use Combat to adjust for hidden variables without knowing batch effect
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shirley zhang ★ 1.0k
@shirley-zhang-2038
Last seen 9.6 years ago
I know if the batch effect is known. We can use Combat to adjust for the batch effect. However, if the batch effect is unknown, could I still use Combat or SVA to adjust for some hidden variables? We know that our blood samples were NOT drawn at the same time from individuals, and RNA were NOT extracted at the same time. Many thanks, Shirley
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shirley zhang ★ 1.0k
@shirley-zhang-2038
Last seen 9.6 years ago
I know if the batch effect is known. We can use Combat to adjust for the batch effect. However, if the batch effect is unknown, could I still use Combat or SVA to adjust for some hidden variables? We know that our blood samples were NOT drawn at the same time from individuals, and RNA were NOT extracted at the same time. Many thanks, Shirley
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Hi Michael, Many thanks for your great suggestions. They are very helpful. Best, Shirley On Tue, Jul 16, 2013 at 11:56 PM, Michael Breen <breenbioinformatics at="" gmail.com=""> wrote: > Hi Shirley, > > It's often not recommended to batch correct without considerable evidence of > a batch effect. (i.e. date, cohorts etc..) > > What is recommended is to proceed with various sorts of quality assessment > to visualize potential batch effects. For example, we will often produce: > > -3D PCA plots wrapping 1, 2, 3, standard deviations around the data points > -Hierarchical clustering using pearsons correlation > (for each of these it helps to overlap a color scheme onto the potential > batches to aid in visualizing) > -Array to Array distance plots > > If you find no evidence of batches then skip the batch adjustment. If exists > a potential effect, correct with Combat or SCAN and proceed with your > analysis. > > Good luck, > > Michael > > > On Mon, Jul 15, 2013 at 6:10 PM, shirley zhang <shirley0818 at="" gmail.com=""> > wrote: >> >> I know if the batch effect is known. We can use Combat to adjust for >> the batch effect. However, if the batch effect is unknown, could I >> still use Combat or SVA to adjust for some hidden variables? We know >> that our blood samples were NOT >> drawn at the same time from individuals, and RNA were NOT extracted at >> the same time. >> >> Many thanks, >> Shirley >> >> _______________________________________________ >> Bioconductor mailing list >> Bioconductor at r-project.org >> https://stat.ethz.ch/mailman/listinfo/bioconductor >> Search the archives: >> http://news.gmane.org/gmane.science.biology.informatics.conductor > >
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Hi Michael, Many thanks for your great suggestions. They are very helpful. Best, Shirley On Tue, Jul 16, 2013 at 11:56 PM, Michael Breen <breenbioinformatics at="" gmail.com=""> wrote: > Hi Shirley, > > It's often not recommended to batch correct without considerable evidence of > a batch effect. (i.e. date, cohorts etc..) > > What is recommended is to proceed with various sorts of quality assessment > to visualize potential batch effects. For example, we will often produce: > > -3D PCA plots wrapping 1, 2, 3, standard deviations around the data points > -Hierarchical clustering using pearsons correlation > (for each of these it helps to overlap a color scheme onto the potential > batches to aid in visualizing) > -Array to Array distance plots > > If you find no evidence of batches then skip the batch adjustment. If exists > a potential effect, correct with Combat or SCAN and proceed with your > analysis. > > Good luck, > > Michael > > > On Mon, Jul 15, 2013 at 6:10 PM, shirley zhang <shirley0818 at="" gmail.com=""> > wrote: >> >> I know if the batch effect is known. We can use Combat to adjust for >> the batch effect. However, if the batch effect is unknown, could I >> still use Combat or SVA to adjust for some hidden variables? We know >> that our blood samples were NOT >> drawn at the same time from individuals, and RNA were NOT extracted at >> the same time. >> >> Many thanks, >> Shirley >> >> _______________________________________________ >> Bioconductor mailing list >> Bioconductor at r-project.org >> https://stat.ethz.ch/mailman/listinfo/bioconductor >> Search the archives: >> http://news.gmane.org/gmane.science.biology.informatics.conductor > >
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Hi Shirley, It's often not recommended to batch correct without considerable evidence of a batch effect. (i.e. date, cohorts etc..) What is recommended is to proceed with various sorts of quality assessment to visualize potential batch effects. For example, we will often produce: -3D PCA plots wrapping 1, 2, 3, standard deviations around the data points -Hierarchical clustering using pearsons correlation (for each of these it helps to overlap a color scheme onto the potential batches to aid in visualizing) -Array to Array distance plots If you find no evidence of batches then skip the batch adjustment. If exists a potential effect, correct with Combat or SCAN and proceed with your analysis. Good luck, Michael On Mon, Jul 15, 2013 at 6:10 PM, shirley zhang <shirley0818@gmail.com>wrote: > I know if the batch effect is known. We can use Combat to adjust for > the batch effect. However, if the batch effect is unknown, could I > still use Combat or SVA to adjust for some hidden variables? We know > that our blood samples were NOT > drawn at the same time from individuals, and RNA were NOT extracted at > the same time. > > Many thanks, > Shirley > > _______________________________________________ > Bioconductor mailing list > Bioconductor@r-project.org > https://stat.ethz.ch/mailman/listinfo/bioconductor > Search the archives: > http://news.gmane.org/gmane.science.biology.informatics.conductor > [[alternative HTML version deleted]]
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