Predicting the Risk of Severity and Readmission in Patients with Heart Failure in Indonesia: A Machine Learning Approach.

IF 2.3 Q3 MEDICAL INFORMATICS Healthcare Informatics Research Pub Date : 2024-07-01 Epub Date: 2024-07-31 DOI:10.4258/hir.2024.30.3.253
Finna E Indriany, Kemal N Siregar, Budhi Setianto Purwowiyoto, Bambang Budi Siswanto, Indrajani Sutedja, Hendy R Wijaya
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Abstract

Objectives: In Indonesia, the poor prognosis and high hospital readmission rates of patients with heart failure (HF) have yet to receive focused attention. However, machine learning (ML) approaches can help to mitigate these problems. We aimed to determine which ML models best predicted HF severity and hospital readmissions and could be used in a patient self-monitoring mobile application.

Methods: In a retrospective cohort study, we collected the data of patients admitted with HF to the Siloam Diagram Heart Center in 2020, 2021, and 2022. Data was analyzed using the Orange data mining classification method. ML support algorithms, including artificial neural network (ANN), random forest, gradient boosting, Naïve Bayes, tree-based models, and logistic regression were used to predict HF severity and hospital readmissions. The performance of these models was evaluated using the area under the curve (AUC), accuracy, and F1-scores.

Results: Of the 543 patients with HF, 3 (0.56%) were excluded due to death on admission. Hospital readmission occurred in 138 patients (25.6%). Of the six algorithms tested, ANN showed the best performance in predicting both HF severity (AUC = 1.000, accuracy = 0.998, F1-score = 0.998) and readmission for HF (AUC = 0.998, accuracy = 0.975, F1-score = 0.972). Other studies have shown variable results for the best algorithm to predict hospital readmission in patients with HF.

Conclusions: The ANN algorithm performed best in predicting HF severity and hospital readmissions and will be integrated into a mobile application for patient self-monitoring to prevent readmissions.

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预测印度尼西亚心衰患者的严重程度和再入院风险:机器学习方法
目的:在印度尼西亚,心力衰竭(HF)患者预后差、再入院率高的问题尚未得到重点关注。然而,机器学习(ML)方法有助于缓解这些问题。我们旨在确定哪些 ML 模型最能预测心衰严重程度和再住院率,并可用于患者自我监测移动应用程序:在一项回顾性队列研究中,我们收集了 2020 年、2021 年和 2022 年在 Siloam Diagram 心脏中心住院的高血压患者的数据。数据采用 Orange 数据挖掘分类法进行分析。ML支持算法,包括人工神经网络(ANN)、随机森林、梯度提升、奈夫贝叶斯、基于树的模型和逻辑回归被用来预测心房颤动的严重程度和再住院率。使用曲线下面积(AUC)、准确率和 F1 分数评估了这些模型的性能:在 543 名心房颤动患者中,有 3 人(0.56%)因入院时死亡而被排除在外。138名患者(25.6%)再次入院。在测试的六种算法中,ANN 在预测心房颤动严重程度(AUC = 1.000,准确率 = 0.998,F1-分数 = 0.998)和心房颤动再入院(AUC = 0.998,准确率 = 0.975,F1-分数 = 0.972)方面表现最佳。其他研究显示,预测心房颤动患者再入院的最佳算法结果不一:ANN算法在预测心房颤动严重程度和再入院率方面表现最佳,将被整合到一个移动应用程序中,用于患者自我监测,以防止再入院。
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来源期刊
Healthcare Informatics Research
Healthcare Informatics Research MEDICAL INFORMATICS-
CiteScore
4.90
自引率
6.90%
发文量
44
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