Structure‐aware deep learning model for peptide toxicity prediction

Author:

Ebrahimikondori Hossein12ORCID,Sutherland Darcy134,Yanai Anat13,Richter Amelia13,Salehi Ali13,Li Chenkai12ORCID,Coombe Lauren1,Kotkoff Monica1,Warren René L.1,Birol Inanc1345

Affiliation:

1. Canada's Michael Smith Genome Sciences Centre BC Cancer Agency Vancouver British Columbia Canada

2. Bioinformatics Graduate Program University of British Columbia Vancouver British Columbia Canada

3. Public Health Laboratory British Columbia Centre for Disease Control Vancouver British Columbia Canada

4. Department of Pathology and Laboratory Medicine University of British Columbia Vancouver British Columbia Canada

5. Department of Medical Genetics University of British Columbia Vancouver British Columbia Canada

Abstract

AbstractAntimicrobial resistance is a critical public health concern, necessitating the exploration of alternative treatments. While antimicrobial peptides (AMPs) show promise, assessing their toxicity using traditional wet lab methods is both time‐consuming and costly. We introduce tAMPer, a novel multi‐modal deep learning model designed to predict peptide toxicity by integrating the underlying amino acid sequence composition and the three‐dimensional structure of peptides. tAMPer adopts a graph‐based representation for peptides, encoding ColabFold‐predicted structures, where nodes represent amino acids and edges represent spatial interactions. Structural features are extracted using graph neural networks, and recurrent neural networks capture sequential dependencies. tAMPer's performance was assessed on a publicly available protein toxicity benchmark and an AMP hemolysis data we generated. On the latter, tAMPer achieves an F1‐score of 68.7%, outperforming the second‐best method by 23.4%. On the protein benchmark, tAMPer exhibited an improvement of over 3.0% in the F1‐score compared to current state‐of‐the‐art methods. We anticipate tAMPer to accelerate AMP discovery and development by reducing the reliance on laborious toxicity screening experiments.

Funder

Genome Canada

Genome British Columbia

Investment Agriculture Foundation

Publisher

Wiley

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