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Comparison of common burden tests for genetic association studies of rare variants. | LitMetric

Comparison of common burden tests for genetic association studies of rare variants.

Yi Chuan

Department of Epidemiology and Biostatistics, School of Public Health, Guangdong Pharmaceutical University, Guangzhou 510310, China.

Published: February 2018

AI Article Synopsis

  • The study analyzes the statistical performance of various burden tests (like CMC, WST, SUM) in genetic association studies focused on rare variants using simulated datasets.
  • Results indicate that the type I error rate for all tests is close to 0.05, and the power of these methods varies based on factors like linkage disequilibrium (LD) and the effect direction of the variants.
  • It concludes that factors such as sample size, effect direction, and the presence of non-associated variants significantly influence the effectiveness of these burden tests, highlighting the importance of integrating prior biological information when selecting methods.

Article Abstract

Common burden tests have different statistical performance in genetic association studies of rare variants. Here, we compare the statistical performance of burden tests, such as CMC, WST, SUM and extension methods, using the computer-simulated datasets of rare variants with different parameters of sample sizes, linkage disequilibrium (LD), and different numbers of mixed non-associated variants. The simulation results showed that the type I error for all methods is near 0.05. When the rare variants had the same direction of effect, the higher LD and the less non-associated variants, the higher the power of these method, except the data adaptive SUM test. When the direction was different, the power was significantly reduced for all methods. The methods that consider the direction yielded larger statistical power than those methods without considering the effect direction, except the strong LD condition. And the larger the sample size, the larger the power. The statistical performance of burden tests is affected by a variety of factors, including the sample size, effect direction of variants, non-associated variants, and LD. Therefore, when choosing the method and setting the collection unit and weight, the prior biological information of genetic variation should be integrated to improve study efficiency.

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Source
http://dx.doi.org/10.16288/j.yczz.17-174DOI Listing

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