首页> 外文期刊>Journal of Neuroscience Methods >A pattern grouping algorithm for analysis of spatiotemporal patterns in neuronal spike trains. 1. Detection of repeated patterns.
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A pattern grouping algorithm for analysis of spatiotemporal patterns in neuronal spike trains. 1. Detection of repeated patterns.

机译:一种模式分组算法,用于分析神经元穗序列中的时空模式。 1.检测重复模式。

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摘要

The existence of precise temporal relations in sequences of spike intervals, referred to as 'spatiotemporal patterns', is suggested by brain theories that emphasize the role of temporal coding. Specific analytical methods able to assess the significance of such patterned activity are extremely important to establish its function for information processing in the brain. This study proposes a new method called 'pattern grouping algorithm' (PGA), designed to identify and evaluate the statistical significance of patterns which differ from each other by a defined and small jitter in spike timing of the order of few ms. The algorithm performs a pre-selection of template patterns with a fast computational approach, optimizes the jitter for each spike in the template and evaluates the statistical significance of the pattern group using three complementary statistical approaches. Simulated data sets characterized by various types of known non stationarities are used for validation of PGA and for comparison of its performance to other methods. Applications of PGA to experimental data sets of simultaneously recorded spike trains are described in a companion paper (Tetko IV, Villa AEP. A pattern grouping algorithm for analysis of spatiotemporal patterns in neuronal spike trains. 2. Application to simultaneous single unit recordings. J Neurosci Method 2000; accompanying article).
机译:强调时间编码作用的脑理论表明,存在尖峰间隔序列中精确的时间关系,称为“时空模式”。能够评估这种模式活动的重要性的特定分析方法对于建立其在大脑中进行信息处理的功能极为重要。这项研究提出了一种称为“模式分组算法”(PGA)的新方法,该方法旨在识别和评估模式的统计显着性,这些模式之间的区别在于峰值时间为几毫秒的已定义的小抖动。该算法使用快速计算方法执行模板模式的预选择,针对模板中的每个尖峰优化抖动,并使用三种互补的统计方法评估模式组的统计显着性。以各种已知的非平稳性为特征的模拟数据集可用于验证PGA,并将其性能与其他方法进行比较。 PGA在同时记录的峰值序列的实验数据集上的应用在随附的论文中进行了描述(Tetko IV,Villa AEP。一种模式分组算法,用于分析神经元峰值序列的时空模式; 2.在同时进行的单个单元记录中的应用。JNeurosci方法2000;随附文章)。

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