Department of Computer Science, New Mexico State University, Las Cruces, NM, USA.
MS Program in Bioinformatics, Department of Computer Science, New Mexico State University, Las Cruces, NM, USA.
Mol Genet Genomics. 2022 Jul;297(4):911-924. doi: 10.1007/s00438-022-01893-3. Epub 2022 May 23.
Countering prior beliefs that epistasis is rare, genomics advancements suggest the other way. Current practice often filters out genomic loci with low variant counts before detecting epistasis. We argue that this practice is far from optimal because it can throw away strong epistatic patterns. Instead, we present the compensated Sharma-Song test to infer genetic epistasis in genome-wide association studies by differential departure from independence. The test does not require a minimum number of replicates for each variant. We also introduce algorithms to simulate epistatic patterns that differentially depart from independence. Using two simulators, the test performed comparably to the original Sharma-Song test when variant frequencies at a locus are marginally uniform; encouragingly, it has a marked advantage over alternatives when variant frequencies are marginally nonuniform. The test further revealed uniquely clean epistatic variants associated with chicken abdominal fat content that are not prioritized by other methods. Genes involved in most numbers of inferred epistasis between single nucleotide polymorphisms (SNPs) belong to pathways known for obesity regulation; many top SNPs are located on chromosome 20 and in intergenic regions. Measuring differential departure from independence, the compensated Sharma-Song test offers a practical choice for studying epistasis robust to nonuniform genetic variant frequencies.
先前的观点认为上位性很少见,但基因组学的进步表明并非如此。目前的实践通常在检测上位性之前,过滤掉具有低变异计数的基因组基因座。我们认为这种做法远非最优,因为它可能会丢弃强上位性模式。相反,我们提出了补偿 Sharma-Song 检验,通过差异独立性来推断全基因组关联研究中的遗传上位性。该检验不需要为每个变体设置最小的重复次数。我们还引入了算法来模拟差异独立性的上位性模式。使用两个模拟器,当基因座上的变体频率略有均匀时,该检验与原始 Sharma-Song 检验的性能相当;令人鼓舞的是,当变体频率略有不均匀时,它比其他替代方法具有明显的优势。该检验进一步揭示了与鸡腹脂含量相关的独特、干净的上位性变体,这些变体不受其他方法的重视。在推断出的单核苷酸多态性 (SNP) 之间的上位性中,涉及数量最多的基因属于肥胖调节途径;许多顶级 SNP 位于第 20 号染色体和基因间区域。补偿 Sharma-Song 检验通过测量差异独立性,为研究不受遗传变异频率不均匀影响的上位性提供了一种实用的选择。