Chellamani Narmatha, Albelwi Saleh Ali, Shanmuganathan Manimurugan, Amirthalingam Palanisamy, Paul Anand
Faculty of Computers and Information Technology, University of Tabuk, Tabuk 71491, Saudi Arabia.
Department of Pharmacy Practice, Faculty of Pharmacy, University of Tabuk, Tabuk 71491, Saudi Arabia.
Biosensors (Basel). 2025 Apr 16;15(4):255. doi: 10.3390/bios15040255.
Diabetes is a growing global health concern, affecting millions and leading to severe complications if not properly managed. The primary challenge in diabetes management is maintaining blood glucose levels (BGLs) within a safe range to prevent complications such as renal failure, cardiovascular disease, and neuropathy. Traditional methods, such as finger-prick testing, often result in low patient adherence due to discomfort, invasiveness, and inconvenience. Consequently, there is an increasing need for non-invasive techniques that provide accurate BGL measurements. Photoplethysmography (PPG), a photosensitive method that detects blood volume variations, has shown promise for non-invasive glucose monitoring. Deep neural networks (DNNs) applied to PPG signals can predict BGLs with high accuracy. However, training DNN models requires large and diverse datasets, which are typically distributed across multiple healthcare institutions. Privacy concerns and regulatory restrictions further limit data sharing, making conventional centralized machine learning (ML) approaches less effective. To address these challenges, this study proposes a federated learning (FL)-based solution that enables multiple healthcare organizations to collaboratively train a global model without sharing raw patient data, thereby enhancing model performance while ensuring data privacy and security. In the data preprocessing stage, continuous wavelet transform (CWT) is applied to smooth PPG signals and remove baseline drift. Adaptive cycle-based segmentation (ACBS) is then used for signal segmentation, followed by particle swarm optimization (PSO) for feature selection, optimizing classification accuracy. The proposed system was evaluated on diverse datasets, including VitalDB and MUST, under various conditions with data collected during surgery and anesthesia. The model achieved a root mean square error (RMSE) of 19.1 mg/dL, demonstrating superior predictive accuracy. Clarke error grid analysis (CEGA) confirmed the model's clinical reliability, with 99.31% of predictions falling within clinically acceptable limits. The FL-based approach outperformed conventional deep learning models, making it a promising method for non-invasive, privacy-preserving glucose monitoring.
糖尿病是一个日益严重的全球健康问题,影响着数百万人,如果管理不当会导致严重并发症。糖尿病管理的主要挑战是将血糖水平(BGLs)维持在安全范围内,以预防诸如肾衰竭、心血管疾病和神经病变等并发症。传统方法,如指尖采血检测,由于不适、有创性和不便等原因,常常导致患者依从性较低。因此,对能够提供准确BGL测量的非侵入性技术的需求日益增加。光电容积脉搏波描记法(PPG),一种检测血容量变化的光敏方法,已显示出用于非侵入性血糖监测的前景。应用于PPG信号的深度神经网络(DNN)可以高精度预测BGLs。然而,训练DNN模型需要大量且多样的数据集,这些数据集通常分布在多个医疗机构。隐私问题和监管限制进一步限制了数据共享,使得传统的集中式机器学习(ML)方法效果较差。为应对这些挑战,本研究提出了一种基于联邦学习(FL)的解决方案,使多个医疗机构能够在不共享原始患者数据的情况下协作训练一个全局模型,从而在确保数据隐私和安全的同时提高模型性能。在数据预处理阶段,应用连续小波变换(CWT)来平滑PPG信号并消除基线漂移。然后使用基于自适应周期的分割(ACBS)进行信号分割,接着使用粒子群优化(PSO)进行特征选择,以优化分类准确率。所提出的系统在包括VitalDB和MUST等不同数据集上进行了评估,评估条件多样,数据来自手术和麻醉期间收集的数据。该模型的均方根误差(RMSE)为19.1mg/dL,显示出卓越的预测准确性。克拉克误差网格分析(CEGA)证实了该模型的临床可靠性,99.31%的预测落在临床可接受范围内。基于FL的方法优于传统深度学习模型,使其成为一种用于非侵入性、保护隐私的血糖监测的有前景的方法。