Encoding manifolds constructed from grating responses organize responses to natural scenes across mouse cortical visual areas.

Luciano Dyballa, Greg D Field, Michael P Stryker, Steven W Zucker
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Abstract

We have created "encoding manifolds" to reveal the overall responses of a brain area to a variety of stimuli. Encoding manifolds organize response properties globally: each point on an encoding manifold is a neuron, and nearby neurons respond similarly to the stimulus ensemble in time. We previously found, using a large stimulus ensemble including optic flows, that encoding manifolds for the retina were highly clustered, with each cluster corresponding to a different ganglion cell type. In contrast, the topology of the V1 manifold was continuous. Now, using responses of individual neurons from the Allen Institute Visual Coding-Neuropixels dataset in the mouse, we infer encoding manifolds for V1 and for five higher cortical visual areas (VISam, VISal, VISpm, VISlm, and VISrl). We show here that the encoding manifold topology computed only from responses to various grating stimuli is also continuous, not only for V1 but also for the higher visual areas, with smooth coordinates spanning it that include, among others, orientation selectivity and firing-rate magnitude. Surprisingly, the encoding manifold for gratings also provides information about natural scene responses. To investigate whether neurons respond more strongly to gratings or natural scenes, we plot the log ratio of natural scene responses to grating responses (mean firing rates) on the encoding manifold. This reveals a global coordinate axis organizing neurons' preferences between these two stimuli. This coordinate is orthogonal (i.e., uncorrelated) to that organizing firing rate magnitudes in VISp. Analyzing layer responses, a preference for gratings is concentrated in layer 6, whereas preference for natural scenes tends to be higher in layers 2/3 and 4. We also find that preference for natural scenes dominates the responses of neurons that prefer low (0.02 cpd) and high (0.32 cpd) spatial frequencies, rather than intermediate ones (0.04 to 0.16 cpd). Conclusion: while gratings seem limited and natural scenes unconstrained, machine learning algorithms can reveal subtle relationships between them beyond linear techniques.

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根据光栅反应构建的编码流形组织了大脑皮层视觉区域对自然场景的反应。
我们创建了 "编码流形 "来揭示脑区对各种刺激的整体反应。编码流形组织了全局的反应特性:编码流形上的每个点都是一个神经元,附近的神经元对刺激集合的时间反应类似。我们之前利用包括视流在内的大型刺激集合发现,视网膜的编码流形高度聚类,每个聚类对应不同的神经节细胞类型。相比之下,V1 流形的拓扑结构是连续的。现在,我们利用艾伦研究所小鼠视觉编码-神经像素数据集中单个神经元的反应,推断出了V1和五个高级皮层视觉区域(VISam、VISal、VISpm、VISlm和VISrl)的编码流形。我们在此表明,仅根据对各种光栅刺激的反应计算出的编码流形拓扑结构也是连续的,不仅对 V1 而且对高级视觉区域都是如此,其中的平滑坐标包括方向选择性和发射率大小。令人惊讶的是,光栅的编码流形也提供了有关自然场景反应的信息。为了研究神经元对光栅还是自然场景的反应更强烈,我们在编码流形上绘制了自然场景反应与光栅反应(平均发射率)的对比率。这揭示了一个组织神经元对这两种刺激的偏好的全局坐标轴。这个坐标与 VISp 中组织发射率大小的坐标是正交的(即不相关)。分析各层的反应,对光栅的偏好集中在第6层,而对自然景象的偏好则倾向于在第2/3层和第4层。我们还发现,对自然场景的偏好在偏好低(0.02 cpd)和高(0.32 cpd)空间频率的神经元的反应中占主导地位,而不是中间频率(0.04 至 0.16 cpd)。结论:虽然光栅似乎受到限制,而自然场景则不受制约,但机器学习算法可以揭示它们之间的微妙关系,而非线性技术所能及。
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