Identification of risk factors for mortality associated with COVID-19

Objectives Coronavirus Disease 2019 (COVID-19) has become a pandemic outbreak. Risk stratification at hospital admission is of vital importance for medical decision making and resource allocation. There is no sophisticated tool for this purpose. This study aimed to develop neural network models with...

Full description

Bibliographic Details
Main Authors: Yuetian Yu, Cheng Zhu, Luyu Yang, Hui Dong, Ruilan Wang, Hongying Ni, Erzhen Chen, Zhongheng Zhang
Format: Article
Language:English
Published: PeerJ Inc. 2020-09-01
Series:PeerJ
Subjects:
Online Access:https://peerj.com/articles/9885.pdf
id doaj-333eaaa234334a62932b9f12a23c8e9f
record_format Article
spelling doaj-333eaaa234334a62932b9f12a23c8e9f2020-11-25T03:18:30ZengPeerJ Inc.PeerJ2167-83592020-09-018e988510.7717/peerj.9885Identification of risk factors for mortality associated with COVID-19Yuetian Yu0Cheng Zhu1Luyu Yang2Hui Dong3Ruilan Wang4Hongying Ni5Erzhen Chen6Zhongheng Zhang7Department of Critical Care Medicine, Ren Ji Hospital, School of Medicine, Shanghai Jiao Tong University, Shanghai, ChinaDepartment of Emergency Medicine, Rui Jin Hospital, School of Medicine, Shanghai Jiao Tong University, Shanghai, ChinaDepartment of Intensive Care Unit, Wuhan Third Hospital, Wuhan University, Wuhan, ChinaDepartment of Intensive Care Unit, Wuhan Third Hospital, Wuhan University, Wuhan, ChinaDepartment of Critical Care Medicine, Shanghai General Hospital, Shanghai Jiao Tong University, Shanghai, ChinaDepartment of Critical Care Medicine, Jinhua Municipal Central Hospital, Jinhua, Zhejiang, ChinaDepartment of Emergency Medicine, Rui Jin Hospital, School of Medicine, Shanghai Jiao Tong University, Shanghai, ChinaDepartment of Emergency Medicine, Sir Run Run Shaw hospital; Zhejiang University School of Medicine, Hangzhou, ChinaObjectives Coronavirus Disease 2019 (COVID-19) has become a pandemic outbreak. Risk stratification at hospital admission is of vital importance for medical decision making and resource allocation. There is no sophisticated tool for this purpose. This study aimed to develop neural network models with predictors selected by genetic algorithms (GA). Methods This study was conducted in Wuhan Third Hospital from January 2020 to March 2020. Predictors were collected on day 1 of hospital admission. The primary outcome was the vital status at hospital discharge. Predictors were selected by using GA, and neural network models were built with the cross-validation method. The final neural network models were compared with conventional logistic regression models. Results A total of 246 patients with COVID-19 were included for analysis. The mortality rate was 17.1% (42/246). Non-survivors were significantly older (median (IQR): 69 (57, 77) vs. 55 (41, 63) years; p < 0.001), had higher high-sensitive troponin I (0.03 (0, 0.06) vs. 0 (0, 0.01) ng/L; p < 0.001), C-reactive protein (85.75 (57.39, 164.65) vs. 23.49 (10.1, 53.59) mg/L; p < 0.001), D-dimer (0.99 (0.44, 2.96) vs. 0.52 (0.26, 0.96) mg/L; p < 0.001), and α-hydroxybutyrate dehydrogenase (306.5 (268.75, 377.25) vs. 194.5 (160.75, 247.5); p < 0.001) and a lower level of lymphocyte count (0.74 (0.41, 0.96) vs. 0.98 (0.77, 1.26) × 109/L; p < 0.001) than survivors. The GA identified a 9-variable (NNet1) and a 32-variable model (NNet2). The NNet1 model was parsimonious with a cost on accuracy; the NNet2 model had the maximum accuracy. NNet1 (AUC: 0.806; 95% CI [0.693–0.919]) and NNet2 (AUC: 0.922; 95% CI [0.859–0.985]) outperformed the linear regression models. Conclusions Our study included a cohort of COVID-19 patients. Several risk factors were identified considering both clinical and statistical significance. We further developed two neural network models, with the variables selected by using GA. The model performs much better than the conventional generalized linear models.https://peerj.com/articles/9885.pdfCOVID-19Risk factorGenetic algorithms
collection DOAJ
language English
format Article
sources DOAJ
author Yuetian Yu
Cheng Zhu
Luyu Yang
Hui Dong
Ruilan Wang
Hongying Ni
Erzhen Chen
Zhongheng Zhang
spellingShingle Yuetian Yu
Cheng Zhu
Luyu Yang
Hui Dong
Ruilan Wang
Hongying Ni
Erzhen Chen
Zhongheng Zhang
Identification of risk factors for mortality associated with COVID-19
PeerJ
COVID-19
Risk factor
Genetic algorithms
author_facet Yuetian Yu
Cheng Zhu
Luyu Yang
Hui Dong
Ruilan Wang
Hongying Ni
Erzhen Chen
Zhongheng Zhang
author_sort Yuetian Yu
title Identification of risk factors for mortality associated with COVID-19
title_short Identification of risk factors for mortality associated with COVID-19
title_full Identification of risk factors for mortality associated with COVID-19
title_fullStr Identification of risk factors for mortality associated with COVID-19
title_full_unstemmed Identification of risk factors for mortality associated with COVID-19
title_sort identification of risk factors for mortality associated with covid-19
publisher PeerJ Inc.
series PeerJ
issn 2167-8359
publishDate 2020-09-01
description Objectives Coronavirus Disease 2019 (COVID-19) has become a pandemic outbreak. Risk stratification at hospital admission is of vital importance for medical decision making and resource allocation. There is no sophisticated tool for this purpose. This study aimed to develop neural network models with predictors selected by genetic algorithms (GA). Methods This study was conducted in Wuhan Third Hospital from January 2020 to March 2020. Predictors were collected on day 1 of hospital admission. The primary outcome was the vital status at hospital discharge. Predictors were selected by using GA, and neural network models were built with the cross-validation method. The final neural network models were compared with conventional logistic regression models. Results A total of 246 patients with COVID-19 were included for analysis. The mortality rate was 17.1% (42/246). Non-survivors were significantly older (median (IQR): 69 (57, 77) vs. 55 (41, 63) years; p < 0.001), had higher high-sensitive troponin I (0.03 (0, 0.06) vs. 0 (0, 0.01) ng/L; p < 0.001), C-reactive protein (85.75 (57.39, 164.65) vs. 23.49 (10.1, 53.59) mg/L; p < 0.001), D-dimer (0.99 (0.44, 2.96) vs. 0.52 (0.26, 0.96) mg/L; p < 0.001), and α-hydroxybutyrate dehydrogenase (306.5 (268.75, 377.25) vs. 194.5 (160.75, 247.5); p < 0.001) and a lower level of lymphocyte count (0.74 (0.41, 0.96) vs. 0.98 (0.77, 1.26) × 109/L; p < 0.001) than survivors. The GA identified a 9-variable (NNet1) and a 32-variable model (NNet2). The NNet1 model was parsimonious with a cost on accuracy; the NNet2 model had the maximum accuracy. NNet1 (AUC: 0.806; 95% CI [0.693–0.919]) and NNet2 (AUC: 0.922; 95% CI [0.859–0.985]) outperformed the linear regression models. Conclusions Our study included a cohort of COVID-19 patients. Several risk factors were identified considering both clinical and statistical significance. We further developed two neural network models, with the variables selected by using GA. The model performs much better than the conventional generalized linear models.
topic COVID-19
Risk factor
Genetic algorithms
url https://peerj.com/articles/9885.pdf
work_keys_str_mv AT yuetianyu identificationofriskfactorsformortalityassociatedwithcovid19
AT chengzhu identificationofriskfactorsformortalityassociatedwithcovid19
AT luyuyang identificationofriskfactorsformortalityassociatedwithcovid19
AT huidong identificationofriskfactorsformortalityassociatedwithcovid19
AT ruilanwang identificationofriskfactorsformortalityassociatedwithcovid19
AT hongyingni identificationofriskfactorsformortalityassociatedwithcovid19
AT erzhenchen identificationofriskfactorsformortalityassociatedwithcovid19
AT zhonghengzhang identificationofriskfactorsformortalityassociatedwithcovid19
_version_ 1724626446574419968