Rough-Fuzzy Hybrid Approach for Identification of Bio-markers and Classification on Alzheimer's Disease Data

C. Lee, C. Lam, M. Masek
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引用次数: 4

Abstract

A new approach is proposed in this paper for identification of biomarkers and classification on Alzheimer's disease data by employing a rough-fuzzy hybrid approach called ARFIS (a framework for Adaptive TS-type Rough-Fuzzy Inference Systems). In this approach, the entropy-based discretization technique is employed first on the training data to generate clusters for each attribute with respect to the output information. The rough set-based feature reduction method is then utilized to reduce the number of features in a decision table obtained using the cluster information. Another rough set-based approach is employed for the generation of decision rules. After the construction and the evaluation phases of the proposed rough-fuzzy hybrid system, the classification is carried out on the testing set of the given data. The experimental results showed that the proposed approach achieved compatible classification results on Alzheimer's disease data compared to results from other existing approaches in the literature. It can be concluded that the proposed rough-fuzzy hybrid approach is a novel approach in predictive data mining in clinical medicine in terms of utilizing 1) rough set-based approaches for feature reduction and rule generation, 2) a hybrid fuzzy system for pattern classification, and revealing 3) rules for prediction of diagnostic results.
阿尔茨海默病数据生物标记物识别与分类的粗糙-模糊混合方法
本文提出了一种新的方法来识别生物标志物和分类的阿尔茨海默病数据采用粗糙-模糊混合方法称为ARFIS(自适应ts型粗糙-模糊推理系统的框架)。在该方法中,首先对训练数据采用基于熵的离散化技术,根据输出信息为每个属性生成聚类。然后利用基于粗糙集的特征约简方法对聚类信息得到的决策表中的特征进行约简。另一种基于粗糙集的方法用于生成决策规则。经过所提出的粗糙模糊混合系统的构建和评价阶段,对给定数据的测试集进行分类。实验结果表明,与文献中其他方法的分类结果相比,本文提出的方法对Alzheimer’s disease数据的分类结果是兼容的。本文提出的粗糙-模糊混合方法是临床医学预测数据挖掘的一种新方法,它利用1)基于粗糙集的方法进行特征约简和规则生成,2)混合模糊系统进行模式分类,3)揭示诊断结果预测的规则。
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