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Integration of stationary wavelet transform on a dynamic partial reconfiguration for recognition of pre-ictal gamma oscillations

机译:静态小波变换在动态局部重配置上的集成用于识别发作前伽玛振动

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摘要

To define the neural networks responsible of an epileptic seizure, it is useful to perform advanced signal processing techniques. In this context, electrophysiological signals present three types of waves: oscillations, spikes, and a mixture of both. Recent studies show that spikes and oscillations should be separated properly in order to define the accurate neural connectivity during the pre-ictal, seizure and inter-ictal states. Retrieving oscillatory activity is a sensitive task due to the frequency overlap between oscillations and transient activities. Advanced filtering techniques have been proposed to ensure a good separation between oscillations and spikes. It would be interesting to apply them in real time for instantaneous monitoring, seizure warning or neurofeedback systems. This requires improving execution time. This constraint can be overcome using embedded systems that combine hardware and software in an optimized architecture.We propose here to implement a stationary wavelet transform (SWT) as an adaptive filtering technique retaining only pre-ictal gamma oscillations, as validated in previous work, on a partial dynamic configuration. Then, the same architecture is used with further modifications to integrate spatio temporal mapping for an early recognition of seizure build-up.Data that contains transient, pre-ictal gamma oscillations and a seizure was simulated. the method on real intracerebral signals was also tested. The SWT was integrated on an embedded architecture. This architecture permits a spatio temporal mapping to detect the accurate time and localization of seizure build-up, while reducing computation time by a factor of around 40. Embedded systems are a promising venue for real-time applications in clinical systems for epilepsy.
机译:为了定义负责癫痫发作的神经网络,执行高级信号处理技术很有用。在这种情况下,电生理信号呈现三种类型的波:振荡,尖峰以及两者的混合。最近的研究表明,应适当分开尖峰和振荡,以定义发作前,发作和发作间状态下的准确神经连通性。由于振荡和瞬态活动之间的频率重叠,检索振荡活动是一项敏感的任务。已经提出了先进的滤波技术以确保振荡和尖峰之间的良好分离。将它们实时应用于即时监视,癫痫发作警报或神经反馈系统将是很有趣的。这需要缩短执行时间。通过在优化的体系结构中将硬件和软件结合在一起的嵌入式系统,可以克服这一限制。我们在这里提出将平稳小波变换(SWT)作为一种自适应滤波技术来实现,该技术仅保留前齿次伽马振荡,这在先前的工作中得到了验证。部分动态配置。然后,使用相同的体系结构并进行进一步的修改以整合时空映射,以尽早识别癫痫发作的形成。模拟了包含瞬态,发作前伽马振动和癫痫发作的数据。还对真实脑内信号的方法进行了测试。 SWT集成在嵌入式体系结构上。这种架构允许进行时空映射,以检测癫痫发作的准确时间和位置,同时将计算时间减少约40倍。嵌入式系统是癫痫临床系统中实时应用的有希望的场所。

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