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Single subject transcriptome analysis to identify functionally signed gene set or pathway activity

Analysis of single-subject transcriptome response data is an unmet need of precision medicine, made challenging by the high dimension, dynamic nature and difficulty in extracting meaningful signals from biological or stochastic noise. We have proposed a method for single subject analysis that uses a...

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Autores principales: Berghout, Joanne, Li, Qike, Pouladi, Nima, Li, Jianrong, Lussier, Yves A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5730358/
https://www.ncbi.nlm.nih.gov/pubmed/29218900
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author Berghout, Joanne
Li, Qike
Pouladi, Nima
Li, Jianrong
Lussier, Yves A.
author_facet Berghout, Joanne
Li, Qike
Pouladi, Nima
Li, Jianrong
Lussier, Yves A.
author_sort Berghout, Joanne
collection PubMed
description Analysis of single-subject transcriptome response data is an unmet need of precision medicine, made challenging by the high dimension, dynamic nature and difficulty in extracting meaningful signals from biological or stochastic noise. We have proposed a method for single subject analysis that uses a mixture model for transcript fold-change clustering from isogenically paired samples, followed by integration of these distributions with Gene Ontology Biological Processes (GO-BP) to reduce dimension and identify functional attributes. We then extended these methods to develop functional signing metrics for gene set process regulation by incorporating biological repressor relationships encoded in GO-BP as negatively_regulates edges. Results revealed reproducible and biologically meaningful signals from analysis of a single subject's response, opening the door to future transcriptomic studies where subject and resource availability are currently limiting. We used inbred mouse strains fed different diets to provide isogenic biological replicates, permitting rigorous validation of our method. We compared significant genotype-specific GO-BP term results for overlap and rank order across three replicate pairs per genotype, and cross-methods to reference standards (limma+FET, SAM+FET, and GSEA). All single-subject analytics findings were robust and highly reproducible (median area under the ROC curve=0.96, n=24 genotypes × 3 replicates), providing confidence and validation of this approach for analyses in single subjects. R code is available online at http://www.lussiergroup.org/publications/PathwayActivity
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spelling pubmed-57303582018-01-01 Single subject transcriptome analysis to identify functionally signed gene set or pathway activity Berghout, Joanne Li, Qike Pouladi, Nima Li, Jianrong Lussier, Yves A. Pac Symp Biocomput Article Analysis of single-subject transcriptome response data is an unmet need of precision medicine, made challenging by the high dimension, dynamic nature and difficulty in extracting meaningful signals from biological or stochastic noise. We have proposed a method for single subject analysis that uses a mixture model for transcript fold-change clustering from isogenically paired samples, followed by integration of these distributions with Gene Ontology Biological Processes (GO-BP) to reduce dimension and identify functional attributes. We then extended these methods to develop functional signing metrics for gene set process regulation by incorporating biological repressor relationships encoded in GO-BP as negatively_regulates edges. Results revealed reproducible and biologically meaningful signals from analysis of a single subject's response, opening the door to future transcriptomic studies where subject and resource availability are currently limiting. We used inbred mouse strains fed different diets to provide isogenic biological replicates, permitting rigorous validation of our method. We compared significant genotype-specific GO-BP term results for overlap and rank order across three replicate pairs per genotype, and cross-methods to reference standards (limma+FET, SAM+FET, and GSEA). All single-subject analytics findings were robust and highly reproducible (median area under the ROC curve=0.96, n=24 genotypes × 3 replicates), providing confidence and validation of this approach for analyses in single subjects. R code is available online at http://www.lussiergroup.org/publications/PathwayActivity 2018 /pmc/articles/PMC5730358/ /pubmed/29218900 Text en http://creativecommons.org/licenses/by/2.0/ Open Access published by World Scientific Publishing Company and distributed under the terms of the Creative Commons Attribution Non-Commercial (CC BY-NC) 4.0 License.
spellingShingle Article
Berghout, Joanne
Li, Qike
Pouladi, Nima
Li, Jianrong
Lussier, Yves A.
Single subject transcriptome analysis to identify functionally signed gene set or pathway activity
title Single subject transcriptome analysis to identify functionally signed gene set or pathway activity
title_full Single subject transcriptome analysis to identify functionally signed gene set or pathway activity
title_fullStr Single subject transcriptome analysis to identify functionally signed gene set or pathway activity
title_full_unstemmed Single subject transcriptome analysis to identify functionally signed gene set or pathway activity
title_short Single subject transcriptome analysis to identify functionally signed gene set or pathway activity
title_sort single subject transcriptome analysis to identify functionally signed gene set or pathway activity
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5730358/
https://www.ncbi.nlm.nih.gov/pubmed/29218900
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