alexei V. Evsikov
Format: Article
Language:English
Published: MDPI AG 2019-04-01
Series:Journal of Personalized Medicine
Subjects:
Online Access:https://www.mdpi.com/2075-4426/9/2/21
id doaj-ee38d26ebac744d481b98540720f4643
record_format Article
spelling doaj-ee38d26ebac744d481b98540720f46432020-11-24T21:40:43ZengMDPI AGJournal of Personalized Medicine2075-44262019-04-01922110.3390/jpm9020021jpm9020021The Transcriptomic Toolbox: Resources for Interpreting Large Gene Expression Data within a Precision Medicine Context for Metabolic Disease AtherosclerosisCaralina Marín de Evsikova0Isaac D. Raplee1John Lockhart2Gilberto Jaimes3Alexei V. Evsikov4Department of Molecular Medicine, Morsani College of Medicine, University of South Florida, Tampa, FL 33612, USADepartment of Molecular Medicine, Morsani College of Medicine, University of South Florida, Tampa, FL 33612, USADepartment of Molecular Medicine, Morsani College of Medicine, University of South Florida, Tampa, FL 33612, USADepartment of Molecular Medicine, Morsani College of Medicine, University of South Florida, Tampa, FL 33612, USAEpigenetics & Functional Genomics Laboratories, Department of Research and Development, Bay Pines Veteran Administration Healthcare System, Bay Pines, FL 33744, USAAs one of the most widespread metabolic diseases, atherosclerosis affects nearly everyone as they age; arteries gradually narrow from plaque accumulation over time reducing oxygenated blood flow to central and periphery causing heart disease, stroke, kidney problems, and even pulmonary disease. Personalized medicine promises to bring treatments based on individual genome sequencing that precisely target the molecular pathways underlying atherosclerosis and its symptoms, but to date only a few genotypes have been identified. A promising alternative to this genetic approach is the identification of pathways altered in atherosclerosis by transcriptome analysis of atherosclerotic tissues to target specific aspects of disease. Transcriptomics is a potentially useful tool for both diagnostics and discovery science, exposing novel cellular and molecular mechanisms in clinical and translational models, and depending on experimental design to identify and test novel therapeutics. The cost and time required for transcriptome analysis has been greatly reduced by the development of next generation sequencing. The goal of this resource article is to provide background and a guide to appropriate technologies and downstream analyses in transcriptomics experiments generating ever-increasing amounts of gene expression data.https://www.mdpi.com/2075-4426/9/2/21atherosclerosiscoronary aortic diseasegene set enrichment analysisheart diseasemetabolic diseasetranscriptomicspathway enrichment analysisRNA-seq analysissecondary gene expression analysis
collection DOAJ
language English
format Article
sources DOAJ
author Caralina Marín de Evsikova
Isaac D. Raplee
John Lockhart
Gilberto Jaimes
Alexei V. Evsikov
spellingShingle Caralina Marín de Evsikova
Isaac D. Raplee
John Lockhart
Gilberto Jaimes
Alexei V. Evsikov
The Transcriptomic Toolbox: Resources for Interpreting Large Gene Expression Data within a Precision Medicine Context for Metabolic Disease Atherosclerosis
Journal of Personalized Medicine
atherosclerosis
coronary aortic disease
gene set enrichment analysis
heart disease
metabolic disease
transcriptomics
pathway enrichment analysis
RNA-seq analysis
secondary gene expression analysis
author_facet Caralina Marín de Evsikova
Isaac D. Raplee
John Lockhart
Gilberto Jaimes
Alexei V. Evsikov
author_sort Caralina Marín de Evsikova
title The Transcriptomic Toolbox: Resources for Interpreting Large Gene Expression Data within a Precision Medicine Context for Metabolic Disease Atherosclerosis
title_short The Transcriptomic Toolbox: Resources for Interpreting Large Gene Expression Data within a Precision Medicine Context for Metabolic Disease Atherosclerosis
title_full The Transcriptomic Toolbox: Resources for Interpreting Large Gene Expression Data within a Precision Medicine Context for Metabolic Disease Atherosclerosis
title_fullStr The Transcriptomic Toolbox: Resources for Interpreting Large Gene Expression Data within a Precision Medicine Context for Metabolic Disease Atherosclerosis
title_full_unstemmed The Transcriptomic Toolbox: Resources for Interpreting Large Gene Expression Data within a Precision Medicine Context for Metabolic Disease Atherosclerosis
title_sort transcriptomic toolbox: resources for interpreting large gene expression data within a precision medicine context for metabolic disease atherosclerosis
publisher MDPI AG
series Journal of Personalized Medicine
issn 2075-4426
publishDate 2019-04-01
description As one of the most widespread metabolic diseases, atherosclerosis affects nearly everyone as they age; arteries gradually narrow from plaque accumulation over time reducing oxygenated blood flow to central and periphery causing heart disease, stroke, kidney problems, and even pulmonary disease. Personalized medicine promises to bring treatments based on individual genome sequencing that precisely target the molecular pathways underlying atherosclerosis and its symptoms, but to date only a few genotypes have been identified. A promising alternative to this genetic approach is the identification of pathways altered in atherosclerosis by transcriptome analysis of atherosclerotic tissues to target specific aspects of disease. Transcriptomics is a potentially useful tool for both diagnostics and discovery science, exposing novel cellular and molecular mechanisms in clinical and translational models, and depending on experimental design to identify and test novel therapeutics. The cost and time required for transcriptome analysis has been greatly reduced by the development of next generation sequencing. The goal of this resource article is to provide background and a guide to appropriate technologies and downstream analyses in transcriptomics experiments generating ever-increasing amounts of gene expression data.
topic atherosclerosis
coronary aortic disease
gene set enrichment analysis
heart disease
metabolic disease
transcriptomics
pathway enrichment analysis
RNA-seq analysis
secondary gene expression analysis
url https://www.mdpi.com/2075-4426/9/2/21
work_keys_str_mv AT caralinamarindeevsikova thetranscriptomictoolboxresourcesforinterpretinglargegeneexpressiondatawithinaprecisionmedicinecontextformetabolicdiseaseatherosclerosis
AT isaacdraplee thetranscriptomictoolboxresourcesforinterpretinglargegeneexpressiondatawithinaprecisionmedicinecontextformetabolicdiseaseatherosclerosis
AT johnlockhart thetranscriptomictoolboxresourcesforinterpretinglargegeneexpressiondatawithinaprecisionmedicinecontextformetabolicdiseaseatherosclerosis
AT gilbertojaimes thetranscriptomictoolboxresourcesforinterpretinglargegeneexpressiondatawithinaprecisionmedicinecontextformetabolicdiseaseatherosclerosis
AT alexeivevsikov thetranscriptomictoolboxresourcesforinterpretinglargegeneexpressiondatawithinaprecisionmedicinecontextformetabolicdiseaseatherosclerosis
AT caralinamarindeevsikova transcriptomictoolboxresourcesforinterpretinglargegeneexpressiondatawithinaprecisionmedicinecontextformetabolicdiseaseatherosclerosis
AT isaacdraplee transcriptomictoolboxresourcesforinterpretinglargegeneexpressiondatawithinaprecisionmedicinecontextformetabolicdiseaseatherosclerosis
AT johnlockhart transcriptomictoolboxresourcesforinterpretinglargegeneexpressiondatawithinaprecisionmedicinecontextformetabolicdiseaseatherosclerosis
AT gilbertojaimes transcriptomictoolboxresourcesforinterpretinglargegeneexpressiondatawithinaprecisionmedicinecontextformetabolicdiseaseatherosclerosis
AT alexeivevsikov transcriptomictoolboxresourcesforinterpretinglargegeneexpressiondatawithinaprecisionmedicinecontextformetabolicdiseaseatherosclerosis
_version_ 1725924999894663168