Department of Anesthesiology and Intensive Care Medicine, University Hospital Tübingen, Eberhard-Karls-University Tübingen, Hoppe Seyler Str. 3, 72076, Tübingen, Germany.
Institute for Translational Bioinformatics and Medical Data Integration Center, University Hospital Tübingen, Eberhard-Karls-University Tübingen, Tübingen, Germany.
Crit Care. 2021 Aug 17;25(1):295. doi: 10.1186/s13054-021-03720-4.
Intensive Care Resources are heavily utilized during the COVID-19 pandemic. However, risk stratification and prediction of SARS-CoV-2 patient clinical outcomes upon ICU admission remain inadequate. This study aimed to develop a machine learning model, based on retrospective & prospective clinical data, to stratify patient risk and predict ICU survival and outcomes.
A Germany-wide electronic registry was established to pseudonymously collect admission, therapeutic and discharge information of SARS-CoV-2 ICU patients retrospectively and prospectively. Machine learning approaches were evaluated for the accuracy and interpretability of predictions. The Explainable Boosting Machine approach was selected as the most suitable method. Individual, non-linear shape functions for predictive parameters and parameter interactions are reported.
1039 patients were included in the Explainable Boosting Machine model, 596 patients retrospectively collected, and 443 patients prospectively collected. The model for prediction of general ICU outcome was shown to be more reliable to predict "survival". Age, inflammatory and thrombotic activity, and severity of ARDS at ICU admission were shown to be predictive of ICU survival. Patients' age, pulmonary dysfunction and transfer from an external institution were predictors for ECMO therapy. The interaction of patient age with D-dimer levels on admission and creatinine levels with SOFA score without GCS were predictors for renal replacement therapy.
Using Explainable Boosting Machine analysis, we confirmed and weighed previously reported and identified novel predictors for outcome in critically ill COVID-19 patients. Using this strategy, predictive modeling of COVID-19 ICU patient outcomes can be performed overcoming the limitations of linear regression models. Trial registration "ClinicalTrials" (clinicaltrials.gov) under NCT04455451.
在 COVID-19 大流行期间,重症监护资源得到了大量利用。然而,对 SARS-CoV-2 患者入住 ICU 时的风险分层和临床结局预测仍然不足。本研究旨在基于回顾性和前瞻性临床数据开发一种机器学习模型,以对患者风险进行分层,并预测 ICU 存活和结局。
建立了一个德国范围的电子注册处,以匿名方式回顾性和前瞻性收集 SARS-CoV-2 ICU 患者的入院、治疗和出院信息。评估了机器学习方法对预测准确性和可解释性。选择可解释提升机方法作为最合适的方法。报告了预测参数和参数相互作用的个体、非线性形状函数。
纳入了 1039 名患者的可解释提升机模型,其中 596 名患者为回顾性收集,443 名患者为前瞻性收集。该模型用于预测一般 ICU 结局,结果表明更可靠地预测“存活”。入院时的年龄、炎症和血栓形成活动以及 ARDS 的严重程度是 ICU 存活的预测因素。患者的年龄、肺功能障碍和从外部机构转院是 ECMO 治疗的预测因素。入院时患者年龄与 D-二聚体水平以及无 GCS 的肌酐水平与 SOFA 评分的相互作用是肾脏替代治疗的预测因素。
使用可解释提升机分析,我们证实并权衡了先前报道的以及确定的与危重症 COVID-19 患者结局相关的新预测因素。使用这种策略,可以克服线性回归模型的局限性,对 COVID-19 ICU 患者结局进行预测建模。试验注册“ClinicalTrials”(clinicaltrials.gov)下的 NCT04455451。