Department of Biomedical Informatics, University of California, San Diego, La Jolla, CA.
Department of Emergency Medicine, University of California, San Diego, La Jolla, CA; Division of Pulmonary, Critical Care, and Sleep Medicine, University of California, San Diego, La Jolla, CA.
Chest. 2021 Jun;159(6):2264-2273. doi: 10.1016/j.chest.2020.12.009. Epub 2020 Dec 17.
Objective and early identification of hospitalized patients, and particularly those with novel coronavirus disease 2019 (COVID-19), who may require mechanical ventilation (MV) may aid in delivering timely treatment.
Can a transparent deep learning (DL) model predict the need for MV in hospitalized patients and those with COVID-19 up to 24 h in advance?
We trained and externally validated a transparent DL algorithm to predict the future need for MV in hospitalized patients, including those with COVID-19, using commonly available data in electronic health records. Additionally, commonly used clinical criteria (heart rate, oxygen saturation, respiratory rate, Fio, and pH) were used to assess future need for MV. Performance of the algorithm was evaluated using the area under receiver operating characteristic curve (AUC), sensitivity, specificity, and positive predictive value.
We obtained data from more than 30,000 ICU patients (including more than 700 patients with COVID-19) from two academic medical centers. The performance of the model with a 24-h prediction horizon at the development and validation sites was comparable (AUC, 0.895 vs 0.882, respectively), providing significant improvement over traditional clinical criteria (P < .001). Prospective validation of the algorithm among patients with COVID-19 yielded AUCs in the range of 0.918 to 0.943.
A transparent deep learning algorithm improves on traditional clinical criteria to predict the need for MV in hospitalized patients, including in those with COVID-19. Such an algorithm may help clinicians to optimize timing of tracheal intubation, to allocate resources and staff better, and to improve patient care.
目标是及早识别住院患者,尤其是那些可能需要机械通气(MV)的新型冠状病毒病 2019(COVID-19)患者,这有助于及时进行治疗。
能否通过透明的深度学习(DL)模型,提前 24 小时预测住院患者(包括 COVID-19 患者)对 MV 的需求?
我们使用电子病历中常用的数据,训练并外部验证了一个透明的 DL 算法,以预测住院患者(包括 COVID-19 患者)对 MV 的未来需求。此外,还使用了常用的临床标准(心率、血氧饱和度、呼吸频率、FiO2 和 pH)来评估对 MV 的未来需求。使用受试者工作特征曲线下面积(AUC)、灵敏度、特异性和阳性预测值来评估算法的性能。
我们从两个学术医疗中心获得了超过 30000 名 ICU 患者(包括 700 多名 COVID-19 患者)的数据。该模型在开发和验证地点的 24 小时预测结果具有可比性(AUC 分别为 0.895 和 0.882),与传统临床标准相比有显著提高(P <.001)。对 COVID-19 患者进行前瞻性验证的算法的 AUC 值范围在 0.918 到 0.943 之间。
透明的深度学习算法可以提高传统临床标准对住院患者,包括 COVID-19 患者对 MV 需求的预测能力。这样的算法可以帮助临床医生优化气管插管的时机,更好地分配资源和人员,改善患者的护理。