Risk Factors Associated with In-Hospital Mortality in Iranian Patients with COVID-19: Application of Machine Learning

IF 0.7 Q4 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
S. Shafiekhani, S. Rafiei, S. Abdollahzade, Saber Souri, Zeinab Moomeni
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引用次数: 1

Abstract

Abstract Introduction: Predicting the mortality risk of COVID-19 patients based on patient’s physiological conditions and demographic characteristics can help optimize resource consumption along with the provision of effective medical services for patients. In the current study, we aimed to develop several machine learning models to forecast the mortality risk in COVID-19 patients, evaluate their performance, and select the model with the highest predictive power. Material and methods: We conducted a retrospective analysis of the records belonging to COVID-19 patients admitted to one of the main hospitals of Qazvin located in the northwest of Iran over 12 months period. We selected 29 variables for developing machine learning models incorporating demographic factors, physical symptoms, comorbidities, and laboratory test results. The outcome variable was mortality as a binary variable. Logistic regression analysis was conducted to identify risk factors of in-hospital death. Results: In prediction of mortality, Ensemble demonstrated the maximum values of accuracy (0.8071, 95%CI: 0.7787, 0.8356), F1-score (0.8121 95%CI: 0.7900, 0.8341), and AUROC (0.8079, 95%CI: 0.7800, 0.8358). Including fourteen top-scored features identified by maximum relevance minimum redundancy algorithm into the subset of predictors of ensemble classifier such as BUN level, shortness of breath, seizure, disease history, fever, gender, body pain, WBC, diarrhea, sore throat, blood oxygen level, muscular pain, lack of taste and history of drug (medication) use are sufficient for this classifier to reach to its best predictive power for prediction of mortality risk of COVID-19 patients. Conclusions: Study findings revealed that old age, lower oxygen saturation level, underlying medical conditions, shortness of breath, seizure, fever, sore throat, and body pain, besides serum BUN, WBC, and CRP levels, were significantly associated with increased mortality risk of COVID-19 patients. Machine learning algorithms can help healthcare systems by predicting and reduction of the mortality risk of COVID-19 patients.
与伊朗COVID-19患者住院死亡率相关的危险因素:机器学习的应用
摘要导语:基于患者生理状况和人口统计学特征预测新冠肺炎患者的死亡风险,有助于优化资源消耗,为患者提供有效的医疗服务。在本研究中,我们旨在开发几种机器学习模型来预测COVID-19患者的死亡风险,并评估其性能,并选择预测能力最高的模型。材料和方法:我们对伊朗西北部加兹温一家主要医院12个月内收治的COVID-19患者的记录进行了回顾性分析。我们选择了29个变量来开发包含人口统计学因素、身体症状、合并症和实验室测试结果的机器学习模型。结果变量是死亡率作为一个二元变量。采用Logistic回归分析确定院内死亡的危险因素。结果:在预测死亡率方面,Ensemble具有最高的准确度(0.8071,95%CI: 0.7787, 0.8356)、f1评分(0.8121,95%CI: 0.7900, 0.8341)和AUROC (0.8079, 95%CI: 0.7800, 0.8358)。将最大相关最小冗余算法识别的14个得分最高的特征纳入到集成分类器的预测因子子集中,如BUN水平、呼吸短促、癫痫发作、病史、发烧、性别、身体疼痛、白细胞计数、腹泻、喉咙痛、血氧水平、肌肉疼痛、缺乏味觉和药物(药物)使用史,足以使该分类器达到预测COVID-19患者死亡风险的最佳预测能力。结论:研究结果显示,除血清BUN、WBC和CRP水平外,老年、低氧饱和度、潜在医疗条件、呼吸短促、癫痫发作、发烧、喉咙痛和身体疼痛与COVID-19患者死亡风险增加显著相关。机器学习算法可以通过预测和降低COVID-19患者的死亡风险来帮助医疗保健系统。
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来源期刊
Polish Journal of Medical Physics and Engineering
Polish Journal of Medical Physics and Engineering RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
1.30
自引率
0.00%
发文量
19
期刊介绍: Polish Journal of Medical Physics and Engineering (PJMPE) (Online ISSN: 1898-0309; Print ISSN: 1425-4689) is an official publication of the Polish Society of Medical Physics. It is a peer-reviewed, open access scientific journal with no publication fees. The issues are published quarterly online. The Journal publishes original contribution in medical physics and biomedical engineering.
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