| Literature DB >> 28634997 |
Roxana Daneshjou1, Yanran Wang2, Yana Bromberg2, Samuele Bovo3, Pier L Martelli3, Giulia Babbi3, Pietro Di Lena4, Rita Casadio3,5, Matthew Edwards6, David Gifford6, David T Jones7, Laksshman Sundaram8, Rajendra Rana Bhat8, Xiaolin Li8, Lipika R Pal9, Kunal Kundu9,10, Yizhou Yin9,10, John Moult9,11, Yuxiang Jiang12, Vikas Pejaver12,13, Kymberleigh A Pagel12, Biao Li14, Sean D Mooney13, Predrag Radivojac12, Sohela Shah15, Marco Carraro16, Alessandra Gasparini16,17, Emanuela Leonardi17, Manuel Giollo16,18, Carlo Ferrari18, Silvio C E Tosatto16,19, Eran Bachar20, Johnathan R Azaria20, Yanay Ofran20, Ron Unger20, Abhishek Niroula21, Mauno Vihinen21, Billy Chang22, Maggie H Wang22,23, Andre Franke24, Britt-Sabina Petersen24, Mehdi Pirooznia25, Peter Zandi26, Richard McCombie27, James B Potash28, Russ B Altman1, Teri E Klein1, Roger A Hoskins29, Susanna Repo29, Steven E Brenner29, Alexander A Morgan30.
Abstract
Precision medicine aims to predict a patient's disease risk and best therapeutic options by using that individual's genetic sequencing data. The Critical Assessment of Genome Interpretation (CAGI) is a community experiment consisting of genotype-phenotype prediction challenges; participants build models, undergo assessment, and share key findings. For CAGI 4, three challenges involved using exome-sequencing data: Crohn's disease, bipolar disorder, and warfarin dosing. Previous CAGI challenges included prior versions of the Crohn's disease challenge. Here, we discuss the range of techniques used for phenotype prediction as well as the methods used for assessing predictive models. Additionally, we outline some of the difficulties associated with making predictions and evaluating them. The lessons learned from the exome challenges can be applied to both research and clinical efforts to improve phenotype prediction from genotype. In addition, these challenges serve as a vehicle for sharing clinical and research exome data in a secure manner with scientists who have a broad range of expertise, contributing to a collaborative effort to advance our understanding of genotype-phenotype relationships.Entities:
Keywords: Crohn's disease; bipolar disorder; exomes; machine learning; phenotype prediction; warfarin
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Year: 2017 PMID: 28634997 PMCID: PMC5600620 DOI: 10.1002/humu.23280
Source DB: PubMed Journal: Hum Mutat ISSN: 1059-7794 Impact factor: 4.878