Sano Masaya, Kanatani Yasuhiro, Ueda Takashi, Nemoto Shota, Miyake Yurin, Tomita Naoko, Suzuki Hidekazu
Department of Gastroenterology, Tokai University School of Medicine, Isehara, Kanagawa, Japan.
Department of Clinical Pharmacology, Tokai University School of Medicine, Isehara, Kanagawa, Japan.
Ann Med. 2025 Dec;57(1):2499960. doi: 10.1080/07853890.2025.2499960. Epub 2025 May 5.
Ulcerative colitis (UC) is a chronic inflammatory bowel disease for which remission is dependent on corticosteroid (CS) treatment. The diversity of disease pathophysiology necessitates optimal case-specific treatment selection. This study aimed to identify prognostic factors for refractory UC using a machine learning model based on nationwide registry data.
The study included 4003 patients with UC with a Mayo score of ≥3 at the time of registration who had been using CS since their entry out of 79,096 newly registered UC cases in a nationwide registry from April 2003 to March 2012 (before the widespread use of biologic agents in Japan) with 3-year data. A pointwise linear (PWL) model was used for machine learning.
A PWL model, which was developed to predict long-term remission (lasting >3 years), had an area-under-the-curve (AUC), precision rate, recall rate, and F-value of 0.774, 0.55, 0.70, 0.62, respectively, in the test dataset from the time of registration to 2 years later. Furthermore, the presence of pseudopolyps at the time of registration was significantly and negatively correlated with remission, highlighting its importance as a prognostic factor.
In this study, we constructed a highly accurate prognosis prediction model for UC, in which inflammation persists for an extensive period, by training a machine learning model for long-term disease progression. The results showed that machine learning can be used to determine the factors affecting remission during the treatment of refractory UC.
溃疡性结肠炎(UC)是一种慢性炎症性肠病,其缓解依赖于皮质类固醇(CS)治疗。疾病病理生理学的多样性需要针对具体病例进行最佳治疗选择。本研究旨在使用基于全国登记数据的机器学习模型来识别难治性UC的预后因素。
该研究纳入了2003年4月至2012年3月(日本生物制剂广泛使用之前)全国登记的79096例新登记UC病例中,登记时梅奥评分≥3且自入院以来一直在使用CS的4003例患者,并获取了其3年的数据。使用逐点线性(PWL)模型进行机器学习。
为预测长期缓解(持续>3年)而开发的PWL模型,在从登记时到2年后的测试数据集中,曲线下面积(AUC)、精确率、召回率和F值分别为0.774、0.55、0.70、0.62。此外,登记时假息肉的存在与缓解显著负相关,突出了其作为预后因素的重要性。
在本研究中,我们通过训练用于长期疾病进展的机器学习模型,构建了一个针对UC的高度准确的预后预测模型,其中炎症会持续很长一段时间。结果表明,机器学习可用于确定影响难治性UC治疗期间缓解的因素。