用高斯过程建模量化视网膜异位图。

IF 2.3 4区 心理学 Q2 OPHTHALMOLOGY
Sebastian Waz, Yalin Wang, Zhong-Lin Lu
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引用次数: 0

摘要

视觉神经科学家使用依赖于血氧水平的功能磁共振成像数据来描绘人类皮层上视野表征的结构和边界,这一过程被称为视网膜定位图。虽然群体接受野(PRF)模型有助于皮质体素的接受野估计,但视网膜定位图的量化仍然面临挑战。在体内,视网膜定位区域表现出一致的拓扑结构,但这种拓扑结构的建模经常受到有限的分辨率和低信噪比的干扰。此外,缺乏自动隔离视觉区域,包括中央凹。我们通过三个创新来解决这些挑战:(1)扩展极角参数化,(2)皮质锚点识别,以及(3)通过高斯过程模型进行地图估计。与线性回归相比,高斯过程提供了显著改善的估计泛化误差,并将来自人类连接组项目的181名受试者的左半球总分析皮层网格的估计图的拓扑违例率从49.2%降低到31.5%。该算法自动定义了6个离散视觉区域之间的精确边界,沿该边界的平均95%可信区间宽度为0.104 π rad,沿估计的3°偏心轮廓线,平均95%可信区间宽度为0.586°。我们估计,在所有受试者中,fMRI显示的中央凹汇合处比枕极更偏向于背侧和内侧。这种高斯过程建模方法为量化视网膜定位图提供了一种更准确、更可靠的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quantification of retinotopic maps with a Gaussian process modeling.

Visual neuroscientists use blood oxygenation level-dependent fMRI data to delineate the structure and boundaries of visual-field representations on the human cortex, a process called retinotopic mapping. Although the population receptive field (PRF) model facilitates receptive-field estimation for cortical voxels, retinotopic map quantification still faces challenges. In vivo, retinotopic areas exhibit consistent topology, but modeling this topology is often disrupted by limited resolution and low signal-to-noise ratio. Additionally, automated segregation of visual areas, including the fovea, is lacking. We address these challenges with three innovations: (1) extended polar angle parametrization, (2) cortical anchor point identification, and (3) map estimation via a Gaussian process model. The Gaussian process provided significantly improved estimated generalization error than linear regression and reduced topological violations in estimated maps from 49.2% to 31.5% along the total analyzed cortical mesh from the left hemispheres of 181 subjects from the Human Connectome Project. It automatically defined precise boundaries between the six discrete visual areas, along which the mean 95% credible interval width was 0.104 π rad. Along the estimated eccentricity contour of 3°, the mean 95% credible interval width was 0.586°. We estimated the foveal confluence location from fMRI to be systematically more dorsal and medial than the occipital pole across all subjects. This Gaussian process modeling approach offers a more accurate and reliable method for quantifying retinotopic maps.

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来源期刊
Journal of Vision
Journal of Vision 医学-眼科学
CiteScore
2.90
自引率
5.60%
发文量
218
审稿时长
3-6 weeks
期刊介绍: Exploring all aspects of biological visual function, including spatial vision, perception, low vision, color vision and more, spanning the fields of neuroscience, psychology and psychophysics.
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