A novel multidisciplinary machine learning approach based on clinical, imaging, colonoscopy, and pathology features for distinguishing intestinal tuberculosis from Crohn’s disease

Baolan Lu, Zengan Huang,Jinjiang Lin,Ruonan Zhang,Xiaodi Shen, Lili Huang,Xinyue Wang, Weitao He, Qiapeng Huang, Jiayu Fang,Ren Mao,Zhoulei Li,Bingsheng Huang,Shi-Ting Feng, Ziying Ye,Jian Zhang,Yangdi Wang

Abdominal Radiology(2024)

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摘要
Differentiating intestinal tuberculosis (ITB) from Crohn’s disease (CD) remains a diagnostic dilemma. Misdiagnosis carries potential grave implications. We aim to establish a multidisciplinary-based model using machine learning approach for distinguishing ITB from CD. Eighty-two patients including 25 patients with ITB and 57 patients with CD were retrospectively recruited (54 in training cohort and 28 in testing cohort). The region of interest (ROI) for the lesion was delineated on magnetic resonance enterography (MRE) and colonoscopy images. Radiomic features were extracted by least absolute shrinkage and selection operator regression. Pathological feature was extracted automatically by deep-learning method. Clinical features were filtered by logistic regression analysis. Diagnostic performance was evaluated by receiver operating characteristic (ROC) curve and decision curve analysis (DCA). Delong’s test was applied to compare the efficiency between the multidisciplinary-based model and the other four single-disciplinary-based models. The radiomics model based on MRE features yielded an AUC of 0.87 (95
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关键词
Intestinal tuberculosis,Crohn’s disease,Machine learning,Magnetic resonance enterography
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