2024
DOI: 10.1101/2024.04.28.591577
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Prediction of anti-freezing proteins from their evolutionary profile

Nishant Kumar,
Shubham Choudhury,
Nisha Bajiya
et al.

Abstract: Prediction of antifreeze proteins (AFPs) holds significant importance due to their diverse applications in healthcare. An inherent limitation of current AFP prediction methods is their reliance on unreviewed proteins for evaluation. This study evaluates proposed and existing methods on an independent dataset containing 81 AFPs and 73 non-AFPs obtained from Uniport, which have been already reviewed by experts. Initially, we constructed machine learning models for AFP prediction using selected composition-based … Show more

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