Survival Analysis of Patients with COVID-19 using Deep Neural Network and Random Forrest Techniques

A. Yazdani, L. Erfannia, Ali Farzaneh, Omar Ali
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Abstract

Introduction: The prediction of the survival chance of coronavirus disease 2019 (COVID-19) patients is as important as the early detection of the coronavirus. Since patient mortality, factors may differ by location, this study concentrated on identifying the influential factors and predicting survival for COVID-19 patients using machine learning methods in Fars province, Iran.Material and Methods: The research dataset was extracted in the period January 21, 2020, to September 25, 2020, and contains 25858 hospitalized patients’ records with 51 features. These records were classified into two categories: death (label 1) and survival (label 0). The methodology of this research is CRISP standard. A comparison was made between the efficiency of two deep neural network and random forest algorithms in predicting survival. Modeling steps were done with Python language in the Google Colab environment.Results: Experimental results demonstrated that the deep neural network algorithm had better performance than random forest with accuracy, precision, recall, F-score, and receiver operating characteristic of 97.2%, 100%, 93.54%, 96.66%, and 97.9%, respectively. Based on the results of the random forest model, history of hypertension, chronic neurological disorders, chronic lung diseases, asthma, chronic kidney disease and, heart disease were the most important risk factors related to death.Conclusion: Deployment of our proposed model allows medical professionals to exercise greater caution during the treatment of patients who are most likely to die due to their medical conditions.
利用深度神经网络和随机福斯特技术对 COVID-19 患者进行生存分析
导言:预测 2019 年冠状病毒病(COVID-19)患者的存活几率与早期发现冠状病毒同样重要。由于不同地区的患者死亡率、影响因素可能不同,因此本研究集中于确定影响因素,并利用机器学习方法预测伊朗法尔斯省 COVID-19 患者的存活率:研究数据集提取时间为 2020 年 1 月 21 日至 2020 年 9 月 25 日,包含 25858 份住院患者记录和 51 个特征。这些记录被分为两类:死亡(标签 1)和存活(标签 0)。本研究采用 CRISP 标准方法。比较了两种深度神经网络和随机森林算法在预测存活率方面的效率。建模步骤是在 Google Colab 环境中使用 Python 语言完成的:实验结果表明,深度神经网络算法的准确率、精确率、召回率、F分数和接收者操作特征分别为97.2%、100%、93.54%、96.66%和97.9%,比随机森林算法的性能更好。根据随机森林模型的结果,高血压病史、慢性神经系统疾病、慢性肺病、哮喘、慢性肾病和心脏病是与死亡有关的最重要的风险因素:利用我们提出的模型,医务人员在治疗最有可能因病情而死亡的患者时可以更加谨慎。
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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