Beyond Glucose-Only Assessment: Advancing Nocturnal Hypoglycemia Prediction in Children with Type 1 Diabetes
- URL: http://arxiv.org/abs/2504.09299v1
- Date: Sat, 12 Apr 2025 18:07:40 GMT
- Title: Beyond Glucose-Only Assessment: Advancing Nocturnal Hypoglycemia Prediction in Children with Type 1 Diabetes
- Authors: Marco Voegeli, Sonia Laguna, Heike Leutheuser, Marc Pfister, Marie-Anne Burckhardt, Julia E Vogt,
- Abstract summary: The dead-in-bed syndrome describes the sudden and unexplained death of young individuals with Type 1 Diabetes (T1D) without prior long-term complications.<n>One leading hypothesis attributes this phenomenon to nocturnal hypoglycemia (NH), a dangerous drop in blood glucose during sleep.<n>This study aims to improve NH prediction in children with T1D by leveraging physiological data and machine learning (ML) techniques.
- Score: 8.198743716856807
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The dead-in-bed syndrome describes the sudden and unexplained death of young individuals with Type 1 Diabetes (T1D) without prior long-term complications. One leading hypothesis attributes this phenomenon to nocturnal hypoglycemia (NH), a dangerous drop in blood glucose during sleep. This study aims to improve NH prediction in children with T1D by leveraging physiological data and machine learning (ML) techniques. We analyze an in-house dataset collected from 16 children with T1D, integrating physiological metrics from wearable sensors. We explore predictive performance through feature engineering, model selection, architectures, and oversampling. To address data limitations, we apply transfer learning from a publicly available adult dataset. Our results achieve an AUROC of 0.75 +- 0.21 on the in-house dataset, further improving to 0.78 +- 0.05 with transfer learning. This research moves beyond glucose-only predictions by incorporating physiological parameters, showcasing the potential of ML to enhance NH detection and improve clinical decision-making for pediatric diabetes management.
Related papers
- Let Curves Speak: A Continuous Glucose Monitor based Large Sensor Foundation Model for Diabetes Management [3.8195320624847833]
Integrating AI with continuous glucose monitoring holds promise for near-future glucose prediction.
CGM-LSM is pretrained on 15.96 million glucose records from 592 diabetes patients for near-future glucose prediction.
LSM achieved exceptional performance, with an rMSE of 29.81 mg/dL for type 1 diabetes patients and 23.49 mg/dL for type 2 diabetes patients in a two-hour prediction horizon.
arXiv Detail & Related papers (2024-12-12T21:35:13Z) - From Glucose Patterns to Health Outcomes: A Generalizable Foundation Model for Continuous Glucose Monitor Data Analysis [47.23780364438969]
We present GluFormer, a generative foundation model for CGM data that learns nuanced glycemic patterns and translates them into predictive representations of metabolic health.<n>GluFormer generalizes to 19 external cohorts spanning different ethnicities and ages, 5 countries, 8 CGM devices, and diverse pathophysiological states.<n>In a longitudinal study of 580 adults with CGM data and 12-year follow-up, GluFormer identifies individuals at elevated risk of developing diabetes more effectively than blood HbA1C%.
arXiv Detail & Related papers (2024-08-20T13:19:06Z) - 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) - Supervised Learning Models for Early Detection of Albuminuria Risk in
Type-2 Diabetes Mellitus Patients [0.0]
This study aimed to develop a supervised learning model to predict the risk of developing albuminuria in T2DM patients.
It consisted of 10 attributes as features and 1 attribute as the target (albuminuria)
It achieved accuracy and f1-score values as high as 0.74 and 0.75, respectively, making it suitable for screening purposes in predicting albuminuria in T2DM.
arXiv Detail & Related papers (2023-09-28T08:41:12Z) - Machine Learning-Based Diabetes Detection Using Photoplethysmography
Signal Features [0.0]
Diabetes is a prevalent chronic condition that compromises the health of millions of people worldwide.
Here, we present an alternative method to overcome shortcomings based on non-invasive optical photoplethysmography for detecting diabetes.
We classify non-Diabetic and Diabetic patients using the PPG signal and algorithms for training Logistic Regression and eXtreme Gradient Boosting.
Our findings are within the same range reported in the literature, indicating that machine learning methods are promising for developing remote, non-invasive, and continuous measurement devices for detecting and preventing diabetes.
arXiv Detail & Related papers (2023-08-02T14:10:03Z) - 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) - Learning to diagnose cirrhosis from radiological and histological labels
with joint self and weakly-supervised pretraining strategies [62.840338941861134]
We propose to leverage transfer learning from large datasets annotated by radiologists, to predict the histological score available on a small annex dataset.
We compare different pretraining methods, namely weakly-supervised and self-supervised ones, to improve the prediction of the cirrhosis.
This method outperforms the baseline classification of the METAVIR score, reaching an AUC of 0.84 and a balanced accuracy of 0.75.
arXiv Detail & Related papers (2023-02-16T17:06:23Z) - Building Brains: Subvolume Recombination for Data Augmentation in Large
Vessel Occlusion Detection [56.67577446132946]
A large training data set is required for a standard deep learning-based model to learn this strategy from data.
We propose an augmentation method that generates artificial training samples by recombining vessel tree segmentations of the hemispheres from different patients.
In line with the augmentation scheme, we use a 3D-DenseNet fed with task-specific input, fostering a side-by-side comparison between the hemispheres.
arXiv Detail & Related papers (2022-05-05T10:31:57Z) - GLYFE: Review and Benchmark of Personalized Glucose Predictive Models in
Type-1 Diabetes [4.17510581764131]
GLYFE is a benchmark of machine-learning-based glucose-predictive models.
The results of nine different models coming from the glucose-prediction literature are presented.
arXiv Detail & Related papers (2020-06-29T11:34:41Z) - 1-D Convlutional Neural Networks for the Analysis of Pupil Size
Variations in Scotopic Conditions [79.71065005161566]
1-D convolutional neural network models are trained for classification of short-range sequences.
Model provides prediction with high average accuracy on a hold out test set.
arXiv Detail & Related papers (2020-02-06T17:25:37Z) - Short Term Blood Glucose Prediction based on Continuous Glucose
Monitoring Data [53.01543207478818]
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.
arXiv Detail & Related papers (2020-02-06T16:39:44Z)
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.