Zhongshan School of Medicine, Sun Yat-Sen University, Guangzhou, China.
Department of Vascular Surgery, Zhongshan City People's Hospital, Zhongshan, China.
Shock. 2024 Jan 1;61(1):68-75. doi: 10.1097/SHK.0000000000002261. Epub 2023 Nov 15.
Background: Intermediate-risk pulmonary embolism (PE) patients in the intensive care unit (ICU) are at a higher risk of hemodynamic deterioration than those in the general ward. This study aimed to construct a machine learning (ML) model to accurately identify the tendency for hemodynamic deterioration in the ICU patients with intermediate-risk PE. Method: A total of 704 intermediate-risk PE patients from the MIMIC-IV database were retrospectively collected. The primary outcome was defined as hemodynamic deterioration occurring within 30 days after admission to ICU. Four ML algorithms were used to construct models on the basis of all variables from MIMIC IV database with missing values less than 20%. The extreme gradient boosting (XGBoost) model was further simplified for clinical application. The performance of the ML models was evaluated by using the receiver operating characteristic curve, calibration plots, and decision curve analysis. Predictive performance of simplified XGBoost was compared with the simplified Pulmonary Embolism Severity Index score. SHapley Additive explanation (SHAP) was performed on a simplified XGBoost model to calculate the contribution and impact of each feature on the predicted outcome and presents it visually. Results: Among the 704 intermediate-risk PE patients included in this study, 120 patients experienced hemodynamic deterioration within 30 days after admission to the ICU. Simplified XGBoost model demonstrated the best predictive performance with an area under the curve of 0.866 (95% confidence interval, 0.800-0.925), and after recalibrated by isotonic regression, the area under the curve improved to 0.885 (95% confidence interval, 0.822-0.935). Based on the simplified XGBoost model, a web app was developed to identify the tendency for hemodynamic deterioration in ICU patients with intermediate-risk PE. Conclusion: A simplified XGBoost model can accurately predict the occurrence of hemodynamic deterioration for intermediate-risk PE patients in the ICU, assisting clinical workers in providing more personalized management for PE patients in the ICU.
与普通病房相比,重症监护病房(ICU)中的中危肺栓塞(PE)患者发生血流动力学恶化的风险更高。本研究旨在构建机器学习(ML)模型,以准确识别 ICU 中中危 PE 患者发生血流动力学恶化的趋势。
回顾性收集了来自 MIMIC-IV 数据库的 704 例中危 PE 患者。主要结局定义为入住 ICU 后 30 天内发生血流动力学恶化。在缺失值小于 20%的情况下,基于 MIMIC-IV 数据库中的所有变量,使用 4 种 ML 算法构建模型。对于简化后的 XGBoost 模型,进一步进行简化,以用于临床应用。通过绘制受试者工作特征曲线、校准图和决策曲线分析来评估 ML 模型的性能。比较简化后的 XGBoost 与简化后的肺栓塞严重程度指数评分对预测性能的影响。对简化后的 XGBoost 模型进行 SHapley Additive explanation(SHAP),以计算每个特征对预测结果的贡献和影响,并以可视化方式呈现。
在纳入本研究的 704 例中危 PE 患者中,120 例患者在入住 ICU 后 30 天内发生血流动力学恶化。简化后的 XGBoost 模型具有最佳预测性能,曲线下面积为 0.866(95%置信区间,0.800-0.925),经等比回归校正后,曲线下面积提高至 0.885(95%置信区间,0.822-0.935)。基于简化后的 XGBoost 模型,开发了一个网页应用程序,用于识别 ICU 中中危 PE 患者发生血流动力学恶化的趋势。
简化后的 XGBoost 模型可准确预测 ICU 中中危 PE 患者发生血流动力学恶化的情况,有助于临床工作人员为 ICU 中的 PE 患者提供更具个性化的管理。