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使用脑电图双频段不对称性(EEG-DABS)检测行为状态的自动化方法。

Automated approach to detecting behavioral states using EEG-DABS.

作者信息

Loris Zachary B, Danzi Mathew, Sick Justin, Dietrich W Dalton, Bramlett Helen M, Sick Thomas

机构信息

Department of Neurological Surgery, 1095 NW 14th Terrace, University of Miami Miller School of Medicine, Miami, Florida, 33136, USA.

The Miami Project to Cure Paralysis, University of Miami Miller School of Medicine, 1095 NW 14th Terrace, Miami, Florida, 33136, USA.

出版信息

Heliyon. 2017 Jul 10;3(7):e00344. doi: 10.1016/j.heliyon.2017.e00344. eCollection 2017 Jul.

Abstract

Electrocorticographic (ECoG) signals represent cortical electrical dipoles generated by synchronous local field potentials that result from simultaneous firing of neurons at distinct frequencies (brain waves). Since different brain waves correlate to different behavioral states, ECoG signals presents a novel strategy to detect complex behaviors. We developed a program, EEG Detection Analysis for Behavioral States (EEG-DABS) that advances Fast Fourier Transforms through ECoG signals time series, separating it into (user defined) frequency bands and normalizes them to reduce variability. EEG-DABS determines events if segments of an experimental ECoG record have significantly different power bands than a selected control pattern of EEG. Events are identified at every epoch and frequency band and then are displayed as output graphs by the program. Certain patterns of events correspond to specific behaviors. Once a predetermined pattern was selected for a behavioral state, EEG-DABS correctly identified the desired behavioral event. The selection of frequency band combinations for detection of the behavior affects accuracy of the method. All instances of certain behaviors, such as freezing, were correctly identified from the event patterns generated with EEG-DABS. Detecting behaviors is typically achieved by visually discerning unique animal phenotypes, a process that is time consuming, unreliable, and subjective. EEG-DABS removes variability by using defined parameters of EEG/ECoG for a desired behavior over chronic recordings. EEG-DABS presents a simple and automated approach to quantify different behavioral states from ECoG signals.

摘要

皮质脑电图(ECoG)信号代表由同步局部场电位产生的皮质电偶极子,这些局部场电位是由不同频率(脑电波)的神经元同时放电产生的。由于不同的脑电波与不同的行为状态相关,ECoG信号提供了一种检测复杂行为的新策略。我们开发了一个程序,即行为状态脑电图检测分析(EEG-DABS),它通过ECoG信号时间序列推进快速傅里叶变换,将其分离为(用户定义的)频带并进行归一化以减少变异性。EEG-DABS如果实验ECoG记录的片段具有与选定的脑电图控制模式显著不同的功率带,则确定事件。在每个时期和频带识别事件,然后由程序将其显示为输出图。某些事件模式对应于特定行为。一旦为行为状态选择了预定模式,EEG-DABS就能正确识别所需的行为事件。用于检测行为的频带组合的选择会影响该方法的准确性。通过EEG-DABS生成的事件模式可以正确识别某些行为的所有实例,例如僵住。检测行为通常是通过视觉辨别独特的动物表型来实现的,这是一个耗时、不可靠且主观的过程。EEG-DABS通过在长期记录中使用针对所需行为定义的脑电图/ECoG参数来消除变异性。EEG-DABS提供了一种简单且自动化的方法来从ECoG信号中量化不同的行为状态。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7d82/5507012/7327aa94ce36/gr1.jpg

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