Prediction of mortality risk and duration of hospitalization of COVID-19 patients with chronic comorbidities based on machine learning algorithms

被引:6
作者
Amiri, Parastoo [1 ]
Montazeri, Mahdieh [2 ]
Ghasemian, Fahimeh [3 ]
Asadi, Fatemeh [4 ]
Niksaz, Saeed [3 ]
Sarafzadeh, Farhad [5 ]
Khajouei, Reza [2 ,6 ]
机构
[1] Kerman Univ Med Sci, Student Res Comm, Kerman, Iran
[2] Kerman Univ Med Sci, Fac Management & Med Informat Sci, Dept Hlth Informat Sci, Kerman, Iran
[3] Shahid Bahonar Univ Kerman, Fac Engn, Comp Engn Dept, Kerman, Iran
[4] Kerman Univ Med Sci, Student Res Comm, Sch Management & Med Informat, Kerman, Iran
[5] Kerman Univ Med Sci, Afzalipour Hosp, Infect & Internal Med Dept, Kerman, Iran
[6] Kerman Univ Med Sci, Fac Management & Med Informat Sci, Dept Hlth Informat Sci, Haftbagh Highway, Kerman 7616911313, Iran
关键词
COVID-19; chronic comorbidities; machine learning; mortality; hospital length of stay; prediction; LENGTH-OF-STAY; CLINICAL CHARACTERISTICS; DISEASE; CANCER; ACCURACY; FATALITY; OUTCOMES; MODEL;
D O I
10.1177/20552076231170493
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
BackgroundThe severity of coronavirus (COVID-19) in patients with chronic comorbidities is much higher than in other patients, which can lead to their death. Machine learning (ML) algorithms as a potential solution for rapid and early clinical evaluation of the severity of the disease can help in allocating and prioritizing resources to reduce mortality. ObjectiveThe objective of this study was to predict the mortality risk and length of stay (LoS) of patients with COVID-19 and history of chronic comorbidities using ML algorithms. MethodsThis retrospective study was conducted by reviewing the medical records of COVID-19 patients with a history of chronic comorbidities from March 2020 to January 2021 in Afzalipour Hospital in Kerman, Iran. The outcome of patients, hospitalization was recorded as discharge or death. The filtering technique used to score the features and well-known ML algorithms were applied to predict the risk of mortality and LoS of patients. Ensemble Learning methods is also used. To evaluate the performance of the models, different measures including F1, precision, recall, and accuracy were calculated. The TRIPOD guideline assessed transparent reporting. ResultsThis study was performed on 1291 patients, including 900 alive and 391 dead patients. Shortness of breath (53.6%), fever (30.1%), and cough (25.3%) were the three most common symptoms in patients. Diabetes mellitus(DM) (31.3%), hypertension (HTN) (27.3%), and ischemic heart disease (IHD) (14.2%) were the three most common chronic comorbidities of patients. Twenty-six important factors were extracted from each patient's record. Gradient boosting model with 84.15% accuracy was the best model for predicting mortality risk and multilayer perceptron (MLP) with rectified linear unit function (MSE = 38.96) was the best model for predicting the LoS. The most common chronic comorbidities among these patients were DM (31.3%), HTN (27.3%), and IHD (14.2%). The most important factors in predicting the risk of mortality were hyperlipidemia, diabetes, asthma, and cancer, and in predicting LoS was shortness of breath. ConclusionThe results of this study showed that the use of ML algorithms can be a good tool to predict the risk of mortality and LoS of patients with COVID-19 and chronic comorbidities based on physiological conditions, symptoms, and demographic information of patients. The Gradient boosting and MLP algorithms can quickly identify patients at risk of death or long-term hospitalization and notify physicians to do appropriate interventions.
引用
收藏
页数:12
相关论文
共 74 条
[1]  
Afrash M., 2021, J. Med. Chem. Sci, V4, P525, DOI [10.26655/JMCHEMSCI.2021.5.15, DOI 10.26655/JMCHEMSCI.2021.5.15]
[2]  
Agieb R., 2020, Int J Adv Trends Comput Sci Eng, V2020, P6980, DOI DOI 10.30534/IJATCSE/2020/15952020
[3]   Machine Learning Approaches to Identify Patient Comorbidities and Symptoms That Increased Risk of Mortality in COVID-19 [J].
Aktar, Sakifa ;
Talukder, Ashis ;
Ahamad, Md Martuza ;
Kamal, A. H. M. ;
Khan, Jahidur Rahman ;
Protikuzzaman, Md ;
Hossain, Nasif ;
Azad, A. K. M. ;
Quinn, Julian M. W. ;
Summers, Mathew A. ;
Liaw, Teng ;
Eapen, Valsamma ;
Moni, Mohammad Ali .
DIAGNOSTICS, 2021, 11 (08)
[4]  
Alabbad Dina A, 2022, Inform Med Unlocked, V30, P100937, DOI 10.1016/j.imu.2022.100937
[5]   Mortality Risk Factors among Hospitalized COVID-19 Patients in a Major Referral Center in Iran [J].
Alamdari, Nasser Malekpour ;
Afaghi, Siamak ;
Rahimi, Fatemeh Sadat ;
Tarki, Farzad Esmaeili ;
Tavana, Sasan ;
Zali, Alireza ;
Fathi, Mohammad ;
Besharat, Sara ;
Bagheri, Leyla ;
Pourmotahari, Fatemeh ;
Irvani, Seyed Sina Naghibi ;
Dabbagh, Ali ;
Mousavi, Seyed Ali .
TOHOKU JOURNAL OF EXPERIMENTAL MEDICINE, 2020, 252 (01) :73-84
[6]  
Alimohamadi Y, 2021, J BIOSTATISTICS EPID, V7, P224
[7]  
Alinejad H., 2021, J CLIENT CENTERED NU, V7, P167
[8]  
Alipoor Zahra Jannat, 2020, Journal of Military Medicine, V22, pfa632, DOI 10.30491/JMM.22.6.632
[9]   Predictors of Length of Hospital Stay, Mortality, and Outcomes Among Hospitalised COVID-19 Patients in Saudi Arabia: A Cross-Sectional Study [J].
Alwafi, Hassan ;
Naser, Abdallah Y. ;
Qanash, Sultan ;
Brinji, Ahmad S. ;
Ghazawi, Maher A. ;
Alotaibi, Basil ;
Alghamdi, Ahmad ;
Alrhmani, Aisha ;
Fatehaldin, Reham ;
Alelyani, Ali ;
Basfar, Abdulrhman ;
AlBarakati, Abdulaziz ;
Alsharif, Ghaidaa F. ;
Obaid, Elaf F. ;
Shabrawishi, Mohammed .
JOURNAL OF MULTIDISCIPLINARY HEALTHCARE, 2021, 14 :839-852
[10]   Machine learning prediction for mortality of patients diagnosed with COVID-19: a nationwide Korean cohort study [J].
An, Chansik ;
Lim, Hyunsun ;
Kim, Dong-Wook ;
Chang, Jung Hyun ;
Choi, Yoon Jung ;
Kim, Seong Woo .
SCIENTIFIC REPORTS, 2020, 10 (01)