Developing a Machine Learning Algorithm for Improved Management of Congestive Heart Failure Patients in the Emergency Department

Bah Karamo, Jallow Amadou Wurry, Ns Bah Adama, Touray Musa
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Abstract

Background and aim: Congestive heart failure is a prevalent and serious condition that poses significant challenges in the emergency department setting. Prompt and accurate management of congestive heart failure patients is crucial for improving outcomes and optimizing resource utilization. This study aims to address these challenges by developing a machine learning algorithm and comparing it to a traditional logistic regression model that can assist in the triage, resource allocation, and long-term prognostication of congestive heart failure patients. Methods: In this investigation, we used the MIMIC-III database, a publicly accessible resource containing patient data from ICU settings. Traditional logistic regression, along with the robust XGBoost and random forest algorithms, was harnessed to construct predictive models. These models were built using a range of pretreatment clinical variables. To pinpoint the most pertinent features, we carried out a univariate analysis. Ensuring robust performance and broad applicability, we adopted a nested cross-validation approach. This method enhances the precision and validation of our models by implementing multiple cross-validation iterations. Results: The performance of machine learning algorithms was assessed using the area under the receiver operating characteristic curve (AUC). Notably, the random forest algorithm, despite having lower performance among the machine learning models still demonstrated significantly higher AUC than traditional logistic regression. The AUC for the XGBoost was 0.99, random forest 0.98, while traditional logistic regression was 0.57. The most important pretreatment variables associated with congestive heart failure include total bilirubin, creatine kinase, international normalized ratio (INR), sodium, age, creatinine, potassium, gender, alkaline phosphatase, and platelets. Conclusion: Machine learning techniques utilizing multiple pretreatment clinical variables outperform traditional logistic regression in aiding the triage, resource allocation, and long-term prognostication of congestive heart failure patients in the intensive care unit setting using MIMIC III data.
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开发一种机器学习算法以改善急诊科对充血性心力衰竭患者的管理
背景和目的:充血性心力衰竭是一种普遍而严重的疾病,在急诊科环境中提出了重大挑战。及时准确地管理充血性心力衰竭患者对于改善预后和优化资源利用至关重要。本研究旨在通过开发一种机器学习算法并将其与传统的逻辑回归模型进行比较来解决这些挑战,该模型可以协助充血性心力衰竭患者的分诊、资源分配和长期预测。方法:在这项调查中,我们使用了MIMIC-III数据库,这是一个可公开访问的资源,包含来自ICU设置的患者数据。传统的逻辑回归,以及强大的XGBoost和随机森林算法,被用来构建预测模型。这些模型是使用一系列预处理临床变量建立的。为了找出最相关的特征,我们进行了单变量分析。为了确保强大的性能和广泛的适用性,我们采用了嵌套的交叉验证方法。该方法通过实现多次交叉验证迭代,提高了模型的精度和验证性。结果:使用受试者工作特征曲线下面积(AUC)来评估机器学习算法的性能。值得注意的是,尽管随机森林算法在机器学习模型中性能较低,但其AUC仍明显高于传统逻辑回归。XGBoost模型的AUC为0.99,随机森林模型的AUC为0.98,而传统逻辑回归模型的AUC为0.57。与充血性心力衰竭相关的最重要的预处理变量包括总胆红素、肌酸激酶、国际标准化比值(INR)、钠、年龄、肌酐、钾、性别、碱性磷酸酶和血小板。结论:利用多预处理临床变量的机器学习技术在辅助重症监护病房中充血性心力衰竭患者的分诊、资源分配和长期预后方面优于传统的逻辑回归。
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