School of Computer Science and Engineering, Sun Yat-Sen University, Guangzhou, People's Republic of China.
Guangdong Province Key Laboratory Computational Science, Sun Yat-Sen University, Guangzhou, People's Republic of China.
Phys Med Biol. 2021 Jul 16;66(14). doi: 10.1088/1361-6560/ac1020.
Currently, the incidence of esophageal squamous cell carcinoma (ESCC) in China is high and its prognosis is poor. To evaluate the prognosis of patients with ESCC, we performed computerized quantitative analyses on diagnostic computed tomography (CT) and digital histopathological slices. A retrospective study was conducted to assess the prognosis of ESCC in 153 patients who underwent esophagectomy, and the cohort was selected based on strict clinical criteria. Each patient had an enhanced CT image, and there were two imaging protocols for CT images of all patients. Each patient in the cohort also had a histopathological tissue slide after hematoxylin-eosin staining. Under an electron microscope, the tissue slide was scanned as an image of large size. We then performed quantitative analyses to identify factors related to the prognosis of ESCC on digital histological images and diagnostic CT images. For CT images, we used the radiomics method. For histological images, we designed a set of quantitative features based on machine learning algorithms, such as K-means and principal component analysis. These features describe the patterns of different cell types in histopathological images. Subsequently, we used the survival analysis model established using only CT image features as the baseline. We also compared multiple machine learning models and adopted a five-fold cross-validation method to establish a robust survival model. In establishing survival models, we first used CT image features to establish survival models, and the C-index from the Weibull Cox model on the test set reached 0.624. Then we used histopathlogical features to establish survival models, and the C-index from the Weibull Cox model on the test set reached 0.664, which was obviously better than CT's. Lastly, we combined CT image features and histopathological image features to establish survival models. The performance was better than that in the models built using only CT image features or histopathological image features, and the C-index from the regularized Cox model on the test set reached 0.694. We also proved the effectiveness of the quantified histopathological image features in terms of prognosis using the log-rank test. Histopathological image features are more relevant to prognosis than features extracted from CT images using radiomics. The results of this study provide clinicians with a reference to improve the survival rate of patients with ESCC after surgery. These results have implications for advancing the process of explaining the poor prognosis of esophageal cancer.
目前,中国食管癌(ESCC)的发病率较高,预后较差。为了评估 ESCC 患者的预后,我们对诊断计算机断层扫描(CT)和数字组织病理学切片进行了计算机定量分析。我们进行了一项回顾性研究,以评估 153 例接受食管切除术的 ESCC 患者的预后,该队列是根据严格的临床标准选择的。每位患者均有增强 CT 图像,所有患者的 CT 图像有两种成像方案。队列中的每位患者也都有苏木精-伊红染色后的组织学切片。在电子显微镜下,组织切片被扫描为大尺寸的图像。然后,我们在数字组织学图像和诊断 CT 图像上进行定量分析,以识别与 ESCC 预后相关的因素。对于 CT 图像,我们使用了放射组学方法。对于组织学图像,我们根据机器学习算法(如 K-均值和主成分分析)设计了一组定量特征。这些特征描述了组织学图像中不同细胞类型的模式。随后,我们使用仅使用 CT 图像特征建立的生存分析模型作为基线。我们还比较了多个机器学习模型,并采用五折交叉验证方法建立了一个稳健的生存模型。在建立生存模型时,我们首先使用 CT 图像特征建立生存模型,在测试集上 Weibull Cox 模型的 C 指数达到 0.624。然后,我们使用组织病理学特征建立生存模型,在测试集上 Weibull Cox 模型的 C 指数达到 0.664,明显优于 CT。最后,我们结合 CT 图像特征和组织学图像特征建立生存模型。该性能优于仅使用 CT 图像特征或组织学图像特征建立的模型,在测试集上正则化 Cox 模型的 C 指数达到 0.694。我们还通过对数秩检验证明了量化组织学图像特征在预后方面的有效性。与使用放射组学从 CT 图像提取的特征相比,组织病理学图像特征与预后更相关。本研究的结果为临床医生提供了一个参考,以提高 ESCC 患者手术后的生存率。这些结果对推进解释食管癌预后不良的进程具有重要意义。