首页> 外文期刊>Journal of Neuroscience Methods >Principal component analysis of neuronal ensemble activity reveals multidimensional somatosensory representations.
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Principal component analysis of neuronal ensemble activity reveals multidimensional somatosensory representations.

机译:神经元合奏活动的主成分分析揭示多维体感表示。

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Principal components analysis (PCA) was used to define the linearly dependent factors underlying sensory information processing in the vibrissal sensory area of the ventral posterior medial (VPM) thalamus in eight awake rats. Ensembles of up to 23 single neurons were simultaneously recorded in this area, either during long periods of spontaneous behavior (including exploratory whisking) or controlled deflection of single whiskers. PCA rotated the matrices of correlation between these n neurons into a series of n uncorrelated principal components (PCs), each successive PC oriented to explain a maximum of the remaining variance. The fact that this transformation is mathematically equivalent to the general Hebb algorithm in linear neural networks provided a major rationale for performing it here on data from real neuronal ensembles. Typically, most information correlated across neurons in the ensemble was concentrated within the first 3-8 PCs. Each of these was found to encode distinct, and highly significant informational factors. These factor encodings were assessed in two ways, each making use of fact that each PC consisted of a matrix of weightings, one for each neuron. First, the neurons were rank ordered according to the locations of the central whiskers in their receptive fields, allowing their weightings within different PCs to be viewed as a function of their position within the whisker representation in the VPM. Each PC was found to define a distinctly different topographic mapping of the cutaneous surface. Next, the PCs were used to weight-sum the neurons' simultaneous activities to create population vectors (PVs). Each PV consisted of a single continuous time series which represented the expression of each PC's 'magnitude' in response to stimulation of different whiskers, or during behavioral events such as active tactile whisking. These showed that each PC functioned as a feature detector capable of selectively predicting significant sensory or behavioral events with far greater statistical reliability than could any single neuron. The encoding characteristics of the first few PCs were remarkably consistent across all animals and experimental conditions, including both spontaneous exploration and direct sensory stimulation: PC1 positively weighted all neurons, mainly according to their covariance. Thus it encoded global magnitude of ensemble activity, caused either by combined sensory inputs or intrinsic network activity, such as spontaneous oscillations. PC2 encoded spatial position contrast, generally in the rostrocaudal dimension, across the whole cutaneous surface represented by the ensemble. PC3 more selectively encoded contrast in an orthogonal (usually dorsoventral) dimension. A variable number of higher numbered PCs encoded local position contrast within one or more smaller regions of the cutaneous surface. The remaining PCs typically explained residual 'noise', i.e. the uncorrelated variance that constituted a major part of each neuron's activity. Differences in behavioral or sensory experience produced relatively little in the PC weighting patterns but often changed the variance they explained (eigenvalues) enough to alter their ordering. These results argue that PCA provides a powerful set of tools for selectively measuring neural ensemble activity within multiple functionally significant 'dimensions' of information processing. As such, it redefines the 'neuron' as an entity which contributes portions of its variance to processing not one, but several tasks.
机译:使用主成分分析(PCA)定义了八只清醒大鼠腹侧后内侧(VPM)丘脑的纤维感觉区中的感官信息处理基础的线性相关因素。在此区域中,在长时间的自发行为(包括探索性搅拌)或单个晶须的受控偏转期间,最多同时记录了23个单个神经元的集合。 PCA将这n个神经元之间的相关矩阵旋转为一系列n个不相关的主成分(PC),每个连续PC的方向都是为了解释剩余方差的最大值。这种转换在数学上等效于线性神经网络中通用Hebb算法的事实,为在这里对来自真实神经元集合的数据执行该转换提供了主要原理。通常,整个集合神经元之间相关的大多数信息都集中在前3-8个PC中。发现它们每个都编码独特且高度重要的信息因素。这些因子编码以两种方式进行评估,每种方式都利用了每个PC都由一个加权矩阵组成的事实,每个神经元一个矩阵。首先,根据中央晶须在其感受野中的位置对神经元进行排序,从而将它们在不同PC中的权重视为其在VPM中晶须表示中位置的函数。发现每个PC定义了皮肤表面的明显不同的地形图。接下来,使用PC对神经元的同时活动进行权重求和,以创建种群矢量(PV)。每个PV包含一个连续的时间序列,该时间序列表示每个PC响应不同晶须的刺激或行为事件(例如主动触觉晶须)的“幅度”的表达。这些结果表明,每台PC都可以用作特征检测器,能够选择性地预测重要的感觉或行为事件,其统计可靠性远高于任何单个神经元。前几只PC的编码特征在所有动物和实验条件下都非常一致,包括自发探索和直接感觉刺激:PC1主要根据它们的协方差对所有神经元进行加权加权。因此,它对整体活动的幅度进行了编码,该活动是由组合的感官输入或固有的网络活动(例如自发振荡)引起的。 PC2编码的空间位置反差,通常在整个集合体所代表的整个皮肤表面的后尾巴维度上。 PC3在正交(通常是背腹)维度上更选择性地编码对比度。在皮肤表面的一个或多个较小区域内,可变数量的较高编号的PC编码了局部位置对比度。其余PC通常会解释残留的“噪声”,即构成每个神经元活动主要部分的不相关方差。行为或感官体验上的差异在PC加权模式中产生的相对较少,但通常会改变它们解释的方差(特征值)足以改变其顺序。这些结果表明,PCA提供了一套功能强大的工具,可以在信息处理的多个功能重大“维度”内有选择地测量神经整体活动。这样,它将“神经元”重新定义为一个实体,该实体将其方差的一部分贡献给处理一个任务而不是多个任务。

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