Data Transformation in the Processing of Neuronal Signals: A Powerful Tool to Illuminate Informative Contents

IF 17.2 1区 工程技术 Q1 ENGINEERING, BIOMEDICAL IEEE Reviews in Biomedical Engineering Pub Date : 2022-02-14 DOI:10.1109/RBME.2022.3151340
MohammadAli Shaeri;Amir M. Sodagar
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引用次数: 1

Abstract

Neuroscientists seek efficient solutions for deciphering the sophisticated unknowns of the brain. Effective development of complicated brain-related tools is the focal point of research in neuroscience and neurotechnology. Thanks to today’s technological advancements, the physical development of high-density and high-resolution neural interfaces has been made possible. This is where the critical bottleneck in receiving the expected functionality from such devices shifts to transferring, processing, and subsequently analyzing the massive neurophysiological extra-cellular data recorded. To respond to this inevitable concern, a spectrum of neuronal signal processing techniques have been proposed to extract task-related informative content of the signals conveying neuronal activities, and eliminate the irrelevant contents. Such techniques provide powerful tools for a wide range of neuroscience research, from low-level perception to high-level cognition. Data transformations are among the most efficient processing techniques that serve this purpose by properly changing the data representation. Mapping the data from its original domain (i.e., the time-space domain) to a new representational domain, data transformations change the viewing angle of observing the informative content of the data. This paper reviews the employment of data transformations in order to process neuronal signals and their three key applications, including spike detection, spike sorting, and data compression.
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神经元信号处理中的数据转换:照亮信息内容的强大工具
神经科学家寻求有效的解决方案来破解大脑中复杂的未知因素。有效开发复杂的大脑相关工具是神经科学和神经技术研究的重点。由于今天的技术进步,高密度和高分辨率神经接口的物理开发成为可能。这就是从这些设备接收预期功能的关键瓶颈转移到传输、处理和随后分析记录的大量神经生理学细胞外数据的地方。为了应对这种不可避免的担忧,已经提出了一系列神经元信号处理技术来提取传达神经元活动的信号中与任务相关的信息内容,并消除不相关的内容。这些技术为从低级感知到高级认知的广泛神经科学研究提供了强大的工具。数据转换是最有效的处理技术之一,通过适当地更改数据表示来达到这一目的。将数据从其原始域(即时空域)映射到一个新的表示域,数据转换改变了观察数据信息内容的视角。本文综述了数据转换在处理神经元信号中的应用及其三个关键应用,包括尖峰检测、尖峰排序和数据压缩。
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来源期刊
IEEE Reviews in Biomedical Engineering
IEEE Reviews in Biomedical Engineering Engineering-Biomedical Engineering
CiteScore
31.70
自引率
0.60%
发文量
93
期刊介绍: IEEE Reviews in Biomedical Engineering (RBME) serves as a platform to review the state-of-the-art and trends in the interdisciplinary field of biomedical engineering, which encompasses engineering, life sciences, and medicine. The journal aims to consolidate research and reviews for members of all IEEE societies interested in biomedical engineering. Recognizing the demand for comprehensive reviews among authors of various IEEE journals, RBME addresses this need by receiving, reviewing, and publishing scholarly works under one umbrella. It covers a broad spectrum, from historical to modern developments in biomedical engineering and the integration of technologies from various IEEE societies into the life sciences and medicine.
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