基于眼部和全身检查结果的青光眼预测模型

IF 2 4区 医学 Q2 OPHTHALMOLOGY Ophthalmic Research Pub Date : 2024-01-01 Epub Date: 2023-12-18 DOI:10.1159/000535879
Daphna Landau Prat, Noa Kapelushnik, Mattan Arazi, Ofira Zloto, Ari Leshno, Eyal Klang, Sigal Sina, Shlomo Segev, Shahar Soudry, Guy J Ben Simon
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引用次数: 0

摘要

导言我们的目的是探索各种全身和眼部检查结果对预测青光眼发展的影响:使用机器学习算法分析了 2001-2020 年间在一家医疗中心接受检查的 37,692 名连续患者的医疗记录。其中包括全身和眼部特征。采用 Cat Boost 和 Light Gradient-Boosting Machine (GBM) 预测模型进行单变量和多变量分析。主要结果指标是与青光眼进展相关的全身和眼部特征:7880名患者(平均年龄54.7±12.6岁,5520名男性[70.1%])被纳入3年预测模型,314名患者(3.98%)最终被诊断为青光眼。综合模型包括 185 项系统检查结果和 42 项眼部检查结果,ROC AUC 为 0.84。相关特征有:眼压(48.6%)、杯盘比(22.7%)、年龄(8.6%)、红细胞平均体积(MCV)趋势(5.2%)、泌尿系统疾病(3.3%)、MCV(2.6%)、肌酐水平趋势(2.1%)、单核细胞计数趋势(1.7%)、测力计代谢当量任务评分(1.7%)、血脂异常持续时间(1.6%)、前列腺特异性抗原水平(1.2%)和肌肉骨骼疾病持续时间(0.5%)。眼部预测模型的 ROC AUC 为 0.86。其他特征包括:年龄相关性黄斑变性(10.0%)、前囊性白内障(3.3%)、视力(2.0%)和毛细血管周围萎缩(1.3%):结论:眼部模型和全身-眼部综合模型可以有力地预测未来三年内青光眼的发展。新的发展指标可能包括前囊下白内障、泌尿系统疾病和全血细胞检测结果(主要是 MCV 和单核细胞计数增加)。
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Glaucoma Prediction Models Based on Ocular and Systemic Findings.

Introduction: Our aim was to explore the impact of various systemic and ocular findings on predicting the development of glaucoma.

Methods: Medical records of 37,692 consecutive patients examined at a single medical center between 2001 and 2020 were analyzed using machine learning algorithms. Systemic and ocular features were included. Univariate and multivariate analyses followed by CatBoost and Light gradient-boosting machine prediction models were performed. Main outcome measures were systemic and ocular features associated with progression to glaucoma.

Results: A total of 7,880 patients (mean age 54.7 ± 12.6 years, 5,520 males [70.1%]) were included in a 3-year prediction model, and 314 patients (3.98%) had a final diagnosis of glaucoma. The combined model included 185 systemic and 42 ocular findings, and reached an ROC AUC of 0.84. The associated features were intraocular pressure (48.6%), cup-to-disk ratio (22.7%), age (8.6%), mean corpuscular volume (MCV) of red blood cell trend (5.2%), urinary system disease (3.3%), MCV (2.6%), creatinine level trend (2.1%), monocyte count trend (1.7%), ergometry metabolic equivalent task score (1.7%), dyslipidemia duration (1.6%), prostate-specific antigen level (1.2%), and musculoskeletal disease duration (0.5%). The ocular prediction model reached an ROC AUC of 0.86. Additional features included were age-related macular degeneration (10.0%), anterior capsular cataract (3.3%), visual acuity (2.0%), and peripapillary atrophy (1.3%).

Conclusions: Ocular and combined systemic-ocular models can strongly predict the development of glaucoma in the forthcoming 3 years. Novel progression indicators may include anterior subcapsular cataracts, urinary disorders, and complete blood test results (mainly increased MCV and monocyte count).

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来源期刊
Ophthalmic Research
Ophthalmic Research 医学-眼科学
CiteScore
3.80
自引率
4.80%
发文量
75
审稿时长
6-12 weeks
期刊介绍: ''Ophthalmic Research'' features original papers and reviews reporting on translational and clinical studies. Authors from throughout the world cover research topics on every field in connection with physical, physiologic, pharmacological, biochemical and molecular biological aspects of ophthalmology. This journal also aims to provide a record of international clinical research for both researchers and clinicians in ophthalmology. Finally, the transfer of information from fundamental research to clinical research and clinical practice is particularly welcome.
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