Machine learning‐based prediction of clinical outcomes after traumatic brain injury: Hidden information of early physiological time series

Author:

Ding Ruifeng1,Deng Mengqiu1,Wei Huawei1,Zhang Yixuan1,Wei Liangtian2,Jiang Guowei1,Zhu Hongwei1,Huang Xingshuai1,Fu Hailong1,Zhao Shuang3,Yuan Hongbin1ORCID

Affiliation:

1. Department of Anesthesiology, Changzheng Hospital Second Affiliated Hospital of Naval Medical University Shanghai China

2. Jiangsu Province Key Laboratory of Anesthesiology Xuzhou Medical University Xuzhou China

3. Department of Anesthesiology The Third Hospital of Hebei Medical University Shijiazhuang Hebei Province China

Abstract

AbstractAimsTo assess the predictive value of early‐stage physiological time‐series (PTS) data and non‐interrogative electronic health record (EHR) signals, collected within 24 h of ICU admission, for traumatic brain injury (TBI) patient outcomes.MethodsUsing data from TBI patients in the multi‐center eICU database, we focused on in‐hospital mortality, neurological status based on the Glasgow Coma Score (mGCS) motor subscore at discharge, and prolonged ICU stay (PLOS). Three machine learning (ML) models were developed, utilizing EHR features, PTS signals collected 24 h after ICU admission, and their combination. External validation was performed using the MIMIC III dataset, and interpretability was enhanced using the Shapley Additive Explanations (SHAP) algorithm.ResultsThe analysis included 1085 TBI patients. Compared to individual models and existing scoring systems, the combination of EHR and PTS features demonstrated comparable or even superior performance in predicting in‐hospital mortality (AUROC = 0.878), neurological outcomes (AUROC = 0.877), and PLOS (AUROC = 0.835). The model's performance was validated in the MIMIC III dataset, and SHAP algorithms identified six key intervention points for EHR features related to prognostic outcomes. Moreover, the EHR results (All AUROC >0.8) were translated into online tools for clinical use.ConclusionOur study highlights the importance of early‐stage PTS signals in predicting TBI patient outcomes. The integration of interpretable algorithms and simplified prediction tools can support treatment decision‐making, contributing to the development of accurate prediction models and timely clinical intervention.

Funder

Science and Technology Commission of Shanghai Municipality

Publisher

Wiley

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