Queensland Brain Institute, The University of Queensland, St Lucia, Queensland 4072, Australia
School of Economics, The University of Queensland, St Lucia, Queensland 4072, Australia.
J Neurosci. 2024 Aug 14;44(33):e2368232024. doi: 10.1523/JNEUROSCI.2368-23.2024.
The ability to make accurate and timely decisions, such as judging when it is safe to cross the road, is the foundation of adaptive behavior. While the computational and neural processes supporting simple decisions on isolated stimuli have been well characterized, decision-making in the real world often requires integration of discrete sensory events over time and space. Most previous experimental work on perceptual decision-making has focused on tasks that involve only a single, task-relevant source of sensory input. It remains unclear, therefore, how such integrative decisions are regulated computationally. Here we used psychophysics, electroencephalography, and computational modeling to understand how the human brain combines visual motion signals across space in the service of a single, integrated decision. To that purpose, we presented two random-dot kinematograms in the left and the right visual hemifields. Coherent motion signals were shown briefly and concurrently in each location, and healthy adult human participants of both sexes reported the average of the two motion signals. We directly tested competing predictions arising from influential serial and parallel accounts of visual processing. Using a biologically plausible model of motion filtering, we found evidence in favor of parallel integration as the fundamental computational mechanism regulating integrated perceptual decisions.
做出准确和及时决策的能力,例如判断何时安全过马路,是适应性行为的基础。虽然支持对孤立刺激进行简单决策的计算和神经过程已经得到很好的描述,但在现实世界中进行决策通常需要在时间和空间上整合离散的感官事件。大多数以前关于感知决策的实验工作都集中在仅涉及单一、与任务相关的感官输入源的任务上。因此,尚不清楚这种综合决策是如何在计算上进行调节的。在这里,我们使用心理物理学、脑电图和计算建模来了解大脑如何在单个集成决策中跨空间组合视觉运动信号。为此,我们在左、右视野中呈现两个随机点运动图。在每个位置短暂且同时显示连贯的运动信号,男女健康成年参与者报告两个运动信号的平均值。我们直接测试了视觉处理的有影响力的串行和并行解释所产生的竞争预测。使用运动滤波的生物合理模型,我们发现证据支持并行集成作为调节综合感知决策的基本计算机制。