Department of Radiology, The Yongchuan Hospital of Chongqing Medical University, Chongqing, China.
Department of Respiratory and Critical Care Medicine, The Yongchuan Hospital of Chongqing Medical University, Chongqing, China.
Br J Radiol. 2021 Jan 1;94(1117):20200634. doi: 10.1259/bjr.20200634. Epub 2020 Dec 9.
To identify the value of radiomics method derived from CT images to predict prognosis in patients with COVID-19.
A total of 40 patients with COVID-19 were enrolled in the study. Baseline clinical data, CT images, and laboratory testing results were collected from all patients. We defined that ROIs in the absorption group decreased in the density and scope in GGO, and ROIs in the progress group progressed to consolidation. A total of 180 ROIs from absorption group ( = 118) and consolidation group ( = 62) were randomly divided into a training set ( = 145) and a validation set ( = 35) (8:2). Radiomics features were extracted from CT images, and the radiomics-based models were built with three classifiers. A radiomics score (Rad-score) was calculated by a linear combination of selected features. The Rad-score and clinical factors were incorporated into the radiomics nomogram construction. The prediction performance of the clinical factors model and the radiomics nomogram for prognosis was estimated.
A total of 15 radiomics features with respective coefficients were calculated. The AUC values of radiomics models (kNN, SVM, and LR) were 0.88, 0.88, and 0.84, respectively, showing a good performance. The C-index of the clinical factors model was 0.82 [95% CI (0.75-0.88)] in the training set and 0.77 [95% CI (0.59-0.90)] in the validation set. The radiomics nomogram showed optimal prediction performance. In the training set, the C-index was 0.91 [95% CI (0.85-0.95)], and in the validation set, the C-index was 0.85 [95% CI (0.69-0.95)]. For the training set, the C-index of the radiomics nomogram was significantly higher than the clinical factors model ( = 0.0021). Decision curve analysis showed that radiomics nomogram outperformed the clinical model in terms of clinical usefulness.
The radiomics nomogram based on CT images showed favorable prediction performance in the prognosis of COVID-19. The radiomics nomogram could be used as a potential biomarker for more accurate categorization of patients into different stages for clinical decision-making process.
Radiomics features based on chest CT images help clinicians to categorize the patients of COVID-19 into different stages. Radiomics nomogram based on CT images has favorable predictive performance in the prognosis of COVID-19. Radiomics act as a potential modality to supplement conventional medical examinations.
确定 CT 图像衍生的放射组学方法在预测 COVID-19 患者预后中的价值。
本研究纳入了 40 名 COVID-19 患者。收集所有患者的基线临床数据、CT 图像和实验室检测结果。我们定义,在 GGO 中,吸收组的 ROI 密度和范围降低,进展组的 ROI 进展为实变。吸收组(=118)和进展组(=62)的总共 180 个 ROI 随机分为训练集(=145)和验证集(=35)(8:2)。从 CT 图像中提取放射组学特征,并使用三个分类器构建放射组学模型。通过选择特征的线性组合计算放射组学评分(Rad-score)。将 Rad-score 和临床因素纳入放射组学列线图构建。评估临床因素模型和放射组学列线图对预后的预测性能。
共计算了 15 个具有各自系数的放射组学特征。放射组学模型(kNN、SVM 和 LR)的 AUC 值分别为 0.88、0.88 和 0.84,表现出良好的性能。在训练集中,临床因素模型的 C 指数为 0.82[95%CI(0.75-0.88)],在验证集中为 0.77[95%CI(0.59-0.90)]。放射组学列线图显示出最佳的预测性能。在训练集中,C 指数为 0.91[95%CI(0.85-0.95)],在验证集中,C 指数为 0.85[95%CI(0.69-0.95)]。对于训练集,放射组学列线图的 C 指数显著高于临床因素模型(=0.0021)。决策曲线分析表明,放射组学列线图在临床实用性方面优于临床模型。
基于 CT 图像的放射组学列线图在 COVID-19 的预后预测中表现出良好的预测性能。放射组学列线图可作为一种潜在的生物标志物,用于更准确地将患者分类为不同阶段,以辅助临床决策过程。
基于胸部 CT 图像的放射组学特征有助于临床医生将 COVID-19 患者分为不同阶段。基于 CT 图像的放射组学列线图在 COVID-19 预后预测中具有良好的预测性能。放射组学作为补充常规医学检查的一种潜在手段。