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WormBase Tree Display for Expression_cluster: WBPaper00025032:cluster_18

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Name Class

WBPaper00025032:cluster_18DescriptionC-lineage related expression profile.
SpeciesCaenorhabditis elegans
AlgorithmQT clustering
ReferenceWBPaper00025032
Microarray_results171845_x_at
172395_at
172544_x_at
172551_at
173430_at
173641_at
173658_at
173782_at
173798_at
174033_at
174111_at
174334_at
174360_at
174580_at
174603_at
174716_at
174855_at
175486_at
175643_s_at
175701_at
175741_s_at
175779_at
175798_at
175840_s_at
176143_at
179471_at
179749_at
181321_at
181839_at
181890_at
182601_at
182650_at
182833_at
182855_at
183398_at
183660_at
185186_at
185663_s_at
185863_at
186303_at
186413_at
188287_at
190161_at
190555_at
192005_at
192388_at
174191_at
172171_x_at
173197_at
174414_at
174741_at
GeneWBGene00017717
WBGene00019992
WBGene00015391
WBGene00003497
WBGene00017478
WBGene00002234
WBGene00011794
WBGene00006780
WBGene00004902
WBGene00004370
WBGene00019426
WBGene00015650
WBGene00017687
WBGene00015058
WBGene00006407
WBGene00009100
WBGene00000936
WBGene00000445
WBGene00003916
WBGene00004033
WBGene00003878
WBGene00006839
WBGene00005787
WBGene00009566
WBGene00005255
WBGene00020686
WBGene00016940
WBGene00005609
WBGene00005068
WBGene00005881
WBGene00005619
WBGene00021047
WBGene00007451
WBGene00005730
WBGene00005370
WBGene00011192
WBGene00016775
WBGene00019213
WBGene00005071
WBGene00003571
WBGene00010646
WBGene00009886
WBGene00005207
WBGene00002189
WBGene00018051
WBGene00001490
Attribute_ofMicroarray_experimentWBPaper00025032:N2_0_min
WBPaper00025032:N2_23_min
WBPaper00025032:N2_41_min
WBPaper00025032:N2_53_min
WBPaper00025032:N2_66_min
WBPaper00025032:N2_83_min
WBPaper00025032:N2_101_min
WBPaper00025032:N2_122_min
WBPaper00025032:N2_143_min
WBPaper00025032:N2_186_min
WBPaper00025032:mex-3_skn-1_0_min
WBPaper00025032:mex-3_skn-1_23_min
WBPaper00025032:mex-3_skn-1_41_min
WBPaper00025032:mex-3_skn-1_53_min
WBPaper00025032:mex-3_skn-1_66_min
WBPaper00025032:mex-3_skn-1_83_min
WBPaper00025032:mex-3_skn-1_101_min
WBPaper00025032:mex-3_skn-1_122_min
WBPaper00025032:mex-3_skn-1_143_min
WBPaper00025032:mex-3_skn-1_186_min
WBPaper00025032:pie-1_0_min
WBPaper00025032:pie-1_23_min
WBPaper00025032:pie-1_41_min
WBPaper00025032:pie-1_53_min
WBPaper00025032:pie-1_66_min
WBPaper00025032:pie-1_83_min
WBPaper00025032:pie-1_101_min
WBPaper00025032:pie-1_122_min
WBPaper00025032:pie-1_143_min
WBPaper00025032:pie-1_186_min
RemarkThis clustering algorithm assembles a series of clusters ordered by size with a defined limit on the largest pair-wise distance allowed between any two profiles in a cluster. Distance between profiles is measured as 1-R, where R is the Pearson correlation coefficient. Although we limited this distance to 0.3, some genes are included in clusters simply by chance. To reduce the spurious inclusion of these genes in the final clusters, we systematically re-sampled our data (100 times) with two forms of synthetic noise added at each reiteration to generate an Ravg. Noise was added to log2 scale RMA expression data, and was generated by a two-component model consisting of an additive Gaussian background with standard deviation 0.2, and a multiplicative Gaussian sampling error with a standard deviation of 0.05. Simulated data were floored at 1 RMA unit.
Type: Co-expression Cluster