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Comparison of Machine Learning Techniques for Prediction of Hospitalization in Heart Failure Patients

机译:机器学习技术对心力衰竭患者住院预测的比较

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摘要

The present study aims to compare the performance of eight Machine Learning Techniques (MLTs) in the prediction of hospitalization among patients with heart failure, using data from the Gestione Integrata dello Scompenso Cardiaco (GISC) study. The GISC project is an ongoing study that takes place in the region of Puglia, Southern Italy. Patients with a diagnosis of heart failure are enrolled in a long-term assistance program that includes the adoption of an online platform for data sharing between general practitioners and cardiologists working in hospitals and community health districts. Logistic regression, generalized linear model net (GLMN), classification and regression tree, random forest, adaboost, logitboost, support vector machine, and neural networks were applied to evaluate the feasibility of such techniques in predicting hospitalization of 380 patients enrolled in the GISC study, using data about demographic characteristics, medical history, and clinical characteristics of each patient. The MLTs were compared both without and with missing data imputation. Overall, models trained without missing data imputation showed higher predictive performances. The GLMN showed better performance in predicting hospitalization than the other MLTs, with an average accuracy, positive predictive value and negative predictive value of 81.2%, 87.5%, and 75%, respectively. Present findings suggest that MLTs may represent a promising opportunity to predict hospital admission of heart failure patients by exploiting health care information generated by the contact of such patients with the health care system.
机译:本研究旨在使用Gestione Integrata dello Scompenso Cardiaco(GISC)研究的数据,比较八种机器学习技术(MLT)在心力衰竭患者住院预测中的性能。 GISC项目是一项正在进行的研究,在意大利南部的普利亚地区进行。诊断为心力衰竭的患者将参加一项长期援助计划,其中包括采用在线平台在医院和社区卫生区工作的全科医生和心脏病专家之间共享数据。应用Logistic回归,广义线性模型网(GLMN),分类和回归树,随机森林,adaboost,logitboost,支持向量机和神经网络来评估此类技术在GISC研究中预测的380例患者的住院预测中的可行性,使用有关每位患者的人口统计特征,病史和临床特征的数据。比较了没有和有缺失数据插补的MLT。总体而言,在不丢失数据插补的情况下训练的模型显示出更高的预测性能。 GLMN在预测住院方面比其他MLT表现更好,其平均准确性,阳性预测值和阴性预测值分别为81.2%,87.5%和75%。目前的发现表明,通过利用由此类患者与医疗保健系统接触而产生的医疗保健信息,MLT可能代表了预测心力衰竭患者入院的机会。

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