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Combining Fuzzy Cognitive Maps with Support Vector Machines for Bladder Tumor Grading

机译:将模糊认知地图与支持向量机相结合,用于膀胱肿瘤分级

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Fuzzy Cognitive Map (FCM) is an advanced modeling methodology that provides flexibility on the system's design, modeling, simulation and control. This research work combines the Fuzzy Cognitive Map model for tumor grading with Support Vector Machines (SVMs) to achieve better tumor malignancy classification. The classification is based on the histopathological characteristics, which are the concepts of the Fuzzy Cognitive Map model that was trained using an unsupervised learning algorithm, the Nonlinear Hebbian Algorithm. The classification accuracy of the proposed approach is 89.13% for High Grade tumor cases and 85.54%, for tumors of Low Grade. The results of the proposed hybrid approach were also compared with other conventional classifiers and are very promising.
机译:模糊认知地图(FCM)是一种先进的建模方法,可提供对系统的设计,建模,仿真和控制的灵活性。本研究工作结合了对肿瘤分级的模糊认知地图模型与支持向量机(SVM),以实现更好的肿瘤恶性分类。分类基于组织病理特征,是使用无监督学习算法,非线性HEBBIAN算法训练的模糊认知地图模型的概念。拟议方法的分类准确性为高级肿瘤病例的89.13%,85.54%,用于低等级的肿瘤。拟议的杂种方法的结果也与其他常规分类器进行了比较,并且非常有前景。

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