A Novel Fuzzy Bi-Clustering Algorithm with AFS for Identification of Co-Regulated Genes
Kaijie Xu

TL;DR
This paper introduces a new fuzzy bi-clustering algorithm using Axiomatic Fuzzy Set theory to identify co-regulated genes, improving detection accuracy without prior data knowledge.
Contribution
The paper presents a novel fuzzy bi-clustering method based on AFS, transforming gene expression data into two fuzzy matrices for better co-regulated gene detection.
Findings
Outperforms traditional bi-clustering methods on real datasets
Effectively detects co-regulated genes without prior knowledge
Produces bi-clusters with more significant expression values
Abstract
The identification of co-regulated genes and their transcription-factor binding sites (TFBS) are the key steps toward understanding transcription regulation. In addition to effective laboratory assays, various bi-clustering algorithms for detection of the co-expressed genes have been developed. Bi-clustering methods are used to discover subgroups of genes with similar expression patterns under to-be-identified subsets of experimental conditions when applied to gene expression data. By building two fuzzy partition matrices of the gene expression data with the Axiomatic Fuzzy Set (AFS) theory, this paper proposes a novel fuzzy bi-clustering algorithm for identification of co-regulated genes. Specifically, the gene expression data is transformed into two fuzzy partition matrices via sub-preference relations theory of AFS at first. One of the matrices is considering the genes as the…
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Taxonomy
TopicsGene expression and cancer classification
