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Fig. 14R code for correlation analysis
Table 1
Gene pairs in a module with significant correlation
ID2 Label2 Label1 ID1
Correlation
coefficient
Adjusted
Pvalue
6432 SRSF7 EED 8726 0.902914 0.003226
6434 TRA2B EED 8726 0.914704 0.004676
10,772 SRSF10 EED 8726 0.930143 0.000129
23,451 SF3B1 EED 8726 0.917909 0.00014
26,156 RSL1D1 EED 8726 0.936396 4.24E-06
196 Sze Chung Yuen et al.