Kim Eunsu, Kim Youngmin
School of Electronic and Electrical engineering, Hongik University, Seoul, 04066 Korea.
Biomed Eng Lett. 2024 Jun 20;14(5):967-980. doi: 10.1007/s13534-024-00403-1. eCollection 2024 Sep.
In this paper, a comprehensive exploration is undertaken to elucidate the utilization of Spiking Neural Networks (SNNs) within the biomedical domain. The investigation delves into the experimentally validated advantages of SNNs in comparison to alternative models like LSTM, while also critically examining the inherent limitations of SNN classifiers or algorithms. SNNs exhibit distinctive advantages that render them particularly apt for targeted applications within the biomedical field. Over time, SNNs have undergone extensive scrutiny in realms such as neuromorphic processing, Brain-Computer Interfaces (BCIs), and Disease Diagnosis. Notably, SNNs demonstrate a remarkable affinity for the processing and analysis of biomedical signals, including but not limited to electroencephalogram (EEG), electromyography (EMG), and electrocardiogram (ECG) data. This paper initiates its exploration by introducing some of the biomedical applications of EMG, such as the classification of hand gestures and motion decoding. Subsequently, the focus extends to the applications of SNNs in the analysis of EEG and ECG signals. Moreover, the paper delves into the diverse applications of SNNs in specific anatomical regions, such as the eyes and noses. In the final sections, the paper culminates with a comprehensive analysis of the field, offering insights into the advantages, disadvantages, challenges, and opportunities introduced by various SNN models in the realm of healthcare and biomedical domains. This holistic examination provides a nuanced perspective on the potential transformative impact of SNN across a spectrum of applications within the biomedical landscape.
本文进行了全面探索,以阐明脉冲神经网络(SNN)在生物医学领域的应用。该研究深入探讨了与长短期记忆网络(LSTM)等替代模型相比,SNN经实验验证的优势,同时也批判性地审视了SNN分类器或算法的固有局限性。SNN具有独特优势,使其特别适合生物医学领域的特定应用。随着时间的推移,SNN在神经形态处理、脑机接口(BCI)和疾病诊断等领域受到了广泛审视。值得注意的是,SNN对生物医学信号的处理和分析表现出显著的亲和力,包括但不限于脑电图(EEG)、肌电图(EMG)和心电图(ECG)数据。本文首先介绍了EMG的一些生物医学应用,如手势分类和运动解码。随后,重点扩展到SNN在EEG和ECG信号分析中的应用。此外,本文还深入探讨了SNN在特定解剖区域,如眼睛和鼻子的各种应用。在最后几节中,本文对该领域进行了全面分析,深入探讨了各种SNN模型在医疗保健和生物医学领域带来的优势、劣势、挑战和机遇。这种全面审视为SNN在生物医学领域一系列应用中的潜在变革性影响提供了细致入微的视角。