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Facilitated identification of bioactive peptide fractions and optimization of enzymatic protein hydrolysis using size-exclusion chromatography fingerprints: Combining interval PLS and response surface modeling. | LitMetric

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Article Abstract

Protein hydrolysates made from food industry byproducts have the potential to be used as nutraceuticals that can alleviate high blood pressure, by inhibiting angiotensin converting enzyme I (ACE-I). Discovery and optimization of bioactive peptide fractions, in typically complex protein hydrolysates, is a laborious and time-consuming task. In the present study, a library of 108 hydrolysates were produced from mechanical deboning chicken residue, using three different temperatures, four protease concentrations and nine hydrolysis times, in a full factorial manner. Employed design of experiment enabled a thorough screening of the experimental space and resulted in hydrolysates with substantial variation in bioactivity. Hydrolysates were characterized by size-exclusion chromatography and by in vitro ACE-I inhibition assay. To identify a bioactive fraction, interval-partial least square (iPLS) regression based on a chromatographic fingerprint of a crude samples was used, which eliminated the need for time-consuming bioassay-guided fractionation. After the bioactive fraction was identified, the response surface modeling (RSM) was employed to develop a predictive model for the optimization of hydrolysate properties by adjusting the production parameters. Here we are presenting a novel methodology combining: (1) SEC fingerprint-based iPLS for facilitated identification of bioactive peptide fractions, and (2) RSM using the identified SEC fractions as a response for a robust optimization of the hydrolysis process. A combination of iPLS and RSM utilizing chromatographic fingerprints was demonstrated as a promising analytical approach that can facilitate discovery of bioactive peptides in complex hydrolysates and further enable optimization of production conditions.

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http://dx.doi.org/10.1016/j.talanta.2025.127844DOI Listing

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