PPG prediction methodology by analyzing a simple lunch using GH-Method: math-physical medicine
Journal: Journal of Diabetes and Endocrinology Research (Vol.2, No. 2)Publication Date: 2020-04-10
Abstract
This paper discusses both predicted and measured postprandial plasma glucose (PPG) results from a simple lunch of one small bag of Quaker oatmeal: 18 grams carbs and 0 grams of sugar using the GH-Method: math-physical medicine (MPM). He developed MPM by applying mathematics, physics, engineering modeling, and computer science (big data analytics and AI). He believes in “prediction” and has developed five models, including metabolism index, weight, fasting plasma glucose (FPG), postprandial plasma glucose (PPG), and hemoglobin A1C. All prediction models have reached to 95% to 99% accuracy. His focus is on preventive medicine, especially on diabetes control via lifestyle management.
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Last modified: 2020-11-18 17:07:58