Microarray Classification Using Sub-space Grids

M. Wani
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引用次数: 14

Abstract

The work presented in this paper describes how sub-space grids can be employed to extract rules for micro array classification. The paper first describes principal component analysis (PCA) algorithm for obtaining sub-space grids from the projected low dimensional space. A recursive procedure is then used to obtain rules where sub-space grids form premises of rules. The extracted set of rules is evaluated on both training and testing data sets. The sub-space grids from PCA algorithm are characterized by overlapped data from different classes and use of even more than two premises in a rule does not fully address the problem of overlapped data. As such the rules obtained do not discriminate different classes accurately. To increase the effectiveness of the set of rules, multiple discriminant analysis (MDA) algorithm instead of PCA algorithm is employed to obtain sub-space grids from the projected low dimensional space. These sub-space grids from MDA algorithm improve the classification accuracy of the system. However, the size of set of rules extracted is large and these rules are sensitive to local variations associated with the data. To address these issues, the paper explores using both the PCA and MDA algorithms simultaneously fo projected low dimensional space for obtaining sub-space grids. The resulting set of rules produce better classification accuracy results. The paper discusses a comprehensive evaluation of this rule based system. The system is tested on a dataset of 62 samples (40 colon tumor and 22 normal colon tissue). The results show that the use of sub-space grids that are obtained from a projected low dimensional space of combined PCA and MDA algorithms increase the accuracy of classification results of micro array data.
基于子空间网格的微阵列分类
本文介绍了如何利用子空间网格提取微阵列分类规则。本文首先描述了从投影低维空间中获取子空间网格的主成分分析(PCA)算法。然后使用递归过程获得规则,其中子空间网格构成规则的前提。提取的规则集在训练和测试数据集上进行评估。PCA算法的子空间网格的特点是不同类别的数据重叠,即使在规则中使用两个以上的前提也不能完全解决数据重叠的问题。因此,所获得的规则并不能准确地区分不同的阶级。为了提高规则集的有效性,采用多元判别分析(MDA)算法代替PCA算法从投影的低维空间中获取子空间网格。这些MDA算法的子空间网格提高了系统的分类精度。然而,提取的规则集的大小很大,并且这些规则对与数据相关的局部变化很敏感。为了解决这些问题,本文探讨了同时使用PCA和MDA算法来投影低维空间以获得子空间网格。所得到的规则集产生更好的分类精度结果。本文对基于规则的系统进行了综合评价。该系统在62个样本(40个结肠肿瘤和22个正常结肠组织)的数据集上进行了测试。结果表明,结合PCA和MDA算法在低维空间投影得到的子空间网格,提高了微阵列数据分类结果的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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