학술논문

A Whole-Genome Analysis Framework for Effective Identification of Pathogenic Regulatory Variants in Mendelian Disease.
Document Type
article
Source
American journal of human genetics. 99(3)
Subject
Humans
Genetic Diseases
Inborn
Gene Frequency
Phenotype
Mutation
Point Mutation
Open Reading Frames
Genome
Human
Algorithms
Genome-Wide Association Study
Machine Learning
Genetic Diseases
Inborn
Genome
Human
Genetics & Heredity
Biological Sciences
Medical and Health Sciences
Language
Abstract
The interpretation of non-coding variants still constitutes a major challenge in the application of whole-genome sequencing in Mendelian disease, especially for single-nucleotide and other small non-coding variants. Here we present Genomiser, an analysis framework that is able not only to score the relevance of variation in the non-coding genome, but also to associate regulatory variants to specific Mendelian diseases. Genomiser scores variants through either existing methods such as CADD or a bespoke machine learning method and combines these with allele frequency, regulatory sequences, chromosomal topological domains, and phenotypic relevance to discover variants associated to specific Mendelian disorders. Overall, Genomiser is able to identify causal regulatory variants as the top candidate in 77% of simulated whole genomes, allowing effective detection and discovery of regulatory variants in Mendelian disease.