Srinivasu Parvathaneni Naga, Ahmed Shakeel, Hassaballah Mahmoud, Almusallam Naif
Department of Teleinformatics Engineering, Federal University of Ceará, Fortaleza, 60455-970, Brazil.
Amrita School of Computing, Amrita Vishwa Vidyapeetham, Amaravati, 522503, Andhra Pradesh, India.
Heliyon. 2024 Aug 10;10(16):e36112. doi: 10.1016/j.heliyon.2024.e36112. eCollection 2024 Aug 30.
Implementing diabetes surveillance systems is paramount to mitigate the risk of incurring substantial medical expenses. Currently, blood glucose is measured by minimally invasive methods, which involve extracting a small blood sample and transmitting it to a blood glucose meter. This method is deemed discomforting for individuals who are undergoing it. The present study introduces an Explainable Artificial Intelligence (XAI) system, which aims to create an intelligible machine capable of explaining expected outcomes and decision models. To this end, we analyze abnormal glucose levels by utilizing Bi-directional Long Short-Term Memory (Bi-LSTM) and Convolutional Neural Network (CNN). In this regard, the glucose levels are acquired through the glucose oxidase (GOD) strips placed over the human body. Later, the signal data is converted to the spectrogram images, classified as low glucose, average glucose, and abnormal glucose levels. The labeled spectrogram images are then used to train the individualized monitoring model. The proposed XAI model to track real-time glucose levels uses the XAI-driven architecture in its feature processing. The model's effectiveness is evaluated by analyzing the performance of the proposed model and several evolutionary metrics used in the confusion matrix. The data revealed in the study demonstrate that the proposed model effectively identifies individuals with elevated glucose levels.
实施糖尿病监测系统对于降低产生巨额医疗费用的风险至关重要。目前,血糖是通过微创方法测量的,这涉及采集少量血样并将其传输到血糖仪。这种方法被认为让接受检测的人感到不适。本研究引入了一种可解释人工智能(XAI)系统,其旨在创建一台能够解释预期结果和决策模型的可理解机器。为此,我们利用双向长短期记忆(Bi-LSTM)和卷积神经网络(CNN)分析异常血糖水平。在这方面,血糖水平是通过放置在人体上的葡萄糖氧化酶(GOD)试纸获取的。随后,信号数据被转换为频谱图图像,分为低血糖、平均血糖和异常血糖水平。然后,标记的频谱图图像用于训练个性化监测模型。所提出的用于跟踪实时血糖水平的XAI模型在其特征处理中使用了XAI驱动的架构。通过分析所提出模型的性能以及混淆矩阵中使用的几个进化指标来评估该模型的有效性。研究中揭示的数据表明,所提出的模型能够有效识别血糖水平升高的个体。