Wang Xia, Wang Xingwei, Lei Jie, Rong Chang, Zheng Xiaomin, Li Shuai, Gao Yankun, Wu Xingwang
Department of Radiology, The First Affiliated Hospital of Anhui Medical University, Hefei, Anhui, 230022, China (X.W., X.W., J.L., C.R., X.Z., S.L., Y.G., X.W.).
Department of Radiology, The First Affiliated Hospital of Anhui Medical University, Hefei, Anhui, 230022, China (X.W., X.W., J.L., C.R., X.Z., S.L., Y.G., X.W.); Department of Radiology, Hefei BOE Hospital, Hefei, Anhui, 230013, China (X.W.).
Acad Radiol. 2025 Jun 23. doi: 10.1016/j.acra.2025.06.005.
This study aimed to develop radiomic-based machine learning models using computed tomography enterography (CTE) features derived from the intestinal wall, mesenteric fat, and visceral fat to differentiate between ulcerative colitis (UC) and colonic Crohn's disease (CD).
Clinical and imaging data from 116 patients with inflammatory bowel disease (IBD) (68 with UC and 48 with colonic CD) were retrospectively collected. Radiomic features were extracted from venous-phase CTE images. Feature selection was performed via the intraclass correlation coefficient (ICC), correlation analysis, SelectKBest, and least absolute shrinkage and selection operator (LASSO) regression. Support vector machine models were constructed using features from individual and combined regions, with model performance evaluated using the area under the ROC curve (AUC).
The combined radiomic model, integrating features from all three regions, exhibited superior classification performance (AUC= 0.857, 95% CI, 0.732-0.982), with a sensitivity of 0.762 (95% CI, 0.547-0.903) and specificity of 0.857 (95% CI, 0.601-0.960) in the testing cohort. The models based on features from the intestinal wall, mesenteric fat, and visceral fat achieved AUCs of 0.847 (95% CI, 0.710-0.984), 0.707 (95% CI, 0.526-0.889), and 0.731 (95% CI, 0.553-0.910), respectively, in the testing cohort. The intestinal wall model demonstrated the best calibration.
This study demonstrated the feasibility of constructing machine learning models based on radiomic features of the intestinal wall, mesenteric fat, and visceral fat to distinguish between UC and colonic CD.
本研究旨在利用从肠壁、肠系膜脂肪和内脏脂肪中提取的计算机断层扫描小肠造影(CTE)特征,开发基于放射组学的机器学习模型,以区分溃疡性结肠炎(UC)和结肠克罗恩病(CD)。
回顾性收集116例炎症性肠病(IBD)患者(68例UC患者和48例结肠CD患者)的临床和影像数据。从静脉期CTE图像中提取放射组学特征。通过组内相关系数(ICC)、相关性分析、SelectKBest和最小绝对收缩和选择算子(LASSO)回归进行特征选择。使用来自单个区域和组合区域的特征构建支持向量机模型,并使用ROC曲线下面积(AUC)评估模型性能。
整合所有三个区域特征的联合放射组学模型表现出卓越的分类性能(AUC = 0.857,95%CI,0.732 - 0.982),在测试队列中的灵敏度为0.762(95%CI,0.547 - 0.903),特异性为0.857(95%CI,0.601 - 0.960)。基于肠壁、肠系膜脂肪和内脏脂肪特征的模型在测试队列中的AUC分别为0.847(95%CI,0.710 - 0.984)、0.707(95%CI,0.526 - 0.889)和0.731(95%CI,0.553 - 0.910)。肠壁模型显示出最佳的校准。
本研究证明了基于肠壁、肠系膜脂肪和内脏脂肪的放射组学特征构建机器学习模型以区分UC和结肠CD的可行性。