Ponzi Adam, Suzuki Keisuke
Center for Human Nature, Artificial Intelligence and Neuroscience (CHAIN), Hokkaido University, Japan.
Center for Human Nature, Artificial Intelligence and Neuroscience (CHAIN), Hokkaido University, Japan.
Neural Netw. 2025 Nov;191:107766. doi: 10.1016/j.neunet.2025.107766. Epub 2025 Jul 5.
Empirical studies of multisensory spatial perception have uncovered a puzzling array of findings. Illusions, such as the rubber-hand and ventriloquism, demonstrate that simultaneous but spatially separated multisensory stimuli are combined into a single unified percept, but only if they are not too far apart. Intriguingly, the perception of unity fluctuates strongly across apparently identical trials. Spatial localization belief also shows strong fluctuations across identical trials which increase with true spatial disparity, and are larger when beliefs are segregated. Fluctuations are much larger than can be accounted for by external sensory noise sources and also strongly depend on the sequence of preceding stimuli. Here we present a very general and minimal deterministic firing rate network model to explore how fluctuations in spatial localization belief - and the perception of whether these beliefs arise from a single cause - are influenced by the chaotic dynamics of a multisensory brain network. Our study examines the conditions under which these endogenous fluctuations emerge and how they contribute to the unified or segregated nature of perceptual experiences. Crucially, we find that multiple empirical effects observed in multisensory integration arise naturally when the network operates at the edge of chaos. We propose a new neuronal mechanism that estimates the probability of perceiving a unified cause which reflects the extent of network chaos. Additionally, we investigate the effects of varying visual reliability through visual blur and demonstrate that increasing visual blur enhances network chaos, thereby influencing the stability of unified and segregated perceptual states. Ultimately, we calculate explicit proprioceptive and visual beliefs by integrating the emergent internal spatial belief, the unity report probability, and sensory inputs, consistent with Bayesian Causal Inference. The model reproduces a large set of experimental findings, including negative bias in the less reliable sensory modality, increasing fluctuations at low disparity in segregated percepts, and the dependence of belief fluctuations on the sequence of previous stimuli. It makes several novel predictions and provides insights into the role of intrinsic network dynamics in shaping multisensory perception.
多感官空间感知的实证研究揭示了一系列令人困惑的发现。诸如橡皮手错觉和腹语错觉等错觉表明,同时出现但空间上分离的多感官刺激会被整合为一个单一的统一感知,但前提是它们的距离不能太远。有趣的是,在看似相同的试验中,统一感知的波动非常强烈。空间定位信念在相同试验中也表现出强烈波动,这种波动会随着真实空间差异的增加而增大,并且在信念分离时更大。这些波动比外部感官噪声源所能解释的要大得多,并且还强烈依赖于先前刺激的序列。在这里,我们提出了一个非常通用且极简的确定性发放率网络模型,以探究空间定位信念的波动——以及对这些信念是否源于单一原因的感知——是如何受到多感官脑网络混沌动力学影响的。我们的研究考察了这些内源性波动出现的条件,以及它们如何促成感知体验的统一或分离性质。至关重要的是,我们发现当网络在混沌边缘运行时,多感官整合中观察到的多种实证效应会自然出现。我们提出了一种新的神经元机制,该机制估计感知统一原因的概率,这反映了网络混沌的程度。此外,我们通过视觉模糊来研究视觉可靠性变化的影响,并证明增加视觉模糊会增强网络混沌,从而影响统一和分离感知状态的稳定性。最终,我们通过整合出现的内部空间信念、统一报告概率和感官输入来计算明确的本体感觉和视觉信念,这与贝叶斯因果推理一致。该模型再现了大量实验结果,包括在较不可靠的感官模态中的负偏差、分离感知中低视差时波动的增加,以及信念波动对先前刺激序列的依赖性。它还做出了一些新颖的预测,并为内在网络动力学在塑造多感官感知中的作用提供了见解。