Cabell Huntington Hospital, Huntington, WV, USA; Marshall University School of Medicine, Huntington, WV, USA.
Dascena, Inc., San Francisco, CA, USA.
Comput Biol Med. 2020 Sep;124:103949. doi: 10.1016/j.compbiomed.2020.103949. Epub 2020 Aug 6.
Currently, physicians are limited in their ability to provide an accurate prognosis for COVID-19 positive patients. Existing scoring systems have been ineffective for identifying patient decompensation. Machine learning (ML) may offer an alternative strategy. A prospectively validated method to predict the need for ventilation in COVID-19 patients is essential to help triage patients, allocate resources, and prevent emergency intubations and their associated risks.
In a multicenter clinical trial, we evaluated the performance of a machine learning algorithm for prediction of invasive mechanical ventilation of COVID-19 patients within 24 h of an initial encounter. We enrolled patients with a COVID-19 diagnosis who were admitted to five United States health systems between March 24 and May 4, 2020.
197 patients were enrolled in the REspirAtory Decompensation and model for the triage of covid-19 patients: a prospective studY (READY) clinical trial. The algorithm had a higher diagnostic odds ratio (DOR, 12.58) for predicting ventilation than a comparator early warning system, the Modified Early Warning Score (MEWS). The algorithm also achieved significantly higher sensitivity (0.90) than MEWS, which achieved a sensitivity of 0.78, while maintaining a higher specificity (p < 0.05).
In the first clinical trial of a machine learning algorithm for ventilation needs among COVID-19 patients, the algorithm demonstrated accurate prediction of the need for mechanical ventilation within 24 h. This algorithm may help care teams effectively triage patients and allocate resources. Further, the algorithm is capable of accurately identifying 16% more patients than a widely used scoring system while minimizing false positive results.
目前,医生在为 COVID-19 阳性患者提供准确预后方面的能力有限。现有的评分系统对于识别患者失代偿无效。机器学习 (ML) 可能提供一种替代策略。开发一种能够预测 COVID-19 患者通气需求的前瞻性验证方法对于帮助分诊患者、分配资源以及预防紧急插管及其相关风险至关重要。
在一项多中心临床试验中,我们评估了一种机器学习算法预测 COVID-19 患者在首次就诊后 24 小时内需要进行有创机械通气的性能。我们招募了 2020 年 3 月 24 日至 5 月 4 日期间在五个美国医疗系统住院的 COVID-19 诊断患者。
REspirAtory Decompensation 和用于 COVID-19 患者分诊的模型前瞻性研究(READY)临床试验共纳入 197 例患者。与早期预警系统 Modified Early Warning Score(MEWS)相比,该算法预测通气的诊断比值比(DOR,12.58)更高。该算法的灵敏度(0.90)也明显高于 MEWS(0.78),同时特异性更高(p<0.05)。
在 COVID-19 患者通气需求的首个机器学习算法临床试验中,该算法在 24 小时内准确预测了机械通气的需求。该算法可能有助于医疗团队有效分诊患者并分配资源。此外,该算法能够在最小化假阳性结果的同时,比广泛使用的评分系统准确识别出 16%的更多患者。