Digenic Analysis Finds Highly Interactive Genetic Variants Underlying Polygenic Traits
Gao Wang, Jurg Ott

TL;DR
This paper introduces a new method to find interacting genetic variants in complex diseases like AMD and Parkinson's by analyzing genotype pairs.
Contribution
The novel approach uses a statistical framework to identify highly connected genetic variants in polygenic traits through digenic analysis.
Findings
AMD genetic variants are more interconnected than those in Parkinson's Disease.
The method identified 12 and 8 significant variants for AMD and PD, respectively.
Some identified variants match results from other machine learning methods.
Abstract
We briefly review our recently published approach to mining digenic genotype patterns, which consist of two genotypes each originating in a different DNA variant. We do this for a genetic case-control study by evaluating all possible pairs of genotypes, distributing the workload over numerous CPUs (threads) in a high-performance computing environment and apply our methods to two known datasets, age-related macular degeneration (AMD) and Parkinson Disease (PD). Based on a list of (e.g., 100,000) genotype pairs with largest genotype pair frequency differences between cases and controls, we determine the number Nu of unique variants occurring in this list. For each unique variant, we find the number of genotype pairs it participates in, which identifies a set of variants “connected” with the given unique variant. Among the total of variants “connected” with all unique variants, only a…
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Taxonomy
TopicsBioinformatics and Genomic Networks · Genetic Associations and Epidemiology · Gene expression and cancer classification
