Diware Sumit, Dash Sudeshna, Gebregiorgis Anteneh, Joshi Rajiv V, Strydis Christos, Hamdioui Said, Bishnoi Rajendra
IEEE Trans Biomed Circuits Syst. 2023 Feb;17(1):77-91. doi: 10.1109/TBCAS.2023.3242683.
Timely detection of cardiac arrhythmia characterized by abnormal heartbeats can help in the early diagnosis and treatment of cardiovascular diseases. Wearable healthcare devices typically use neural networks to provide the most convenient way of continuously monitoring heart activity for arrhythmia detection. However, it is challenging to achieve high accuracy and energy efficiency in these smart wearable healthcare devices. In this work, we provide architecture-level solutions to deploy neural networks for cardiac arrhythmia classification. We have created a hierarchical structure after analyzing various neural network topologies where only required network components are activated to improve energy efficiency while maintaining high accuracy. In our proposed architecture, we introduce a severity-based classification approach to directly help the users of the wearable healthcare device as well as the medical professionals. Additionally, we have employed computation-in-memory based hardware to improve energy efficiency and area consumption by leveraging in-situ data processing and scalability of emerging memory technologies such as resistive random access memory (RRAM). Simulation experiments conducted using the MIT-BIH arrhythmia dataset show that the proposed architecture provides high accuracy while consuming average energy of 0.11 μJ per heartbeat classification and 0.11 mm area, thereby achieving 25× improvement in average energy consumption and 12× improvement in area compared to the state-of-the-art.
及时检测以心跳异常为特征的心律失常有助于心血管疾病的早期诊断和治疗。可穿戴医疗设备通常使用神经网络来提供连续监测心脏活动以检测心律失常的最便捷方式。然而,在这些智能可穿戴医疗设备中实现高精度和高能效具有挑战性。在这项工作中,我们提供了架构级的解决方案来部署用于心律失常分类的神经网络。在分析了各种神经网络拓扑结构后,我们创建了一种分层结构,其中仅激活所需的网络组件,以在保持高精度的同时提高能效。在我们提出的架构中,我们引入了一种基于严重程度的分类方法,以直接帮助可穿戴医疗设备的用户以及医疗专业人员。此外,我们采用了基于内存计算的硬件,通过利用新兴存储技术(如电阻式随机存取存储器(RRAM))的原位数据处理和可扩展性来提高能效和面积消耗。使用麻省理工学院 - 贝斯以色列女执事医疗中心心律失常数据集进行的仿真实验表明,所提出的架构在实现高精度的同时,每次心跳分类平均能耗为0.11 μJ,面积为0.11平方毫米,与现有技术相比,平均能耗提高了25倍,面积减少了12倍。