Biological Activities of Peptides Obtained by Pepsin Hydrolysis of Fishery Products
Process Biochemistry(2022)SCI 3区
Tecnol Nacl Mexico | Univ Alicante | ICP CSIC
Abstract
The fishing industry generates tons of waste of great intrinsic value due to its high content of biomolecules such as proteins. The processing of proteins can result in products with high nutritional, pharmacological, and technological interest due to the peptides that can be derived from them. This review work compiles the investigations that have performed on the production of peptides from proteins of fish origin using pepsin as catalyst from the corresponding hydrolytic reaction, with special emphasis on the description of each of the reported biological properties, as well as on some uses that have been explored for these peptides. This work may be useful to promote new research involving the use of pepsin in the production of bioactive peptides from fishery products, as well as for the development of mechanisms that allow their use in different industrial processes.
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Key words
Proteolysis,Biomass recovery,Bioactive peptides,Fish proteins
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