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首页> 外文期刊>Journal of neural engineering >Early seizure detection for closed loop direct neurostimulation devices in epilepsy
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Early seizure detection for closed loop direct neurostimulation devices in epilepsy

机译:癫痫闭环直接神经刺激装置的早期癫痫发作检测

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Current treatment concepts for epilepsy are based on continuous drug delivery or electrical stimulation to prevent the occurrence of seizures, exposing the brain and body to a mostly unneeded risk of adverse effects. To address the infrequent occurrence and short duration of epileptic seizures, intelligent implantable closed-loop devices are needed which are based on a refined analysis of ongoing brain activity with highly specific and fast detection algorithms to allow for timely, ictal interventions. Since the development and FDA approval of a first closed loop neurostimulation device relying on simple threshold-based approaches, machine learning approaches became widely available, probably outperformed in the near future by deep convolutional neural networks, which already showed to be extremely successful in pattern recognition in images and partly in signal analysis. Handcrafted features or rules defined by experts become replaced by systematic feature selection procedures and systematic hyperparameter search approaches. Training of these classifiers augments the need of large databases with intracranial EEG recordings, which is partly given by existing databases but potentially can be replaced by continuously transferring data from implanted devices and their publication for research purposes. Already in early design states, the final target hardware must be taken into account for algorithm development. Size, power consumption and, as a consequence, limited computational resources given by low power microcontrollers, FPGAs and ASICS limit the complexity of feature computation, classifier complexity, and the numbers and complexity of layers of deep neuronal networks. Novel approaches for early seizure detection will be a key module for new generations of closed-loop devices together with improved low power implant hardware and will provide together with more efficient intervention paradigms new treatment options for patients with difficult to treat epilepsy.
机译:当前的癫痫治疗概念是基于连续药物输送或电刺激以防止癫痫发作的发生,这使大脑和身体暴露于几乎不需要的副作用风险中。为了解决癫痫发作的偶发性和持续时间短的问题,需要智能植入式闭环设备,该设备基于对正在进行的脑部活动的精细分析,并具有高度特异性和快速的检测算法,以便及时进行发作性干预。自从第一个基于简单的基于阈值的方法的闭环神经刺激设备的开发和FDA批准以来,机器学习方法就得到了广泛的应用,可能在不久的将来被深度卷积神经网络的性能所超越,后者已经证明在模式识别方面非常成功在图像中,部分在信号分析中。由专家定义的手工特征或规则已被系统的特征选择程序和系统的超参数搜索方法所取代。对这些分类器的培训增加了对颅内EEG记录的大型数据库的需求,这部分内容由现有数据库提供,但有可能通过从植入设备及其出版物中连续传输数据以进行研究的方式来代替。在早期设计阶段,算法开发必须考虑最终目标硬件。低功耗微控制器,FPGA和ASICS的尺寸,功耗以及有限的计算资源限制了特征计算的复杂性,分类器的复杂性以及深层神经网络的层数和复杂性。早期癫痫发作检测的新方法将是新一代闭环设备的关键模块,同时还具有改进的低功耗植入物硬件,并将与更有效的干预范例一起为难治性癫痫患者提供新的治疗选择。

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