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Dynamic causal modelling of eye movements during pursuit: Confirming precision-encoding in V1 using MEG

机译:追踪过程中眼睛运动的动态因果模型:使用MEG确认V1中的精确编码

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摘要

This paper shows that it is possible to estimate the subjective precision (inverse variance) of Bayesian beliefs during oculomotor pursuit. Subjects viewed a sinusoidal target, with or without random fluctuations in its motion. Eye trajectories and magnetoencephalographic (MEG) data were recorded concurrently. The target was periodically occluded, such that its reappearance caused a visual evoked response field (ERF). Dynamic causal modelling (DCM) was used to fit models of eye trajectories and the ERFs. The DCM for pursuit was based on predictive coding and active inference, and predicts subjects' eye movements based on their (subjective) Bayesian beliefs about target (and eye) motion. The precisions of these hierarchical beliefs can be inferred from behavioural (pursuit) data. The DCM for MEG data used an established biophysical model of neuronal activity that includes parameters for the gain of superficial pyramidal cells, which is thought to encode precision at the neuronal level. Previous studies (using DCM of pursuit data) suggest that noisy target motion increases subjective precision at the sensory level: i.e., subjects attend more to the target's sensory attributes. We compared (noisy motion-induced) changes in the synaptic gain based on the modelling of MEG data to changes in subjective precision estimated using the pursuit data. We demonstrate that imprecise target motion increases the gain of superficial pyramidal cells in V1 (across subjects). Furthermore, increases in sensory precision – inferred by our behavioural DCM – correlate with the increase in gain in V1, across subjects. This is a step towards a fully integrated model of brain computations, cortical responses and behaviour that may provide a useful clinical tool in conditions like schizophrenia.
机译:本文表明,有可能估计动眼追踪过程中贝叶斯信念的主观精度(逆方差)。受试者观察到正弦目标,其运动有无随机波动。同时记录了眼部运动轨迹和脑磁图(MEG)数据。定期遮挡目标,使其重新出现会引起视觉诱发反应场(ERF)。动态因果模型(DCM)用于拟合眼部轨迹和ERF的模型。用于追踪的DCM基于预测编码和主动推理,并基于受试者对目标(和眼睛)运动的(主观)贝叶斯信念来预测受试者的眼球运动。这些层次信念的精确度可以从行为(追求)数据中推断出来。用于MEG数据的DCM使用了已建立的神经元活动的生物物理模型,其中包括用于浅表锥体细胞增益的参数,据认为该参数可编码神经元水平的精度。先前的研究(使用追踪数据的DCM)表明,嘈杂的目标运动会在感觉水平上提高主观精度:即,受试者对目标的感觉属性的关注程度更高。我们将基于MEG数据建模的突触增益变化(噪声引起的运动变化)与使用追踪数据估算的主观精度变化进行了比较。我们证明,不精确的目标运动会增加V1(跨对象)中浅表锥体细胞的增益。此外,感官精确度的提高(由我们的行为DCM推断)与跨对象的V1增益的提高相关。这是朝着大脑计算,皮质反应和行为的完全集成模型迈出的一步,该模型可以为精神分裂症等疾病提供有用的临床工具。

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