Mendelian randomization analyses in ocular disease: a powerful approach to causal inference with human genetic data

被引:0
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作者
Jiaxin Li
Cong Li
Yu Huang
Peng Guan
Desheng Huang
Honghua Yu
Xiaohong Yang
Lei Liu
机构
[1] China Medical University,Department of Epidemiology, School of Public Health
[2] Guangdong Provincial People’s Hospital,Guangdong Eye Institute, Department of Ophthalmology
[3] Guangdong Academy of Medical Sciences,Guangdong Cardiovascular Institute
[4] Guangdong Provincial People’s Hospital,Department of Mathematics, School of Fundamental Sciences
[5] Guangdong Academy of Medical Sciences,undefined
[6] China Medical University,undefined
关键词
Causality; Eye disease; Instrumental variables; Mendelian randomization;
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摘要
Ophthalmic epidemiology is concerned with the prevalence, distribution and other factors relating to human eye disease. While observational studies cannot avoid confounding factors from interventions, human eye composition and structure are unique, thus, eye disease pathogenesis, which greatly impairs quality of life and visual health, remains to be fully explored. Notwithstanding, inheritance has had a vital role in ophthalmic disease. Mendelian randomization (MR) is an emerging method that uses genetic variations as instrumental variables (IVs) to avoid confounders and reverse causality issues; it reveals causal relationships between exposure and a range of eyes disorders. Thus far, many MR studies have identified potentially causal associations between lifestyles or biological exposures and eye diseases, thus providing opportunities for further mechanistic research, and interventional development. However, MR results/data must be interpreted based on comprehensive evidence, whereas MR applications in ophthalmic epidemiology have some limitations worth exploring. Here, we review key principles, assumptions and MR methods, summarise contemporary evidence from MR studies on eye disease and provide new ideas uncovering aetiology in ophthalmology.
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