Rat Cortical Layers Classification extracting Evoked Local Field Potential Images with Implanted Multi-Electrode Sensor

Xiaying Wang, M. Magno, L. Cavigelli, M. Mahmud, C. Cecchetto, S. Vassanelli, L. Benini
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引用次数: 6

Abstract

One of the most ambitious goals of neuroscience and its neuroprosthetic applications is to interface intelligent electronic devices with the biological brain to cure neurological diseases. This emerging research field builds on our growing understanding of brain circuits and on recent technological advances in miniaturization of implantable multi-electrode-arrays (MEAs) to record brain signals at high spatiotemporal resolution. Data processing is needed to extract useful information from the recorded neural activity to better understand the function of underlying neural circuits and, in perspective, to operate neuroprosthetic devices. In this context, machine learning approaches are increasingly used in many application scenarios. This paper focuses on processing data of evoked local field potentials (LFPs) recorded from the rat barrel cortex using a miniaturized 16×16 MEA. We evaluated machine learning algorithms and trained an optimized classifier to detect at which cortical depth the neural activity is measured. We demonstrate with experimental results that machine learning can be applied successfully to noisy single-trial LFPs offering up to 99.11% of test accuracy in classifying signals acquired from different cortical layers. As such, the method is a very promising starting point toward real-time decoding of cerebral activities with low power consumption digital processors for brain-machine interfacing and neuroprosthetic applications.
植入多电极传感器的大鼠皮层层分类提取诱发局部场电位图像
神经科学及其神经假肢应用最雄心勃勃的目标之一是将智能电子设备与生物大脑连接起来,以治疗神经系统疾病。这一新兴的研究领域建立在我们对脑回路的不断了解和最近在可植入多电极阵列(MEAs)小型化方面的技术进步的基础上,以高时空分辨率记录大脑信号。数据处理需要从记录的神经活动中提取有用的信息,以更好地了解潜在神经回路的功能,并在一定程度上操作神经假体装置。在这种背景下,机器学习方法越来越多地应用于许多应用场景。本文主要研究了利用小型化16×16 MEA对大鼠脑桶皮层局部诱发场电位(lfp)数据的处理。我们评估了机器学习算法,并训练了一个优化的分类器来检测测量神经活动的皮层深度。我们通过实验结果证明,机器学习可以成功地应用于有噪声的单次lfp,在分类从不同皮层获得的信号方面提供高达99.11%的测试准确率。因此,该方法是一个非常有前途的起点,可以用低功耗的数字处理器实时解码大脑活动,用于脑机接口和神经假肢应用。
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