Machine learning-based prediction of emergency neurosurgery within 24 h after moderate to severe traumatic brain injury.

Jean-Denis Moyer, Patrick Lee, Charles Bernard, Lois Henry, Elodie Lang, Fabrice Cook, Fanny Planquart, Mathieu Boutonnet, Anatole Harrois, Tobias Gauss
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引用次数: 8

Abstract

Background: Rapid referral of traumatic brain injury (TBI) patients requiring emergency neurosurgery to a specialized trauma center can significantly reduce morbidity and mortality. Currently, no model has been reported to predict the need for acute neurosurgery in severe to moderate TBI patients. This study aims to evaluate the performance of Machine Learning-based models to establish to predict the need for neurosurgery procedure within 24 h after moderate to severe TBI.

Methods: Retrospective multicenter cohort study using data from a national trauma registry (Traumabase®) from November 2011 to December 2020. Inclusion criteria correspond to patients over 18 years old with moderate or severe TBI (Glasgow coma score ≤ 12) during prehospital assessment. Patients who died within the first 24 h after hospital admission and secondary transfers were excluded. The population was divided into a train set (80% of patients) and a test set (20% of patients). Several approaches were used to define the best prognostic model (linear nearest neighbor or ensemble model). The Shapley Value was used to identify the most relevant pre-hospital variables for prediction.

Results: 2159 patients were included in the study. 914 patients (42%) required neurosurgical intervention within 24 h. The population was predominantly male (77%), young (median age 35 years [IQR 24-52]) with severe head injury (median GCS 6 [3-9]). Based on the evaluation of the predictive model on the test set, the logistic regression model had an AUC of 0.76. The best predictive model was obtained with the CatBoost technique (AUC 0.81). According to the Shapley values method, the most predictive variables in the CatBoost were a low initial Glasgow coma score, the regression of pupillary abnormality after osmotherapy, a high blood pressure and a low heart rate.

Conclusion: Machine learning-based models could predict the need for emergency neurosurgery within 24 h after moderate and severe head injury. Potential clinical benefits of such models as a decision-making tool deserve further assessment. The performance in real-life setting and the impact on clinical decision-making of the model requires workflow integration and prospective assessment.

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基于机器学习的中重度创伤性脑损伤后24小时内急诊神经外科手术预测
背景:需要紧急神经外科手术的创伤性脑损伤(TBI)患者快速转诊到专门的创伤中心可以显著降低发病率和死亡率。目前,尚无模型预测重型至中度TBI患者是否需要进行急性神经外科手术。本研究旨在评估基于机器学习的模型的性能,以建立预测中度至重度TBI后24小时内需要进行神经外科手术的模型。方法:回顾性多中心队列研究,使用2011年11月至2020年12月来自国家创伤登记处(创伤数据库®)的数据。纳入标准对应于院前评估的18岁以上中度或重度TBI患者(格拉斯哥昏迷评分≤12)。排除入院后24小时内死亡和二次转院的患者。人群被分为列车集(80%的患者)和测试集(20%的患者)。我们使用了几种方法来定义最佳预测模型(线性最近邻模型或集合模型)。Shapley值用于识别与预测最相关的院前变量。结果:2159例患者纳入研究。914例(42%)患者在24小时内需要神经外科干预。患者主要为男性(77%),年轻(中位年龄35岁[IQR 24-52]),严重颅脑损伤(中位GCS 6[3-9])。根据预测模型在测试集上的评价,逻辑回归模型的AUC为0.76。CatBoost技术预测模型最佳,AUC为0.81。根据Shapley值法,CatBoost中最具预测性的变量是低初始格拉斯哥昏迷评分、渗透治疗后瞳孔异常的回归、高血压和低心率。结论:基于机器学习的模型可以预测中重度颅脑损伤后24 h内是否需要紧急神经外科手术。这些模型作为决策工具的潜在临床效益值得进一步评估。该模型在现实环境中的表现和对临床决策的影响需要工作流集成和前瞻性评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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