Identifying co-expressed gene clusters can provide evidence for genetic or physical interactions. Thus, co-expression clustering is a routine step in large-scale analyses of gene expression data. We show that commonly used clustering methods produce results that substantially disagree and that do not match the biological expectations of co-expressed gene clusters. We present clust, a method that solves these problems by extracting clusters matching the biological expectations of co-expressed genes and outperforms widely used methods. Additionally, clust can simultaneously cluster multiple datasets, enabling users to leverage the large quantity of public expression data for novel comparative analysis. Clust is available at https://github.com...
Table S14. GO terms of some of the results of applying clust to multiple datasets simultaneously. (X...
Table S5. A list of the 19 gene expression datasets which have more samples than 50 (complementary l...
DNA microarray technology has made it possible to simultaneously monitor the expression levels of th...
Identifying co-expressed gene clusters can provide evidence for genetic or physical interactions. Th...
Clustering algorithms aim, by definition, at partitioning a given set of objects into a set of clust...
Table S3. Adjusted rand index (ARI) scores measuring the similarity in cluster membership between th...
Table S4. MSE and JI values for whole clustering results as generated by each of the eight methods w...
Table S2. A list of the 100 gene expression datasets analyzed in this study. (XLSX 18 kb
Table S11. JI values for the results of applying each of the eight clustering methods to multiple da...
Many existing clustering algorithms have been used to identify coexpressed genes in gene expression ...
Table S6. MSE and JI values for all individual clusters generated by each of the eight methods when ...
Rapid development and increasing popularity of gene expression microarrays have resulted in a number...
Table S10. MSE values for the results of applying each of the eight clustering methods to multiple d...
Abstract. The huge volume of gene expression data produced by mi-croarrays and other high-throughput...
Table S13. Numbers of clusters generated by applying each of the eight clustering methods to multipl...
Table S14. GO terms of some of the results of applying clust to multiple datasets simultaneously. (X...
Table S5. A list of the 19 gene expression datasets which have more samples than 50 (complementary l...
DNA microarray technology has made it possible to simultaneously monitor the expression levels of th...
Identifying co-expressed gene clusters can provide evidence for genetic or physical interactions. Th...
Clustering algorithms aim, by definition, at partitioning a given set of objects into a set of clust...
Table S3. Adjusted rand index (ARI) scores measuring the similarity in cluster membership between th...
Table S4. MSE and JI values for whole clustering results as generated by each of the eight methods w...
Table S2. A list of the 100 gene expression datasets analyzed in this study. (XLSX 18 kb
Table S11. JI values for the results of applying each of the eight clustering methods to multiple da...
Many existing clustering algorithms have been used to identify coexpressed genes in gene expression ...
Table S6. MSE and JI values for all individual clusters generated by each of the eight methods when ...
Rapid development and increasing popularity of gene expression microarrays have resulted in a number...
Table S10. MSE values for the results of applying each of the eight clustering methods to multiple d...
Abstract. The huge volume of gene expression data produced by mi-croarrays and other high-throughput...
Table S13. Numbers of clusters generated by applying each of the eight clustering methods to multipl...
Table S14. GO terms of some of the results of applying clust to multiple datasets simultaneously. (X...
Table S5. A list of the 19 gene expression datasets which have more samples than 50 (complementary l...
DNA microarray technology has made it possible to simultaneously monitor the expression levels of th...