Machine learning for the diagnosis of early stage diabetes using
temporal glucose profiles
- URL: http://arxiv.org/abs/2005.08701v1
- Date: Mon, 18 May 2020 13:31:12 GMT
- Title: Machine learning for the diagnosis of early stage diabetes using
temporal glucose profiles
- Authors: Woo Seok Lee, Junghyo Jo, and Taegeun Song
- Abstract summary: Diabetes is a chronic disease that has a long latent period that complicates detection of the disease at an early stage.
We propose to use machine learning to detect the subtle change in the temporal pattern of glucose concentration.
Multi-layered perceptrons, convolutional neural networks, and recurrent neural networks all identified the degree of insulin resistance with high accuracy above $85%$.
- Score: 0.20072624123275526
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Machine learning shows remarkable success for recognizing patterns in data.
Here we apply the machine learning (ML) for the diagnosis of early stage
diabetes, which is known as a challenging task in medicine. Blood glucose
levels are tightly regulated by two counter-regulatory hormones, insulin and
glucagon, and the failure of the glucose homeostasis leads to the common
metabolic disease, diabetes mellitus. It is a chronic disease that has a long
latent period the complicates detection of the disease at an early stage. The
vast majority of diabetics result from that diminished effectiveness of insulin
action. The insulin resistance must modify the temporal profile of blood
glucose. Thus we propose to use ML to detect the subtle change in the temporal
pattern of glucose concentration. Time series data of blood glucose with
sufficient resolution is currently unavailable, so we confirm the proposal
using synthetic data of glucose profiles produced by a biophysical model that
considers the glucose regulation and hormone action. Multi-layered perceptrons,
convolutional neural networks, and recurrent neural networks all identified the
degree of insulin resistance with high accuracy above $85\%$.
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