Department of Gefneral Intensive Care and Institute for Nutrition Research, Rabin Medical Center, Beilinson Hospital, Petah Tikva, Israel.
TSG IT Advanced Systems Ltd., Or Yehuda, Israel.
PLoS One. 2024 Jan 2;19(1):e0296386. doi: 10.1371/journal.pone.0296386. eCollection 2024.
The decision to intubate and ventilate a patient is mainly clinical. Both delaying intubation (when needed) and unnecessarily invasively ventilating (when it can be avoided) are harmful. We recently developed an algorithm predicting respiratory failure and invasive mechanical ventilation in COVID-19 patients. This is an internal validation study of this model, which also suggests a categorized "time-weighted" model.
We used a dataset of COVID-19 patients who were admitted to Rabin Medical Center after the algorithm was developed. We evaluated model performance in predicting ventilation, regarding the actual endpoint of each patient. We further categorized each patient into one of four categories, based on the strength of the prediction of ventilation over time. We evaluated this categorized model performance regarding the actual endpoint of each patient.
881 patients were included in the study; 96 of them were ventilated. AUC of the original algorithm is 0.87-0.94. The AUC of the categorized model is 0.95.
A minor degradation in the algorithm accuracy was noted in the internal validation, however, its accuracy remained high. The categorized model allows accurate prediction over time, with very high negative predictive value.
对患者进行插管和通气的决策主要基于临床判断。延迟插管(在需要时)和不必要地进行有创通气(在可以避免时)都会造成伤害。我们最近开发了一种预测 COVID-19 患者呼吸衰竭和有创机械通气的算法。本研究对该模型进行了内部验证,并提出了一种分类的“时间加权”模型。
我们使用了在该算法开发后入住拉宾医学中心的 COVID-19 患者数据集。我们根据每个患者的实际结局来评估模型对通气的预测性能。我们进一步根据每个患者的通气预测强度将其分为四个类别之一。我们根据每个患者的实际结局来评估这个分类模型的性能。
研究纳入了 881 例患者,其中 96 例需要通气。原始算法的 AUC 为 0.87-0.94。分类模型的 AUC 为 0.95。
内部验证显示该算法的准确性略有下降,但仍保持较高水平。分类模型可进行准确的时间预测,具有非常高的阴性预测值。