Statistical Analysis and Machine Learning Prediction of Disease Outcomes for COVID-19 and Pneumonia Patients

被引:10
|
作者
Zhao, Yu
Zhang, Rusen
Zhong, Yi
Wang, Jingjing
Weng, Zuquan
Luo, Heng
Chen, Cunrong
机构
[1] College of Computer and Data Science, Fuzhou University, Fuzhou
[2] Centre for Big Data Research in Burns and Trauma, Fuzhou University, Fuzhou
[3] Department of Cardiovascular Medicine, Affiliated Fuzhou First Hospital of Fujian Medical University, Fuzhou
[4] Department of Critical Care Medicine, Union Hospital of Fujian Medical University, Fuzhou
[5] College of Biological Science and Engineering, Fuzhou University, Fuzhou
[6] MetaNovas Biotech Inc, Foster City, CA
基金
中国国家自然科学基金;
关键词
the coronavirus disease 2019; pneumonia; statistical analysis; machine learning; attention mechanism; clinical indicators; COMMUNITY-ACQUIRED PNEUMONIA; TO-LYMPHOCYTE RATIO; IPRATROPIUM BROMIDE; DIAGNOSIS;
D O I
10.3389/fcimb.2022.838749
中图分类号
R392 [医学免疫学]; Q939.91 [免疫学];
学科分类号
100102 ;
摘要
The Coronavirus Disease 2019 (COVID-19) has spread all over the world and impacted many people's lives. The characteristics of COVID-19 and other types of pneumonia have both similarities and differences, which confused doctors initially to separate and understand them. Here we presented a retrospective analysis for both COVID-19 and other types of pneumonia by combining the COVID-19 clinical data, eICU and MIMIC-III databases. Machine learning models, including logistic regression, random forest, XGBoost and deep learning neural networks, were developed to predict the severity of COVID-19 infections as well as the mortality of pneumonia patients in intensive care units (ICU). Statistical analysis and feature interpretation, including the analysis of two-level attention mechanisms on both temporal and non-temporal features, were utilized to understand the associations between different clinical variables and disease outcomes. For the COVID-19 data, the XGBoost model obtained the best performance on the test set (AUROC = 1.000 and AUPRC = 0.833). On the MIMIC-III and eICU pneumonia datasets, our deep learning model (Bi-LSTM_Attn) was able to identify clinical variables associated with death of pneumonia patients (AUROC = 0.924 and AUPRC = 0.802 for 24-hour observation window and 12-hour prediction window). The results highlighted clinical indicators, such as the lymphocyte counts, that may help the doctors to predict the disease progression and outcomes for both COVID-19 and other types of pneumonia.
引用
收藏
页数:15
相关论文
共 50 条
  • [31] Open resource of clinical data from patients with pneumonia for the prediction of COVID-19 outcomes via deep learning
    Ning, Wanshan
    Lei, Shijun
    Yang, Jingjing
    Cao, Yukun
    Jiang, Peiran
    Yang, Qianqian
    Zhang, Jiao
    Wang, Xiaobei
    Chen, Fenghua
    Geng, Zhi
    Xiong, Liang
    Zhou, Hongmei
    Guo, Yaping
    Zeng, Yulan
    Shi, Heshui
    Wang, Lin
    Xue, Yu
    Wang, Zheng
    NATURE BIOMEDICAL ENGINEERING, 2020, 4 (12) : 1197 - 1207
  • [32] Prediction of hospitalization time probability for COVID-19 patients with statistical and machine learning methods using blood parameters
    Motarjem, Kiomars
    Behzadifard, Mahin
    Ramazi, Shahin
    Tabatabaei, Seyed A. H.
    ANNALS OF MEDICINE AND SURGERY, 2024, 86 (12): : 7125 - 7134
  • [33] Prediction models for COVID-19 disease outcomes
    Tang, Cynthia Y.
    Gao, Cheng
    Prasai, Kritika
    Li, Tao
    Dash, Shreya
    McElroy, Jane A.
    Hang, Jun
    Wan, Xiu-Feng
    EMERGING MICROBES & INFECTIONS, 2024, 13 (01)
  • [34] COVID-19 health analysis and prediction using machine learning algorithms for Mexico and Brazil patients
    Iwendi, Celestine
    Huescas, C. G. Y.
    Chakraborty, Chinmay
    Mohan, Senthilkumar
    JOURNAL OF EXPERIMENTAL & THEORETICAL ARTIFICIAL INTELLIGENCE, 2024, 36 (03) : 315 - 335
  • [35] A Machine Learning Approach for Mortality Prediction in COVID-19 Pneumonia: Development and Evaluation of the Piacenza Score
    Halasz, Geza
    Sperti, Michela
    Villani, Matteo
    Michelucci, Umberto
    Agostoni, Piergiuseppe
    Biagi, Andrea
    Rossi, Luca
    Botti, Andrea
    Mari, Chiara
    Maccarini, Marco
    Pura, Filippo
    Roveda, Loris
    Nardecchia, Alessia
    Mottola, Emanuele
    Nolli, Massimo
    Salvioni, Elisabetta
    Mapelli, Massimo
    Deriu, Marco Agostino
    Piga, Dario
    Piepoli, Massimo
    JOURNAL OF MEDICAL INTERNET RESEARCH, 2021, 23 (05)
  • [36] Machine learning links unresolving secondary pneumonia to mortality in patients with severe pneumonia, including COVID-19
    Gao, Catherine A.
    Markov, Nikolay S.
    Stoeger, Thomas
    Pawlowski, Anna
    Kang, Mengjia
    Nannapaneni, Prasanth
    Grant, Rogan A.
    Pickens, Chiagozie
    Walter, James M.
    Kruser, Jacqueline M.
    Rasmussen, Luke
    Schneider, Daniel
    Starren, Justin
    Donnelly, Helen K.
    Donayre, Alvaro
    Luo, Yuan
    Budinger, G. R. Scott
    Wunderink, Richard G.
    Misharin, Alexander V.
    Singer, Benjamin D.
    JOURNAL OF CLINICAL INVESTIGATION, 2023, 133 (12):
  • [37] Prediction of Covid-19 and post Covid-19 patients with reduced feature extraction using Machine Learning Techniques
    Bano, Shehr
    Hussain, Syed Fawad
    2021 INTERNATIONAL CONFERENCE ON FRONTIERS OF INFORMATION TECHNOLOGY (FIT 2021), 2021, : 37 - 42
  • [38] TRACHEOSTOMY TIMING AND OUTCOMES IN PATIENTS WITH COVID-19 PNEUMONIA
    Illuzzi, Ella
    Bassily-Marcus, Adel
    Kohli-Seth, Roopa
    Leibner, Evan
    Mohammed, Ahmed
    CHEST, 2020, 158 (04) : 598A - 598A
  • [39] CLINICAL OUTCOMES OF PATIENTS WITH ASTHMA WITH COVID-19 PNEUMONIA
    Brinton, Taylor
    Howell, Gregory
    Arshad, Hashaam
    Ejaz, Ain
    Alakhras, Ibrahim
    CHEST, 2020, 158 (04) : 340A - 340A
  • [40] Outcomes of patients with COVID-19 pneumonia treated with CPAP
    Di Tria, Roberta
    Ferrari, Giovanni
    Righini, Paolo
    Marchisio, Alessia
    Caponnetto, Chiara
    Gallo, Valter
    Bassini, Sonia
    Prota, Roberto
    EUROPEAN RESPIRATORY JOURNAL, 2021, 58