학술논문

Matching phenotypes to whole genomes: Lessons learned from four iterations of the personal genome project community challenges
Document Type
article
Source
Human Mutation. 38(9)
Subject
Biological Sciences
Bioinformatics and Computational Biology
Genetics
Human Genome
Biotechnology
Good Health and Well Being
Area Under Curve
Genetic Predisposition to Disease
High-Throughput Nucleotide Sequencing
Human Genome Project
Humans
Phenotype
Quantitative Trait Loci
Whole Genome Sequencing
biomedical informatics
community challenge
critical assessment
genome
genome interpretation
open consent
personal genome project
phenotype
Clinical Sciences
Genetics & Heredity
Clinical sciences
Language
Abstract
The advent of next-generation sequencing has dramatically decreased the cost for whole-genome sequencing and increased the viability for its application in research and clinical care. The Personal Genome Project (PGP) provides unrestricted access to genomes of individuals and their associated phenotypes. This resource enabled the Critical Assessment of Genome Interpretation (CAGI) to create a community challenge to assess the bioinformatics community's ability to predict traits from whole genomes. In the CAGI PGP challenge, researchers were asked to predict whether an individual had a particular trait or profile based on their whole genome. Several approaches were used to assess submissions, including ROC AUC (area under receiver operating characteristic curve), probability rankings, the number of correct predictions, and statistical significance simulations. Overall, we found that prediction of individual traits is difficult, relying on a strong knowledge of trait frequency within the general population, whereas matching genomes to trait profiles relies heavily upon a small number of common traits including ancestry, blood type, and eye color. When a rare genetic disorder is present, profiles can be matched when one or more pathogenic variants are identified. Prediction accuracy has improved substantially over the last 6 years due to improved methodology and a better understanding of features.