Department of Critical Care Medicine, Shengli Clinical Medical College of Fujian Medical University, Fujian Provincial Hospital South Branch, Fujian Provincial Jinshan Hospital, Fujian Provincial Hospital, Fuzhou, China.
Department of Thoracic Surgery, First Affiliated Hospital of Fujian Medical University, Fuzhou, China.
BMC Infect Dis. 2023 Feb 6;23(1):76. doi: 10.1186/s12879-023-08045-x.
Sepsis has the characteristics of high incidence, high mortality of ICU patients. Early assessment of disease severity and risk stratification of death in patients with sepsis, and further targeted intervention are very important. The purpose of this study was to develop machine learning models based on sequential organ failure assessment (SOFA) components to early predict in-hospital mortality in ICU patients with sepsis and evaluate model performance.
Patients admitted to ICU with sepsis diagnosis were extracted from MIMIC-IV database for retrospective analysis, and were randomly divided into training set and test set in accordance with 2:1. Six variables were included in this study, all of which were from the scores of 6 organ systems in SOFA score. The machine learning model was trained in the training set and evaluated in the validation set. Six machine learning methods including linear regression analysis, least absolute shrinkage and selection operator (LASSO), Logistic regression analysis (LR), Gaussian Naive Bayes (GNB) and support vector machines (SVM) were used to construct the death risk prediction models, and the accuracy, area under the receiver operating characteristic curve (AUROC), Decision Curve Analysis (DCA) and K-fold cross-validation were used to evaluate the prediction performance of developed models.
A total of 23,889 patients with sepsis were enrolled, of whom 3659 died in hospital. Three feature variables including renal system score, central nervous system score and cardio vascular system score were used to establish prediction models. The accuracy of the LR, GNB, SVM were 0.851, 0.844 and 0.862, respectively, which were better than linear regression analysis (0.123) and LASSO (0.130). The AUROCs of LR, GNB and SVM were 0.76, 0.76 and 0.67, respectively. K-fold cross validation showed that the average AUROCs of LR, GNB and SVM were 0.757 ± 0.005, 0.762 ± 0.006, 0.630 ± 0.013, respectively. For the probability threshold of 5-50%, LY and GNB models both showed positive net benefits.
The two machine learning-based models (LR and GNB models) based on SOFA components can be used to predict in-hospital mortality of septic patients admitted to ICU.
脓毒症具有 ICU 患者发病率高、死亡率高的特点。对脓毒症患者进行疾病严重程度的早期评估和死亡风险分层,并进一步进行有针对性的干预非常重要。本研究旨在基于序贯器官衰竭评估(SOFA)组件建立机器学习模型,以早期预测 ICU 脓毒症患者的院内死亡率,并评估模型性能。
从 MIMIC-IV 数据库中提取诊断为脓毒症的 ICU 患者进行回顾性分析,并按照 2:1 的比例随机分为训练集和测试集。本研究纳入了 6 个变量,均来自 SOFA 评分中 6 个器官系统的评分。在训练集中训练机器学习模型,并在验证集中进行评估。使用 6 种机器学习方法,包括线性回归分析、最小绝对收缩和选择算子(LASSO)、逻辑回归分析(LR)、高斯朴素贝叶斯(GNB)和支持向量机(SVM),构建死亡风险预测模型,并使用准确性、接收者操作特征曲线下面积(AUROC)、决策曲线分析(DCA)和 K 折交叉验证来评估所开发模型的预测性能。
共纳入 23889 例脓毒症患者,其中 3659 例患者院内死亡。使用肾系统评分、中枢神经系统评分和心血管系统评分 3 个特征变量建立预测模型。LR、GNB、SVM 的准确性分别为 0.851、0.844 和 0.862,优于线性回归分析(0.123)和 LASSO(0.130)。LR、GNB 和 SVM 的 AUROCs 分别为 0.76、0.76 和 0.67。K 折交叉验证显示,LR、GNB 和 SVM 的平均 AUROCs 分别为 0.757±0.005、0.762±0.006、0.630±0.013。对于概率阈值为 5%~50%,LY 和 GNB 模型均表现出正净收益。
基于 SOFA 组件的两种基于机器学习的模型(LR 和 GNB 模型)可用于预测 ICU 收治的脓毒症患者的院内死亡率。