Literature DB >> 33987252

Real-world big data demonstrates prevalence trends and developmental patterns of myopia in China: a retrospective, multicenter study.

Erping Long1, Xiaohang Wu1, Xiaohu Ding1, Yahan Yang1, Xun Wang1, Chong Guo1, Xiayin Zhang1, Kexin Chen2, Tongyong Yu2, Dongxuan Wu2, Xutu Zhao2, Zhenzhen Liu1, Yizhi Liu1, Haotian Lin1,3.   

Abstract

BACKGROUND: Myopia is a complex disease caused by a combination of multiple pathogenic factors. Prevalence trends and developmental patterns of myopia exhibit substantial variability that cannot be clearly assessed using limited sample sizes. This study aims to determine the myopia prevalence over the past 60 years and trace the myopia development in a school-aged population using medical big data.
METHODS: The refraction data from electronic medical records in eight hospitals in South China were collected from January 2005 to October 2018; including patients' year of birth, refraction status, and age at the exam. All optometry tests were performed in accordance with standard procedures by qualified senior optometrists. The cross-sectional datasets (individuals with a single examination) and longitudinal datasets (individuals with multiple examinations) were analyzed respectively. SAS statistical software was used to extract and statistically analyse all target data and to identify prevalence trends and developmental patterns related to myopia.
RESULTS: In total, 1,112,054 cross-sectional individual refraction records and 774,645 longitudinal records of 273,006 individuals were collected. The myopia prevalence significantly increased among individuals who were born after the 1960s and showed a steep rise until reaching a peak of 80% at the 1980s. Regarding developmental patterns, the cross-sectional data demonstrated that the myopia prevalence increased dramatically from 23.13% to 82.83% aging from 5 to 11, and the prevalence stabilized at the age of 20. The longitudinal data confirmed the results that the age of myopic onset was 7.47±1.67 years, the age of myopia stabilized at 17.14±2.61 years, and the degree of myopia stabilized at -4.35±3.81 D.
CONCLUSIONS: The medical big data used in this study demonstrated prevalence trends of myopia over the past 60 years and revealed developmental patterns in the onset, progression and stability of myopia in China. 2021 Annals of Translational Medicine. All rights reserved.

Entities:  

Keywords:  Myopia; developmental pattern; prevalence; real-world analysis

Year:  2021        PMID: 33987252      PMCID: PMC8105816          DOI: 10.21037/atm-20-6663

Source DB:  PubMed          Journal:  Ann Transl Med        ISSN: 2305-5839


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Authors:  Haotian Lin; Erping Long; Xiaohu Ding; Hongxing Diao; Zicong Chen; Runzhong Liu; Jialing Huang; Jingheng Cai; Shuangjuan Xu; Xiayin Zhang; Dongni Wang; Kexin Chen; Tongyong Yu; Dongxuan Wu; Xutu Zhao; Zhenzhen Liu; Xiaohang Wu; Yuzhen Jiang; Xiao Yang; Dongmei Cui; Wenyan Liu; Yingfeng Zheng; Lixia Luo; Haibo Wang; Chi-Chao Chan; Ian G Morgan; Mingguang He; Yizhi Liu
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  2 in total

1.  RNA-Seq Analysis Reveals an Essential Role of the Tyrosine Metabolic Pathway and Inflammation in Myopia-Induced Retinal Degeneration in Guinea Pigs.

Authors:  Ling Zeng; Xiaoning Li; Jian Liu; Hong Liu; Heping Xu; Zhikuan Yang
Journal:  Int J Mol Sci       Date:  2021-11-22       Impact factor: 5.923

2.  The change of myopic prevalence in children and adolescents before and after COVID-19 pandemic in Suqian, China.

Authors:  Hongyan Chen; Ya Liao; Wen Zhou; Lei Dong; Wei Wang; Xiaojuan Wang
Journal:  PLoS One       Date:  2022-03-21       Impact factor: 3.240

  2 in total

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