MS/MS Spectrum Prediction for MHC-Associated Peptides with a Fine-Tuned Model
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Date
2024-02-23
Authors
Li, Zhenbo
Advisor
Ma, Bin
Lu, Yang
Lu, Yang
Journal Title
Journal ISSN
Volume Title
Publisher
University of Waterloo
Abstract
To improve the quality of spectral library search, several MS/MS spectrum predictors have been developed in the last decades. After success in various fields, deep learning techniques are adopted by MS/MS spectrum predictors to increase the accuracy of predicted spectra. However, the quality and quantity of the training set are both required to train a deep learning model. Due to the less representation of MHC-associated peptides in most spectral libraries, current MS/MS spectrum predictors provide less accurate predicted spectra for MHC-associated peptides than their performance for other peptides.
In this thesis, we built several MHC-associated peptide spectral libraries for training and evaluation purposes. We selected PredFull as our base model and performed transfer learning with these MHC-associated peptide libraries, which are much smaller than com- mon tryptic spectral libraries. The result showed that the fine-tuned model outperformed the original model significantly when predicting MHC-associated peptides.
Description
Keywords
Transfer Learning, MHC, Mass Spectra Prediction, Mass spectrometry