Visual Cortex

视觉皮层
  • 文章类型: Journal Article
    目的:识别通常涉及大脑将物体与周围环境隔离。图形-地面纹理分离的神经生理学研究产生了不一致的结果,特别是V1神经元是否可以执行图形-地面纹理分离或仅检测纹理边界。为了从人口角度解决这个问题,我们利用双光子钙成像来同时记录大量V1和V4神经元样本在清醒时对图形纹理刺激的反应,固定猕猴.平均响应变化表明V1神经元主要检测纹理边界,而V4神经元参与图形-地面隔离。然而,总体分析(PCA转换的神经元反应的SVM解码)表明,V1神经元不仅可以检测图形-地面边界,但也有助于图-地面纹理分离,尽管需要比V4神经元更多的主成分才能达到75%的解码精度。个别地,V1/V4神经元显示更大的(负/正)图形-地面响应差异对图形-地面隔离的贡献更大。但是对于V1神经元,只有当考虑到许多主成分时,贡献才变得显著。我们得出的结论是,V1神经元主要通过定义图形边界来参与图形-地面隔离,V4神经元可以进一步利用它们携带的结构不良的图形-地面信息来完成图形-地面隔离。
    OBJECTIVE: recognition often involves the brain segregating objects from their surroundings. Neurophysiological studies of figure-ground texture segregation have yielded inconsistent results, particularly on whether V1 neurons can perform figure-ground texture segregation or just detect texture borders. To address the issue from a population perspective, we utilized two-photon calcium imaging to simultaneously record the responses of large samples of V1 and V4 neurons to figure-ground texture stimuli in awake, fixating macaques. The average response changes indicated that V1 neurons mainly detect texture borders, while V4 neurons are involved in figure-ground segregation. However, population analysis (SVM decoding of PCA-transformed neuronal responses) revealed that V1 neurons not only detect figure-ground borders, but also contribute to figure-ground texture segregation, although requiring substantially more principal components than V4 neurons to reach a 75% decoding accuracy. Individually, V1/V4 neurons showing larger (negative/positive) figure-ground response differences contribute more to figure-ground segregation. But for V1 neurons, the contribution becomes significant only when many principal components are considered. We conclude that V1 neurons participate in figure-ground segregation primarily by defining the figure borders, and the poorly structured figure-ground information they carry can be further utilized by V4 neurons to accomplish figure-ground segregation.
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  • 文章类型: Journal Article
    对象分类已被提出作为灵长类腹侧视觉流的主要目标,并已被用作视觉系统的深度神经网络模型(DNN)的优化目标。然而,视觉大脑区域代表许多不同类型的信息,并且仅对对象身份的分类进行优化不会限制其他信息如何在视觉表示中编码。关于不同场景参数的信息可以完全丢弃(\'不变性\'),在种群活动的非干扰子空间中表示(“因式分解”)或以纠缠方式编码。在这项工作中,我们提供的证据表明,因式分解是生物视觉表征的规范原则。在猴子腹侧视觉层次中,我们发现,在更高级别的区域中,对象身份的对象姿态和背景信息的因式分解增加,并且极大地有助于提高对象身份解码性能。然后,我们对单个场景参数的分解进行了大规模分析-照明,背景,摄像机视点,和对象姿态-在视觉系统的不同DNN模型库中。最匹配神经的模型,功能磁共振成像,来自12个数据集的猴子和人类的行为数据往往是最强烈地分解场景参数的数据。值得注意的是,这些参数的不变性与神经和行为数据的匹配并不一致,这表明,在因式分解的活动子空间中维护非类信息通常比完全丢弃它更可取。因此,我们认为视觉场景信息的分解是大脑及其DNN模型中广泛使用的策略。
    看图片时,我们可以快速识别一个可识别的物体,比如苹果,对它应用一个单词标签。尽管广泛的神经科学研究集中在人类和猴子的大脑如何实现这种识别,我们对大脑和类似大脑的计算机模型如何解释视觉场景的其他复杂方面的理解-例如对象位置和环境上下文-仍然不完整。特别是,目前尚不清楚物体识别在多大程度上以牺牲其他重要场景细节为代价。例如,可以同时处理场景的各个方面。另一方面,一般物体识别可能会干扰这些细节的处理。为了调查这一点,Lindsey和Issa分析了12个猴子和人脑数据集,以及许多计算机模型,探索场景的不同方面如何在神经元中编码,以及这些方面如何由计算模型表示。分析表明,阻止有效分离和保留有关对象姿势和环境上下文的信息会恶化猴子皮层神经元中的对象识别。此外,最类似大脑的计算机模型可以独立保存其他场景细节,而不会干扰物体识别。研究结果表明,人类和猴子的高级腹侧视觉处理系统能够以比以前所理解的更复杂的方式来表示环境。在未来,研究更多的大脑活动数据可以帮助识别编码信息的丰富程度,以及它如何支持空间导航等其他功能。这些知识可以帮助建立以相同方式处理信息的计算模型,有可能提高他们对现实世界场景的理解。
    Object classification has been proposed as a principal objective of the primate ventral visual stream and has been used as an optimization target for deep neural network models (DNNs) of the visual system. However, visual brain areas represent many different types of information, and optimizing for classification of object identity alone does not constrain how other information may be encoded in visual representations. Information about different scene parameters may be discarded altogether (\'invariance\'), represented in non-interfering subspaces of population activity (\'factorization\') or encoded in an entangled fashion. In this work, we provide evidence that factorization is a normative principle of biological visual representations. In the monkey ventral visual hierarchy, we found that factorization of object pose and background information from object identity increased in higher-level regions and strongly contributed to improving object identity decoding performance. We then conducted a large-scale analysis of factorization of individual scene parameters - lighting, background, camera viewpoint, and object pose - in a diverse library of DNN models of the visual system. Models which best matched neural, fMRI, and behavioral data from both monkeys and humans across 12 datasets tended to be those which factorized scene parameters most strongly. Notably, invariance to these parameters was not as consistently associated with matches to neural and behavioral data, suggesting that maintaining non-class information in factorized activity subspaces is often preferred to dropping it altogether. Thus, we propose that factorization of visual scene information is a widely used strategy in brains and DNN models thereof.
    When looking at a picture, we can quickly identify a recognizable object, such as an apple, applying a single word label to it. Although extensive neuroscience research has focused on how human and monkey brains achieve this recognition, our understanding of how the brain and brain-like computer models interpret other complex aspects of a visual scene – such as object position and environmental context – remains incomplete. In particular, it was not clear to what extent object recognition comes at the expense of other important scene details. For example, various aspects of the scene might be processed simultaneously. On the other hand, general object recognition may interfere with processing of such details. To investigate this, Lindsey and Issa analyzed 12 monkey and human brain datasets, as well as numerous computer models, to explore how different aspects of a scene are encoded in neurons and how these aspects are represented by computational models. The analysis revealed that preventing effective separation and retention of information about object pose and environmental context worsened object identification in monkey cortex neurons. In addition, the computer models that were the most brain-like could independently preserve the other scene details without interfering with object identification. The findings suggest that human and monkey high level ventral visual processing systems are capable of representing the environment in a more complex way than previously appreciated. In the future, studying more brain activity data could help to identify how rich the encoded information is and how it might support other functions like spatial navigation. This knowledge could help to build computational models that process the information in the same way, potentially improving their understanding of real-world scenes.
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  • 文章类型: Journal Article
    N,N-二甲基色胺(DMT)是一种作用于5-HT2A5-羟色胺受体的迷幻色胺,这与强烈的视觉幻觉现象和感知变化有关,例如视觉空间的扭曲。这些效应的神经基础仍然未知。我们假设初级视觉皮层(V1)中人口感受野(pRF)特性的变化可能是视觉感知体验的基础。我们在受试者内部设计中使用磁共振成像(MRI)测试了这一假设。我们使用了一种叫做pRF映射的技术,测量早期视觉区域的神经群体视觉反应特性和视网膜图。我们表明,在存在视觉效果的情况下,根据幻觉原评定量表(HRS)的记录,与对照组相比,活动状态(吸入DMT)的外周视野中V1的平均pRF大小显著增加.在不同的条件下,眼睛和头部的运动差异不存在。DMT在pRF中的短期影响的证据可以解释由迷幻剂引起的感知失真,例如场模糊,隧道视觉(周围视觉变得模糊,而中央视觉仍然清晰)和附近视觉空间的扩大,特别是在中央凹周围的视觉位置。我们的发现也与机械框架一致,即通过5-HT2A受体的激活来控制视觉皮层中正在进行和诱发的活动。
    N, N-dimethyltryptamine (DMT) is a psychedelic tryptamine acting on 5-HT2A serotonin receptors, which is associated with intense visual hallucinatory phenomena and perceptual changes such as distortions in visual space. The neural underpinnings of these effects remain unknown. We hypothesised that changes in population receptive field (pRF) properties in the primary visual cortex (V1) might underlie visual perceptual experience. We tested this hypothesis using magnetic resonance imaging (MRI) in a within-subject design. We used a technique called pRF mapping, which measures neural population visual response properties and retinotopic maps in early visual areas. We show that in the presence of visual effects, as documented by the Hallucinogen Rating Scale (HRS), the mean pRF sizes in V1 significantly increase in the peripheral visual field for active condition (inhaled DMT) compared to the control. Eye and head movement differences were absent across conditions. This evidence for short-term effects of DMT in pRF may explain perceptual distortions induced by psychedelics such as field blurring, tunnel vision (peripheral vision becoming blurred while central vision remains sharp) and the enlargement of nearby visual space, particularly at the visual locations surrounding the fovea. Our findings are also consistent with a mechanistic framework whereby gain control of ongoing and evoked activity in the visual cortex is controlled by activation of 5-HT2A receptors.
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  • 文章类型: Journal Article
    视觉在我们日常生活中感知外部刺激和信息中起着重要作用。色觉的神经机制很复杂,涉及各种细胞的协调功能,如视网膜细胞和外侧膝状核细胞,以及视觉皮层的多个层面。在这项工作中,我们回顾了关于这个问题的实验和理论研究的历史,从视觉系统单个细胞的基本功能到神经信号传输中的编码和不同级别的复杂大脑过程。我们讨论各种假设,模型,以及与色觉机制相关的理论,并提出了一些开发新型植入设备的建议,这些设备可能有助于恢复视障人士的色觉,或将人工色觉引入需要的人。
    Vision plays a major role in perceiving external stimuli and information in our daily lives. The neural mechanism of color vision is complicated, involving the co-ordinated functions of a variety of cells, such as retinal cells and lateral geniculate nucleus cells, as well as multiple levels of the visual cortex. In this work, we reviewed the history of experimental and theoretical studies on this issue, from the fundamental functions of the individual cells of the visual system to the coding in the transmission of neural signals and sophisticated brain processes at different levels. We discuss various hypotheses, models, and theories related to the color vision mechanism and present some suggestions for developing novel implanted devices that may help restore color vision in visually impaired people or introduce artificial color vision to those who need it.
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  • 文章类型: Journal Article
    了解感觉皮层内神经元种群活动的共享试验间变异性的起源对于揭示大脑中信息处理的生物学基础至关重要。共享的变异性通常是皮质连通性结构的反映,因为它可能会出现,在某种程度上,从本地电路输入。来自小鼠初级视觉皮层中(兴奋性)锥体神经元的隔离网络的一系列实验挑战了这种观点。具体来说,在已知弱的跨网络连接性的情况下,发现跨网络相关性大于预期.我们的目标是通过生物学动机的皮层电路模型来揭示导致这些增强相关性的电路机制。我们的主要发现是,将每个兴奋性亚群与特定的抑制性亚群耦合在塑造这些增强的相关性方面提供了最强大的网络内在解决方案。该结果证明了在早期感觉区域中存在兴奋性-抑制性功能组件,这些组件不仅反映了反应特性,而且反映了锥体细胞之间的连通性。此外,我们的发现为最近的实验观察提供了理论支持,这些实验表明皮质抑制与兴奋性细胞形成结构和功能子网络,与经典观点相反,抑制是对局部激发的非特异性全面抑制。
    Understanding the genesis of shared trial-to-trial variability in neuronal population activity within the sensory cortex is critical to uncovering the biological basis of information processing in the brain. Shared variability is often a reflection of the structure of cortical connectivity since it likely arises, in part, from local circuit inputs. A series of experiments from segregated networks of (excitatory) pyramidal neurons in the mouse primary visual cortex challenge this view. Specifically, the across-network correlations were found to be larger than predicted given the known weak cross-network connectivity. We aim to uncover the circuit mechanisms responsible for these enhanced correlations through biologically motivated cortical circuit models. Our central finding is that coupling each excitatory subpopulation with a specific inhibitory subpopulation provides the most robust network-intrinsic solution in shaping these enhanced correlations. This result argues for the existence of excitatory-inhibitory functional assemblies in early sensory areas which mirror not just response properties but also connectivity between pyramidal cells. Furthermore, our findings provide theoretical support for recent experimental observations showing that cortical inhibition forms structural and functional subnetworks with excitatory cells, in contrast to the classical view that inhibition is a nonspecific blanket suppression of local excitation.
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  • 文章类型: Journal Article
    注意通过选择与决策相关的特征来支持决策。已提出选择性增强相关特征和抑制干扰物作为驱动此选择过程的潜在神经机制。然而,当相关性无法直接确定时,注意力是如何运作的,需要在内部构建的注意力信号很少被理解。在这里,我们记录了注意力转移任务中小鼠前扣带皮质(ACC)中的神经元群体,其中刺激方式的相关性在试验块之间发生了变化。与V1录音相比,在初始瞬态后,ACC中无关模态的解码逐渐下降。我们的分析证明和任务的递归神经网络模型揭示了相互抑制的连接,这些连接产生了在小鼠中观察到的上下文门控抑制。使用此RNN模型,我们预测了单个神经元的上下文调制与其刺激驱动之间的相关性,我们在ACC中证实了这一点,但在V1中没有证实。
    Attention supports decision making by selecting the features that are relevant for decisions. Selective enhancement of the relevant features and inhibition of distractors has been proposed as potential neural mechanisms driving this selection process. Yet, how attention operates when relevance cannot be directly determined, and the attention signal needs to be internally constructed is less understood. Here we recorded from populations of neurons in the anterior cingulate cortex (ACC) of mice in an attention-shifting task where relevance of stimulus modalities changed across blocks of trials. In contrast with V1 recordings, decoding of the irrelevant modality gradually declined in ACC after an initial transient. Our analytical proof and a recurrent neural network model of the task revealed mutually inhibiting connections that produced context-gated suppression as observed in mice. Using this RNN model we predicted a correlation between contextual modulation of individual neurons and their stimulus drive, which we confirmed in ACC but not in V1.
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  • 文章类型: Journal Article
    目的:探讨甲状腺功能异常视神经病变(DON)的视神经和视皮层的改变,甲状腺眼病(TED)的一个亚组。
    方法:从47例DON患者中获得了与视神经压迫和大脑低频波动幅度(ALFF)相关的多种眼眶成像生物标志物,56名没有DON(NDON)的TED患者,和37名健康对照(HC)。进行了相关分析和诊断测试。
    结果:与HC相比,nDON组显示与后段视神经压迫相关的眼眶成像生物标志物的改变,以及右侧颞下回和左侧梭状回的ALFF。DON与nDON组的区别主要表现在视神经后段肌指数的改变,右额上回眶部分的ALFF,右侧海马,和右颞上回。眼眶和脑成像生物标志物彼此显著相关。诊断模型检测DON的曲线下面积为0.80。
    结论:眼眶和脑成像联合研究揭示了TED和DON患者视觉通路的改变,并提供了诊断价值。TED中视觉皮层改变的开始可能先于DON的发作。
    OBJECTIVE: To investigate the alterations of the optic nerve and visual cortex in dysthyroid optic neuropathy (DON), a subgroup of thyroid eye disease (TED).
    METHODS: Multiple orbital imaging biomarkers related to optic nerve compression and the amplitude of low-frequency fluctuations (ALFF) of the brain were obtained from 47 patients with DON, 56 TED patients without DON (nDON), and 37 healthy controls (HC). Correlation analyses and diagnostic tests were implemented.
    RESULTS: Compared with HC, the nDON group showed alterations in orbital imaging biomarkers related to optic nerve compression in posterior segments, as well as ALFF of the right inferior temporal gyrus and left fusiform gyrus. DON differed from nDON group mainly in the modified muscle index of the posterior segment of optic nerve, and ALFF of orbital part of right superior frontal gyrus, right hippocampus, and right superior temporal gyrus. Orbital and brain imaging biomarkers were significantly correlated with each other. Diagnostic models attained an area under a curve of 0.80 for the detection of DON.
    CONCLUSIONS: The combined orbital and brain imaging study revealed alterations of the visual pathway in patients with TED and DON as well as provided diagnostic value. The initiation of alterations in the visual cortex in TED may precede the onset of DON.
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  • 文章类型: Journal Article
    当人类视觉跨越220°时,传统的功能性MRI设置仅显示中心10-15°的图像。因此,大脑如何代表整个视野中感知的场景仍然未知。这里,我们介绍了一种用于沉浸式场景表示的超广角显示和探针签名的方法。通过将投射的图像从角度镜弹跳到定制的弯曲屏幕上来实现175°的无障碍视图。为了避免知觉失真,场景是通过自定义虚拟环境中的宽视场创建的。我们发现身临其境的场景表示驱动具有远周边偏好的内侧皮层,但在经典场景区域显示最小的调制。Further,即使在极端的远外围刺激下,场景和面部选择区域也能保持其内容偏好,强调并不是所有的远外围信息都会自动集成到场景区域计算中。这项工作提供了关于内容与内容的澄清证据。场景表示中的外围偏好,并为研究沉浸式视觉开辟了新途径。
    While human vision spans 220°, traditional functional MRI setups display images only up to central 10-15°. Thus, it remains unknown how the brain represents a scene perceived across the full visual field. Here, we introduce a method for ultra-wide angle display and probe signatures of immersive scene representation. An unobstructed view of 175° is achieved by bouncing the projected image off angled-mirrors onto a custom-built curved screen. To avoid perceptual distortion, scenes are created with wide field-of-view from custom virtual environments. We find that immersive scene representation drives medial cortex with far-peripheral preferences, but shows minimal modulation in classic scene regions. Further, scene and face-selective regions maintain their content preferences even with extreme far-periphery stimulation, highlighting that not all far-peripheral information is automatically integrated into scene regions computations. This work provides clarifying evidence on content vs. peripheral preferences in scene representation and opens new avenues to research immersive vision.
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  • 文章类型: Journal Article
    大脑电路的生物详细模型是具有挑战性的建立和模拟由于大量的神经元,它们复杂的相互作用,和许多未知的生理参数。简化的数学模型更易于处理,但是当远离神经解剖学/生理学时,很难评估。我们提出了一个多尺度模型,粗粒度(CG),同时保留局部生物细节,在生物现实主义和可计算性之间提供了最好的平衡。本文提出了这样一个模型。一般来说,CG模型专注于神经元组之间的相互作用,这里称为“像素”,而不是单个细胞。在我们的案例中,动态在像素内和像素间尺度上交替更新,一个人通知另一个人,直到在两个尺度上都达到平衡。一个创新是我们如何利用潜在的生物学:利用大脑皮层局部解剖结构的相似性,我们将像素内动力学建模为由“外部”输入驱动的单个动力学系统。这些输入随像素外部的事件而变化,但它们的范围可以先验估计。与直接多尺度模拟相比,预先计算和制表所有潜在的局部响应显着加快了更新过程。我们使用灵长类视觉皮层模型来说明我们的方法。除了局部神经元到神经元的可变性(在任何CG近似中都必须丢失)之外,我们的模型以很小的计算成本再现了大规模网络模型的各种特征。这些包括神经元反应作为其取向选择性的结果,视觉神经元的主要功能。
    Biologically detailed models of brain circuitry are challenging to build and simulate due to the large number of neurons, their complex interactions, and the many unknown physiological parameters. Simplified mathematical models are more tractable, but harder to evaluate when too far removed from neuroanatomy/physiology. We propose that a multiscale model, coarse-grained (CG) while preserving local biological details, offers the best balance between biological realism and computability. This paper presents such a model. Generally, CG models focus on the interaction between groups of neurons-here termed \"pixels\"-rather than individual cells. In our case, dynamics are alternately updated at intra- and interpixel scales, with one informing the other, until convergence to equilibrium is achieved on both scales. An innovation is how we exploit the underlying biology: Taking advantage of the similarity in local anatomical structures across large regions of the cortex, we model intrapixel dynamics as a single dynamical system driven by \"external\" inputs. These inputs vary with events external to the pixel, but their ranges can be estimated a priori. Precomputing and tabulating all potential local responses speed up the updating procedure significantly compared to direct multiscale simulation. We illustrate our methodology using a model of the primate visual cortex. Except for local neuron-to-neuron variability (necessarily lost in any CG approximation) our model reproduces various features of large-scale network models at a tiny fraction of the computational cost. These include neuronal responses as a consequence of their orientation selectivity, a primary function of visual neurons.
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  • 文章类型: Journal Article
    高维脑活动通常被组织成低维神经流形。然而,视觉皮层的神经流形仍未得到充分研究。这里,我们研究了具有高时空分辨率的猕猴(Macacamulatta)区域V1,V4和DP的大规模多电极电生理记录。我们发现V1的种群活动包含两个独立的神经流形,与闭眼(睁眼/闭眼)密切相关,并且具有不同的维度。此外,我们发现从V4到V1的自上而下的强烈信号,特别是V1的中央凹区域,在睁眼期间明显更强。最后,平衡尖峰神经元网络的计算机模拟定性地再现了实验结果。一起来看,我们的分析和模拟表明,自上而下的信号调节了V1的种群活动。我们假设在睁眼期间自上而下的调制为V1准备了快速有效的视觉响应,导致一种视觉待机状态。
    High-dimensional brain activity is often organized into lower-dimensional neural manifolds. However, the neural manifolds of the visual cortex remain understudied. Here, we study large-scale multi-electrode electrophysiological recordings of macaque (Macaca mulatta) areas V1, V4, and DP with a high spatiotemporal resolution. We find that the population activity of V1 contains two separate neural manifolds, which correlate strongly with eye closure (eyes open/closed) and have distinct dimensionalities. Moreover, we find strong top-down signals from V4 to V1, particularly to the foveal region of V1, which are significantly stronger during the eyes-open periods. Finally, in silico simulations of a balanced spiking neuron network qualitatively reproduce the experimental findings. Taken together, our analyses and simulations suggest that top-down signals modulate the population activity of V1. We postulate that the top-down modulation during the eyes-open periods prepares V1 for fast and efficient visual responses, resulting in a type of visual stand-by state.
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