Department of Medical Biochemistry, Wrocław Medical Univeristy, Wrocław, Poland.
Department of Emergency Medical Service, Wrocław Medical University, Wrocław, Poland.
Med Sci Monit. 2024 Aug 10;30:e944408. doi: 10.12659/MSM.944408.
BACKGROUND Cardiac arrest (CA) is a global public health challenge. This study explored the predictors of mortality and their interactions utilizing machine learning algorithms and their related mortality odds among patients following CA. MATERIAL AND METHODS The study retrospectively investigated 161 medical records of CA patients admitted to the Intensive Care Unit (ICU). The random forest classifier algorithm was used to assess the parameters of mortality. The best classification trees were chosen from a set of 100 trees proposed by the algorithm. Conditional mortality odds were investigated with the use of logistic regression models featuring interactions between variables. RESULTS In the logistic regression model, male sex was associated with 5.68-fold higher mortality odds. The mortality odds among the asystole/pulseless electrical activity (PEA) patients were modulated by body mass index (BMI) and among ventricular fibrillation/pulseless ventricular tachycardia (VF/pVT) patients were by serum albumin concentration (decrease by 2.85-fold with 1 g/dl increase). Procalcitonin (PCT) concentration, age, high-sensitivity C-reactive protein (hsCRP), albumin, and potassium were the most influential parameters for mortality prediction with the use of the random forest classifier. Nutritional status-associated parameters (serum albumin concentration, BMI, and Nutritional Risk Score 2002 [NRS-2002]) may be useful in predicting mortality in patients with CA, especially in patients with PCT >0.17 ng/ml, as showed by the decision tree chosen from the random forest classifier based on goodness of fit (AUC score). CONCLUSIONS Mortality in patients following CA is modulated by many co-existing factors. The conclusions refer to sets of conditions rather than universal truths. For individual factors, the 5 most important classifiers of mortality (in descending order of importance) were PCT, age, hsCRP, albumin, and potassium.
心脏骤停(CA)是一个全球性的公共健康挑战。本研究利用机器学习算法探讨了 CA 患者的死亡率预测因子及其相互作用,并分析了它们与死亡率之间的关联。
本研究回顾性分析了 161 例因 CA 入住重症监护病房(ICU)患者的病历。使用随机森林分类器算法评估死亡率的相关参数。从算法提出的 100 棵树中选择最佳分类树。使用包含变量间交互作用的逻辑回归模型研究条件死亡率的比值比。
在逻辑回归模型中,男性与 5.68 倍更高的死亡率比值比相关。心搏停止/无脉电活动(PEA)患者的死亡率比值比受体重指数(BMI)调节,心室颤动/无脉性室性心动过速(VF/pVT)患者的死亡率比值比受血清白蛋白浓度调节(每增加 1 g/dl 下降 2.85 倍)。降钙素原(PCT)浓度、年龄、高敏 C 反应蛋白(hsCRP)、白蛋白和钾是使用随机森林分类器进行死亡率预测的最具影响力的参数。营养状态相关参数(血清白蛋白浓度、BMI 和 2002 年营养风险评分 [NRS-2002])可能有助于预测 CA 患者的死亡率,特别是在 PCT>0.17ng/ml 的患者中,这是根据随机森林分类器基于拟合优度(AUC 评分)选择的决策树所显示的。
CA 患者的死亡率受到许多共存因素的调节。结论适用于一组条件,而不是普遍真理。对于个体因素,死亡率的 5 个最重要的分类器(按重要性降序排列)是 PCT、年龄、hsCRP、白蛋白和钾。