CELA-MFP: a contrast-enhanced and label-adaptive framework for multi-functional therapeutic peptides prediction.
Yitian FangMingshuang LuoZhixiang RenLe-Yi WeiDong-Qing WeiPublished in: Briefings in bioinformatics (2024)
Functional peptides play crucial roles in various biological processes and hold significant potential in many fields such as drug discovery and biotechnology. Accurately predicting the functions of peptides is essential for understanding their diverse effects and designing peptide-based therapeutics. Here, we propose CELA-MFP, a deep learning framework that incorporates feature Contrastive Enhancement and Label Adaptation for predicting Multi-Functional therapeutic Peptides. CELA-MFP utilizes a protein language model (pLM) to extract features from peptide sequences, which are then fed into a Transformer decoder for function prediction, effectively modeling correlations between different functions. To enhance the representation of each peptide sequence, contrastive learning is employed during training. Experimental results demonstrate that CELA-MFP outperforms state-of-the-art methods on most evaluation metrics for two widely used datasets, MFBP and MFTP. The interpretability of CELA-MFP is demonstrated by visualizing attention patterns in pLM and Transformer decoder. Finally, a user-friendly online server for predicting multi-functional peptides is established as the implementation of the proposed CELA-MFP and can be freely accessed at http://dreamai.cmii.online/CELA-MFP.
Keyphrases
- amino acid
- deep learning
- contrast enhanced
- drug discovery
- magnetic resonance imaging
- computed tomography
- magnetic resonance
- social media
- primary care
- machine learning
- healthcare
- diffusion weighted
- health information
- autism spectrum disorder
- oxidative stress
- small molecule
- artificial intelligence
- rna seq
- climate change
- single cell
- single molecule
- convolutional neural network
- low cost