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基于机器学习的创伤性脑损伤患儿预后预测模型的构建与验证

Construction and validation of a machine learning based prognostic prediction model for children with traumatic brain injury.

作者信息

Wei Yongwei, Wang Jiandong, Su Yu, Zhou Fan, Wang Huaili

机构信息

Department of Pediatrics, The First Affiliated Hospital of Zhengzhou University, Zhengzhou, Hennan, China.

出版信息

Front Pediatr. 2025 May 19;13:1581945. doi: 10.3389/fped.2025.1581945. eCollection 2025.

Abstract

OBJECTIVE

This study aimed to establish a prediction model for the short-term prognosis of children with traumatic brain injury (TBI) using machine learning algorithms.

METHODS

The clinical data of children with TBI who were treated in the First Affiliated Hospital of Zhengzhou University were retrospectively analyzed. All children were divided into a modeling group and a validation group. In the laboratory indicators of the modeling group, the least absolute shrinkage and selection operator (LASSO) and multivariate Logistic regression analysis were used to screen out the independent influencing factors of poor prognosis in TBI, and a laboratory indicator model (LIM) was established. The risk scores of all patients were calculated. Then, the risk scores and other indicators were used to construct an extended prediction model through the extreme gradient boosting (XGBoost) algorithm. The discrimination, calibration, and clinical utility of the model were evaluated, and the extended model was explained using SHAP analysis. Finally, a subgroup analysis was performed using the risk scores to assess the robustness of the laboratory indicator model.

RESULTS

Among the laboratory indicators, lactate dehydrogenase (LDH), N-terminal pro-B-type natriuretic peptide (NT-proBNP), hydrogen ion concentration index (pH), hemoglobin (Hb), serum albumin (Alb), and C-reactive protein to albumin ratio (CRP/Alb) were the independent influencing factors for the prognosis of children with brain injury. The extended model demonstrated excellent predictive performance in both the modeling and validation populations. SHAP analysis showed the contribution values of the Glasgow Coma Scale (GCS), the laboratory indicator model, the location of the head hematoma, the pupillary light reflex, and the injury severity score in the prediction of the overall patient prognosis. The subgroup analysis showed that there were differences in the risk scores of children with different GCS scores, pupillary light reflexes, and head hematoma locations, and there were also differences in the prognosis between the high-risk score group and the low-risk score group within them.

CONCLUSION

The extended model can accurately predict the prognosis of TBI patients and has strong clinical utility. The core model has good stratification ability and provides an effective risk stratification and personalized patient management tool for clinicians.

摘要

目的

本研究旨在使用机器学习算法建立创伤性脑损伤(TBI)患儿短期预后的预测模型。

方法

回顾性分析在郑州大学第一附属医院接受治疗的TBI患儿的临床资料。所有患儿分为建模组和验证组。在建模组的实验室指标中,采用最小绝对收缩和选择算子(LASSO)及多变量Logistic回归分析筛选出TBI预后不良的独立影响因素,建立实验室指标模型(LIM)。计算所有患者的风险评分。然后,将风险评分和其他指标通过极端梯度提升(XGBoost)算法构建扩展预测模型。评估模型的辨别力、校准度和临床实用性,并使用SHAP分析解释扩展模型。最后,使用风险评分进行亚组分析,以评估实验室指标模型的稳健性。

结果

在实验室指标中,乳酸脱氢酶(LDH)、N末端B型脑钠肽原(NT-proBNP)、氢离子浓度指数(pH)、血红蛋白(Hb)、血清白蛋白(Alb)以及C反应蛋白与白蛋白比值(CRP/Alb)是脑损伤患儿预后的独立影响因素。扩展模型在建模人群和验证人群中均表现出优异的预测性能。SHAP分析显示了格拉斯哥昏迷量表(GCS)、实验室指标模型、头部血肿位置、瞳孔光反射以及损伤严重程度评分在预测总体患者预后中的贡献值。亚组分析显示,不同GCS评分、瞳孔光反射和头部血肿位置的患儿风险评分存在差异,且其中高危评分组和低危评分组的预后也存在差异。

结论

扩展模型能够准确预测TBI患者的预后,具有较强的临床实用性。核心模型具有良好的分层能力,为临床医生提供了有效的风险分层和个性化患者管理工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/618c/12128090/22a5321d2e81/fped-13-1581945-g001.jpg

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