Litcius/Paper detail

Fuse feeds as one: cross-modal framework for general identification of AMPs

Wentao Zhang, Yanchao Xu, Aowen Wang, Gang Chen, Junbo Zhao

2023Briefings in Bioinformatics18 citationsDOIOpen Access PDF

Abstract

Antimicrobial peptides (AMPs) are promising candidates for the development of new antibiotics due to their broad-spectrum activity against a range of pathogens. However, identifying AMPs through a huge bunch of candidates is challenging due to their complex structures and diverse sequences. In this study, we propose SenseXAMP, a cross-modal framework that leverages semantic embeddings of and protein descriptors (PDs) of input sequences to improve the identification performance of AMPs. SenseXAMP includes a multi-input alignment module and cross-representation fusion module to explore the hidden information between the two input features and better leverage the fusion feature. To better address the AMPs identification task, we accumulate the latest annotated AMPs data to form more generous benchmark datasets. Additionally, we expand the existing AMPs identification task settings by adding an AMPs regression task to meet more specific requirements like antimicrobial activity prediction. The experimental results indicated that SenseXAMP outperformed existing state-of-the-art models on multiple AMP-related datasets including commonly used AMPs classification datasets and our proposed benchmark datasets. Furthermore, we conducted a series of experiments to demonstrate the complementary nature of traditional PDs and protein pre-training models in AMPs tasks. Our experiments reveal that SenseXAMP can effectively combine the advantages of PDs to improve the performance of protein pre-training models in AMPs tasks.

Topics & Concepts

Computer scienceLeverage (statistics)Identification (biology)Benchmark (surveying)Artificial intelligenceTask (project management)Antimicrobial peptidesMachine learningEngineeringBotanyGeodesyGeographyGeneticsBiologySystems engineeringBacteriaAntimicrobial Peptides and ActivitiesBiochemical and Structural CharacterizationMachine Learning in Bioinformatics