FDrisk:利用电子健康记录数据开发有效的法布里病风险评估工具。

Caryn J Lobel, Dawn A Laney, Jingjing Yang, David Jacob, Amy Rickheim, Carol Z Ogg, Diana Clynes, Jessica Dronen
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引用次数: 0

摘要

目的:法布里病(Fabry disease,FD)是一种罕见的 X 连锁溶酶体贮积病,其特点是临床表现千变万化,并伴有进行性多系统器官损害。由于人们对法布里病缺乏认识,而且经常出现误诊,导致诊断延误了很长时间。为了解决早期诊断的迫切需求,我们创建了一个在线风险评估评分工具--FDrisk,用于预测个体罹患FD的风险,并提示诊断检测和临床评估:方法:利用电子健康记录,从埃默里溶酶体储积症中心随机挑选的、身份不明的FD患者中回顾性收集数据。从法布里病诊断检测和教育项目数据库(美国肾脏病患者协会患者教育和研究中心的一个项目)中随机选取了身份不明的阴性对照。法布里病的诊断依据是 GLA 中的致病变异和/或白细胞 α-Gal A 水平异常的证据。建立了一个总体预测模型和两个性别特异性预测模型。260 个样本(130 个病例,130 个对照)被用于训练风险预测模型。一百九十七个独立样本(30 个病例,167 个对照组)用于测试模型性能。预测的准确性以 0.5 为阈值进行评估,以确定预测的病例与对照:总体风险预测模型的灵敏度为 80%,特异性为 83.8%,阳性预测值为 47.1%。男性模型的灵敏度为 75%,特异度为 95.8%,阳性预测值为 75%。女性模型的灵敏度为 83.3%,特异性为 81.3%,阳性预测值为 45.5%。风险评分达到或超过 50%的患者被归类为 FD 的 "高危 "人群,应送往医院进行诊断检测:我们开发了一种统计风险预测模型--FDrisk,它是一种经过验证的、方便临床医生使用的在线风险评估评分工具,用于预测个人罹患 FD 的风险,并提示进行诊断测试和临床评估。作为一种易于使用、用户友好的评分工具,我们相信实施 FDrisk 将大大缩短诊断时间,并能更早地开始针对 FD 的治疗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FDrisk: development of a validated risk assessment tool for Fabry disease utilizing electronic health record data.

Purpose: Fabry disease (FD) is a rare, X-linked, lysosomal storage disease characterized by great variability in clinical presentation and progressive multisystemic organ damage. Lack of awareness of FD and frequent misdiagnoses cause long diagnostic delays. To address the urgent need for earlier diagnosis, we created an online, risk-assessment scoring tool, the FDrisk, for predicting an individual's risk for FD and prompting diagnostic testing and clinical evaluation.

Methods: Utilizing electronic health records, data were collected retrospectively from randomly selected, deidentified patients with FD treated at the Emory Lysosomal Storage Disease Center. Deidentified, negative controls were randomly selected from the Fabry Disease Diagnostic Testing and Education project database, a program within the American Association of Kidney Patients Center for Patient Education and Research. Diagnosis of FD was documented by evidence of a pathogenic variant in GLA and/or an abnormal level of leukocyte α-Gal A. Thirty characteristic clinical features of FD were initially identified and subsequently curated into 16 clinical covariates used as predictors for the risk of FD. An overall prediction model and two sex-specific prediction models were built. Two-hundred and sixty samples (130 cases, 130 controls) were used to train the risk prediction models. One-hundred and ninety-seven independent samples (30 cases, 167 controls) were used for testing model performance. Prediction accuracy was evaluated using a threshold of 0.5 to determine a predicted case vs. control.

Results: The overall risk prediction model demonstrated 80% sensitivity, 83.8% specificity, and positive predictive value of 47.1%. The male model demonstrated 75% sensitivity, 95.8% specificity, and positive predictive value of 75%. The female model demonstrated 83.3% sensitivity, 81.3% specificity, and positive predictive value of 45.5%. Patients with risk scores at or above 50% are categorized as "at risk" for FD and should be sent for diagnostic testing.

Conclusion: We have developed a statistical risk prediction model, the FDrisk, a validated, clinician-friendly, online, risk-assessment scoring tool for predicting an individual's risk for FD and prompting diagnostic testing and clinical evaluation. As an easily accessible, user-friendly scoring tool, we believe implementing the FDrisk will significantly decrease the time to diagnosis and allow earlier initiation of FD-specific therapy.

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