Toloui Amirmohammad, Ghaffari Jolfayi Amir, Zarei Hamed, Ansarian Arash, Azimi Amir, Forouzannia Seyed Mohammad, Oskooi Rosita Khatamian, Faridaalaee Gholamreza, Roshdi Dizaji Shayan, Forouzannia Seyed Ali, Rafiei Alavi Seyedeh Niloufar, Alizadeh Mohammadreza, Najafimehr Hadis, Safari Saeed, Baratloo Alireza, Hosseini Mostafa, Yousefifard Mahmoud
Physiology Research Center, Iran University of Medical Sciences, Tehran, Iran.
Cardiovascular Research Center, Rajaie Cardiovascular Institute, Tehran, Iran.
Arch Acad Emerg Med. 2025 Jun 28;13(1):e60. doi: 10.22037/aaemj.v13i1.2709. eCollection 2025.
Traumatic Brain Injury (TBI) is one of the leading causes of mortality and severe disability worldwide. This study aimed to develop and optimize machine learning (ML) algorithms to predict abnormal brain computed tomography (CT) scans in patients with mild TBI.
In this retrospective analyses, the outcome was dichotomized into normal or abnormal CT scans, and univariate analyses were employed for feature selection. Then SMOTE was applied to address class imbalance. The dataset was split 80:20 for training/testing, and multiple ML algorithms were evaluated using accuracy, F1-score, and area under the receiver operating characteristic curve (AUC-ROC). SHAP analysis was used to interpret feature contributions.
The data included 424 patients with an average age of 40.3 ± 19.1 years (76.65% male). Abnormal brain CT scan findings were more common in older males, patients with lower Glasgow Coma Scale (GCS) scores, suspected fractures, hematomas, and visible injuries above the clavicle. Among the ML models, XGBoost performed best (AUC 0.9611, accuracy 0.8937), followed by Random Forest, while Naive Bayes showed high recall but poor specificity. SHAP analysis highlighted that lower GCS scores, decreased SpO2 levels, and tachypnea were strong predictors of abnormal brain CT findings.
XGBoost and Random Forest achieved high predictive accuracy, sensitivity, and specificity. GCS, SpO2, and respiratory rate were key predictors. These models may reduce unnecessary CT scans and optimize resource use. Further multicenter validation is needed to confirm their clinical utility.
创伤性脑损伤(TBI)是全球范围内导致死亡和严重残疾的主要原因之一。本研究旨在开发和优化机器学习(ML)算法,以预测轻度TBI患者的脑部计算机断层扫描(CT)异常。
在这项回顾性分析中,将结果分为CT扫描正常或异常,并采用单变量分析进行特征选择。然后应用SMOTE来解决类别不平衡问题。数据集按80:20进行划分用于训练/测试,并使用准确率、F1分数和受试者操作特征曲线下面积(AUC-ROC)对多种ML算法进行评估。使用SHAP分析来解释特征贡献。
数据包括424例患者,平均年龄为40.3±19.1岁(男性占76.65%)。脑部CT扫描异常结果在老年男性、格拉斯哥昏迷量表(GCS)评分较低的患者、疑似骨折、血肿以及锁骨以上可见损伤的患者中更为常见。在ML模型中,XGBoost表现最佳(AUC为0.9611,准确率为0.8937),其次是随机森林,而朴素贝叶斯召回率高但特异性差。SHAP分析突出显示,较低的GCS评分、SpO2水平降低和呼吸急促是脑部CT异常结果的强预测因素。
XGBoost和随机森林具有较高的预测准确性、敏感性和特异性。GCS、SpO2和呼吸频率是关键预测因素。这些模型可能减少不必要的CT扫描并优化资源利用。需要进一步的多中心验证来确认其临床效用。