Understanding the genetics of systemic lupus erythematosus using Bayesian statistics and gene network analysis
Article 2020 en
Authors
SN
Seoung Wan Nam
KL
Kwang Seob Lee
JY
Jae Won Yang
Abstract
1 min read
The publication of genetic epidemiology meta-analyses has increased rapidly, but it has been suggested that many of the statistically significant results are false positive. In addition, most such meta-analyses have been redundant, duplicate, and erroneous, leading to research waste. In addition, since most claimed candidate gene associations were false-positives, correctly interpreting the published results is important. In this review, we emphasize the importance of interpreting the results of genetic epidemiology meta-analyses using Bayesian statistics and gene network analysis, which could be applied in other diseases.
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