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Novel clustering of bigger and complex medical data by enhanced fuzzy logic structure

机译:通过增强的模糊逻辑结构,对较大和复杂的医学数据进行新的聚类

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摘要

The significant contribution of the clustering algorithm for diagnosis of the clinical condition through medical data consideration is must in the healthcare sector. The currently existing techniques implement the Fuzzy Logic in clustering and have been found by research gap which describes that less focus on the medical data clustering. Thus, this paper introduced a novel algorithm where the enhancement of fuzzy logic is performed to achieve better computational ability in the processing of highly complex medical data such as microarray data. The introduced algorithm is implemented for disease diagnosis and classification. The outcomes of the proposed algorithm are compared with recent approaches like the genetic algorithm, support vector machine (SVM), and artificial neural network (ANN). On analyzing these comparative results found that the proposed clustering model achieved significant performance in response time and classification of disease with better accuracy.
机译:通过医疗数据考虑,聚类算法对临床状况诊断的重大贡献必须在医疗保健部门中进行。当前存在的技术在聚类中实现了模糊逻辑,并通过研究空白发现了,该研究描述了对医学数据聚类的关注较少。因此,本文介绍了一种新颖的算法,该算法在处理高度复杂的医学数据(如微阵列数据)时执行模糊逻辑的增强,以实现更好的计算能力。引入的算法用于疾病的诊断和分类。将该算法的结果与遗传算法,支持向量机(SVM)和人工神经网络(ANN)等最新方法进行了比较。对这些比较结果进行分析后发现,所提出的聚类模型在响应时间和疾病分类方面均具有较高的准确度。

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