Recurrent neural network models (CovRNN) for predicting outcomes of patients with COVID-19 on admission to hospital: model development and validation using electronic health record data

被引:33
|
作者
Rasmy, Laila [1 ]
Nigo, Masayuki [2 ]
Kannadath, Bijun Sai [4 ]
Xie, Ziqian [1 ]
Mao, Bingyu [1 ]
Patel, Khush [1 ]
Zhou, Yujia [1 ]
Zhang, Wanheng [3 ]
Ross, Angela [1 ]
Xu, Hua [1 ]
Zhi, Degui [1 ]
机构
[1] Univ Texas Hlth Sci Ctr Houston, Sch Biomed Informat, Houston, TX 77030 USA
[2] Univ Texas Hlth Sci Ctr Houston, McGovern Med Sch, Houston, TX 77030 USA
[3] Univ Texas Hlth Sci Ctr Houston, Sch Publ Hlth, Houston, TX USA
[4] Univ Arizona, Coll Med, Phoenix, AZ USA
来源
LANCET DIGITAL HEALTH | 2022年 / 4卷 / 06期
关键词
D O I
10.1016/S2589-7500(22)00049-8
中图分类号
R-058 [];
学科分类号
摘要
Background Predicting outcomes of patients with COVID-19 at an early stage is crucial for optimised clinical care and resource management, especially during a pandemic. Although multiple machine learning models have been proposed to address this issue, because of their requirements for extensive data preprocessing and feature engineering, they have not been validated or implemented outside of their original study site. Therefore, we aimed to develop accurate and transferrable predictive models of outcomes on hospital admission for patients with COVID-19. Methods In this study, we developed recurrent neural network-based models (CovRNN) to predict the outcomes of patients with COVID-19 by use of available electronic health record data on admission to hospital, without the need for specific feature selection or missing data imputation. CovRNN was designed to predict three outcomes: in-hospital mortality, need for mechanical ventilation, and prolonged hospital stay (>7 days). For in-hospital mortality and mechanical ventilation, CovRNN produced time-to-event risk scores (survival prediction; evaluated by the concordance index) and all-time risk scores (binary prediction; area under the receiver operating characteristic curve [AUROCJ was the main metric); we only trained a binary classification model for prolonged hospital stay. For binary classification tasks, we compared CovRNN against traditional machine learning algorithms: logistic regression and light gradient boost machine. Our models were trained and validated on the heterogeneous, deidentified data of 247 960 patients with COVID-19 from 87 US health-care systems derived from the Cerner Real-World COVID-19 Q3 Dataset up to September 2020. We held out the data of 4175 patients from two hospitals for external validation. The remaining 243 785 patients from the 85 health systems were grouped into training (n=170 626), validation (n=24378), and multihospital test (n=48 781) sets. Model performance was evaluated in the multi-hospital test set. The transferability of CovRNN was externally validated by use of deidentified data from 36 140 patients derived from the US-based Optum deidentified COVID-19 electronic health record dataset (version 1015; from January, 2007, to Oct 15, 2020). Exact dates of data extraction were masked by the databases to ensure patient data safety. Findings CovRNN binary models achieved AUROCs of 93.0% (95% CI 92.6-93.4) for the prediction of in-hospital mortality, 92.9% (92.6-93.2) for the prediction of mechanical ventilation, and 86.5% (86.2-86.9) for the prediction of a prolonged hospital stay, outperforming light gradient boost machine and logistic regression algorithms. External validation confirmed AUROCs in similar ranges (91.3-97-0% for in-hospital mortality prediction, 91.5-96.0% for the prediction of mechanical ventilation, and 81.0-88.3% for the prediction of prolonged hospital stay). For survival prediction, CovRNN achieved a concordance index of 86.0% (95% CI 85.1-86.9) for in-hospital mortality and 92.6% (92. 2-93-0) for mechanical ventilation. Interpretation Trained on a large, heterogeneous, real-world dataset, our CovRNN models showed high prediction accuracy and transferability through consistently good performances on multiple external datasets. Our results show the feasibility of a COVID-19 predictive model that delivers high accuracy without the need for complex feature engineering. Copyright (C) 2022 The Author(s). Published by Elsevier Ltd.
引用
收藏
页码:E415 / E425
页数:11
相关论文
共 50 条
  • [1] Development and validation of a model predicting mild stroke severity on admission using electronic health record data
    Waddell, Kimberly J.
    Myers, Laura J.
    Perkins, Anthony J.
    Sico, Jason J.
    Sexson, Ali
    Burrone, Laura
    Taylor, Stanley
    Koo, Brian
    Daggy, Joanne K.
    Bravata, Dawn M.
    JOURNAL OF STROKE & CEREBROVASCULAR DISEASES, 2023, 32 (09):
  • [2] Longitudinal validation of an electronic health record delirium prediction model applied at admission in COVID-19 patients
    Castro, Victor M.
    Hart, Kamber L.
    Sacks, Chana A.
    Murphy, Shawn N.
    Perlis, Roy H.
    McCoy, Thomas H., Jr.
    GENERAL HOSPITAL PSYCHIATRY, 2022, 74 : 9 - 17
  • [3] Development of An Individualized Risk Prediction Model for COVID-19 Using Electronic Health Record Data
    Mamidi, Tarun Karthik Kumar
    Tran-Nguyen, Thi K.
    Melvin, Ryan L.
    Worthey, Elizabeth A.
    FRONTIERS IN BIG DATA, 2021, 4
  • [4] An artificial neural network model to predict the mortality of COVID-19 patients using routine blood samples at the time of hospital admission Development and validation study
    Lin, Ju-Kuo
    Chien, Tsair-Wei
    Wang, Lin-Yen
    Chou, Willy
    MEDICINE, 2021, 100 (28) : E26532
  • [5] A System for Predicting Hospital Admission at Emergency Department Based on Electronic Health Record Using Convolution Neural Network
    Yao, Li-Hung
    Leung, Ka-Chun
    Hong, Jheng-Huang
    Tsai, Chu-Lin
    Fri, Li-Chen
    2020 IEEE INTERNATIONAL CONFERENCE ON SYSTEMS, MAN, AND CYBERNETICS (SMC), 2020, : 546 - 551
  • [6] Development and validation of a risk prediction model for hospital admission in COVID-19 patients presenting to primary care
    Wynants, Laure
    Broers, Natascha
    Platteel, Tamara
    Venekamp, Roderick
    Barten, Dennis
    Leers, Mathie
    Verheij, Theo
    Stassen, Patricia
    Cals, Jochen
    de Bont, Eefje
    EUROPEAN JOURNAL OF GENERAL PRACTICE, 2024, 30 (01)
  • [7] Development and internal validation of a diagnostic prediction model for COVID-19 at time of admission to hospital
    Fink, D. L.
    Khan, P. Y.
    Goldman, N.
    Cai, J.
    Hone, L.
    Mooney, C.
    El-Shakankery, K. H.
    Sismey, G.
    Whitford, V
    Marks, M.
    Thomas, S.
    QJM-AN INTERNATIONAL JOURNAL OF MEDICINE, 2021, 114 (10) : 699 - 705
  • [8] Development and internal validation of prediction models for future hospital care utilization by patients with multimorbidity using electronic health record data
    Verhoeff, Marlies
    de Groot, Janke
    Burgers, Jako S.
    van Munster, Barbara C.
    PLOS ONE, 2022, 17 (03):
  • [9] Predicting critical state after COVID-19 diagnosis: model development using a large US electronic health record dataset
    Rinderknecht, Mike D.
    Klopfenstein, Yannick
    NPJ DIGITAL MEDICINE, 2021, 4 (01)
  • [10] Predicting critical state after COVID-19 diagnosis: model development using a large US electronic health record dataset
    Mike D. Rinderknecht
    Yannick Klopfenstein
    npj Digital Medicine, 4