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Differentiation of intestinal tuberculosis and Crohn’s disease through an explainable machine learning method

Futian Weng, Yu Meng, Fanggen Lu, Yuying Wang, Weiwei Wang, Long Xu, Dongsheng Cheng, Jianping Zhu

2022Scientific Reports37 citationsDOIOpen Access PDF

Abstract

Differentiation between Crohn's disease and intestinal tuberculosis is difficult but crucial for medical decisions. This study aims to develop an effective framework to distinguish these two diseases through an explainable machine learning (ML) model. After feature selection, a total of nine variables are extracted, including intestinal surgery, abdominal, bloody stool, PPD, knot, ESAT-6, CFP-10, intestinal dilatation and comb sign. Besides, we compared the predictive performance of the ML methods with traditional statistical methods. This work also provides insights into the ML model's outcome through the SHAP method for the first time. A cohort consisting of 200 patients' data (CD = 160, ITB = 40) is used in training and validating models. Results illustrate that the XGBoost algorithm outperforms other classifiers in terms of area under the receiver operating characteristic curve (AUC), sensitivity, specificity, precision and Matthews correlation coefficient (MCC), yielding values of 0.891, 0.813, 0.969, 0.867 and 0.801 respectively. More importantly, the prediction outcomes of XGBoost can be effectively explained through the SHAP method. The proposed framework proves that the effectiveness of distinguishing CD from ITB through interpretable machine learning, which can obtain a global explanation but also an explanation for individual patients.

Topics & Concepts

Artificial intelligenceINTESTINAL TUBERCULOSISReceiver operating characteristicMachine learningFeature selectionMatthews correlation coefficientTuberculosisCrohn's diseaseComputer scienceDiseaseMedicineInternal medicinePathologySupport vector machineDiagnosis and treatment of tuberculosisTuberculosis Research and EpidemiologyRadiomics and Machine Learning in Medical Imaging