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用于预测中重度创伤性脑损伤患者非手术治疗后院内结局的机器学习模型。

Machine learning models for predicting in-hospital outcomes after non-surgical treatment among patients with moderate-to-severe traumatic brain injury.

作者信息

Yin An-An, He Ya-Long, Zhang Xi, Fei Zhou, Lin Wei, Song Bao-Qiang

机构信息

Department of Plastic and Reconstructive Surgery, Craniomaxillofacial Surgery Group, Xijing Hospital, Fourth Military Medical University, Xi'an, China; Shaanxi Provincial Key Laboratory of Clinic Genetics, Fourth Military Medical University, Xi'an, Shaanxi, China.

Department of Neurosurgery, Xijing Institute of Clinical Neuroscience, Xijing Hospital, Fourth Military Medical University, Xi'an, China.

出版信息

J Clin Neurosci. 2024 Feb;120:36-41. doi: 10.1016/j.jocn.2023.11.015. Epub 2024 Jan 5.

Abstract

AIM

This study aims to develop prediction models for in-hospital outcomes after non-surgical treatment among patients with moderate-to-severe traumatic brain injury (TBI).

METHOD

We conducted a retrospective review of patients hospitalized for moderate-to-severe TBI in our department from 2011 to 2020. Five machine learning (ML) algorithms and the conventional logistic regression (LR) model were employed to predict in-hospital mortality and the Glasgow Outcome Scale (GOS) functional outcomes. These models utilized clinical and routine blood data collected upon admission.

RESULTS

This study included a total of 196 patients who received only non-surgical treatment after moderate-to-severe TBI. When predicting mortality, ML models achieved area under the curve (AUC) values of 0.921 to 0.994 using clinical and routine blood data, and 0.877 to 0.982 using only clinical data. In comparison, LR models yielded AUCs of 0.762 and 0.730 respectively. When predicting the GOS outcome, ML models achieved AUCs of 0.870 to 0.915 using clinical and routine blood data, and 0.858 to 0.927 using only clinical data. In comparison, the LR model yielded AUCs of 0.798 and 0.787 respectively. Repeated internal validation showed that the contributions of routine blood data for prediction models may depend on different prediction algorithms and different outcome measurements.

CONCLUSION

The study reported ML-based prediction models that provided rapid and accurate predictions on short-term outcomes after non-surgical treatment among patients with moderate-to-severe TBI. The study also highlighted the superiority of ML models over conventional LR models and proposed the complex contributions of routine blood data in such predictions.

摘要

目的

本研究旨在开发中重度创伤性脑损伤(TBI)患者非手术治疗后院内结局的预测模型。

方法

我们对2011年至2020年在我科住院的中重度TBI患者进行了回顾性研究。采用五种机器学习(ML)算法和传统逻辑回归(LR)模型预测院内死亡率和格拉斯哥预后量表(GOS)功能结局。这些模型利用入院时收集的临床和常规血液数据。

结果

本研究共纳入196例中重度TBI后仅接受非手术治疗的患者。在预测死亡率时,ML模型使用临床和常规血液数据的曲线下面积(AUC)值为0.921至0.994,仅使用临床数据时为0.877至0.982。相比之下,LR模型的AUC分别为0.762和0.730。在预测GOS结局时,ML模型使用临床和常规血液数据的AUC为0.870至0.915,仅使用临床数据时为0.858至0.927。相比之下,LR模型的AUC分别为0.798和0.787。重复内部验证表明,常规血液数据对预测模型的贡献可能取决于不同的预测算法和不同的结局测量。

结论

该研究报告了基于ML的预测模型,该模型对中重度TBI患者非手术治疗后的短期结局提供了快速准确的预测。该研究还强调了ML模型相对于传统LR模型的优越性,并提出了常规血液数据在这类预测中的复杂贡献。

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