解码方法
计算机科学
计算机硬件
单位(环理论)
脑电图
语音识别
神经科学
电信
心理学
数学教育
作者
Yu Tung Lo,Lei Jiang,Ben Woodington,Sagnik Middya,Marcel Braendlein,Jordan Lam,Mervyn Jun Rui Lim,Vincent Yew Poh Ng,Jai Prashanth Rao,Derrick Chan,Beng Ti Ang
出处
期刊:Journal of Neural Engineering
[IOP Publishing]
日期:2024-07-10
被引量:1
标识
DOI:10.1088/1741-2552/ad618c
摘要
Micro-electrocorticographic (μECoG) arrays are able to record neural activities from the cortical surface, without the need to penetrate the brain parenchyma. Owing in part to small electrode sizes, previous studies have demonstrated that single-unit spikes could be detected from the cortical surface, and likely from Layer I neurons of the neocortex. Here we tested the ability to use μECoG array to decode, in rats, body position during open field navigation, through isolated single-unit activities.
Approach: μECoG arrays were chronically implanted onto primary motor cortex (M1) of Wistar rats, and neural recording was performed in awake, behaving rats in an open-field enclosure. The signals were band-pass filtered between 300 to 3000 Hz. Threshold-crossing spikes were identified and sorted into distinct units based on defined criteria including waveform morphology and refractory period. Body positions were derived from video recordings. We used gradient-boosting machine to predict body position based on previous 100 ms of spike data, and correlation analyses to elucidate the relationship between position and spike patterns.
Main results: Single-unit spikes could be extracted during chronic recording from μECoG, and spatial position could be decoded from these spikes with a mean absolute error of prediction of 0.135 and 0.090 in the x- and y- dimensions (of a normalized range from 0 to 1), and Pearson's r of 0.607 and 0.571, respectively.
Significance: μECoG can detect single-unit activities that likely arise from superficial neurons in the cortex and is a promising alternative to intracortical arrays, with the added benefit of scalability to cover large cortical surface with minimal incremental risks. More studies should be performed in human related to its use as brain-machine interface.
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