使用机器学习算法预测心力衰竭生存:我是否安全?

M. Mamun, Afia Farjana, Miraz Al Mamun, Md Salim Ahammed, Md Minhazur Rahman
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引用次数: 23

摘要

心力衰竭(HF)是世界范围内的一种普遍疾病,尽管在过去的几十年里医学取得了重大进展,但心血管疾病仍然是导致死亡的主要原因。虽然心衰本身是患者生存的关键风险,但其他共存的病理生理状况也可能对患者生存构成重大威胁。由于心力衰竭患者的生存取决于许多因素,因此对心脏病医生来说,在不使用计算技术的情况下预测患者的生存机会是很困难的,最终会使患者无法得到正确的护理。幸运的是,分类和预测模型的存在,可以帮助心脏病专家设计适当的治疗方案,利用相关的医疗数据。本研究旨在建立心衰患者生存预测模型。在本文中,我们分析了包含299例HF患者相关医疗信息的UCI心力衰竭数据集。我们应用几个机器学习分类器从hf相关的病理生理参数中预测患者的生存,并使用相关矩阵分析最关键危险因素对应的特征。我们的预测模型使用了以下机器学习技术——逻辑回归、决策树、支持向量机、XGBoost、LightGBM、随机森林、KNN和Bagging,并且能够找到更好的结果。此外,本文还通过分析不同机器学习算法的性能进行了比较研究。我们的分析表明,与其他机器学习算法相比,LightGBM在预测心衰患者生存方面的准确率最高,为85%,AUC为93%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Heart failure survival prediction using machine learning algorithm: am I safe from heart failure?
Heart Failure (HF) is a prevalent ailment worldwide, and despite significant medical advancements in the past few decades, cardiovascular disease is still the leading cause of death. Although HF itself is a critical risk for patient survival, other co-existing pathophysiological conditions can present a significant threat to patient survival. Because so many elements contribute to a patient's survival in heart failure, predicting the chances of survival without using a computational technique can be difficult for cardiac doctors, eventually preventing the patient from receiving correct care. Fortunately, categorization and prediction models exist, which can assist cardiologists in designing proper treatment schemes using relevant medical data. This study aims to develop prediction models for patient survival in HF conditions. In this paper, we analyzed the UCI heart failure dataset containing relevant medical information of 299 HF patients. We applied several machine learning classifiers to predict the patient survival from HF-related pathophysiological parameters and analyzed the features corresponding to the most crucial risk factors using the correlation matrix. Our prediction models used the following machine learning techniques- Logistic Regression, Decision Tree, Support Vector Machine, XGBoost, LightGBM, Random Forest, KNN, and Bagging and were able to find a better result. Also, this paper presents a comparative study by analyzing the performance of different machine learning algorithms. Our analysis indicates that LightGBM achieved the highest Accuracy of 85% and AUC of 93% in predicting patient survival of HF patients compared to other machine learning algorithms.
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