Watson David M, Andrews Timothy J
Department of Psychology and York Neuroimaging Centre, University of York, York, UK, YO10 5DD
Department of Psychology and York Neuroimaging Centre, University of York, York, UK, YO10 5DD.
J Neurosci. 2024 Nov 18;45(2). doi: 10.1523/JNEUROSCI.1318-24.2024.
A key challenge in understanding the functional organisation of visual cortex stems from the fact that only a small proportion of the objects experienced during natural viewing can be presented in a typical experiment. This constraint often leads to experimental designs that compare responses to objects from experimenter-defined stimulus conditions, potentially limiting the interpretation of the data. To overcome this issue, we used images from the THINGS initiative, which provides a systematic sampling of natural objects. A data-driven analysis was then applied to reveal the functional organisation of the visual brain, incorporating both perceptual and neural responses to these objects. Perceptual properties of the objects were taken from an analysis of similarity judgements, and neural properties were taken from whole brain fMRI responses to the same objects. Partial least squares regression (PLSR) was then used to predict neural responses across the brain from the perceptual properties while simultaneously applying dimensionality reduction. The PLSR model accurately predicted neural responses across visual cortex using only a small number of components. These components revealed smooth, graded neural topographies, which were similar in both hemispheres, and captured a variety of object properties including animacy, real-world size, and object category. However, they did not accord in any simple way with previous theoretical perspectives on object perception. Instead, our findings suggest that visual cortex encodes information in a statistically efficient manner, reflecting natural variability among objects. The ability to recognise objects is fundamental to how we interact with our environment, yet the organising principles underlying neural representations of visual objects remain contentious. In this study, we sought to address this question by analysing perceptual and neural responses to a large, unbiased sample of objects. Using a data-driven approach, we leveraged perceptual properties of objects to predict neural responses using a small number of components. This model predicted neural responses with a high degree of accuracy across visual cortex. The components did not directly align with previous explanations of object perception. Instead, our findings suggest the organisation of the visual brain is based on the statistical properties of objects in the natural world.
在自然观看过程中所经历的物体,只有一小部分能够在典型实验中呈现。这种限制常常导致实验设计只能比较对实验者定义的刺激条件下物体的反应,这可能会限制对数据的解释。为了克服这个问题,我们使用了来自THINGS计划的图像,该计划提供了自然物体的系统采样。然后应用数据驱动分析来揭示视觉脑的功能组织,将对这些物体的感知和神经反应都纳入其中。物体的感知属性来自相似性判断分析,神经属性则来自对相同物体的全脑功能磁共振成像反应。然后使用偏最小二乘回归(PLSR)从感知属性预测全脑的神经反应,同时进行降维。PLSR模型仅使用少量成分就能准确预测视觉皮层的神经反应。这些成分揭示了平滑的、渐变的神经地形图,在两个半球中相似,并捕捉了包括生动性、真实世界大小和物体类别在内的各种物体属性。然而,它们与先前关于物体感知的理论观点没有任何简单的对应关系。相反,我们的研究结果表明,视觉皮层以统计有效的方式编码信息,反映了物体之间的自然变异性。识别物体的能力是我们与环境交互方式的基础,但视觉物体神经表征背后的组织原则仍存在争议。在这项研究中,我们试图通过分析对大量无偏物体样本的感知和神经反应来解决这个问题。使用数据驱动的方法,我们利用物体的感知属性,用少量成分预测神经反应。这个模型在视觉皮层上以高度准确性预测神经反应。这些成分并没有直接与先前对物体感知的解释相一致。相反,我们的研究结果表明,视觉脑的组织是基于自然界中物体的统计属性。