2008
DOI: 10.1016/s1672-0229(08)60021-2
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Fuzzy Logic for Elimination of Redundant Information of Microarray Data

Abstract: Gene subset selection is essential for classification and analysis of microarray data. However, gene selection is known to be a very difficult task since gene expression data not only have high dimensionalities, but also contain redundant information and noises. To cope with these difficulties, this paper introduces a fuzzy logic based pre-processing approach composed of two main steps. First, we use fuzzy inference rules to transform the gene expression levels of a given dataset into fuzzy values. Then we app… Show more

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Cited by 29 publications
(25 citation statements)
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References 42 publications
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“…Classification using Type-2 Fuzzy Logic Thanh Nguyen and Saeid Nahavandi D More specifically, a few papers have employed type-1 FL for microarray cancer classification including those of [11][12][13][14]. Nevertheless, it has been well-known that the type-2 FL has more capability to deal with uncertainty than the type-1 FL [15].…”
Section: Modified Ahp For Gene Selection and Cancermentioning
confidence: 99%
“…Classification using Type-2 Fuzzy Logic Thanh Nguyen and Saeid Nahavandi D More specifically, a few papers have employed type-1 FL for microarray cancer classification including those of [11][12][13][14]. Nevertheless, it has been well-known that the type-2 FL has more capability to deal with uncertainty than the type-1 FL [15].…”
Section: Modified Ahp For Gene Selection and Cancermentioning
confidence: 99%
“…In the research conducted in 2008 (Huerta et al [9]),the scientists proposed a fuzzy logic based data pre-processing approach for elimination of information redundancy of microarray data. This approach also helps to deal with the problems related to the imprecise and noisy nature of gene expression data.…”
Section: Methodsmentioning
confidence: 99%
“…If the described methods would be grouped by techniques they use, then all methods could be divided into three groups: algorithms using fuzzy if-then rules (Ho et al [7], Vinterbo et al [5], Schaefer et al [10]); algorithms that use fuzzy preprocessing step (Huerta et al [9]) and algorithms that use fuzzy logic to identify relationships between genes (Wolf et al [1], Resson et al [3]). …”
Section: Methodsmentioning
confidence: 99%
See 1 more Smart Citation
“…It is well-known that omics data contain noise due to experimental procedures and biological heterogeneity. An efficient way to reduce the negative effect of noise is to apply fuzzy discretization, using a fuzzy inference system [78]. This technique has been applied to identify set of discriminant genes from gene expression data [79].…”
Section: Feature Selection and Representationmentioning
confidence: 99%