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Posts by Charlie Pugh
We also made some improvements with genomic language model, Evo 2, but in this case the interpretation was less clear. See the preprint for more details. Code for using LFB will made available shortly. 10/10
This provides evidence that better fitness estimation can be achieved at negligible computational cost by bridging the gap between likelihood and fitness at inference time. 9/n
We show a scatterplot of ROC-AUCs for each gene, calculated separating benign and pathogenic labelled variants with either usual or LFB fitness estimation
This trend held across DMS assay types and mutational depth, and also on prediction of clinical variants. 8/n
We show a plot of Model Size vs Mean Spearman Correlation across the DMS datasets from ProteinGym for ESM-2 and ProGen2 model families both with and without the LFB estimation.
On ProteinGym, LFB provided significant improvements across model classes and sizes and we saw that larger better fit models provided better predictions in general.
proteingym.org 7/n
We found under an Ornstein–Uhlenbeck model of evolution that our LFB should be lower variance than the standard estimate by marginalising the effect of drift. 6/n
We show a schematic of the LFB estimate where by averaging over predictions for a variant applied to other related sequences, we produce an score which should be closer to the true change in fitness.
We tried a simple strategy — averaging predictions over sequences under similar selective pressures to effectively reduce the impact of unwanted non-fitness related correlations — likelihood fitness bridging (LFB). 5/n
We wondered whether we might be able to improve predictions from existing models without any further training. 4/n
Weinstein et al show that better fit sequence models can perform worse at fitness estimation due to phylogenetic structure:
openreview.net/forum?id=CwG...
And in practice we are seeing that pLMs don’t improve with lower perplexities:
openreview.net/forum?id=UvP... www.biorxiv.org/content/10.1... 3/n
Protein language models are showing promise in variant effect prediction - but there’s emerging evidence likelihood based zero shot fitness estimation is breaking down. See this excellent summary from @pascalnotin.bsky.social: pascalnotin.substack.com/p/have-we-hi... 2/n
New preprint in collaboration with @paulinanunezv.bsky.social supervised by @jonnyfrazer.bsky.social and Mafalda Dias – we propose a simple approach to improving zero-shot variant effect prediction in pre-existing protein and genome language models: 🧶 1/n
www.biorxiv.org/content/10.1...
@cwjpugh.bsky.social at #VariantEffect25
Three BioML starter packs now!
Pack 1: go.bsky.app/2VWBcCd
Pack 2: go.bsky.app/Bw84Hmc
Pack 3: go.bsky.app/NAKYUok
DM if you want to be included (or nominate people who should be!)
Thanks Charlie for opening the PhD Symposium! Many thanks to everyone involved in its organisation. #CRGPhDSymp2024