| Literature DB >> 34855377 |
Gazal Kalyan1, Vivek Junghare1, Mohammad Farhan Khan2, Shivam Pal1, Sourya Bhattacharya1, Snigdha Guha3, Kaustav Majumder3, Sohom Chakrabarty2, Saugata Hazra1,4.
Abstract
Angiotensin converting enzyme-I (ACE-I) is a key therapeutic target of the renin-angiotensin-aldosterone system (RAAS), the central pathway of blood pressure regulation. Food-derived peptides with ACE-I inhibitory activities are receiving significant research attention. However, identification of ACE-I inhibitory peptides from different food proteins is a labor-intensive, lengthy, and expensive process. For successful identification of potential ACE-I inhibitory peptides from food sources, a machine learning and structural bioinformatics-based web server has been developed and reported in this study. The web server can take input in the FASTA format or through UniProt ID to perform the in silico gastrointestinal digestion and then screen the resulting peptides for ACE-I inhibitory activity. This unique platform provides elaborated structural and functional features of the active peptides and their interaction with ACE-I. Thus, it can potentially enhance the efficacy and reduce the time and cost in identifying and characterizing novel ACE-I inhibitory peptides from food proteins. URL: http://hazralab.iitr.ac.in/ahpp/index.php.Entities:
Keywords: ACE-I inhibition; angiotensin-converting enzyme (ACE); anti-hypertensive activity; bioactive peptides; in silico proteolysis; machine learning
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Year: 2021 PMID: 34855377 DOI: 10.1021/acs.jafc.1c04555
Source DB: PubMed Journal: J Agric Food Chem ISSN: 0021-8561 Impact factor: 5.279