The Rockefeller University, New York, NY 10065.
Proc Natl Acad Sci U S A. 2013 Oct 22;110(43):E4108-17. doi: 10.1073/pnas.1317019110. Epub 2013 Oct 7.
The visual system uses continuity as a cue for grouping oriented line segments that define object boundaries in complex visual scenes. Many studies support the idea that long-range intrinsic horizontal connections in early visual cortex contribute to this grouping. Top-down influences in primary visual cortex (V1) play an important role in the processes of contour integration and perceptual saliency, with contour-related responses being task dependent. This suggests an interaction between recurrent inputs to V1 and intrinsic connections within V1 that enables V1 neurons to respond differently under different conditions. We created a network model that simulates parametrically the control of local gain by hypothetical top-down modification of local recurrence. These local gain changes, as a consequence of network dynamics in our model, enable modulation of contextual interactions in a task-dependent manner. Our model displays contour-related facilitation of neuronal responses and differential foreground vs. background responses over the neuronal ensemble, accounting for the perceptual pop-out of salient contours. It quantitatively reproduces the results of single-unit recording experiments in V1, highlighting salient contours and replicating the time course of contextual influences. We show by means of phase-plane analysis that the model operates stably even in the presence of large inputs. Our model shows how a simple form of top-down modulation of the effective connectivity of intrinsic cortical connections among biophysically realistic neurons can account for some of the response changes seen in perceptual learning and task switching.
视觉系统利用连续性作为线索,将定义复杂视觉场景中物体边界的定向线段组合在一起。许多研究支持这样一种观点,即早期视觉皮层中的长程内在水平连接有助于这种分组。初级视觉皮层 (V1) 中的自上而下的影响在轮廓整合和感知显着性的过程中起着重要作用,轮廓相关的反应是任务依赖的。这表明 V1 中的递归输入和内在连接之间存在相互作用,使 V1 神经元在不同条件下以不同的方式做出反应。我们创建了一个网络模型,通过假设自上而下的局部递归修改来模拟局部增益的参数控制。由于我们模型中的网络动态,这些局部增益变化能够以任务依赖的方式调制上下文交互。我们的模型显示出神经元反应的轮廓相关促进作用,以及神经元集合中前景与背景的差异反应,说明了显着轮廓的感知突出。它定量再现了 V1 中单单元记录实验的结果,突出了显着的轮廓,并复制了上下文影响的时间过程。通过相平面分析,我们表明即使存在大输入,该模型也能稳定运行。我们的模型展示了一种简单形式的自上而下的调制如何能够解释在感知学习和任务转换中观察到的一些反应变化,这种调制是内在皮质连接的有效连接的形式。