Towards a Dataset for State of the Art Protein Toxin Classification
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OA: closed
Abstract
In-silico toxin classification assists in industry and academic endeavors and is critical for biosecurity. For instance, proteins and peptides hold promise as therapeutics for a myriad of conditions, and screening these biomolecules for toxicity is a necessary component of synthesis. Additionally, with the expanding scope of biological design tools, improved toxin classification is essential for mitigating dual-use risks. Here, a general toxin classifier that is capable of addressing these demands is developed. Applications for in-silico toxin classification are discussed, conventional and contemporary methods are reviewed, and criteria defining current needs for general toxin classification are introduced. As contemporary methods and their datasets only partially satisfy these criteria, a comprehensive approach to toxin classification is proposed that consists of training and validating a single sequence classifier, BioLMTox, on an improved dataset that unifies current datasets to align with the criteria. The resulting benchmark dataset eliminates ambiguously labeled sequences and allows for direct comparison against nine previous methods. Using this comprehensive dataset, a simple fine-tuning approach with ESM-2 was employed to train BioLMTox, resulting in accuracy and recall validation metrics of 0.964 and 0.984, respectively. This LLM-based model does not use traditional alignment methods and is capable of identifying toxins of various sequence lengths from multiple domains of life in sub-second time frames.
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- europepmc
- last seen: 2026-05-20T01:45:00.602351+00:00