2022
DOI: 10.1101/2022.11.12.516270
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NRPreTo: A Machine Learning Based Nuclear Receptor and Subfamily Prediction Tool

Abstract: The Nuclear Receptor (NR) superfamily includes phylogenetically related ligand-activated proteins, which play a key role in various cellular activities. NR proteins are subdivided into seven subfamilies based on their function, mechanism, and nature of the interacting ligand. Developing robust tools to identify NR could give insights into their functional relationships and involvement in disease pathways. Existing NR prediction tools only use a few types of sequence-based features and are tested on relatively … Show more

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