Machine learning-based derivation and external validation of a tool to predict death and development of organ failure in hospitalized patients with COVID-19

被引:0
|
作者
Yixi Xu
Anusua Trivedi
Nicholas Becker
Marian Blazes
Juan Lavista Ferres
Aaron Lee
W. Conrad Liles
Pavan K. Bhatraju
机构
[1] University of Washington,School of Medicine
[2] University of Washington Division of Pulmonary,Pulmonary, Critical Care and Sleep Medicine
[3] University of Washington (SCORE-UW),Department of Medicine and Sepsis Center of Research Excellence
[4] AI for Good Research,Computer Science and Engineering
[5] Microsoft,undefined
[6] University of Washington,undefined
来源
关键词
D O I
暂无
中图分类号
学科分类号
摘要
COVID-19 mortality risk stratification tools could improve care, inform accurate and rapid triage decisions, and guide family discussions regarding goals of care. A minority of COVID-19 prognostic tools have been tested in external cohorts. Our objective was to compare machine learning algorithms and develop a tool for predicting subsequent clinical outcomes in COVID-19. We conducted a retrospective cohort study that included hospitalized patients with COVID-19 from March 2020 to March 2021. Seven Hundred Twelve consecutive patients from University of Washington and 345 patients from Tongji Hospital in China were included. We applied three different machine learning algorithms to clinical and laboratory data collected within the initial 24 h of hospital admission to determine the risk of in-hospital mortality, transfer to the intensive care unit, shock requiring vasopressors, and receipt of renal replacement therapy. Mortality risk models were derived, internally validated in UW and externally validated in Tongji Hospital. The risk models for ICU transfer, shock and RRT were derived and internally validated in the UW dataset but were unable to be externally validated due to a lack of data on these outcomes. Among the UW dataset, 122 patients died (17%) during hospitalization and the mean days to hospital mortality was 15.7 +/− 21.5 (mean +/− SD). Elastic net logistic regression resulted in a C-statistic for in-hospital mortality of 0.72 (95% CI, 0.64 to 0.81) in the internal validation and 0.85 (95% CI, 0.81 to 0.89) in the external validation set. Age, platelet count, and white blood cell count were the most important predictors of mortality. In the sub-group of patients > 50 years of age, the mortality prediction model continued to perform with a C-statistic of 0.82 (95% CI:0.76,0.87). Prediction models also performed well for shock and RRT in the UW dataset but functioned with lower accuracy for ICU transfer. We trained, internally and externally validated a prediction model using data collected within 24 h of hospital admission to predict in-hospital mortality on average two weeks prior to death. We also developed models to predict RRT and shock with high accuracy. These models could be used to improve triage decisions, resource allocation, and support clinical trial enrichment.
引用
收藏
相关论文
共 50 条
  • [21] Development and Validation of a Clinical Risk Score to Predict the Critical Illness in Hospitalized Patients With COVID-19
    Katsouli, Anthi
    Gazi, Sadia
    Marfia, Paula
    Lee, Helen
    Qazi, Sameer
    Komorowski, Monica
    Bertino, Ann-Marie
    Joshi, Neeraj
    [J]. CIRCULATION, 2021, 144
  • [22] Applying machine learning algorithms to predict outcomes in hospitalized COVID-19 patient
    El Euch, Ahmed Dhia
    Triki, Soumaya
    Kallel, Nour
    Gargouri, Rahma
    Kallel, Nesrin
    Feki, Walid
    Gargouri, Imed
    Kammoun, Samy
    [J]. EUROPEAN RESPIRATORY JOURNAL, 2023, 62
  • [23] Massive external validation of a machine learning algorithm to predict pulmonary embolism in hospitalized patients
    Shen, Jieru
    Chetty, Satish Casie
    Shokouhi, Sepideh
    Maharjan, Jenish
    Chuba, Yevheniy
    Calvert, Jacob
    Mao, Qingqing
    [J]. THROMBOSIS RESEARCH, 2022, 216 : 14 - 21
  • [24] Massive External Validation of a Machine Learning Algorithm to Predict Pulmonary Embolism in Hospitalized Patients
    Calvert, J.
    Shen, J.
    Chetty, S. Casie
    Shokouhi, S.
    Mao, Q.
    [J]. AMERICAN JOURNAL OF RESPIRATORY AND CRITICAL CARE MEDICINE, 2022, 205
  • [25] Development and Internal Validation of a Novel Machine Learning-Based Prediction Tool for Postoperative Respiratory Failure
    Kiyatkin, Michael E.
    Aasman, Boudewijn
    Fazzari, Melissa J.
    Wachtendorf, Luca J.
    Gong, Michelle N.
    [J]. ANESTHESIA AND ANALGESIA, 2022, 134 : 180 - 180
  • [26] Development and external validation of a prognostic tool for COVID-19 critical disease
    Chow, Daniel S.
    Glavis-Bloom, Justin
    Soun, Jennifer E.
    Weinberg, Brent
    Loveless, Theresa Berens
    Xie, Xiaohui
    Mutasa, Simukayi
    Monuki, Edwin
    Park, Jung In
    Bota, Daniela
    Wu, Jie
    Thompson, Leslie
    Boden-Albala, Bernadette
    Khan, Saahir
    Amin, Alpesh N.
    Chang, Peter D.
    [J]. PLOS ONE, 2020, 15 (12):
  • [27] Development and external validation of a prognostic tool for nonsevere COVID-19 inpatients
    Luo, Ensi
    Zhong, Qingyang
    Wen, Yongtao
    Cai, Jie
    Xie, Xia
    Zhou, Lingjuan
    [J]. EPIDEMIOLOGY AND INFECTION, 2023, 151
  • [28] Prior Stroke and Age Predict Acute Ischemic Stroke Among Hospitalized COVID-19 Patients: A Derivation and Validation Study
    Peng, Teng J.
    Jasne, Adam S.
    Simonov, Michael
    Abdelhakim, Safa
    Kone, Gbambele
    Cheng, Yee Kuang
    Rethana, Melissa
    Tarasaria, Karan
    Herman, Alison L.
    Baker, Anna D.
    Yaghi, Shadi
    Frontera, Jennifer A.
    Sansing, Lauren H.
    Falcone, Guido J.
    Spudich, Serena
    Schindler, Joseph
    Sheth, Kevin N.
    Sharma, Richa
    [J]. FRONTIERS IN NEUROLOGY, 2021, 12
  • [29] Machine learning-based mortality prediction models for smoker COVID-19 patients
    Ali Sharifi-Kia
    Azin Nahvijou
    Abbas Sheikhtaheri
    [J]. BMC Medical Informatics and Decision Making, 23
  • [30] Machine learning-based mortality prediction models for smoker COVID-19 patients
    Sharifi-Kia, Ali
    Nahvijou, Azin
    Sheikhtaheri, Abbas
    [J]. BMC MEDICAL INFORMATICS AND DECISION MAKING, 2023, 23 (01)