Suppr超能文献

一种用于预测组织间液葡萄糖以实现有效2型糖尿病管理的多模态深度学习架构。

A multimodal deep learning architecture for predicting interstitial glucose for effective type 2 diabetes management.

作者信息

Haleem Muhammad Salman, Katsarou Daphne, Georga Eleni I, Dafoulas George E, Bargiota Alexandra, Lopez-Perez Laura, Rujas Miguel, Fico Giuseppe, Pecchia Leandro, Fotiadis Dimitrios

机构信息

School of Engineering, University of Warwick, Coventry, CV4 7AL, UK.

School of Electronic Engineering and Computer Science, Queen Mary University of London, London, E1 4NS, UK.

出版信息

Sci Rep. 2025 Jul 29;15(1):27625. doi: 10.1038/s41598-025-07272-3.

Abstract

The accurate prediction of blood glucose is critical for the effective management of diabetes. Modern continuous glucose monitoring (CGM) technology enables real-time acquisition of interstitial glucose concentrations, which can be calibrated against blood glucose measurements. However, a key challenge in the effective management of type 2 diabetes lies in forecasting critical events driven by glucose variability. While recent advances in deep learning enable modeling of temporal patterns in glucose fluctuations, most of the existing methods rely on unimodal inputs and fail to account for individual physiological differences that influence interstitial glucose dynamics. These limitations highlight the need for multimodal approaches that integrate additional personalized physiological information. One of the primary reasons for multimodal approaches not being widely studied in this field is the bottleneck associated with the availability of subjects' health records. In this paper, we propose a multimodal approach trained on sequences of CGM values and enriched with physiological context derived from health records of 40 individuals with type 2 diabetes. The CGM time series were processed using a stacked Convolutional Neural Network (CNN) and a Bidirectional Long Short-Term Memory (BiLSTM) network followed by an attention mechanism. The BiLSTM learned long-term temporal dependencies, while the CNN captured local sequential features. Physiological heterogeneity was incorporated through a separate pipeline of neural networks that processed baseline health records and was later fused with the CGM modeling stream. To validate our model, we utilized CGM values of 30 min sampled with a moving window of 5 min to predict the CGM values with a prediction horizon of (a) 15 min, (b) 30 min, and (c) 60 min. We achieved the multimodal architecture prediction results with Mean Absolute Point Error (MAPE) between 14 and 24 mg/dL, 19-22 mg/dL, 25-26 mg/dL in case of Menarini sensor and 6-11 mg/dL, 9-14 mg/dL, 12-18 mg/dL in case of Abbot sensor for 15, 30 and 60 min prediction horizon respectively. The results suggested that the proposed multimodal model achieved higher prediction accuracy compared to unimodal approaches; with upto 96.7% prediction accuracy; supporting its potential as a generalizable solution for interstitial glucose prediction and personalized management in the type 2 diabetes population.

摘要

血糖的准确预测对于糖尿病的有效管理至关重要。现代连续血糖监测(CGM)技术能够实时获取间质葡萄糖浓度,可根据血糖测量值进行校准。然而,2型糖尿病有效管理中的一个关键挑战在于预测由葡萄糖变异性驱动的关键事件。虽然深度学习的最新进展能够对葡萄糖波动的时间模式进行建模,但大多数现有方法依赖单峰输入,未能考虑影响间质葡萄糖动态的个体生理差异。这些局限性凸显了整合额外个性化生理信息的多模态方法的必要性。多模态方法在该领域未得到广泛研究的主要原因之一是与受试者健康记录可用性相关的瓶颈。在本文中,我们提出了一种多模态方法,该方法基于CGM值序列进行训练,并丰富了来自40名2型糖尿病患者健康记录的生理背景信息。CGM时间序列使用堆叠卷积神经网络(CNN)和双向长短期记忆(BiLSTM)网络进行处理,随后采用注意力机制。BiLSTM学习长期时间依赖性,而CNN捕捉局部序列特征。生理异质性通过处理基线健康记录的单独神经网络管道纳入,随后与CGM建模流融合。为了验证我们的模型,我们利用以5分钟移动窗口采样的30分钟CGM值来预测预测期为(a)15分钟、(b)30分钟和(c)60分钟的CGM值。对于Menarini传感器,在15、30和60分钟预测期的情况下,我们通过平均绝对点误差(MAPE)分别在14至24mg/dL、19 - 22mg/dL、25 - 26mg/dL之间实现了多模态架构预测结果;对于Abbott传感器,在相应预测期的情况下,MAPE分别在6至11mg/dL、9 - 14mg/dL、12 - 18mg/dL之间。结果表明,与单模态方法相比,所提出的多模态模型实现了更高的预测准确性;预测准确率高达96.7%;支持其作为2型糖尿病人群体中间质葡萄糖预测和个性化管理的通用解决方案的潜力。

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验