2005
DOI: 10.1142/s0219720005001375
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Noise-Robust Soft Clustering of Gene Expression Time-Course Data

Abstract: Clustering is an important tool in microarray data analysis. This unsupervised learning technique is commonly used to reveal structures hidden in large gene expression data sets. The vast majority of clustering algorithms applied so far produce hard partitions of the data, i.e. each gene is assigned exactly to one cluster. Hard clustering is favourable if clusters are well separated. However, this is generally not the case for microarray time-course data, where gene clusters frequently overlap. Additionally, h… Show more

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Cited by 413 publications
(357 citation statements)
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“…To identify differentially expressed miRNAs among samples of ULMS, ULM, and MM (defined as the 'classifier list') we used the analysis of variance algorithm as implemented in the R package 20 with Benjamini-Hochberg correction for false positives and a P value cutoff of 0.01 or 0.05. Phylogenetic trees were then generated by applying the Weighted Least Squares (WLS) 21 algorithm as implemented in the Phylip package version 3.67 22 to the Pearson correlation distance of subsets of differentially expressed miRNAs (the 'classifier list').…”
Section: Phylogenetic Tree Reconstruction Methods and Heatmap Generationmentioning
confidence: 99%
See 1 more Smart Citation
“…To identify differentially expressed miRNAs among samples of ULMS, ULM, and MM (defined as the 'classifier list') we used the analysis of variance algorithm as implemented in the R package 20 with Benjamini-Hochberg correction for false positives and a P value cutoff of 0.01 or 0.05. Phylogenetic trees were then generated by applying the Weighted Least Squares (WLS) 21 algorithm as implemented in the Phylip package version 3.67 22 to the Pearson correlation distance of subsets of differentially expressed miRNAs (the 'classifier list').…”
Section: Phylogenetic Tree Reconstruction Methods and Heatmap Generationmentioning
confidence: 99%
“…Expression profile clusters were calculated using the mfuzz algorithm, 20 a fuzzy c-means R package commonly used for clustering profiles of timeseries. The number of clusters was set to 10 with a fuzzification parameter of 1.1.…”
Section: Clusters Of Mirnas Differentially Expressed During Sm Differmentioning
confidence: 99%
“…genes with a corresponding z-score 43 in all time points [56]. Detected gene clusters were examined for enrichment of functional categories based on GO annotation.…”
Section: Bioinformatic Assessmentmentioning
confidence: 99%
“…Expression profiles for wild-type fruit were clustered using fuzzy C means by using the Mfuzz package (Futschik and Carlisle, 2005) in R, with a C value of 100 to maximize dynamic differential clustering identification and core clustered at 0.70 membership probability. Dynamically regulated gene clusters were identified by inspecting plots of the normalized expression profiles of each cluster, which led to the identification of 10 clusters that showed a dynamic range of expression in one tissue over another as well as six ontogeny and spatially specific clusters.…”
Section: Clustering Of the Expression Of Genes During Fruit Developmementioning
confidence: 99%