JMIR Medical Informatics (Jul 2024)

Prediction of In-Hospital Cardiac Arrest in the Intensive Care Unit: Machine Learning–Based Multimodal Approach

  • Hsin-Ying Lee,
  • Po-Chih Kuo,
  • Frank Qian,
  • Chien-Hung Li,
  • Jiun-Ruey Hu,
  • Wan-Ting Hsu,
  • Hong-Jie Jhou,
  • Po-Huang Chen,
  • Cho-Hao Lee,
  • Chin-Hua Su,
  • Po-Chun Liao,
  • I-Ju Wu,
  • Chien-Chang Lee

DOI
https://doi.org/10.2196/49142
Journal volume & issue
Vol. 12
pp. e49142 – e49142

Abstract

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Abstract BackgroundEarly identification of impending in-hospital cardiac arrest (IHCA) improves clinical outcomes but remains elusive for practicing clinicians. ObjectiveWe aimed to develop a multimodal machine learning algorithm based on ensemble techniques to predict the occurrence of IHCA. MethodsOur model was developed by the Multiparameter Intelligent Monitoring of Intensive Care (MIMIC)–IV database and validated in the Electronic Intensive Care Unit Collaborative Research Database (eICU-CRD). Baseline features consisting of patient demographics, presenting illness, and comorbidities were collected to train a random forest model. Next, vital signs were extracted to train a long short-term memory model. A support vector machine algorithm then stacked the results to form the final prediction model. ResultsOf 23,909 patients in the MIMIC-IV database and 10,049 patients in the eICU-CRD database, 452 and 85 patients, respectively, had IHCA. At 13 hours in advance of an IHCA event, our algorithm had already demonstrated an area under the receiver operating characteristic curve of 0.85 (95% CI 0.815‐0.885) in the MIMIC-IV database. External validation with the eICU-CRD and National Taiwan University Hospital databases also presented satisfactory results, showing area under the receiver operating characteristic curve values of 0.81 (95% CI 0.763-0.851) and 0.945 (95% CI 0.934-0.956), respectively. ConclusionsUsing only vital signs and information available in the electronic medical record, our model demonstrates it is possible to detect a trajectory of clinical deterioration up to 13 hours in advance. This predictive tool, which has undergone external validation, could forewarn and help clinicians identify patients in need of assessment to improve their overall prognosis.