Validating Healthy Eating Index, Glycemic Index, and Glycemic Load with Modern Diets for E-Health Era
-
Published:2023-03-03
Issue:5
Volume:15
Page:1263
-
ISSN:2072-6643
-
Container-title:Nutrients
-
language:en
-
Short-container-title:Nutrients
Author:
Chen Zhao-Feng1ORCID, Kusuma Joyce D.2, Shiao Shyang-Yun Pamela K.3ORCID
Affiliation:
1. Chung-Ho Memorial Hospital, Kaohsiung Medical University, Kaohsiung 80756, Taiwan 2. The Villages Health, The Villages, FL 32162, USA 3. Center for Biotechnology and Genomic Medicine, Medical College of Georgia, Augusta University, Augusta, GA 30912, USA
Abstract
Predictors of healthy eating parameters, including the Healthy Eating Index (HEI), Glycemic Index (GI), and Glycemic Load (GL), were examined using various modern diets (n = 131) in preparation for personalized nutrition in the e-health era. Using Nutrition Data Systems for Research computerized software and artificial intelligence machine-learning-based predictive validation analyses, we included domains of HEI, caloric source, and various diets as the potentially modifiable factors. HEI predictors included whole fruits and whole grains, and empty calories. Carbohydrates were the common predictor for both GI and GL, with total fruits and Mexican diets being additional predictors for GI. The median amount of carbohydrates to reach an acceptable GL < 20 was predicted as 33.95 g per meal (median: 3.59 meals daily) with a regression coefficient of 37.33 across all daily diets. Diets with greater carbohydrates and more meals needed to reach acceptable GL < 20 included smoothies, convenient diets, and liquids. Mexican diets were the common predictor for GI and carbohydrates per meal to reach acceptable GL < 20; with smoothies (12.04), high-school (5.75), fast-food (4.48), Korean (4.30), Chinese (3.93), and liquid diets (3.71) presenting a higher median number of meals. These findings could be used to manage diets for various populations in the precision-based e-health era.
Funder
Doctoral Research Council Grants, Azusa Pacific University Augusta University
Subject
Food Science,Nutrition and Dietetics
Reference49 articles.
1. Encouraging Behavior Changes and Preventing Cardiovascular Diseases Using the Prevent Connect Mobile Health App: Conception and Evaluation of App Quality;Agher;J. Med. Internet Res.,2022 2. Yang, Y.L., Yang, H.L., Kusuma, J.D., and Shiao, S.P.K. (2022). Validating Accuracy of an Internet-Based Application against USDA Computerized Nutrition Data System for Research on Essential Nutrients among Social-Ethnic Diets for the E-Health Era. Nutrients, 14. 3. Shiao, S.P.K., Grayson, J., Lie, A., and Yu, C.H. (2018). Predictors of the Healthy Eating Index and Glycemic Index in multi-ethnic colorectal cancer families. Nutrients, 10. 4. Shiao, S.P.K., Grayson, J., Lie, A., and Yu, C.H. (2018). Personalized nutrition—Genes, diet, and related interactive parameters as predictors of cancer in multiethnic colorectal cancer families. Nutrients, 10. 5. Shiao, S.P.K., Grayson, J., Yu, C.H., Wasek, B., and Bottiglieri, T. (2018). Gene Environment Interactions and Predictors of Colorectal Cancer in Family-Based, Multi-Ethnic Groups. J. Personal. Med., 8.
|
|