Longlong Zhang, Xinxiang Li, Yaqiong Ge, Wei Wei
Department of Radiology, Anhui Provincial Hospital Affiliated to Anhui Medical University, Hefei, China.
Department of Radiology, The First Affiliated Hospital of USTC, Division of Life Sciences and Medicine, University of Science and Technology of China, Hefei, China.
Front Bioeng Biotechnol. 2020 Jun 30;8:719. doi: 10.3389/fbioe.2020.00719. eCollection 2020.
To assess the utility of texture analysis for predicting the pathological degree of differentiation of pancreatic carcinoma (PC).
Eighty-three patients with PC who went through postoperative pathology diagnose and CT examination were selected at Anhui Provincial Hospital. Among them, 34 cases were moderately differentiated, 13 cases were poorly differentiated, and 36 cases were moderately poorly differentiated. The images in the arterial and venous phase (VP) with the lesions at their largest cross section were selected to manually outline the region of interest (ROI) to delineate lesions using open-source software. A total of 396 features were extracted from the ROI using AK software. Spearman correlation analysis and random forest selection by filter (rfSBF) in the caret package of R studio were used to select the discriminating features. The receiver operating characteristic ROC analysis was used to evaluate their discriminative performance.
Twelve and six features were selected in the arterial and VPs, respectively. The areas under the ROC curve (AUC) in the arterial phase (AP) for diagnosing poorly differentiated, moderately differentiated and moderate-poorly differentiated cases were 0.80, 1, and 0.80 in the training group and 0.77, 1, and 0.77 in the test group; in the VP, the values were 0.81, 1, and 0.82 in the training group and 0.74, 1, and 0.74 in the test group.
Texture analysis based on contrast-enhanced CT images can be used as an adjunct for the preoperative assessment of the pathological degrees of differentiation of PC.
评估纹理分析在预测胰腺癌(PC)病理分化程度方面的效用。
选取安徽省立医院83例经术后病理诊断及CT检查的PC患者。其中,中分化34例,低分化13例,中低分化36例。选择病变最大横截面的动脉期和静脉期(VP)图像,使用开源软件手动勾勒感兴趣区域(ROI)以描绘病变。使用AK软件从ROI中提取总共396个特征。使用R studio的caret包中的Spearman相关性分析和基于过滤器的随机森林选择(rfSBF)来选择鉴别特征。采用受试者操作特征(ROC)分析评估其鉴别性能。
动脉期和静脉期分别选择了12个和6个特征。训练组中,动脉期(AP)诊断低分化、中分化和中低分化病例的ROC曲线下面积(AUC)分别为0.80、1和0.80,测试组中分别为0.77、1和0.77;在静脉期,训练组中的值分别为0.81、1和0.82,测试组中分别为0.74、1和0.74。
基于增强CT图像的纹理分析可作为PC病理分化程度术前评估的辅助手段。