Wang Ying, Huang Xuanzhi, Zhou Gaoshi, Han Jing, Xie Zhuo, Zhang Mudan, Li Xiaoling, Wu Qi-Rui, Li Li, Ye Ziyin, Chen Minhu, Qiu Yun, Zhang Shenghong
Department of Gastroenterology, First Affiliated Hospital of Sun Yat-sen University, Guangzhou, Guangdong Province, People's Republic of China.
Department of Pathology, First Affiliated Hospital of Sun Yat-sen University, Guangzhou, Guangdong Province, People's Republic of China.
J Inflamm Res. 2023 May 1;16:1879-1894. doi: 10.2147/JIR.S410057. eCollection 2023.
Treatment failures (TFs) generally exist in the course of ulcerative colitis (UC), while early reliable predictors of TFs are still lacking. We aimed to generate nomograms for the prediction of TFs.
In this retrospective case-control study, the endpoint was the occurrence of TFs, which included medically associated treatment failures and surgery-associated treatment failures (colectomy). Clinical features and mucus integrity evident by goblet cells (GCs) number, expression levels of MUC2 and SLC26A3 were enrolled in the univariate analysis. Nomogram performance was evaluated by discrimination and calibration.
We identified 256 UC patients at our center from January 2010 to June 2022. Fourteen variables for TFs and 9 for colectomy were identified by univariate analysis. Five baseline indices were incorporated into the nomogram for the prediction of TFs: area of GCs, age at diagnosis, disease duration, hemoglobin, and Mayo score. The model was presented with decent discrimination ( index of 0.822) and well calibration. In addition, the colectomy predictive nomogram was built using MUC2 intensity, age at onset, and Mayo score with a good discrimination ( index of 0.92).
Nomograms based on comprehensive factors including mucus barrier function were developed to predict TFs in UC patients with great discrimination, which may serve as practical tools aiming to identify high-risk subgroups warrant timely intervention.
治疗失败(TFs)在溃疡性结肠炎(UC)病程中普遍存在,但仍缺乏TFs的早期可靠预测指标。我们旨在生成预测TFs的列线图。
在这项回顾性病例对照研究中,终点是TFs的发生,包括医学相关治疗失败和手术相关治疗失败(结肠切除术)。单因素分析纳入了临床特征以及通过杯状细胞(GCs)数量、MUC2和SLC26A3表达水平体现的黏液完整性。通过区分度和校准评估列线图性能。
我们在2010年1月至2022年6月期间在本中心确定了256例UC患者。单因素分析确定了14个与TFs相关的变量和9个与结肠切除术相关的变量。将5个基线指标纳入预测TFs的列线图:GCs面积、诊断时年龄、病程、血红蛋白和梅奥评分。该模型具有良好的区分度(C指数为0.822)和良好的校准。此外,使用MUC2强度、发病年龄和梅奥评分构建了结肠切除术预测列线图,其区分度良好(C指数为0.92)。
基于包括黏液屏障功能在内的综合因素开发的列线图能够很好地区分UC患者中的TFs,可作为识别需要及时干预的高危亚组的实用工具。