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Add umicollapse and benchmark it against umitools dedup #1087
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Hi there, I wrote the module! We are using it in our updated nf-core/clipseq pipeline (not released yet). It is able to handle much larger bams and I have benchmarked that it gives identical results. So hopefully this should be an easy issue. |
Great work and thank you so much for the info! So then this issue comes down to writing a respective subworkflow similar to bam_dedup_stats_samtools_umitools, but using Maybe @drpatelh can give a hint, if he prefers replacing |
Be interested to see what your implementation looks like @CharlotteAnne ! But adding an independent subworkflow either way as you suggested @MatthiasZepper is a good idea. We can then decide how we slip it into the pipeline. |
you can see in the https://github.com/nf-core/clipseq/tree/feat-2-0 branch
of clipseq. we dont used the subworkflow because the samtools stats
clutters up our pipeline output without giving any real useful information
|
actually thats a lie lol at the moment we do
https://github.com/nf-core/clipseq/blob/feat-2-0/subworkflows/local/bam_dedup_samtools_umicollapse.nf
but im gonna refactor becuz of samtools stats clutter
|
Hello! After a conversation with @MatthiasZepper over Slack I decided I would get hands-on on this issue. I've already created a branch on a fork of the repo and added the functionality for the user to select whether they want to deduplicate using I have not made the pull request yet because I have not tested it and benchmarked, but feel free to "read" the changes in the code and give all the feedback you want. I'll keep you posted with the results once I have tested :) |
The added I'm testing only that it currently runs and completes with two samples of the first dataset linked, subsampled to 10k reads (I'm testing it locally 😅 ), but would love to really benchmark this implementation with more real data. Any suggestion or idea on how could we do this? |
@ctuni : Thank you so much for all your work and effort! Greatly appreciated! We have some sequencing data from human XpressRef Universal Total RNA in different input concentrations and kits, which I could run with your pipeline for comparison. It will take a couple of days, but then we have a relatively large dataset with a known ground truth to compare against. I could share e.g. the salmon quant files with you for your own analysis? |
To give you a small update about my progress (or the lack thereof 😬). I fetched @ctuni 's modification to the pipeline based on @CharlotteAnne 's subworkflow, but felt that for evaluation purposes, it would be better to compare the tools on exactly the same BAM files instead of realigning the same reads again. Therefore, I tried to With the same approach, I planned to also get a close comparison of the effects that the Prepare for Salmon process has, since the whole undertaking started in Slack with doubts about that script: #828. Thus, essentially getting 4 quantifications Even 256GB heap doesn't seem to be enough for a single pass run:
Therefore, I still have to play around with the Java Virtual Machine Memory settings for initial heap size, max heap size and stack size and probably set |
Of course, you can help! Much appreciated! The subworkflow with umicollapse is done, but I was holding back with integrating it into the Hoe about assigning yourself to this task and taking over? |
Smrnaseq has it implemented too - if you're looking for insights how it was implemented there, have a look 👍 |
Thank you! I don't have permissions to change assignments. Please do so if you can. I will send a PR shortly. |
Great! Please join the nf-core GitHub organization asap, so you can better interact with the different repos and issues! I think e.g. @drpatelh would be happy to send you an invitation, since you are contributing to the |
Running a little behind on this, but still on my list, somewhere near the top. |
Please don't stress yourself over it. I have been neglecting this for months and without your help, it would probably not make it anywhere soon either. So take your time, it will anyway not be included in the next release 3.15 anymore (for which a feature freeze is essentially in place) and the 3.16 release is still a few weeks ahead! |
WIP PR at #1369. I think we definitely have to use |
Crude benchmark results from processing GSE207129. Note that these are paired reads. Execution timeline reports attached. Some notes:
Does anyone have any thoughts on what I could be doing wrong here? |
I couldn't see easily - are you testing with data that has UMIs? how long
are the UMIs and what is the PCR deduplication ratio of the dataset? With
CLIP we found similar, that sometimes UMIcollapse can be comparably
inefficient but it works for tricky large BAM files where umitools just
gives up. Probably a question for the tool author.
…On Tue, 3 Sept 2024 at 19:18, Siddhartha Bagaria ***@***.***> wrote:
Crude benchmark results from processing GSE207129
<https://www.ncbi.nlm.nih.gov/geo/query/acc.cgi?acc=GSE207129>. Note that
these are paired reads. Execution timeline reports attached.
Some notes:
1. --paired uses considerably more memory and time, and processing
transcriptomes is much worse than with umitools. With --two-pass, it
takes 9-10 hours for umicollapse instead of ~30 minutes for umitools.
Processing genomes takes roughly half the time (but with 10x more memory).
2. --two-pass keeps memory requirements low. For a 3.2 GB
transcriptome sorted BAM file with paired reads, --two-pass takes 15
GB instead of 75 GB RAM.
Does anyone have any thoughts on what I could be doing wrong here?
Execution Timeline.zip
<https://github.com/user-attachments/files/16853028/Execution.Timeline.zip>
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Yes, the data has 8 bp long UMIs. This is what umi-tools says:
|
Ah I see! These files have many more reads than we would typically process
from CLIP, but our PCR deduplication ratio is higher and the UMIs can be
longer, which both also impact the memory requirement. Perhaps the
smallRNASeq folk would be better able to advise and the tool author
himself on his github repo.
…On Tue, 3 Sept 2024 at 21:13, Siddhartha Bagaria ***@***.***> wrote:
Yes, the data has 8 bp long UMIs. This is what umi-tools says:
Reads: Input Reads: 44319354, Read pairs: 44319354
Number of reads out: 32494556
Total number of positions deduplicated: 30086237
Mean number of unique UMIs per position: 1.11
Max. number of unique UMIs per position: 147
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Filed Daniel-Liu-c0deb0t/UMICollapse#31 to get a response from the tool author. If paired ends is indeed this slow, my suggestion would be to continue to keep umi-tools the default and provide UMICollapse only as an option manually selected, probably without integration with multiqc. |
@apeltzer Have you ever run UMICollapse in paired end mode? It seems like the command line the pipeline would form is incorrect ( |
After fixing the issue in UMICollapse, in general, UMICollapse takes ~60% of the wall time of umi-tools. We will have to wait for the fix to be accepted and a new release in bioconda. |
Smrnaseq only runs on SE data so the PE was never used. As smrnaseq data is so short, paired end protocols do not make any sense for smrna data. For SE data we saw quite substantially better performance than what we had with umitools. |
Wow, one night of good sleep and one morning of not paying attention to GitHub and meanwhile this happened...🤯. I have not yet reviewed your PR, but from briefly glimpsing over this conversation I already got the impression that you, @siddharthab, made an outstanding contribution! Thank you so much for your PR to the pipeline, including an extensive QC and profiling! I am flabbergasted by your perspicaciousness - identifying the reason for the slow transcriptome deduplication in the tool's code in no-time and fixing it right away! Brilliant! |
* Add UMICollapse module Fixes #2813. See nf-core/rnaseq#1087 for broader discussion. * Fix tests and lints * Fix scale name and remove unused import * Shorter col names --------- Co-authored-by: Vlad Savelyev <[email protected]>
@CharlotteAnne, looks like the conda recipe uses your forked repo. Would you be willing to update the recipe to use a released version from your or mine repo until the author merges the change? |
Since the Bioconda recipe anyway points to a fork of the original repo, I see no problem with changing it to your fork @siddharthab. If you could make a 1.0.1 release that includes the transcriptomic dedup bug fix, I can update the Bioconda recipe to your fork and to the correct SHA. |
Also changes the source GitHub repo to another fork. Some discussion on this in nf-core/rnaseq#1087 (comment)
Thanks a lot for all the work you are investing in that! Unfortunately, I could not approve your PR to Bioconda, but I found somebody who could! |
* Update UMICollapse to 1.1.0 Also changes the source GitHub repo to another fork. Some discussion on this in nf-core/rnaseq#1087 (comment) * Reset build number * Add run_exports
Thank you. It is now merged. So I guess now we wait for the docker image generation and then finish this work. :-) |
Updating the module is in progress... |
Description of feature
umicollapse
is a Java tool and nf-core module so far not used by any pipeline.It was specifically written as a more performant tool, which supposedly produces output equivalent to umi-tools dedup, but with significantly shorter runtimes (minutes instead of hours).
Therefore, it might make sense to switch from
umi-tools dedup
toumicolllapse
, or at least offer it as an alternative route, similar to the coexistence of TrimGalore / FastP in the future.To advance this development, please:
Familiarize yourself with
umicollapse
and its settings.Create a new branch of the pipeline in your fork and add the
umicollapse
module to it, replacing theumi-tools dedup
step. Update the module config accordingly.Benchmark the modified pipeline against version 3.12 when run on data with UMIs, comparing runtimes and quantification results. Possible benchmarking datasets are e.g. GSE207129 or GSE179992 with those parameters
or Experiment 2 of Series GSE171427 when run with
I think, this is a suitable Hackathon task for a more advanced nf-core contributor. Thanks!
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