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9 months ago
dzisis1986
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70
I have a count matrix like that :
Genes 1_conA 2_conA 3_conA 4_conB 5_conB 6_conB
SNCA 2754.51468026414 2330.52372350378 2098.4507693163 493.840280542602 519.951931272473 739.283699887331
ACAP3 6674.36606862323 5409.85793263052 4323.59396601816 2835.88756309508 3140.25429738641 3896.43656225971
ADAM11 699.592200296909 461.280799487677 494.726262249319 183.26821707438 192.823381215176 307.040197251065
ANO8 2616.29181950827 2303.33914627923 1963.0501501436 1256.38797123759 1322.61352696467 1727.46307913068
ARHGAP33 4745.22335002185 3240.42700839725 2587.43328935726 1259.44145060271 1387.25369716501 1750.81995136913
ARHGEF25 2514.71835790986 1732.19279036597 1749.15256711928 954.396853986755 1101.64564134203 1273.47148785137
ATE1 681.226078895356 689.637999819787 557.304649328032 1337.15024965092 1390.46381978227 1039.91237064104
BLOC1S5 253.527233897061 234.056980445019 191.04859397678 490.761612501422 407.221389190741 514.030987914712
C8orf82 1087.38670986473 914.926707564202 937.432348227618 682.65905217546 653.544038903608 696.834295089135
CABLES2 779.731441395388 858.397991894595 986.471631919686 364.142546296198 369.280971509118 509.072980419863
CACNG8 712.444925820586 727.489752432312 969.411665067064 402.421625005241 378.143770666438 437.624092121583
CAMK2B 1606.34018505634 1563.46349434595 1293.10585539382 769.233241222907 1058.47936327409 786.98152040651
CAMKV 1571.66050327696 1399.56665570775 1181.14616689206 951.763777049311 816.53641659271 843.734731015618
CARMIL3 1973.93192405357 1544.7386129963 1345.01170227751 767.675003825552 771.270966376434 1113.39852140762
I want to perform a correlation analysis to see the levels (increases or decreases ) of SNCA gene with the DE genes. I would like to say if is more or less in 2 different conditions. How a correlation matrix be calculated in R for 3 samples in each condition?
I want to be able to measure the values of SNCA and how they are formed so that we can measure the expression in each experiment.
It sounds like you want an ANOVA, which can be invoked with the
aov()
function. You may need to melt your dataset using themelt()
function. It's hard to tell as you don't explain your column names or what the conditions are.No anova is not what i need. i need to see how the SNCA is correlated to to other genes across conA and conB. The correlation is done with spearman core test but still I don't see the separation between the two conditions
How can I go further with this in order to see also the iPSC_1_conA iPSC_2_conA iPSC_3_conA etc in the result matrix ?? I that way I will be able to see that SNCA has higher correlation and raises in iPSC_2_conA and not in iPSC_5_conB ?