Cargando…

A Probabilistic Model to Predict Clinical Phenotypic Traits from Genome Sequencing

Genetic screening is becoming possible on an unprecedented scale. However, its utility remains controversial. Although most variant genotypes cannot be easily interpreted, many individuals nevertheless attempt to interpret their genetic information. Initiatives such as the Personal Genome Project (P...

Descripción completa

Detalles Bibliográficos
Autores principales: Chen, Yun-Ching, Douville, Christopher, Wang, Cheng, Niknafs, Noushin, Yeo, Grace, Beleva-Guthrie, Violeta, Carter, Hannah, Stenson, Peter D., Cooper, David N., Li, Biao, Mooney, Sean, Karchin, Rachel
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2014
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4154636/
https://www.ncbi.nlm.nih.gov/pubmed/25188385
http://dx.doi.org/10.1371/journal.pcbi.1003825
_version_ 1782333441153433600
author Chen, Yun-Ching
Douville, Christopher
Wang, Cheng
Niknafs, Noushin
Yeo, Grace
Beleva-Guthrie, Violeta
Carter, Hannah
Stenson, Peter D.
Cooper, David N.
Li, Biao
Mooney, Sean
Karchin, Rachel
author_facet Chen, Yun-Ching
Douville, Christopher
Wang, Cheng
Niknafs, Noushin
Yeo, Grace
Beleva-Guthrie, Violeta
Carter, Hannah
Stenson, Peter D.
Cooper, David N.
Li, Biao
Mooney, Sean
Karchin, Rachel
author_sort Chen, Yun-Ching
collection PubMed
description Genetic screening is becoming possible on an unprecedented scale. However, its utility remains controversial. Although most variant genotypes cannot be easily interpreted, many individuals nevertheless attempt to interpret their genetic information. Initiatives such as the Personal Genome Project (PGP) and Illumina's Understand Your Genome are sequencing thousands of adults, collecting phenotypic information and developing computational pipelines to identify the most important variant genotypes harbored by each individual. These pipelines consider database and allele frequency annotations and bioinformatics classifications. We propose that the next step will be to integrate these different sources of information to estimate the probability that a given individual has specific phenotypes of clinical interest. To this end, we have designed a Bayesian probabilistic model to predict the probability of dichotomous phenotypes. When applied to a cohort from PGP, predictions of Gilbert syndrome, Graves' disease, non-Hodgkin lymphoma, and various blood groups were accurate, as individuals manifesting the phenotype in question exhibited the highest, or among the highest, predicted probabilities. Thirty-eight PGP phenotypes (26%) were predicted with area-under-the-ROC curve (AUC)>0.7, and 23 (15.8%) of these were statistically significant, based on permutation tests. Moreover, in a Critical Assessment of Genome Interpretation (CAGI) blinded prediction experiment, the models were used to match 77 PGP genomes to phenotypic profiles, generating the most accurate prediction of 16 submissions, according to an independent assessor. Although the models are currently insufficiently accurate for diagnostic utility, we expect their performance to improve with growth of publicly available genomics data and model refinement by domain experts.
format Online
Article
Text
id pubmed-4154636
institution National Center for Biotechnology Information
language English
publishDate 2014
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-41546362014-09-08 A Probabilistic Model to Predict Clinical Phenotypic Traits from Genome Sequencing Chen, Yun-Ching Douville, Christopher Wang, Cheng Niknafs, Noushin Yeo, Grace Beleva-Guthrie, Violeta Carter, Hannah Stenson, Peter D. Cooper, David N. Li, Biao Mooney, Sean Karchin, Rachel PLoS Comput Biol Research Article Genetic screening is becoming possible on an unprecedented scale. However, its utility remains controversial. Although most variant genotypes cannot be easily interpreted, many individuals nevertheless attempt to interpret their genetic information. Initiatives such as the Personal Genome Project (PGP) and Illumina's Understand Your Genome are sequencing thousands of adults, collecting phenotypic information and developing computational pipelines to identify the most important variant genotypes harbored by each individual. These pipelines consider database and allele frequency annotations and bioinformatics classifications. We propose that the next step will be to integrate these different sources of information to estimate the probability that a given individual has specific phenotypes of clinical interest. To this end, we have designed a Bayesian probabilistic model to predict the probability of dichotomous phenotypes. When applied to a cohort from PGP, predictions of Gilbert syndrome, Graves' disease, non-Hodgkin lymphoma, and various blood groups were accurate, as individuals manifesting the phenotype in question exhibited the highest, or among the highest, predicted probabilities. Thirty-eight PGP phenotypes (26%) were predicted with area-under-the-ROC curve (AUC)>0.7, and 23 (15.8%) of these were statistically significant, based on permutation tests. Moreover, in a Critical Assessment of Genome Interpretation (CAGI) blinded prediction experiment, the models were used to match 77 PGP genomes to phenotypic profiles, generating the most accurate prediction of 16 submissions, according to an independent assessor. Although the models are currently insufficiently accurate for diagnostic utility, we expect their performance to improve with growth of publicly available genomics data and model refinement by domain experts. Public Library of Science 2014-09-04 /pmc/articles/PMC4154636/ /pubmed/25188385 http://dx.doi.org/10.1371/journal.pcbi.1003825 Text en © 2014 Chen et al http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Chen, Yun-Ching
Douville, Christopher
Wang, Cheng
Niknafs, Noushin
Yeo, Grace
Beleva-Guthrie, Violeta
Carter, Hannah
Stenson, Peter D.
Cooper, David N.
Li, Biao
Mooney, Sean
Karchin, Rachel
A Probabilistic Model to Predict Clinical Phenotypic Traits from Genome Sequencing
title A Probabilistic Model to Predict Clinical Phenotypic Traits from Genome Sequencing
title_full A Probabilistic Model to Predict Clinical Phenotypic Traits from Genome Sequencing
title_fullStr A Probabilistic Model to Predict Clinical Phenotypic Traits from Genome Sequencing
title_full_unstemmed A Probabilistic Model to Predict Clinical Phenotypic Traits from Genome Sequencing
title_short A Probabilistic Model to Predict Clinical Phenotypic Traits from Genome Sequencing
title_sort probabilistic model to predict clinical phenotypic traits from genome sequencing
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4154636/
https://www.ncbi.nlm.nih.gov/pubmed/25188385
http://dx.doi.org/10.1371/journal.pcbi.1003825
work_keys_str_mv AT chenyunching aprobabilisticmodeltopredictclinicalphenotypictraitsfromgenomesequencing
AT douvillechristopher aprobabilisticmodeltopredictclinicalphenotypictraitsfromgenomesequencing
AT wangcheng aprobabilisticmodeltopredictclinicalphenotypictraitsfromgenomesequencing
AT niknafsnoushin aprobabilisticmodeltopredictclinicalphenotypictraitsfromgenomesequencing
AT yeograce aprobabilisticmodeltopredictclinicalphenotypictraitsfromgenomesequencing
AT belevaguthrievioleta aprobabilisticmodeltopredictclinicalphenotypictraitsfromgenomesequencing
AT carterhannah aprobabilisticmodeltopredictclinicalphenotypictraitsfromgenomesequencing
AT stensonpeterd aprobabilisticmodeltopredictclinicalphenotypictraitsfromgenomesequencing
AT cooperdavidn aprobabilisticmodeltopredictclinicalphenotypictraitsfromgenomesequencing
AT libiao aprobabilisticmodeltopredictclinicalphenotypictraitsfromgenomesequencing
AT mooneysean aprobabilisticmodeltopredictclinicalphenotypictraitsfromgenomesequencing
AT karchinrachel aprobabilisticmodeltopredictclinicalphenotypictraitsfromgenomesequencing
AT chenyunching probabilisticmodeltopredictclinicalphenotypictraitsfromgenomesequencing
AT douvillechristopher probabilisticmodeltopredictclinicalphenotypictraitsfromgenomesequencing
AT wangcheng probabilisticmodeltopredictclinicalphenotypictraitsfromgenomesequencing
AT niknafsnoushin probabilisticmodeltopredictclinicalphenotypictraitsfromgenomesequencing
AT yeograce probabilisticmodeltopredictclinicalphenotypictraitsfromgenomesequencing
AT belevaguthrievioleta probabilisticmodeltopredictclinicalphenotypictraitsfromgenomesequencing
AT carterhannah probabilisticmodeltopredictclinicalphenotypictraitsfromgenomesequencing
AT stensonpeterd probabilisticmodeltopredictclinicalphenotypictraitsfromgenomesequencing
AT cooperdavidn probabilisticmodeltopredictclinicalphenotypictraitsfromgenomesequencing
AT libiao probabilisticmodeltopredictclinicalphenotypictraitsfromgenomesequencing
AT mooneysean probabilisticmodeltopredictclinicalphenotypictraitsfromgenomesequencing
AT karchinrachel probabilisticmodeltopredictclinicalphenotypictraitsfromgenomesequencing