A New Time-Window Prediction Model For Traumatic Hemorrhagic Shock Based on Interpretable Machine Learning.

Journal: Shock (Augusta, Ga.)
PMID:

Abstract

Early warning prediction of traumatic hemorrhagic shock (THS) can greatly reduce patient mortality and morbidity. We aimed to develop and validate models with different stepped feature sets to predict THS in advance. From the PLA General Hospital Emergency Rescue Database and Medical Information Mart for Intensive Care III, we identified 604 and 1,614 patients, respectively. Two popular machine learning algorithms (i.e., extreme gradient boosting [XGBoost] and logistic regression) were applied. The area under the receiver operating characteristic curve (AUROC) was used to evaluate the performance of the models. By analyzing the feature importance based on XGBoost, we found that features in vital signs (VS), routine blood (RB), and blood gas analysis (BG) were the most relevant to THS (0.292, 0.249, and 0.225, respectively). Thus, the stepped relationships existing in them were revealed. Furthermore, the three stepped feature sets (i.e., VS, VS + RB, and VS + RB + sBG) were passed to the two machine learning algorithms to predict THS in the subsequent T hours (where T = 3, 2, 1, or 0.5), respectively. Results showed that the XGBoost model performance was significantly better than the logistic regression. The model using vital signs alone achieved good performance at the half-hour time window (AUROC = 0.935), and the performance was increased when laboratory results were added, especially when the time window was 1 h (AUROC = 0.950 and 0.968, respectively). These good-performing interpretable models demonstrated acceptable generalization ability in external validation, which could flexibly and rollingly predict THS T hours (where T = 0.5, 1) prior to clinical recognition. A prospective study is necessary to determine the clinical utility of the proposed THS prediction models.

Authors

  • Yuzhuo Zhao
    Department of Emergency, The First Medical Center of Chinese PLA General Hospital, Beijing, China.
  • Lijing Jia
    Department of Emergency, The First Medical Center to Chinese People's Liberation Army General Hospital, Beijing, China.
  • Ruiqi Jia
    School of Economics and Management, Beijing Jiaotong University, Beijing, China.
  • Hui Han
    Department of Nursing, the First People's Hospital of Huzhou, Huzhou University, Huzhou, China.
  • Cong Feng
    Department of Emergency, The First Medical Center to Chinese People's Liberation Army General Hospital, Beijing, China.
  • Xueyan Li
    College of Electronic Science and Engineering, Jilin University, Changchun, China. Electronic address: leexy@jlu.edu.cn.
  • Zijian Wei
    Washington University in St. Louis, St. Louis, USA.
  • Hongxin Wang
    Machine Life and Intelligence Research Center, Guangzhou University, Guangzhou, China; Computational Intelligence Laboratory (CIL), University of Lincoln, Lincoln, UK.
  • Heng Zhang
    Department of Gastroenterology, The Central Hospital of Wuhan, Tongji Medical College, Huazhong University of Science and Technology, Wuhan, China.
  • Shuxiao Pan
    College of Computer Science and Artificial Intelligence, Wenzhou University.
  • Jiaming Wang
    Institute of Biophysics, Chinese Academy of Science, Beijing 100101, China.
  • Xin Guo
    Department of Applied Mathematics, The Hong Kong Polytechnic University, Hong Kong.
  • Zheyuan Yu
    School of Economics and Management, Beijing Jiaotong University, Beijing, China.
  • Xiucheng Li
    School of Economics and Management, Beijing Jiaotong University, Beijing, China.
  • Zhaohong Wang
    School of Economics and Management, Beijing Jiaotong University, Beijing, China.
  • Wei Chen
    Department of Urology, Zigong Fourth People's Hospital, Sichuan, China.
  • Jing Li
    Department of Neurosurgery, Tianjin Medical University General Hospital, Tianjin, China.
  • Tanshi Li
    General Hospital of PLA, Beijing 100853, P.R.China.