How can Single Cell RNA Sequence Data Analysis be improved?

Hello Community Member,

I am working on a single cell RNA sequencing project & am looking for advice on optimizing my data analysis pipeline. I have already performed the initial quality control steps and basic clustering but I am facing challenges in identifying subtle groups and interpreting differential expression results.

Are there recommended approaches or tools for fine tuning clustering algorithms to better capture rare cell types??

What strategies do you use to validate differential expression findings? I am Interested about minimizing false positives and ensuring robust interpretation.

If anyone has experience integrating multiple scrna seq datasets how do you handle batch effects and ensure consistency across datasets? I have heard of using Splunk for data integration in other contexts; but I am curious if there a parallel in scrna seq.

Also when I was searching about this I came across these resources BEAS-2B cell culture and MTT assay variability if anyone have any resources, tutorials or personal experiences would be greatly appreciated.

Thank you…… :blush: