학술논문

Shared Genomic Regions Underlie Natural Variation in Diverse Toxin Responses
Document Type
article
Source
Genetics. 210(4)
Subject
Biological Sciences
Genetics
Biotechnology
Human Genome
Generic health relevance
Alleles
Animals
Caenorhabditis elegans
Chromosome Mapping
Epistasis
Genetic
Genomics
Metals
Heavy
Neurotoxins
Pesticides
Quantitative Trait Loci
C. elegans
QTL
genetic interactions
toxin
pleiotropy
Developmental Biology
Biochemistry and cell biology
Language
Abstract
Phenotypic complexity is caused by the contributions of environmental factors and multiple genetic loci, interacting or acting independently. Studies of yeast and Arabidopsis often find that the majority of natural variation across phenotypes is attributable to independent additive quantitative trait loci (QTL). Detected loci in these organisms explain most of the estimated heritable variation. By contrast, many heritable components underlying phenotypic variation in metazoan models remain undetected. Before the relative impacts of additive and interactive variance components on metazoan phenotypic variation can be dissected, high replication and precise phenotypic measurements are required to obtain sufficient statistical power to detect loci contributing to this missing heritability. Here, we used a panel of 296 recombinant inbred advanced intercross lines of Caenorhabditis elegans and a high-throughput fitness assay to detect loci underlying responses to 16 different toxins, including heavy metals, chemotherapeutic drugs, pesticides, and neuropharmaceuticals. Using linkage mapping, we identified 82 QTL that underlie variation in responses to these toxins, and predicted the relative contributions of additive loci and genetic interactions across various growth parameters. Additionally, we identified three genomic regions that impact responses to multiple classes of toxins. These QTL hotspots could represent common factors impacting toxin responses. We went further to generate near-isogenic lines and chromosome substitution strains, and then experimentally validated these QTL hotspots, implicating additive and interactive loci that underlie toxin-response variation.