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Candidate Explorer: a tool for discovery, evaluation, and display of mutations causing significant immune phenotypes

Authors :
Priscilla Anderton
Stephen Aplin Lyon
Zhao Zhang
Takuma Misawa
Meron Tadesse
Duanwu Zhang
Tao Yue
Miao Tang
Lindsay Scott
Jeffrey A. SoRelle
Hexin Shi
Jennifer Cardin
Sydney Cooper
Jiexia Quan
Jin Huk Choi
Nathan Stewart
Emre E. Turer
Chun Hui Bu
Sara Schneider
Xue Zhong
Dawson Medler
Katie Keller
Alexyss Johnson
Brandon Nguyen
Darui Xu
Braden Hayse
Bruce Beutler
Lei Sun
Jianhui Wang
Evan Nair-Gill
Edward Rodriguez
Aijie Liu
Sara Hildebrand
Qihua Sun
Andrew Wadley
Sara Mazal
Xiaohong Li
Gabrielle Coolbaugh
Ying Wang
Rochelle Simpson
Eva Marie Y. Moresco
John Santoyo
Baifang Qin
Roxana Farokhnia
Andrew Sakla
Amy Bronikowski
Hannah Coco
Publication Year :
2020
Publisher :
Cold Spring Harbor Laboratory, 2020.

Abstract

When applied to immunity, forward genetic studies use meiotic mapping to provide strong statistical evidence that a particular mutation is causative of a particular immune phenotype. Notwithstanding this, co-segregation of multiple mutations, occasional unawareness of mutations, and paucity of homozygotes may lead to erroneous declarations of cause and effect. We sought to improve the selection of authentic causative mutations using a machine learning software tool, Candidate Explorer (CE), which integrates 65 data features into a single numeric score, mathematically convertible to the likelihood of verification of any putative mutation-phenotype association. CE has identified most genes within which mutations can be causative of flow cytometric phenovariation in Mus musculus. The majority of these genes were not previously known to support immune function or homeostasis. Mouse geneticists will find CE data informative in identifying causative mutations within quantitative trait loci, while clinical geneticists may use CE to help connect causative variants with rare heritable diseases of immunity, even in the absence of linkage information. CE displays integrated mutation, phenotype, and linkage data, and is freely available for query online.

Details

Database :
OpenAIRE
Accession number :
edsair.doi...........4269fd5529c6dce400ad68cea677a9ea
Full Text :
https://doi.org/10.1101/2020.11.07.371914