File size: 1,557 Bytes
bb0614c 3f16dc8 bb0614c |
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 |
# Pembrolizumab-scFv Optimiziation Variants Iter1 x PD-1 (YM_0985)
## Overview
YM_0985 includes Alphabind designs against PD-1. We explored several model hypothesis: (i) Does pre-training aid predicitivity and (ii) does the featurization of the input sequences matter. To test pretraining, we refer to `mata_descriptions` with the term **warm** to include pretraining, and **cold** to start from a randomly initialized seed. For featurization, we explored **label-encoded** sequences with a one-hot-encoder of amino acid identities, versus an **ESM-featurized** embedding to represent each sequence in the PPI.
## Experimental details
We studied the efficacy of generating binders with different model hyperparameters. This dataset includes 34890 unique VHHs and 1 unique RBD sequences.
A more extensive methods section can be found in our publication [here](https://pmc.ncbi.nlm.nih.gov/articles/PMC12296056/).
## Misc dataset details
We define the following binders:
### A-library (scFvs)
There are several terms you can filter by:
- `Pembro144_WT_<i>`: These are WT replicates.
- `Pembro144_label_encoded_cold`: Label encoded sequences with no pretraining
- `Pembro144_label_encoded_warm`: Label encoded sequences with pretraining
- `Pembro144_esm_cold`: ESM featurized sequences with no pretraining
- `Pembro144_esm_warm`: ESM featurized sequences with pretraining
To get the mutations of interest relative to the parent, we recommend an alignment to the WT sequence.
### Alpha-library
There is only 1 sequence, which is the native target.
|