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A novel hybrid method based on fuzzy cognitive maps and fuzzy clustering algorithms for grading celiac disease

机译:一种基于模糊认知地图的新型混合方法和用于分级乳糜泻的模糊聚类算法

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This paper presents a new method based on fuzzy cognitive map (FCM) and possibilistic fuzzy c-means (PFCM) clustering algorithm for categorizing celiac disease (CD). CD is a complex disorder whose development is affected by genetics (HLA alleles) and gluten ingestion. The celiac patients who are not treated are at a high risk of cancer, malignant lymphoma, and small bowel neoplasia. Therefore, CD diagnosis and grading are of paramount importance. The proposed FCM models human thinking for the purpose of classifying patients suffering from CD. We used the latest grading method where three grades A, B1, and B2 are used. To improve FCM efficiency and classification capability, a nonlinear Hebbian learning algorithm is applied for adjusting the FCM weights. To this end, 89 cases are studied. Three experts extracted seven main determinant characteristics of CD which were considered as FCM concepts. The mutual effects of these concepts on one another and on the final concept were expressed in the form of fuzzy rules and linguistic variables. Using the center of gravity defuzzifier, we obtained the numerical values of these weights and obtained the total weight matrix. Ultimately, combining the FCM model with PFCM algorithm, we obtained the grades A, B1, and B2 accuracies as 88, 90, and 91%, respectively. The main advantage of the proposed FCM is the good transparency and interpretability in the decision-making procedure, which make it a suitable tool for daily usage in the clinical practice.
机译:本文介绍了一种基于模糊认知地图(FCM)的新方法,以及用于对乳糜泻(CD)进行分类的可能性模糊C型(PFCM)聚类算法。 CD是一种复杂的疾病,其发展受到遗传(HLA等位基因)和麸质摄入的影响。未治疗的乳糜泻患者处于高风险的癌症,恶性淋巴瘤和小肠瘤。因此,CD诊断和分级至关重要。拟议的FCM模型为分类患者患有CD的患者的思考。我们使用了使用三个等级A,B1和B2的最新分级方法。为了提高FCM效率和分类能力,应用非线性Hebbian学习算法来调整FCM权重。为此,研究了89例。三位专家提取了七个主要的CD主要决定簇特征,被认为是FCM概念。这些概念彼此和最终概念的相互影响以模糊规则和语言变量的形式表示。使用重心除霜器,我们获得了这些重量的数值并获得了总重量矩阵。最终,将FCM模型与PFCM算法相结合,我们可以分别获得A,B1和B2等级为88,90和91%。拟议的FCM的主要优点是决策程序中的良好透明度和可解释性,使其成为临床实践中日常使用的合适工具。

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