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Different data processing on metabolomics, I get different R2. #60

@Chenjiani1112

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@Chenjiani1112

Hi.
I have three multi-omics datasets of RNA seq (vst normalization), DNA methylation (beta value) and plasma metabolomics.
I normalized my metabolite data with the total sum of all detected ions and deleted unstable metabolite using QC, and deleted the outliers based on these retrained metabolites using IQR, then I normalized samples by median and normalized these plasma metabolite using pareto scaling.
Finally, I used my RNA seq, DNA methylation and plasma metabolites as input data to run MOFA.
Howerver, the results showed that all latent factors can explain about 0% variance in plasma metabolomics.
Then, I transformed my plasma mteabolite data using log transform and normalized by pareto scaling. This MOFA result( plasma metabolites with log)showed a dramatic difference compared with the prior MOFA resul t( plasma metabolites without log transform), that is all latent factors can explain about 10% variance in plasma metabolomics.

I am confused about the data input on metabolomics.
Thanks.

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