Department of Radiology, Shanghai Public Health Clinical Center, Fudan University, Shanghai, China.
Shanghai Key Laboratory of Artificial Intelligence for Medical Image and Knowledge Graph, Shanghai, China.
Theranostics. 2020 Apr 27;10(12):5613-5622. doi: 10.7150/thno.45985. eCollection 2020.
: Some patients with coronavirus disease 2019 (COVID-19) rapidly develop respiratory failure or even die, underscoring the need for early identification of patients at elevated risk of severe illness. This study aims to quantify pneumonia lesions by computed tomography (CT) in the early days to predict progression to severe illness in a cohort of COVID-19 patients. : This retrospective cohort study included confirmed COVID-19 patients. Three quantitative CT features of pneumonia lesions were automatically calculated using artificial intelligence algorithms, representing the percentages of ground-glass opacity volume (PGV), semi-consolidation volume (PSV), and consolidation volume (PCV) in both lungs. CT features, acute physiology and chronic health evaluation II (APACHE-II) score, neutrophil-to-lymphocyte ratio (NLR), and d-dimer, on day 0 (hospital admission) and day 4, were collected to predict the occurrence of severe illness within a 28-day follow-up using both logistic regression and Cox proportional hazard models. : We included 134 patients, of whom 19 (14.2%) developed any severe illness. CT features on day 0 and day 4, as well as their changes from day 0 to day 4, showed predictive capability. Changes in CT features from day 0 to day 4 performed the best in the prediction (area under the receiver operating characteristic curve = 0.93, 95% confidence interval [CI] 0.870.99; C-index=0.88, 95% CI 0.810.95). The hazard ratios of PGV and PCV were 1.39 (95% CI 1.051.84, =0.023) and 1.67 (95% CI 1.172.38, =0.005), respectively. CT features, adjusted for age and gender, on day 4 and in terms of changes from day 0 to day 4 outperformed APACHE-II, NLR, and d-dimer. : CT quantification of pneumonia lesions can early and non-invasively predict the progression to severe illness, providing a promising prognostic indicator for clinical management of COVID-19.
一些患有 2019 年冠状病毒病(COVID-19)的患者会迅速出现呼吸衰竭甚至死亡,这凸显了需要早期识别有发生严重疾病风险的患者。本研究旨在通过计算计算机断层扫描(CT)在早期的肺炎病变程度,来预测 COVID-19 患者向严重疾病的进展。
本回顾性队列研究纳入了确诊的 COVID-19 患者。使用人工智能算法自动计算肺炎病变的三个定量 CT 特征,代表双肺磨玻璃影体积(PGV)、半实变体积(PSV)和实变体积(PCV)的百分比。在第 0 天(入院)和第 4 天收集 CT 特征、急性生理学和慢性健康评估 II(APACHE-II)评分、中性粒细胞与淋巴细胞比值(NLR)和 D-二聚体,以便使用逻辑回归和 Cox 比例风险模型预测 28 天随访期间发生严重疾病的情况。
我们纳入了 134 例患者,其中 19 例(14.2%)发生了任何严重疾病。第 0 天和第 4 天的 CT 特征及其从第 0 天到第 4 天的变化都具有预测能力。从第 0 天到第 4 天的 CT 特征变化在预测中表现最佳(接受者操作特征曲线下面积=0.93,95%置信区间[CI] 0.870.99;C 指数=0.88,95%CI 0.810.95)。PGV 和 PCV 的风险比分别为 1.39(95%CI 1.051.84,=0.023)和 1.67(95%CI 1.172.38,=0.005)。第 4 天的 CT 特征,经年龄和性别调整,以及从第 0 天到第 4 天的变化,优于 APACHE-II、NLR 和 D-二聚体。
肺炎病变的 CT 定量分析可以早期、无创地预测向严重疾病的进展,为 COVID-19 的临床管理提供了一个有前途的预后指标。