Prognostic significance of chest CT severity score in mortality prediction of COVID-19 patients, a machine learning study

被引:5
作者
Zakariaee, Seyed Salman [1 ]
Abdi, Aza Ismail [2 ]
Naderi, Negar [3 ]
Babashahi, Mashallah [4 ]
机构
[1] Ilam Univ Med Sci, Fac Paramed Sci, Dept Med Phys, Ilam, Iran
[2] Erbil Polytech Univ, Erbil Med Tech Inst, Dept Radiol, Erbil, Iraq
[3] Ilam Univ Med Sci, Fac Nursing & Midwifery, Dept Midwifery, Ilam, Iran
[4] Ilam Univ Med Sci, Fac Paramed Sci, Dept Pathol, Ilam, Iran
关键词
Chest CT severity score; COVID-19; CT-SS; Machine learning; Mortality prediction; MODEL;
D O I
10.1186/s43055-023-01022-z
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
BackgroundThe high mortality rate of COVID-19 makes it necessary to seek early identification of high-risk patients with poor prognoses. Although the association between CT-SS and mortality of COVID-19 patients was reported, its prognosis significance in combination with other prognostic parameters was not evaluated yet.MethodsThis retrospective single-center study reviewed a total of 6854 suspected patients referred to Imam Khomeini hospital, Ilam city, west of Iran, from February 9, 2020 to December 20, 2020. The prognostic performances of k-Nearest Neighbors (kNN), Multilayer Perceptron (MLP), Support Vector Machine (SVM), and J48 decision tree algorithms were evaluated based on the most important and relevant predictors. The metrics derived from the confusion matrix were used to determine the performance of the ML models.ResultsAfter applying exclusion criteria, 815 hospitalized cases were entered into the study. Of these, 447(54.85%) were male and the mean (+/- SD) age of participants was 57.22(+/- 16.76) years. The results showed that the performances of the ML algorithms were improved when they are fed by the dataset with CT-SS data. The kNN model with an accuracy of 94.1%, sensitivity of 100. 0%, precision of 89.5%, specificity of 88.3%, and AUC around 97.2% had the best performance among the other three ML techniques.ConclusionsThe integration of CT-SS data with demographics, risk factors, clinical manifestations, and laboratory parameters improved the prognostic performances of the ML algorithms. An ML model with a comprehensive collection of predictors could identify high-risk patients more efficiently and lead to the optimal use of hospital resources.
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页数:9
相关论文
共 39 条
[1]   Role of biological Data Mining and Machine Learning Techniques in Detecting and Diagnosing the Novel Coronavirus (COVID-19): A Systematic Review [J].
Albahri, A. S. ;
Hamid, Rula A. ;
Alwan, Jwan K. ;
Al-qays, Z. T. ;
Zaidan, A. A. ;
Zaidan, B. B. ;
Albahri, A. O. S. ;
AlAmoodi, A. H. ;
Khlaf, Jamal Mawlood ;
Almahdi, E. M. ;
Thabet, Eman ;
Hadi, Suha M. ;
Mohammed, K., I ;
Alsalem, M. A. ;
Al-Obaidi, Jameel R. ;
Madhloom, H. T. .
JOURNAL OF MEDICAL SYSTEMS, 2020, 44 (07)
[2]  
Alimohamadi Yousef, 2021, J Prev Med Hyg, V62, pE311, DOI 10.15167/2421-4248/jpmh2021.62.2.1627
[3]   Development of a multivariate prediction model of intensive care unit transfer or death: A French prospective cohort study of hospitalized COVID-19 patients [J].
Allenbach, Yves ;
Saadoun, David ;
Maalouf, Georgina ;
Vieira, Matheus ;
Hellio, Alexandra ;
Boddaert, Jacques ;
Gros, Helene ;
Salem, Joe Elie ;
Resche Rigon, Matthieu ;
Menyssa, Cherifa ;
Biard, Lucie ;
Benveniste, Olivier ;
Cacoub, Patrice .
PLOS ONE, 2020, 15 (10)
[4]   Utilization of machine-learning models to accurately predict the risk for critical COVID-19 [J].
Assaf, Dan ;
Gutman, Ya'ara ;
Neuman, Yair ;
Segal, Gad ;
Amit, Sharon ;
Gefen-Halevi, Shiraz ;
Shilo, Noya ;
Epstein, Avi ;
Mor-Cohen, Ronit ;
Biber, Asaf ;
Rahav, Galia ;
Levy, Itzchak ;
Tirosh, Amit .
INTERNAL AND EMERGENCY MEDICINE, 2020, 15 (08) :1435-1443
[5]   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
[6]   A case study in model failure? COVID-19 daily deaths and ICU bed utilisation predictions in New York state [J].
Chin, Vincent ;
Samia, Noelle, I ;
Marchant, Roman ;
Rosen, Ori ;
Ioannidis, John P. A. ;
Tanner, Martin A. ;
Cripps, Sally .
EUROPEAN JOURNAL OF EPIDEMIOLOGY, 2020, 35 (08) :733-742
[7]   Predicting CoVID-19 community mortality risk using machine learning and development of an online prognostic tool [J].
Das, Ashis Kumar ;
Mishra, Shiba ;
Gopalan, Saji Saraswathy .
PEERJ, 2020, 8
[8]  
Galvan Pedro, 2021, Med Access Point Care, V5, p23992026211013644, DOI 10.1177/23992026211013644
[9]   Machine learning based early warning system enables accurate mortality risk prediction for COVID-19 [J].
Gao, Yue ;
Cai, Guang-Yao ;
Fang, Wei ;
Li, Hua-Yi ;
Wang, Si-Yuan ;
Chen, Lingxi ;
Yu, Yang ;
Liu, Dan ;
Xu, Sen ;
Cui, Peng-Fei ;
Zeng, Shao-Qing ;
Feng, Xin-Xia ;
Yu, Rui-Di ;
Wang, Ya ;
Yuan, Yuan ;
Jiao, Xiao-Fei ;
Chi, Jian-Hua ;
Liu, Jia-Hao ;
Li, Ru-Yuan ;
Zheng, Xu ;
Song, Chun-Yan ;
Jin, Ning ;
Gong, Wen-Jian ;
Liu, Xing-Yu ;
Huang, Lei ;
Tian, Xun ;
Li, Lin ;
Xing, Hui ;
Ma, Ding ;
Li, Chun-Rui ;
Ye, Fei ;
Gao, Qing-Lei .
NATURE COMMUNICATIONS, 2020, 11 (01)
[10]  
Garcia S, 2015, INTEL SYST REF LIBR, V72, P1, DOI 10.1007/978-3-319-10247-4