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Gene-Based Nonparametric Testing of Interactions Using Distance Correlation Coefficient in Case-Control Association Studies. | LitMetric

Gene-Based Nonparametric Testing of Interactions Using Distance Correlation Coefficient in Case-Control Association Studies.

Genes (Basel)

Department of Biological Statistics and Computational Biology, Cornell University, Ithaca, NY 14853, USA.

Published: December 2018

AI Article Synopsis

  • Recent gene-based methods for identifying gene-gene interactions in GWAS are gaining traction due to their enhanced statistical power and biological relevance.
  • These methods often rely on strong assumptions about the relationship between traits and single-nucleotide polymorphisms, which can reduce their effectiveness.
  • The authors introduce a new approach, GBDcor, which uses distance correlation to measure interactions between genes, demonstrating better accuracy in detecting these interactions in both simulated and real-world datasets.

Article Abstract

Among the various statistical methods for identifying gene⁻gene interactions in qualitative genome-wide association studies (GWAS), gene-based methods have recently grown in popularity because they confer advantages in both statistical power and biological interpretability. However, most of these methods make strong assumptions about the form of the relationship between traits and single-nucleotide polymorphisms, which result in limited statistical power. In this paper, we propose a gene-based method based on the distance correlation coefficient called gene-based gene-gene interaction via distance correlation coefficient (GBDcor). The distance correlation (dCor) is a measurement of the dependency between two random vectors with arbitrary, and not necessarily equal, dimensions. We used the difference in dCor in case and control datasets as an indicator of gene⁻gene interaction, which was based on the assumption that the joint distribution of two genes in case subjects and in control subjects should not be significantly different if the two genes do not interact. We designed a permutation-based statistical test to evaluate the difference between dCor in cases and controls for a pair of genes, and we provided the -value for the statistic to represent the significance of the interaction between the two genes. In experiments with both simulated and real-world data, our method outperformed previous approaches in detecting interactions accurately.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC6316506PMC
http://dx.doi.org/10.3390/genes9120608DOI Listing

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