Biomedical Research Foundation, Academy of Athens, Center of Basic Research, Athens, Greece.
Sci Rep. 2017 Jun 8;7(1):3055. doi: 10.1038/s41598-017-03269-9.
Synchronized brain activity in the form of alternating epochs of massive persistent network activity and periods of generalized neural silence, has been extensively studied as a fundamental form of circuit dynamics, important for many cognitive functions including short-term memory, memory consolidation, or attentional modulation. A key element in such studies is the accurate determination of the timing and duration of those network events. The local field potential (LFP) is a particularly attractive method for recording network activity, because it allows for long and stable recordings from multiple sites, allowing researchers to estimate the functional connectivity of local networks. Here, we present a computational method for the automatic detection and quantification of in-vitro LFP events, aiming to overcome the limitations of current approaches (e.g. slow analysis speed, arbitrary threshold-based detection and lack of reproducibility across and within experiments). The developed method is based on the implementation of established signal processing and machine learning approaches, is fully automated and depends solely on the data. In addition, it is fast, highly efficient and reproducible. The performance of the software is compared against semi-manual analysis and validated by verification of prior biological knowledge.
以大规模持续网络活动和广泛神经沉默期交替为形式的同步脑活动,作为一种基本的电路动力学形式,已被广泛研究,对包括短期记忆、记忆巩固或注意力调节在内的许多认知功能都很重要。在这些研究中,一个关键要素是准确确定这些网络事件的时间和持续时间。局部场电位 (LFP) 是记录网络活动的一种特别有吸引力的方法,因为它允许从多个位置进行长而稳定的记录,从而使研究人员能够估计局部网络的功能连接。在这里,我们提出了一种用于自动检测和量化体外 LFP 事件的计算方法,旨在克服当前方法的局限性(例如分析速度慢、基于任意阈值的检测以及在实验内外缺乏可重复性)。所开发的方法基于实施既定的信号处理和机器学习方法,完全自动化,仅依赖于数据。此外,它快速、高效且可重复。该软件的性能与半自动分析进行了比较,并通过验证先前的生物学知识进行了验证。