Literature DB >> 33350160

Modeling Starch Digestograms: Computational Characteristics of Kinetic Models for in vitro Starch Digestion in Food Research.

Giang T Nguyen1, Peter A Sopade2,3.   

Abstract

Starch digestion is mostly investigated with in vitro techniques, and time-course measurements are common. These yield digestograms that are modeled by theoretical, semitheoretical, and empirical kinetic equations, many of which are reviewed here. The Duggleby model has Michaelis-Menten functions, and its dependent variable is on both sides of the equation with no apparent parameter for maximum digestible starch (D∞ ). The Gaouar and Peleg models are equivalent. They predict both the initial digestible starch (D0 ) and D∞ , and an average digestion rate, but they can reveal "biratial" digestions. The first-order kinetic model exhibits diverse predictabilities and, when linearized, D∞ is sometimes equated to 100 g/100 g dry starch (100%), it yields an average rate of digestion and can predict negative D0 . The log of slope (LOS) model is unique in revealing the rapid-to-slow digestion rate phenomenon, but without guidelines to identify such. The LOS model does not sometimes use all the digestogram data, can predict D∞ greater than 100%, and returns zero digestion rate for some digestograms. However, some starchy materials exhibit a slow-to-rapid digestion rate phenomenon, as demonstrated with an example. The modified first-order kinetic model uses all the digestogram data with practical constraints (D0  ≥ 0 g/100 g dry starch; D∞  ≤ 100 g/100 g dry starch), describes all digestograms, and yields an average digestion rate, but it can also be used for "biratial" digestions. In addition, the logistic and Weibull models are discussed. Using some published data, the computational characteristics of these commonly used models are presented with objective parameters to guide choices.
© 2018 Institute of Food Technologists®.

Entities:  

Keywords:  first-order kinetic; log of slope model; modified first-order kinetic model; predictability parameters; starch digestion models

Year:  2018        PMID: 33350160     DOI: 10.1111/1541-4337.12384

Source DB:  PubMed          Journal:  Compr Rev Food Sci Food Saf        ISSN: 1541-4337            Impact factor:   12.811


  3 in total

1.  The Functional and Application Possibilities of Starch/Chitosan Polymer Composites Modified by Graphene Oxide.

Authors:  Magdalena Krystyjan; Gohar Khachatryan; Karen Khachatryan; Anna Konieczna-Molenda; Anna Grzesiakowska; Marta Kuchta-Gładysz; Agnieszka Kawecka; Wiktoria Grzebieniarz; Nikola Nowak
Journal:  Int J Mol Sci       Date:  2022-05-25       Impact factor: 6.208

Review 2.  Enzyme kinetic approach for mechanistic insight and predictions of in vivo starch digestibility and the glycaemic index of foods.

Authors:  Peter J Butterworth; Balázs H Bajka; Cathrina H Edwards; Frederick J Warren; Peter R Ellis
Journal:  Trends Food Sci Technol       Date:  2022-02       Impact factor: 12.563

Review 3.  How Does Starch Structure Impact Amylolysis? Review of Current Strategies for Starch Digestibility Study.

Authors:  Yuzi Wang; Jean-Philippe Ral; Luc Saulnier; Kamal Kansou
Journal:  Foods       Date:  2022-04-24
  3 in total

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