Publication: Time Series Prediction of Medical Records Incorporating Stationary Personal Details
DOI
Type:
Thesis
Date
2021
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Abstract
Improved blood glucose monitoring techniques have emerged over the last century. Adequate
glycemic control and minimal glycemic variability necessitate a perfect, accurate, and
dependable glucose monitoring system. [2]. There is still research being done on blood
glucose monitoring systems in order to find the best one.
According to the research proposal, the goal is to model and predict multiple blood glucose
time-series from different users efficiently from limited training data in order to control and
model their blood glucose levels.
Individuals must anticipate blood glucose levels in order to take preventive measures against
health risks in good time. There are high quality highlights and plan expectation models for
the past endeavors, which lead to low exactness because of incapable component portrayal
and limited preparing data for each individual. According to the findings of this study, the
best way to predict blood glucose levels is to use a multi-time-arrangement profound LSTM
model (MT-LSTM). It uses an individual learning layer for customized forecast and naturally
learns highlight portrayals and transient conditions of blood glucose elements by sharing
information among different clients. MT-LSTM outperformed traditional predictive relapse
models in assessments of 100 clients.
