Machine learning-based mortality prediction model for heat-related illness.

Journal: Scientific reports
PMID:

Abstract

In this study, we aimed to develop and validate a machine learning-based mortality prediction model for hospitalized heat-related illness patients. After 2393 hospitalized patients were extracted from a multicentered heat-related illness registry in Japan, subjects were divided into the training set for development (n = 1516, data from 2014, 2017-2019) and the test set (n = 877, data from 2020) for validation. Twenty-four variables including characteristics of patients, vital signs, and laboratory test data at hospital arrival were trained as predictor features for machine learning. The outcome was death during hospital stay. In validation, the developed machine learning models (logistic regression, support vector machine, random forest, XGBoost) demonstrated favorable performance for outcome prediction with significantly increased values of the area under the precision-recall curve (AUPR) of 0.415 [95% confidence interval (CI) 0.336-0.494], 0.395 [CI 0.318-0.472], 0.426 [CI 0.346-0.506], and 0.528 [CI 0.442-0.614], respectively, compared to that of the conventional acute physiology and chronic health evaluation (APACHE)-II score of 0.287 [CI 0.222-0.351] as a reference standard. The area under the receiver operating characteristic curve (AUROC) values were also high over 0.92 in all models, although there were no statistical differences compared to APACHE-II. This is the first demonstration of the potential of machine learning-based mortality prediction models for heat-related illnesses.

Authors

  • Yohei Hirano
  • Yutaka Kondo
  • Toru Hifumi
    Department of Emergency, Disaster and Critical Care Medicine, Kagawa University Hospital, 1750-1 Ikenobe, Miki, Kita, Kagawa, 761-0793, Japan. hifumitoru@gmail.com.
  • Shoji Yokobori
    Department of Emergency and Critical Care Medicine, Graduate School of Medicine, Nippon Medical School, Bunkyo-ku, Japan.
  • Jun Kanda
    Department of Emergency Medicine, Teikyo University Hospital, Tokyo, Japan.
  • Junya Shimazaki
    Department of Traumatology and Acute Critical Medicine, Osaka University Graduate School, Suita, Osaka, Japan.
  • Kei Hayashida
    Department of Emergency Medicine, North Shore University Hospital, Northwell Health System, Manhasset, NY, USA.
  • Takashi Moriya
    Department of Emergency and Critical Care Medicine, Jichi Medical University Saitama Medical Center, Saitama, Japan.
  • Masaharu Yagi
    Department of Emergency, Disaster and Critical Care Medicine, Showa University School of Medicine, Tokyo, Japan.
  • Shuhei Takauji
    Department of Emergency Medicine, Asahikawa Medical University Hospital, Asahikawa, Hokkaido, Japan.
  • Junko Yamaguchi
    Department of Acute Medicine, Nihon University School of Medicine, Tokyo, Japan.
  • Yohei Okada
    Department of Orthopaedic Surgery, School of Medicine, Sapporo Medical University, Sapporo, Hokkaido, Japan.
  • Yuichi Okano
    Department of Emergency Medicine, Japanese Red Cross Kumamoto Hospital, Kumamoto, Japan.
  • Hitoshi Kaneko
    Emergency and Critical Care Center, Tokyo Metropolitan Tama Medical Center, Tokyo, Japan.
  • Tatsuho Kobayashi
    Department of Emergency and Critical Care Medicine, Aizu Chuo Hospital, Aizuwakamatsu, Fukushima, Japan.
  • Motoki Fujita
    Advanced Medical Emergency and Critical Care Center, Yamaguchi University Hospital, Ube, Yamaguchi, Japan.
  • Hiroyuki Yokota
    Department of Emergency and Critical Care Medicine, Nippon Medical School, Tokyo, Japan.
  • Ken Okamoto
  • Hiroshi Tanaka
  • Arino Yaguchi
    Department of Critical Care and Emergency Medicine, Tokyo Women's Medical University, Tokyo, Japan.