Department of Surgery, Chungbuk National University Hospital, Cheongju, Republic of Korea.
Deparment of Trauma Surgery, Trauma Center, Chungbuk National University Hospital, Cheongju, Republic of Korea.
Medicine (Baltimore). 2023 Aug 18;102(33):e34847. doi: 10.1097/MD.0000000000034847.
Acute kidney injury (AKI) is common in patients with trauma and is associated with poor outcomes. Therefore, early prediction of AKI in patients with trauma is important for risk stratification and the provision of optimal intensive care unit treatment. This study aimed to compare 2 models, machine learning (ML) techniques and logistic regression, in predicting AKI in patients with trauma. We retrospectively reviewed the charts of 400 patients who sustained torso injuries between January 2016 and June 2020. Patients were included if they were aged > 15 years, admitted to the intensive care unit, survived for > 48 hours, had thoracic and/or abdominal injuries, had no end-stage renal disease, and had no missing data. AKI was defined in accordance with the Kidney Disease Improving Global Outcomes definition and staging system. The patients were divided into 2 groups: AKI (n = 78) and non-AKI (n = 322). We divided the original dataset into a training (80%) and a test set (20%), and the logistic regression with stepwise selection and ML (decision tree with hyperparameter optimization using grid search and cross-validation) was used to build a model for predicting AKI. The models established using the training dataset were evaluated using a confusion matrix receiver operating characteristic curve with the test dataset. We included 400 patients with torso injury, of whom 78 (19.5%) progressed to AKI. Age, intestinal injury, cumulative fluid balance within 24 hours, and the use of vasopressors were independent risk factors for AKI in the logistic regression model. In the ML model, vasopressors were the most important feature, followed by cumulative fluid balance within 24 hours and packed red blood cell transfusion within 4 hours. The accuracy score showed no differences between the 2 groups; however, the recall and F1 score were significantly higher in the ML model (.94 vs 56 and.75 vs 64, respectively). The ML model performed better than the logistic regression model in predicting AKI in patients with trauma. ML techniques can aid in risk stratification and the provision of optimal care.
急性肾损伤(AKI)在创伤患者中很常见,与不良预后相关。因此,早期预测创伤患者的 AKI 对于风险分层和提供最佳重症监护治疗很重要。本研究旨在比较两种模型,机器学习(ML)技术和逻辑回归,用于预测创伤患者的 AKI。我们回顾性分析了 2016 年 1 月至 2020 年 6 月期间 400 名躯干受伤患者的病历。纳入标准为年龄>15 岁、入住重症监护病房、存活时间>48 小时、有胸腹部损伤、无终末期肾病且无数据缺失的患者。AKI 按照肾脏疾病改善全球结局定义和分期系统定义。患者分为 AKI 组(n=78)和非 AKI 组(n=322)。我们将原始数据集分为训练集(80%)和测试集(20%),并使用逐步选择和 ML(使用网格搜索和交叉验证对超参数进行优化的决策树)的逻辑回归来构建预测 AKI 的模型。使用测试数据集通过混淆矩阵进行受试者工作特征曲线评估训练数据集建立的模型。我们纳入了 400 名躯干损伤患者,其中 78 名(19.5%)进展为 AKI。年龄、肠损伤、24 小时内累积液体平衡和血管加压素的使用是逻辑回归模型中 AKI 的独立危险因素。在 ML 模型中,血管加压素是最重要的特征,其次是 24 小时内累积液体平衡和 4 小时内输红细胞。两组间的准确率评分无差异;然而,ML 模型的召回率和 F1 评分显著更高(分别为.94 比 56 和.75 比 64)。ML 模型在预测创伤患者 AKI 方面优于逻辑回归模型。ML 技术可辅助风险分层和提供最佳治疗。