| Literature DB >> 35480319 |
Hong Wang1,2, Liansheng Li1,3, Wencan Wang1,4, Hao Wang1, Youyuan Zhuang1, Xiaoyan Lu1, Guosi Zhang1, Siyu Wang1, Peng Lin1, Chong Chen1, Yu Bai2, Qi Chen1, Hao Chen1, Jia Qu1,2, Liangde Xu1,2.
Abstract
Background: Myopia is the most common visual impairment among Chinese children and adolescents. The purpose of this study is to explore key interventions for myopia prevalence, especially for early-onset myopia and high myopia.Entities:
Keywords: age; assembled myopia predictor; correct posture; multifactor; myopia
Year: 2022 PMID: 35480319 PMCID: PMC9035486 DOI: 10.3389/fgene.2022.861164
Source DB: PubMed Journal: Front Genet ISSN: 1664-8021 Impact factor: 4.772
FIGURE 1Flowchart and distribution of the study cohort. (A) Numbers of participants. (B) Distribution of visual states in our cohort. (C) Age distribution of schoolchildren with various visual states. (D) Height distribution. (E) Weight distribution.
FIGURE 2Independent risk factors for myopia or high myopia evaluated via univariate regression analysis.
FIGURE 3Model performance comparison. (A) Comparison of ROC curves for the MAP model and the other ML models of myopia prediction in the training cohort. (B) Comparison of ROC curves for the MAP model and the other ML models of myopia prediction in the validation cohort. (C) Comparison of ROC curves for the MAP model and the other ML models of high myopia prediction in the training cohort. (D) Comparison of ROC curves for the MAP model and the other ML models of high myopia prediction in the validation cohort. (E) The Kaplan–Meier curves for developing myopia among students in different risk groups. Shaded areas indicate 95% confidence intervals. (F) The Kaplan–Meier curves for developing high myopia among students in different risk groups.
FIGURE 4Nomogram of the MAP model to evaluate the prevalence of myopia. (A) Myopia modeling. By optimizing the indicators using the training cohort, we set the threshold of 0.5 for assigning the high risk. (B) High myopia modeling. The threshold of 0.3 was selected for assigning the high risk.
FIGURE 5Effect size of factors for myopia risk evaluation and simulated intervention models. (A) Risk scores for myopia according to age. The size of the circle indicates the effect size in modeling. (B) Risk scores for high myopia according to age. (C) Simulation of myopia risk by posture correction for different ages. In the first rectangle, the box chart on the left represents the risk of myopia in 8-year-old children who keep correct posture basically. The box chart on the right represents the risk of myopia in this group of children if they correct their posture at the age of eight and maintain correct posture until the age of 18 years. Four stars representing the difference of myopia risk between two groups are significant, with p < 0.0001.