Division of Pulmonary Medicine, Taipei Tzu Chi Hospital, Buddhist Tzu Chi Medical Foundation, New Taipei City, Taiwan; Department of Biomedical Sciences and Engineering, National Central University, Taoyuan, Taiwan.
Department of Computer Science and Information Engineering, National Central University, Taoyuan, Taiwan.
J Formos Med Assoc. 2023 Mar;122(3):267-275. doi: 10.1016/j.jfma.2022.09.014. Epub 2022 Sep 26.
There is a lack of published research on the impact of the first wave of the COVID-19 pandemic in Taiwan. We investigated the mortality risk factors among critically ill patients with COVID-19 in Taiwan during the initial wave. Furthermore, we aim to develop a novel AI mortality prediction model using chest X-ray (CXR) alone.
We retrospectively reviewed the medical records of patients with COVID-19 at Taipei Tzu Chi Hospital from May 15 to July 15 2021. We enrolled adult patients who received invasive mechanical ventilation. The CXR images of each enrolled patient were divided into 4 categories (1st, pre-ETT, ETT, and WORST). To establish a prediction model, we used the MobilenetV3-Small model with "Imagenet" pretrained weights, followed by high Dropout regularization layers. We trained the model with these data with Five-Fold Cross-Validation to evaluate model performance.
A total of 64 patients were enrolled. The overall mortality rate was 45%. The median time from symptom onset to intubation was 8 days. Vasopressor use and a higher BRIXIA score on the WORST CXR were associated with an increased risk of mortality. The areas under the curve of the 1st, pre-ETT, ETT, and WORST CXRs by the AI model were 0.87, 0.92, 0.96, and 0.93 respectively.
The mortality rate of COVID-19 patients who receive invasive mechanical ventilation was high. Septic shock and high BRIXIA score were clinical predictors of mortality. The novel AI mortality prediction model using CXR alone exhibited a high performance.
目前缺乏关于 COVID-19 大流行第一波对台湾影响的研究。我们调查了 COVID-19 危重症患者在台湾大流行初期的死亡风险因素。此外,我们旨在使用单独的胸部 X 射线(CXR)开发一种新的人工智能死亡率预测模型。
我们回顾性地分析了 2021 年 5 月 15 日至 7 月 15 日期间在台北慈济医院接受 COVID-19 治疗的患者的病历。我们纳入了接受有创机械通气的成年患者。每位入组患者的 CXR 图像分为 4 类(1 期、预 ETT、ETT 和 WORST)。为了建立预测模型,我们使用了带有“Imagenet”预训练权重的 MobilenetV3-Small 模型,随后是高辍学正则化层。我们使用这些数据进行了五折交叉验证,以评估模型性能。
共纳入 64 例患者。总体死亡率为 45%。从症状出现到插管的中位时间为 8 天。血管加压药的使用和 WORST CXR 上的 BRIXIA 评分较高与死亡率增加相关。AI 模型的 1 期、预 ETT、ETT 和 WORST CXR 的曲线下面积分别为 0.87、0.92、0.96 和 0.93。
接受有创机械通气的 COVID-19 患者的死亡率较高。脓毒症休克和高 BRIXIA 评分是死亡率的临床预测因素。使用单独的 CXR 的新型人工智能死亡率预测模型表现出较高的性能。