A scoping review of statistical methods to investigate colocalization between genetic associations and microRNA expression in osteoarthritis

Kathleen Zang , Myriam Brossard , Thomas Wilson , Shabana Amanda Ali , Osvaldo Espin-Garcia
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引用次数: 0

Abstract

Background

Genetic colocalization analysis is a statistical method that evaluates whether two traits (e.g., osteoarthritis [OA] risk and microRNA [miRNA] expression levels) share the same or distinct genetic association signals in a locus typically identified in genome-wide association studies (GWAS). This method is useful for providing insights into the biological relevance of genetic association signals, particularly in intergenic regions, which can help to elucidate disease mechanisms in OA and other complex traits.

Objectives

To review the existing literature on genetic colocalization methods, assess their suitability for studying OA, and investigate their capacity to integrate miRNA data, while bearing in view their statistical assumptions.

Design

We followed scoping review methodology and used Covidence software for data management. Search terms for colocalization, GWAS, and genetic or statistical models were used in the databases MEDLINE and EMBASE, searched till March 4, 2024.

Results

Our search returned 546 peer-reviewed papers, of which 96 were included following title/abstract and full-text screening. Based on both cumulative and annual publication counts, the most cited method for colocalization analysis was coloc. Four papers examined OA-related phenotypes, and none examined miRNA. An approach to colocalization analysis using miRNA was postulated based on further hand-searching.

Conclusions

Colocalization analysis is a largely unexplored method in OA. Many of the approaches to colocalization analysis identified in this review, including the integration of GWAS and miRNA data, may help to elucidate genetic and epigenetic factors implicated in OA and other complex traits.
研究骨关节炎中遗传关联与 microRNA 表达之间共定位的统计方法范围综述
背景遗传共定位分析是一种统计方法,用于评估两个性状(如骨关节炎[OA]风险和microRNA[miRNA]表达水平)在全基因组关联研究(GWAS)中通常确定的位点上是否具有相同或不同的遗传关联信号。这种方法有助于深入了解遗传关联信号的生物学相关性,尤其是基因间区域的相关性,从而有助于阐明 OA 和其他复杂性状的疾病机理。目的综述有关遗传共定位方法的现有文献,评估这些方法对研究 OA 的适用性,并研究它们整合 miRNA 数据的能力,同时考虑到它们的统计假设。在 MEDLINE 和 EMBASE 数据库中使用了共定位、GWAS 和遗传或统计模型等检索词,检索期至 2024 年 3 月 4 日。结果我们检索到了 546 篇经同行评审的论文,其中 96 篇经过标题/摘要和全文筛选后被收录。根据累计和年度发表论文数,被引用最多的共聚焦分析方法是coloc。四篇论文研究了 OA 相关表型,没有一篇研究 miRNA。在进一步手工搜索的基础上,推测出了一种利用 miRNA 进行共定位分析的方法。本综述中确定的许多共定位分析方法,包括整合 GWAS 和 miRNA 数据,可能有助于阐明与 OA 和其他复杂性状有关的遗传和表观遗传因素。
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来源期刊
Osteoarthritis and cartilage open
Osteoarthritis and cartilage open Orthopedics, Sports Medicine and Rehabilitation
CiteScore
3.30
自引率
0.00%
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