Laboratory of Sensory Neuroscience and Neuroengineering, Campus Box 1097, One Brookings Drive, Washington University in St. Louis, St. Louis, MO 63130, USA.
J Neurosci Methods. 2011 Oct 30;202(1):87-98. doi: 10.1016/j.jneumeth.2011.08.032. Epub 2011 Aug 25.
Functional properties of neurons are often distributed nonrandomly within a cortical area and form topographic maps that reveal insights into neuronal organization and interconnection. Some functional maps, such as in visual cortex, are fairly straightforward to discern with a variety of techniques, while other maps, such as in auditory cortex, have resisted easy characterization. In order to determine appropriate protocols for establishing accurate functional maps in auditory cortex, artificial topographic maps were probed under various conditions, and the accuracy of estimates formed from the actual maps was quantified. Under these conditions, low-complexity maps such as sound frequency can be estimated accurately with as few as 25 total samples (e.g., electrode penetrations or imaging pixels) if neural responses are averaged together. More samples are required to achieve the highest estimation accuracy for higher complexity maps, and averaging improves map estimate accuracy even more than increasing sampling density. Undersampling without averaging can result in misleading map estimates, while undersampling with averaging can lead to the false conclusion of no map when one actually exists. Uniform sample spacing only slightly improves map estimation over nonuniform sample spacing typical of serial electrode penetrations. Tessellation plots commonly used to visualize maps estimated using nonuniform sampling are always inferior to linearly interpolated estimates, although differences are slight at higher sampling densities. Within primary auditory cortex, then, multiunit sampling with at least 100 samples would likely result in reasonable feature map estimates for all but the highest complexity maps and the highest variability that might be expected.
神经元的功能特性通常在皮质区域内呈非随机分布,并形成地形图,揭示了神经元组织和连接的见解。一些功能图,如视觉皮层,用各种技术很容易识别,而其他的图,如听觉皮层,却难以轻易地描述。为了确定在听觉皮层中建立准确功能图的适当方案,在各种条件下探测了人工地形图,并量化了从实际地图形成的估计的准确性。在这些条件下,如果将神经反应平均在一起,低复杂度的地图,如声音频率,可以用多达 25 个总样本(例如,电极穿透或成像像素)准确地估计。对于更高复杂度的地图,需要更多的样本才能达到最高的估计精度,并且平均化比增加采样密度更能提高地图估计精度。没有平均化的欠采样会导致误导性的地图估计,而具有平均化的欠采样可能会导致当实际上存在地图时得出没有地图的错误结论。均匀的样本间距仅比典型的串行电极穿透的非均匀样本间距稍微改善地图估计。用于可视化使用非均匀采样估计的地图的镶嵌图通常不如线性内插估计优越,尽管在较高的采样密度下差异很小。那么,在初级听觉皮层中,至少 100 个样本的多单位采样可能会导致除最高复杂度地图和可能出现的最高可变性之外的所有地图的合理特征地图估计。