一种基于临床、影像、结肠镜和病理学特征的新型多学科机器学习方法,用于鉴别肠结核和克罗恩病。
A novel multidisciplinary machine learning approach based on clinical, imaging, colonoscopy, and pathology features for distinguishing intestinal tuberculosis from Crohn's disease.
机构信息
Department of Radiology, The First Affiliated Hospital, Sun Yat-Sen University, 58 Zhongshan II Road, Guangzhou, 510080, Guangdong, People's Republic of China.
Medical AI Lab, School of Biomedical Engineering, Shenzhen University Medical School, Shenzhen University, Shenzhen, Guangdong, People's Republic of China.
出版信息
Abdom Radiol (NY). 2024 Jul;49(7):2187-2197. doi: 10.1007/s00261-024-04307-7. Epub 2024 May 4.
OBJECTIVES
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.
METHODS
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.
RESULTS
The radiomics model based on MRE features yielded an AUC of 0.87 (95% confidence interval [CI] 0.68-0.96) on the test data set, which was similar to the clinical model (AUC, 0.90 [95% CI 0.71-0.98]) and higher than the colonoscopy radiomics model (AUC, 0.68 [95% CI 0.48-0.84]) and pathology deep-learning model (AUC, 0.70 [95% CI 0.49-0.85]). Multidisciplinary model, integrating 3 clinical, 21 MRE radiomic, 5 colonoscopy radiomic, and 4 pathology deep-learning features, could significantly improve the diagnostic performance (AUC of 0.94, 95% CI 0.78-1.00) on the bases of single-disciplinary-based models. DCA confirmed the clinical utility.
CONCLUSIONS
Multidisciplinary-based model integrating clinical, MRE, colonoscopy, and pathology features was useful in distinguishing ITB from CD.
目的
鉴别肠结核(ITB)与克罗恩病(CD)仍然是一个诊断难题。误诊可能带来严重后果。我们旨在建立一种基于多学科的机器学习方法,用于区分 ITB 和 CD。
方法
回顾性招募了 82 名患者,包括 25 名 ITB 患者和 57 名 CD 患者(54 名在训练队列中,28 名在测试队列中)。在磁共振肠造影(MRE)和结肠镜图像上勾画病变感兴趣区(ROI)。通过最小绝对收缩和选择算子回归提取放射组学特征。通过深度学习方法自动提取病理特征。通过逻辑回归分析筛选临床特征。通过接收者操作特征(ROC)曲线和决策曲线分析(DCA)评估诊断性能。采用 Delong 检验比较基于多学科的模型与其他四个单学科模型的效率。
结果
基于 MRE 特征的放射组学模型在测试数据集上的 AUC 为 0.87(95%置信区间 [CI] 0.68-0.96),与临床模型(AUC,0.90 [95% CI 0.71-0.98])相似,高于结肠镜放射组学模型(AUC,0.68 [95% CI 0.48-0.84])和病理深度学习模型(AUC,0.70 [95% CI 0.49-0.85])。多学科模型整合了 3 项临床、21 项 MRE 放射组学、5 项结肠镜放射组学和 4 项病理深度学习特征,可显著提高基于单学科模型的诊断性能(AUC 为 0.94,95% CI 0.78-1.00)。DCA 证实了其临床实用性。
结论
整合临床、MRE、结肠镜和病理特征的多学科模型有助于区分 ITB 和 CD。