Artificial Intelligence (AI)-Driven Frailty Prediction Using Electronic Health Records in Hospitalized Patients With Cardiovascular Disease.

Circulation reports Pub Date : 2024-10-29 eCollection Date: 2024-11-08 DOI:10.1253/circrep.CR-24-0112
Masashi Yamashita, Kentaro Kamiya, Kazuki Hotta, Anna Kubota, Kenji Sato, Emi Maekawa, Hiroaki Miyata, Junya Ako
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Abstract

Background: This study aimed to create a deep learning model for predicting phenotypic physical frailty from electronic medical record information in patients with cardiovascular disease.

Methods and results: This single-center retrospective study enrolled patients who could be assessed for physical frailty according to cardiovascular health study criteria (25.5% [691/2,705] of the patients were frail). Patients were randomly separated for training (Train set: 80%) and validation (Test set: 20%) of the deep learning model. Multiple models were created using LightGBM, random forest, and logistic regression for deep learning, and their predictive abilities were compared. The LightGBM model had the highest accuracy (in a Test set: F1 score 0.561; accuracy 0.726; area under the curve of the receiver operating characteristics [AUC] 0.804). These results using only commonly used blood biochemistry test indices (in a Test set: F1 score 0.551; accuracy 0.721; AUC 0.793) were similar. The created models were consistently and strongly associated with physical functions at hospital discharge, all-cause death, and heart failure-related readmission.

Conclusions: Deep learning models derived from large sample sizes of phenotypic physical frailty have shown good accuracy and consistent associations with prognosis and physical functions.

使用电子健康记录对心血管疾病住院患者进行人工智能(AI)驱动的虚弱预测。
研究背景本研究旨在创建一个深度学习模型,从心血管疾病患者的电子病历信息中预测表型体质虚弱:这项单中心回顾性研究招募了根据心血管健康研究标准可评估身体虚弱的患者(25.5% [691/2,705] 的患者身体虚弱)。患者被随机分开进行深度学习模型的训练(训练集:80%)和验证(测试集:20%)。利用深度学习的 LightGBM、随机森林和逻辑回归创建了多个模型,并对其预测能力进行了比较。LightGBM 模型的准确率最高(在测试集中:F1 分数为 0.561;准确率为 0.726;接收者操作特征曲线下面积 [AUC] 为 0.804)。仅使用常用的血液生化检验指数(在测试集中:F1 得分为 0.551;准确率为 0.721;AUC 为 0.793)得出的结果也类似。创建的模型与出院时的身体机能、全因死亡和心衰相关的再入院有着一致且紧密的联系:从表型体质虚弱的大量样本中得出的深度学习模型显示出良好的准确性以及与预后和身体功能的一致性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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