Machine Learning Methods Using Artificial Intelligence Deployed on Electronic Health Record Data for Identification and Referral of At-Risk Patients From Primary Care Physicians to Eye Care Specialists: Retrospective, Case-Controlled Study.

JMIR AI Pub Date : 2024-03-12 DOI:10.2196/48295
Joshua A Young, Chin-Wen Chang, Charles W Scales, Saurabh V Menon, Chantal E Holy, Caroline Adrienne Blackie
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Abstract

Background: Identification and referral of at-risk patients from primary care practitioners (PCPs) to eye care professionals remain a challenge. Approximately 1.9 million Americans suffer from vision loss as a result of undiagnosed or untreated ophthalmic conditions. In ophthalmology, artificial intelligence (AI) is used to predict glaucoma progression, recognize diabetic retinopathy (DR), and classify ocular tumors; however, AI has not yet been used to triage primary care patients for ophthalmology referral.

Objective: This study aimed to build and compare machine learning (ML) methods, applicable to electronic health records (EHRs) of PCPs, capable of triaging patients for referral to eye care specialists.

Methods: Accessing the Optum deidentified EHR data set, 743,039 patients with 5 leading vision conditions (age-related macular degeneration [AMD], visually significant cataract, DR, glaucoma, or ocular surface disease [OSD]) were exact-matched on age and gender to 743,039 controls without eye conditions. Between 142 and 182 non-ophthalmic parameters per patient were input into 5 ML methods: generalized linear model, L1-regularized logistic regression, random forest, Extreme Gradient Boosting (XGBoost), and J48 decision tree. Model performance was compared for each pathology to select the most predictive algorithm. The area under the curve (AUC) was assessed for all algorithms for each outcome.

Results: XGBoost demonstrated the best performance, showing, respectively, a prediction accuracy and an AUC of 78.6% (95% CI 78.3%-78.9%) and 0.878 for visually significant cataract, 77.4% (95% CI 76.7%-78.1%) and 0.858 for exudative AMD, 79.2% (95% CI 78.8%-79.6%) and 0.879 for nonexudative AMD, 72.2% (95% CI 69.9%-74.5%) and 0.803 for OSD requiring medication, 70.8% (95% CI 70.5%-71.1%) and 0.785 for glaucoma, 85.0% (95% CI 84.2%-85.8%) and 0.924 for type 1 nonproliferative diabetic retinopathy (NPDR), 82.2% (95% CI 80.4%-84.0%) and 0.911 for type 1 proliferative diabetic retinopathy (PDR), 81.3% (95% CI 81.0%-81.6%) and 0.891 for type 2 NPDR, and 82.1% (95% CI 81.3%-82.9%) and 0.900 for type 2 PDR.

Conclusions: The 5 ML methods deployed were able to successfully identify patients with elevated odds ratios (ORs), thus capable of patient triage, for ocular pathology ranging from 2.4 (95% CI 2.4-2.5) for glaucoma to 5.7 (95% CI 5.0-6.4) for type 1 NPDR, with an average OR of 3.9. The application of these models could enable PCPs to better identify and triage patients at risk for treatable ophthalmic pathology. Early identification of patients with unrecognized sight-threatening conditions may lead to earlier treatment and a reduced economic burden. More importantly, such triage may improve patients' lives.

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利用人工智能在电子健康记录数据上部署机器学习方法,以识别高风险患者并将其从初级保健医生转诊至眼科专科医生:回顾性病例对照研究。
背景:初级保健医生 (PCP) 识别高危患者并将其转介给眼科专业人员仍是一项挑战。约有 190 万美国人因未诊断或未治疗眼科疾病而导致视力下降。在眼科领域,人工智能(AI)被用于预测青光眼进展、识别糖尿病视网膜病变(DR)和眼部肿瘤分类;然而,人工智能尚未被用于眼科转诊的初级保健患者分流:本研究旨在建立和比较适用于初级保健医生电子健康记录(EHR)的机器学习(ML)方法,这些方法能够将患者分流以转诊给眼科专家:通过访问 Optum 去标识化 EHR 数据集,将 743,039 名患有 5 种主要视力疾病(年龄相关性黄斑变性 [AMD]、视力显著性白内障、DR、青光眼或眼表疾病 [OSD])的患者与 743,039 名无眼部疾病的对照组进行年龄和性别精确匹配。每位患者的 142 到 182 个非眼科参数被输入到 5 种 ML 方法中:广义线性模型、L1 规则化逻辑回归、随机森林、极梯度提升 (XGBoost) 和 J48 决策树。对每种病理的模型性能进行比较,以选出最具预测性的算法。针对每种结果,对所有算法的曲线下面积(AUC)进行了评估:XGBoost表现最佳,其预测准确率和AUC分别为:视觉显著性白内障78.6%(95% CI 78.3%-78.9%)和0.878;渗出性AMD 77.4%(95% CI 76.7%-78.1%)和0.858;非渗出性AMD 79.2%(95% CI 78.8%-79.6%)和0.879;需要药物治疗的OSD 72.2%(95% CI 69.9%-74.5%)和0.803;需要药物治疗的OSD 70.8%(95% CI 70.3%-78.9%)和0.878。8%(95% CI 70.5%-71.1%)和 0.785,1 型非增殖性糖尿病视网膜病变 (NPDR) 为 85.0%(95% CI 84.2%-85.8%)和 0.924,1 型增殖性糖尿病视网膜病变 (NPDR) 为 82.2%(95% CI 80.4%-84.0%)和 0.924。1型增殖性糖尿病视网膜病变(PDR)为911,2型NPDR为81.3%(95% CI 81.0%-81.6%)和0.891,2型PDR为82.1%(95% CI 81.3%-82.9%)和0.900:所采用的 5 种 ML 方法能够成功识别出眼部病理几率比(OR)升高的患者,从而能够对患者进行分流,其范围从青光眼的 2.4(95% CI 2.4-2.5)到 1 型 NPDR 的 5.7(95% CI 5.0-6.4)不等,平均 OR 为 3.9。应用这些模型可使初级保健医生更好地识别和分流有可治疗眼科病变风险的患者。及早发现视力受到威胁的未确诊患者,可尽早治疗并减轻经济负担。更重要的是,这种分流可能会改善患者的生活。
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