Enzymes are important proteins that catalyze chemical reactions. In recent years, machine learning methods have emerged to predict enzyme function from sequence; however, there are no standardized benchmarks to evaluate these methods. We introduce CARE, a benchmark and dataset suite for the Classification And Retrieval of Enzymes (CARE). CARE centers on two tasks: (1) classification of a protein sequence by its enzyme commission (EC) number and (2) retrieval of an EC number given a chemical reaction. For each task, we design train-test splits to evaluate different kinds of out-of-distribution generalization that are relevant to real use cases. For the classification task, we provide baselines for state-of-the-art methods. Because the retrieval task has not been previously formalized, we propose a method called Contrastive Reaction-EnzymE Pretraining (CREEP) as one of the first baselines for this task and compare it to the recent method, CLIPZyme. CARE is available at https://github.com/jsunn-y/CARE/.
CARE: a Benchmark Suite for the Classification and Retrieval of Enzymes
CARE is a benchmark and dataset suite for enzyme function prediction from sequence, evaluating classification and retrieval tasks with a focus on out-of-distribution generalization.
- Year
- 2024
- Venue
- arXiv 2024
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- 7
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- arxiv.org/abs/2406.15669v3ARXIV-DEFAULT
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