Genetic causal inference between amblyopia and perinatal factors

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Ju-Yeun Lee
Sangjun Lee
Sue K. Park
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[1] Seoul National University College of Medicine,Department of Preventive Medicine
[2] Seoul National University College of Medicine,Integrated Major in Innovative Medical Science
[3] Hanyang University College of Medicine,Department of Ophthalmology, Myongji Hospital
[4] Seoul National University,Cancer Research Institute
[5] Seoul National University Graduated School,Department of Biomedicine Science
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Amblyopia is a common visual disorder that causes significant vision problems globally. Most non-ocular risk factors for amblyopia are closely related to the intrauterine environment, and are strongly influenced by parent-origin effects. Parent-origin perinatal factors may have a direct causal inference on amblyopia development; therefore, we investigated the causal association between perinatal factors and amblyopia risk using a one-sample Mendelian Randomization (MR) with data from the UK Biobank Cohort Data (UKBB). Four distinct MR methods were employed to analyze the association between three perinatal factors (birth weight [BW], maternal smoking, and breastfeeding) and amblyopia risk, based on the summary statistics of genome-wide association studies in the European population. The inverse variance weighting method showed an inverse causal association between BW and amblyopia risk (odds ratio, 0.48 [95% CI, 0.29–0.80]; p = 0.004). Maternal smoking and breastfeeding were not causally associated with amblyopia risk. Our findings provided a possible evidence of a significant genetic causal association between low BW and increased amblyopia risk. This evidence may highlight the potential of BW as a predictive factor for visual maldevelopment and the need for careful management of amblyopia risk in patients with low BW.
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