Predicting the mortality of patients with Covid-19: A machine learning approach

被引:2
作者
Emami, Hassan [1 ]
Rabiei, Reza [1 ]
Sohrabei, Solmaz [1 ]
Atashi, Alireza [2 ]
机构
[1] Shahid Beheshti Univ Med Sci, Sch Allied Med Sci, Dept Hlth Informat Technol & Management, Tehran, Iran
[2] Univ Tehran Med Sci, Virtual Sch, Tehran, Iran
关键词
Covid-19; gradient boosting tree; machine learning; random forest; support vector machine; HOSPITALIZED-PATIENTS; RISK; ALGORITHM; MODEL;
D O I
10.1002/hsr2.1162
中图分类号
R1 [预防医学、卫生学];
学科分类号
1004 ; 120402 ;
摘要
Background and AimsInfection with Covid-19 disease can lead to mortality in a short time. Early prediction of the mortality during an epidemic disease can save patients' lives through taking timely and necessary care interventions. Therefore, predicting the mortality of patients with Covid-19 using machine learning techniques can be effective in reducing mortality rate in Covid-19. The aim of this study is to compare four machine-learning algorithm for predicting mortality in Covid-19 disease. MethodsThe data of this study were collected from hospitalized patients with COVID-19 in five hospitals settings in Tehran (Iran). Database contained 4120 records, about 25% of which belonged to patients who died due to Covid-19. Each record contained 38 variables. Four machine-learning techniques, including random forest (RF), regression logistic (RL), gradient boosting tree (GBT), and support vector machine (SVM) were used in modeling. ResultsGBT model presented higher performance compared to other models (accuracy 70%, sensitivity 77%, specificity 69%, and the ROC area under the curve 0.857). RF, RL, and SVM models with the ROC area under curve 0.836, 0.818, and 0.794 were in the second and third places. ConclusionConsidering the combination of multiple influential factors affecting death Covid-19 can help in early prediction and providing a better care plan. In addition, using different modeling on data can be useful for physician in providing appropriate care.
引用
收藏
页数:9
相关论文
共 36 条
[1]   Risk factors for mortality among COVID-19 patients [J].
Albitar, Orwa ;
Ballouze, Rama ;
Ooi, Jer Ping ;
Ghadzi, Siti Maisharah Sheikh .
DIABETES RESEARCH AND CLINICAL PRACTICE, 2020, 166
[2]   Risk factors prediction, clinical outcomes, and mortality in COVID-19 patients [J].
Alizadehsani, Roohallah ;
Sani, Zahra Alizadeh ;
Behjati, Mohaddeseh ;
Roshanzamir, Zahra ;
Hussain, Sadiq ;
Abedini, Niloofar ;
Hasanzadeh, Fereshteh ;
Khosravi, Abbas ;
Shoeibi, Afshin ;
Roshanzamir, Mohamad ;
Moradnejad, Pardis ;
Nahavandi, Saeid ;
Khozeimeh, Fahime ;
Zare, Assef ;
Panahiazar, Maryam ;
Acharya, U. Rajendra ;
Islam, Sheikh Mohammed Shariful .
JOURNAL OF MEDICAL VIROLOGY, 2021, 93 (04) :2307-2320
[3]   A novel severity score to predict inpatient mortality in COVID-19 patients [J].
Altschul, David J. ;
Unda, Santiago R. ;
Benton, Joshua ;
Ramos, Rafael de la Garza ;
Cezayirli, Phillip ;
Mehler, Mark ;
Eskandar, Emad N. .
SCIENTIFIC REPORTS, 2020, 10 (01)
[4]   Development of a machine learning algorithm to predict intubation among hospitalized patients with COVID-19 [J].
Arvind, Varun ;
Kim, Jun S. ;
Cho, Brian H. ;
Geng, Eric ;
Cho, Samuel K. .
JOURNAL OF CRITICAL CARE, 2021, 62 :25-30
[5]   ACE2 and TMPRSS2 variants and expression as candidates to sex and country differences in COVID-19 severity in Italy [J].
Asselta, Rosanna ;
Paraboschi, Elvezia Maria ;
Mantovani, Alberto ;
Duga, Stefano .
AGING-US, 2020, 12 (11) :10087-10098
[6]   Machine-learning-based COVID-19 mortality prediction model and identification of patients at low and high risk of dying [J].
Banoei, Mohammad M. ;
Dinparastisaleh, Roshan ;
Zadeh, Ali Vaeli ;
Mirsaeidi, Mehdi .
CRITICAL CARE, 2021, 25 (01)
[7]   Developing a COVID-19 mortality risk prediction model when individual-level data are not available [J].
Barda, Noam ;
Riesel, Dan ;
Akriv, Amichay ;
Levy, Joseph ;
Finkel, Uriah ;
Yona, Gal ;
Greenfeld, Daniel ;
Sheiba, Shimon ;
Somer, Jonathan ;
Bachmat, Eitan ;
Rothblum, Guy N. ;
Shalit, Uri ;
Netzer, Doron ;
Balicer, Ran ;
Dagan, Noa .
NATURE COMMUNICATIONS, 2020, 11 (01)
[8]   Development of a prognostic model for mortality in COVID-19 infection using machine learning [J].
Booth, Adam L. ;
Abels, Elizabeth ;
McCaffrey, Peter .
MODERN PATHOLOGY, 2021, 34 (03) :522-531
[9]   Comparative genetic analysis of the novel coronavirus (2019-nCoV/SARS-CoV-2) receptor ACE2 in different populations [J].
Cao, Yanan ;
Li, Lin ;
Feng, Zhimin ;
Wan, Shengqing ;
Huang, Peide ;
Sun, Xiaohui ;
Wen, Fang ;
Huang, Xuanlin ;
Ning, Guang ;
Wang, Weiqing .
CELL DISCOVERY, 2020, 6 (01)
[10]   COVID-19 mortality prediction in the intensive care unit with deep learning based on longitudinal chest X-rays and clinical data [J].
Cheng, Jianhong ;
Sollee, John ;
Hsieh, Celina ;
Yue, Hailin ;
Vandal, Nicholas ;
Shanahan, Justin ;
Choi, Ji Whae ;
Thi My Linh Tran ;
Halsey, Kasey ;
Iheanacho, Franklin ;
Warren, James ;
Ahmed, Abdullah ;
Eickhoff, Carsten ;
Feldman, Michael ;
Barbosa, Eduardo Mortani, Jr. ;
Kamel, Ihab ;
Lin, Cheng Ting ;
Yi, Thomas ;
Healey, Terrance ;
Zhang, Paul ;
Wu, Jing ;
Atalay, Michael ;
Bai, Harrison X. ;
Jiao, Zhicheng ;
Wang, Jianxin .
EUROPEAN RADIOLOGY, 2022, 32 (07) :4446-4456