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大数据分析以色列的青光眼患病率。

Big Data Analysis of Glaucoma Prevalence in Israel.

机构信息

Goldschleger Eye Surveillance Institution & Medical Screening Institute.

Talpiot Medical Leadership Program, Sheba Medical Center.

出版信息

J Glaucoma. 2023 Nov 1;32(11):962-967. doi: 10.1097/IJG.0000000000002281. Epub 2023 Aug 2.

Abstract

PRCIS

The prevalence of glaucoma in the adult population included in this study was 2.3%. Normal values of routine eye examinations are provided including age and sex variations.

PURPOSE

The purpose of this study was to analyze the prevalence of glaucoma in a very large database.

METHODS

Retrospective analysis of medical records of patients examined at the Medical Survey Institute of a tertiary care university referral center between 2001 and 2020. A natural language process (NLP) algorithm identified patients with a diagnosis of glaucoma. The main outcome measures included the prevalence and age distribution of glaucoma. The secondary outcome measures included the prevalence and distribution of visual acuity (VA), intraocular pressure (IOP), and cup-to-disc ratio (CDR).

RESULTS

Data were derived from 184,589 visits of 36,762 patients (mean age: 52 y, 68% males). The NLP model was highly sensitive in identifying glaucoma, achieving an accuracy of 94.98% (area under the curve=93.85%), and 633 of 27,517 patients (2.3%) were diagnosed as having glaucoma with increasing prevalence in older age. The mean VA was 20/21, IOP 14.4±2.84 mm Hg, and CDR 0.28±0.16, higher in males. The VA decreased with age, while the IOP and CDR increased with age.

CONCLUSIONS

The prevalence of glaucoma in the adult population included in this study was 2.3%. Normal values of routine eye examinations are provided including age and sex variations. We proved the validity and accuracy of the NLP model in identifying glaucoma.

摘要

PRCIS

本研究纳入的成年人群中青光眼的患病率为 2.3%。提供了常规眼部检查的正常值,包括年龄和性别差异。

目的

本研究旨在分析大型数据库中青光眼的患病率。

方法

对 2001 年至 2020 年在三级转诊大学医学调查研究所检查的患者的病历进行回顾性分析。自然语言处理(NLP)算法识别出患有青光眼的患者。主要观察指标包括青光眼的患病率和年龄分布。次要观察指标包括视力(VA)、眼内压(IOP)和杯盘比(CDR)的患病率和分布。

结果

数据来自 36762 名患者的 184589 次就诊(平均年龄:52 岁,68%为男性)。NLP 模型在识别青光眼方面具有很高的灵敏度,准确率为 94.98%(曲线下面积为 93.85%),27517 名患者中有 633 名(2.3%)被诊断为患有青光眼,且患病率随年龄增长而增加。平均 VA 为 20/21,IOP 为 14.4±2.84mmHg,CDR 为 0.28±0.16,男性更高。VA 随年龄下降,而 IOP 和 CDR 随年龄增加。

结论

本研究纳入的成年人群中青光眼的患病率为 2.3%。提供了常规眼部检查的正常值,包括年龄和性别差异。我们证明了 NLP 模型在识别青光眼方面的有效性和准确性。

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