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Learning fuzzy cognitive map with PSO algorithm for grading celiac disease

机译:用PSO算法学习模糊认知图对乳糜泻进行分级

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摘要

Celiac disease (CD) is a complex disorder whose development is affected by genetics (HLA alleles) and gluten ingestion. Its diagnosis is very difficult due to clinical manifestations complexity, latent period, and similarity to other diseases. Studies show that a high percentage of CD patients remain undiagnosed. 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 is of paramount importance. This paper presents a new method for grading CD based on the combination of fuzzy cognitive map (FCM) and support vector machine. To improve the efficiency and increase classification ability of FCM, particle swarm optimization (PSO) algorithm is applied to adjust FCM weights. In this study, the newest method of grading A, B1, and B2 is used. The empirical results show that the main advantage of PSO algorithm is its speed of convergence and the ability to obtain faster possible schedules. The proposed method is tested on 89 patients. The simulation results prove the superiority of the proposed method compared with Bayesian networks based on the rules and other procedures set forth in the literature. These results show the percentages of 87%, 86%, and 84% for three grades of A, B1 and B2.
机译:腹腔疾病(CD)是一种复杂的疾病,其发展受到遗传学(HLA等位基因)和麸质摄入的影响。由于临床表现的复杂性,潜伏期以及与其他疾病的相似性,其诊断非常困难。研究表明,大部分CD患者仍未被诊断。未经治疗的腹腔疾病患者罹患癌症,恶性淋巴瘤和小肠肿瘤的风险很高。因此,CD的诊断和分级至关重要。本文提出了一种基于模糊认知图(FCM)和支持向量机相结合的CD分级方法。为了提高FCM的效率并提高FCM的分类能力,应用粒子群算法(PSO)调整FCM权重。在这项研究中,使用了对A,B1和B2进行分级的最新方法。实验结果表明,PSO算法的主要优势在于其收敛速度和获得更快的可能调度的能力。该方法对89例患者进行了测试。仿真结果基于文献中提出的规则和其他程序,证明了该方法与贝叶斯网络相比的优越性。这些结果显示三个等级的A,B1和B2的百分比分别为87%,86%和84%。

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