新生儿脑电图人工智能辅助超声算法的实时超低功耗实现

Tien Van Nguyen, Aengus Daly, F. O'Sullivan, Sergi Gómez-Quintana, A. Temko, E. Popovici
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引用次数: 1

摘要

新生儿癫痫是全球的一个严重问题,可导致长期发育和神经残疾,甚至死亡。早期发现癫痫发作对于通过及时干预来预防这些结果至关重要。然而,临床检测新生儿癫痫是具有挑战性的,由于缺乏身体症状和有限的访问专家脑电图分析。人工智能(AI)已经成为帮助医疗专业人员解释脑电图信号和检测癫痫发作的流行工具。为了弥补人工智能决策的可解释性不足,提出了一种人工智能辅助脑电图超声的新方法。这种方法利用声音直观地检测癫痫发作,同时利用人工智能作为一种注意力机制的有效性。除了低功耗外,实时运算能力对于将该算法应用于临床环境也是至关重要的,这是以往研究中使用的离线处理方法无法实现的。本研究以超低功耗实现了该算法的可扩展和实时适应。该应用程序为医务工作者提供连续的音频输出,允许立即访问脑电图信号的音频分析。片上超低功耗神经网络加速器使实现能够扩大监测EEG通道的数量。实时算法的平均功耗为13毫瓦,允许它在容量为3500毫安时的手机电池上运行超过11天。
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A real-time and ultra-low power implementation of an AI-assisted sonification algorithm for neonatal EEG
Neonatal seizures are a critical problem globally, which can lead to long-term developmental and neurological disabilities or even death. Early detection of seizures is crucial for preventing these outcomes by enabling timely intervention. However, clinical detection of neonatal seizures is challenging due to the lack of physical symptoms and limited access to experts in EEG analysis. Artificial Intelligence (AI) has emerged as a popular tool to assist medical professionals in interpreting EEG signals and detecting seizures. A novel method of AI assisted EEG sonification was introduced to compensate for the lack of explainability in AI’s decisions. This method uses sound to detect seizures intuitively while exploiting AI’s effectiveness as an attention mechanism. Besides low power consumption, the real-time operating capability is also essential for adapting this algorithm in clinical settings, which is unattainable with the offline processing approach used in previous studies. This study presents a scalable and real-time adaptation of this algorithm with an ultra-low power implementation. This application provides continuous audio output for medical workers, allowing for immediate access to audio analysis of the EEG signals. An on-chip ultra-low power neural network accelerator enables the implementation to scale up the number of monitored EEG channels. The real-time algorithm has an average power consumption of 13 milliwatts, allowing it to operate for more than eleven days on a mobile phone battery with a capacity of 3500 mAh.
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