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一种用于早期视觉皮层区域视网膜图像映射的方法。

A method for mapping retinal images in early visual cortical areas.

机构信息

Civitan International Research Center, University of Alabama at Birmingham, Birmingham, AL; Department of Neurobiology, University of Alabama at Birmingham, Birmingham, AL.

Civitan International Research Center, University of Alabama at Birmingham, Birmingham, AL; Department of Neurobiology, University of Alabama at Birmingham, Birmingham, AL.

出版信息

Neuroimage. 2021 Dec 15;245:118737. doi: 10.1016/j.neuroimage.2021.118737. Epub 2021 Nov 16.

Abstract

The visual cortex has been a heavily studied region in neuroscience due to many factors, not the least of which is its well-defined retinotopic organization. This organization makes it possible to predict the general location of cortical regions that stimuli will activate during visual tasks. However, the precise and accurate mapping of these regions in human patients takes time, effort, and participant compliance that can be difficult in many patient populations. In humans, this retino-cortical mapping has typically been done using functional localizers which maximally activate the area of interest, and then the activation profile is thresholded and converted to a binary mask region of interest (ROI). An alternative method involves performing population receptive field (pRF) mapping of the whole visual field and choosing vertices whose pRF centers fall within the stimulus. This method ignores the spatial extent of the pRF which changes dramatically between central and peripheral vision. Both methods require a dedicated functional scan and depend on participants' stable fixation. The aim of this project was to develop a user-friendly method that can transform a retinal object of interest (for example, an image, a retinal lesion, or a preferred locus for fixation) from retinal space to its expected representation on the cortical surface without a functional scan. We modeled the retinal representation of each cortical vertex as a 2D Gaussian with a location and spatial extent given by a previously published retinotopic atlas. To identify how affected any cortical vertex would be by a given retinal object, we took the product of the retinal object with the Gaussian pRF of that cortical vertex. Normalizing this value gives the expected response of a given vertex to the retinal object. This method was validated using BOLD data obtained using a localizer with discrete visual stimuli, and showed good agreement to predicted values. Cortical localization of a visual stimulus or retinal defect can be obtained using our publicly available software, without a functional scan. Our software may benefit research with disease populations who have trouble maintaining stable fixation.

摘要

由于许多因素,视觉皮层一直是神经科学中研究的重点区域,其中最重要的因素是其明确的视网膜组织。这种组织使得在进行视觉任务时,可以预测刺激将激活的皮质区域的大致位置。然而,在人类患者中,对这些区域进行精确和准确的映射需要时间、精力和参与者的配合,而在许多患者群体中,这些都很难实现。在人类中,这种视网膜-皮质映射通常使用功能定位器来完成,这些定位器最大限度地激活感兴趣的区域,然后对激活谱进行阈值处理,并将其转换为感兴趣区域的二进制掩模。另一种方法涉及对整个视野进行群体感受野 (pRF) 映射,并选择其 pRF 中心落在刺激物内的顶点。这种方法忽略了 pRF 的空间范围,该范围在中央和周边视觉之间发生了巨大变化。这两种方法都需要专门的功能扫描,并且依赖于参与者的稳定注视。本项目的目的是开发一种用户友好的方法,可以将感兴趣的视网膜对象(例如图像、视网膜病变或注视的首选位置)从视网膜空间转换为其在皮质表面上的预期表示,而无需进行功能扫描。我们将每个皮质顶点的视网膜表示建模为具有位置和空间范围的二维高斯分布,该位置和空间范围由先前发布的视网膜图谱给出。为了确定给定的视网膜对象会对任何皮质顶点产生多大的影响,我们将视网膜对象与该皮质顶点的高斯 pRF 相乘。对这个值进行归一化可以得到给定顶点对视网膜对象的预期反应。该方法使用具有离散视觉刺激的定位器获得的 BOLD 数据进行了验证,并且与预测值吻合良好。无需进行功能扫描,即可使用我们提供的公共软件获得视觉刺激或视网膜缺陷的皮质定位。我们的软件可能对患有难以保持稳定注视的疾病人群的研究有帮助。

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本文引用的文献

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Bayesian analysis of retinotopic maps.贝叶斯分析视皮层图谱。
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Tonotopic mapping of human auditory cortex.人类听觉皮层的声拓扑图。
Hear Res. 2014 Jan;307:42-52. doi: 10.1016/j.heares.2013.07.016. Epub 2013 Aug 2.

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