Center for Implantable Devices, Purdue University, West Lafayette, IN 47907, USA.
J Neurosci Methods. 2010 Oct 30;193(1):106-17. doi: 10.1016/j.jneumeth.2010.08.008. Epub 2010 Aug 14.
Implantable neural prostheses that deliver focal electrical stimulation upon demand are rapidly emerging as an alternate therapy for roughly a third of the epileptic patient population that is medically refractory. Seizure detection algorithms enable feedback mechanisms to provide focally and temporally specific intervention. Real-time feasibility and computational complexity often limit most reported detection algorithms to implementations using computers for bedside monitoring or external devices communicating with the implanted electrodes. A comparison of algorithms based on detection efficacy does not present a complete picture of the feasibility of the algorithm with limited computational power, as is the case with most battery-powered applications. We present a two-dimensional design optimization approach that takes into account both detection efficacy and hardware cost in evaluating algorithms for their feasibility in an implantable application. Detection features are first compared for their ability to detect electrographic seizures from micro-electrode data recorded from kainate-treated rats. Circuit models are then used to estimate the dynamic and leakage power consumption of the compared features. A score is assigned based on detection efficacy and the hardware cost for each of the features, then plotted on a two-dimensional design space. An optimal combination of compared features is used to construct an algorithm that provides maximal detection efficacy per unit hardware cost. The methods presented in this paper would facilitate the development of a common platform to benchmark seizure detection algorithms for comparison and feasibility analysis in the next generation of implantable neuroprosthetic devices to treat epilepsy.
按需提供焦点电刺激的植入式神经假体正在迅速成为约三分之一对药物治疗有抗药性的癫痫患者的替代疗法。癫痫发作检测算法使反馈机制能够提供局部和时间特异性干预。实时可行性和计算复杂性通常限制大多数报道的检测算法仅适用于使用计算机进行床边监测或与植入电极通信的外部设备的实现。基于检测效果的算法比较并不能全面反映在计算能力有限的情况下算法的可行性,因为大多数电池供电的应用程序都是如此。我们提出了一种二维设计优化方法,该方法考虑了检测效果和硬件成本,以评估算法在植入应用中的可行性。首先比较检测特征从用海人酸处理的大鼠记录的微电极数据中检测电描记图癫痫发作的能力。然后使用电路模型估计比较特征的动态和漏电流功耗。根据检测效果和每个特征的硬件成本为每个特征分配一个分数,然后在二维设计空间上绘制。比较特征的最佳组合用于构建一种算法,该算法以单位硬件成本提供最大的检测效果。本文提出的方法将有助于开发一个通用平台,用于对下一代治疗癫痫的植入式神经假体设备中的癫痫发作检测算法进行基准测试、比较和可行性分析。