Department of Psychological and Brain Sciences, Dartmouth College, USA.
Center for Mind/Brain Sciences, The University of Trento, Trento, Italy.
Neuroimage. 2018 Jun;173:509-517. doi: 10.1016/j.neuroimage.2018.02.019. Epub 2018 Feb 23.
Current neurobiological models assign a central role to predictive processes calibrated to environmental statistics. Neuroimaging studies examining the encoding of stimulus uncertainty have relied almost exclusively on manipulations in which stimuli were presented in a single sensory modality, and further assumed that neural responses vary monotonically with uncertainty. This has left a gap in theoretical development with respect to two core issues: (i) are there cross-modal brain systems that encode input uncertainty in way that generalizes across sensory modalities, and (ii) are there brain systems that track input uncertainty in a non-monotonic fashion? We used multivariate pattern analysis to address these two issues using auditory, visual and audiovisual inputs. We found signatures of cross-modal encoding in frontoparietal, orbitofrontal, and association cortices using a searchlight cross-classification analysis where classifiers trained to discriminate levels of uncertainty in one modality were tested in another modality. Additionally, we found widespread systems encoding uncertainty non-monotonically using classifiers trained to discriminate intermediate levels of uncertainty from both the highest and lowest uncertainty levels. These findings comprise the first comprehensive report of cross-modal and non-monotonic neural sensitivity to statistical regularities in the environment, and suggest that conventional paradigms testing for monotonic responses to uncertainty in a single sensory modality may have limited generalizability.
当前的神经生物学模型赋予了预测过程以适应环境统计的核心作用。研究刺激不确定性编码的神经影像学研究几乎完全依赖于刺激在单一感觉模态中呈现的操作,并且进一步假设神经反应与不确定性单调变化。这在理论发展方面留下了两个核心问题的空白:(i)是否存在跨模态的大脑系统,以跨感觉模态的方式对输入不确定性进行编码,以及(ii)是否存在以非单调方式跟踪输入不确定性的大脑系统?我们使用多变量模式分析使用听觉、视觉和视听输入来解决这两个问题。我们使用搜索光交叉分类分析在额顶叶、眶额和联合皮层中发现了跨模态编码的特征,其中在一种模态中训练以区分不确定性水平的分类器在另一种模态中进行测试。此外,我们发现广泛的系统使用分类器以非单调方式编码不确定性,这些分类器被训练以将中间不确定性水平与最高和最低不确定性水平区分开来。这些发现构成了对环境中统计规律的跨模态和非单调神经敏感性的第一个全面报告,并表明在单一感觉模态中测试对不确定性的单调反应的传统范式可能具有有限的通用性。