Short Term Blood Glucose Prediction based on Continuous Glucose
Monitoring Data
- URL: http://arxiv.org/abs/2002.02805v2
- Date: Wed, 15 Jul 2020 20:18:33 GMT
- Title: Short Term Blood Glucose Prediction based on Continuous Glucose
Monitoring Data
- Authors: Ali Mohebbi, Alexander R. Johansen, Nicklas Hansen, Peter E.
Christensen, Jens M. Tarp, Morten L. Jensen, Henrik Bengtsson and Morten
M{\o}rup
- Abstract summary: This study explores the use of Continuous Glucose Monitoring (CGM) data as input for digital decision support tools.
We investigate how Recurrent Neural Networks (RNNs) can be used for Short Term Blood Glucose (STBG) prediction.
- Score: 53.01543207478818
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Continuous Glucose Monitoring (CGM) has enabled important opportunities for
diabetes management. This study explores the use of CGM data as input for
digital decision support tools. We investigate how Recurrent Neural Networks
(RNNs) can be used for Short Term Blood Glucose (STBG) prediction and compare
the RNNs to conventional time-series forecasting using Autoregressive
Integrated Moving Average (ARIMA). A prediction horizon up to 90 min into the
future is considered. In this context, we evaluate both population-based and
patient-specific RNNs and contrast them to patient-specific ARIMA models and a
simple baseline predicting future observations as the last observed. We find
that the population-based RNN model is the best performing model across the
considered prediction horizons without the need of patient-specific data. This
demonstrates the potential of RNNs for STBG prediction in diabetes patients
towards detecting/mitigating severe events in the STBG, in particular
hypoglycemic events. However, further studies are needed in regards to the
robustness and practical use of the investigated STBG prediction models.
Related papers
- AttenGluco: Multimodal Transformer-Based Blood Glucose Forecasting on AI-READI Dataset [8.063401183752347]
Diabetes is a chronic metabolic disorder characterized by persistently high blood glucose levels (BGLs)
Recent deep learning models show promise in improving BGL prediction.
We propose AttenGluco, a multimodal Transformer-based framework for long-term blood glucose prediction.
arXiv Detail & Related papers (2025-02-14T05:07:38Z) - SurvCORN: Survival Analysis with Conditional Ordinal Ranking Neural Network [4.772480981435387]
We propose SurvCORN, a novel method utilizing conditional ordinal ranking networks to predict survival curves directly.
We also introduce SurvMAE, a metric designed to evaluate the accuracy of model predictions in estimating time-to-event outcomes.
arXiv Detail & Related papers (2024-09-30T03:01:25Z) - Deep State-Space Generative Model For Correlated Time-to-Event Predictions [54.3637600983898]
We propose a deep latent state-space generative model to capture the interactions among different types of correlated clinical events.
Our method also uncovers meaningful insights about the latent correlations among mortality and different types of organ failures.
arXiv Detail & Related papers (2024-07-28T02:42:36Z) - Using Pre-training and Interaction Modeling for ancestry-specific disease prediction in UK Biobank [69.90493129893112]
Recent genome-wide association studies (GWAS) have uncovered the genetic basis of complex traits, but show an under-representation of non-European descent individuals.
Here, we assess whether we can improve disease prediction across diverse ancestries using multiomic data.
arXiv Detail & Related papers (2024-04-26T16:39:50Z) - GARNN: An Interpretable Graph Attentive Recurrent Neural Network for
Predicting Blood Glucose Levels via Multivariate Time Series [12.618792803757714]
We propose interpretable graph attentive neural networks (GARNNs) to model multi-modal data.
GARNNs achieve the best prediction accuracy and provide high-quality temporal interpretability.
These findings underline the potential of GARNN as a robust tool for improving diabetes care.
arXiv Detail & Related papers (2024-02-26T01:18:53Z) - MedDiffusion: Boosting Health Risk Prediction via Diffusion-based Data
Augmentation [58.93221876843639]
This paper introduces a novel, end-to-end diffusion-based risk prediction model, named MedDiffusion.
It enhances risk prediction performance by creating synthetic patient data during training to enlarge sample space.
It discerns hidden relationships between patient visits using a step-wise attention mechanism, enabling the model to automatically retain the most vital information for generating high-quality data.
arXiv Detail & Related papers (2023-10-04T01:36:30Z) - Machine Learning based prediction of Glucose Levels in Type 1 Diabetes
Patients with the use of Continuous Glucose Monitoring Data [0.0]
Continuous Glucose Monitoring (CGM) devices offer detailed, non-intrusive and real time insights into a patient's blood glucose concentrations.
Leveraging advanced Machine Learning (ML) Models as methods of prediction of future glucose levels, gives rise to substantial quality of life improvements.
arXiv Detail & Related papers (2023-02-24T19:10:40Z) - Clinical Deterioration Prediction in Brazilian Hospitals Based on
Artificial Neural Networks and Tree Decision Models [56.93322937189087]
An extremely boosted neural network (XBNet) is used to predict clinical deterioration (CD)
The XGBoost model obtained the best results in predicting CD among Brazilian hospitals' data.
arXiv Detail & Related papers (2022-12-17T23:29:14Z) - SurvLatent ODE : A Neural ODE based time-to-event model with competing
risks for longitudinal data improves cancer-associated Deep Vein Thrombosis
(DVT) prediction [68.8204255655161]
We propose a generative time-to-event model, SurvLatent ODE, which parameterizes a latent representation under irregularly sampled data.
Our model then utilizes the latent representation to flexibly estimate survival times for multiple competing events without specifying shapes of event-specific hazard function.
SurvLatent ODE outperforms the current clinical standard Khorana Risk scores for stratifying DVT risk groups.
arXiv Detail & Related papers (2022-04-20T17:28:08Z) - Interpreting Deep Glucose Predictive Models for Diabetic People Using
RETAIN [4.692400531340393]
We study the RETAIN architecture for the forecasting of future glucose values for diabetic people.
Thanks to its two-level attention mechanism, the RETAIN model is interpretable while remaining as efficient as standard neural networks.
arXiv Detail & Related papers (2020-09-08T13:20:15Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.