» Articles » PMID: 27070641

Algorithms to Improve the Prediction of Postprandial Insulinaemia in Response to Common Foods

Overview
Journal Nutrients
Date 2016 Apr 13
PMID 27070641
Citations 19
Authors
Affiliations
Soon will be listed here.
Abstract

Dietary patterns that induce excessive insulin secretion may contribute to worsening insulin resistance and beta-cell dysfunction. Our aim was to generate mathematical algorithms to improve the prediction of postprandial glycaemia and insulinaemia for foods of known nutrient composition, glycemic index (GI) and glycemic load (GL). We used an expanded database of food insulin index (FII) values generated by testing 1000 kJ portions of 147 common foods relative to a reference food in lean, young, healthy volunteers. Simple and multiple linear regression analyses were applied to validate previously generated equations for predicting insulinaemia, and develop improved predictive models. Large differences in insulinaemic responses within and between food groups were evident. GL, GI and available carbohydrate content were the strongest predictors of the FII, explaining 55%, 51% and 47% of variation respectively. Fat, protein and sugar were significant but relatively weak predictors, accounting for only 31%, 7% and 13% of the variation respectively. Nutritional composition alone explained only 50% of variability. The best algorithm included a measure of glycemic response, sugar and protein content and explained 78% of variation. Knowledge of the GI or glycaemic response to 1000 kJ portions together with nutrient composition therefore provides a good approximation for ranking of foods according to their "insulin demand".

Citing Articles

Dietary insulin index and dietary insulin load in relation to non-alcoholic fatty liver disease: a cross-sectional study.

Motamedi A, Alizadeh S, Osati S, Raeisi T, Homayounfar R Public Health Nutr. 2024; 27(1):e182.

PMID: 39324343 PMC: 11504692. DOI: 10.1017/S1368980024001149.


Are dietary factors associated with cardiometabolic risk factors in patients with non-alcoholic fatty liver disease?.

Topal G, Sevim S, Gumus D, Balaban H, Karcaaltincaba M, Kizil M PeerJ. 2024; 12:e17810.

PMID: 39099651 PMC: 11296304. DOI: 10.7717/peerj.17810.


The High-Dietary Insulin Load Score Is Associated With Elevated Level of Fasting Blood Sugar in Iranian Adult Men: Results From Fasa PERSIAN Cohort Study.

Rajaie S, Khayyatzadeh S, Faghih S, Mansoori Y, Naghizadeh M, Farjam M Biomed Res Int. 2024; 2024:6991072.

PMID: 39045408 PMC: 11265942. DOI: 10.1155/2024/6991072.


Association between dietary insulin index and postmenopausal osteoporosis in Iranian women: a case-control study.

Solgi S, Zayeri F, Abbasi B BMC Womens Health. 2024; 24(1):401.

PMID: 39004741 PMC: 11247899. DOI: 10.1186/s12905-024-03248-z.


The Application of the Food Insulin Index in the Prevention and Management of Insulin Resistance and Diabetes: A Scoping Review.

Strydom H, Delport E, Muchiri J, White Z Nutrients. 2024; 16(5).

PMID: 38474713 PMC: 10934417. DOI: 10.3390/nu16050584.


References
1.
Torres N, Noriega L, Tovar A . Nutrient modulation of insulin secretion. Vitam Horm. 2009; 80:217-44. DOI: 10.1016/S0083-6729(08)00609-2. View

2.
Krezowski P, Nuttall F, Gannon M, Bartosh N . The effect of protein ingestion on the metabolic response to oral glucose in normal individuals. Am J Clin Nutr. 1986; 44(6):847-56. DOI: 10.1093/ajcn/44.6.847. View

3.
Bao J, Gilbertson H, Gray R, Munns D, Howard G, Petocz P . Improving the estimation of mealtime insulin dose in adults with type 1 diabetes: the Normal Insulin Demand for Dose Adjustment (NIDDA) study. Diabetes Care. 2011; 34(10):2146-51. PMC: 3177729. DOI: 10.2337/dc11-0567. View

4.
Gatti E, Noe D, Pazzucconi F, Gianfranceschi G, Porrini M, Testolin G . Differential effect of unsaturated oils and butter on blood glucose and insulin response to carbohydrate in normal volunteers. Eur J Clin Nutr. 1992; 46(3):161-6. View

5.
Wolpert H, Atakov-Castillo A, Smith S, Steil G . Dietary fat acutely increases glucose concentrations and insulin requirements in patients with type 1 diabetes: implications for carbohydrate-based bolus dose calculation and intensive diabetes management. Diabetes Care. 2012; 36(4):810-6. PMC: 3609492. DOI: 10.2337/dc12-0092. View