4.4 Article

Bridging physiological and perceptual views of autism by means of sampling-based Bayesian inference

Journal

NETWORK NEUROSCIENCE
Volume 6, Issue 1, Pages 196-212

Publisher

MIT PRESS
DOI: 10.1162/netn_a_00219

Keywords

Autism; Neural circuits; Inhibitory dysfunction; Hypopriors; Sampling-based inference

Categories

Funding

  1. Santa Fe Agency for Science, Technology, and Innovation [IO-138-19]

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This study combines two different views of autism, altered probabilistic computations and inhibitory dysfunction, using a trained recurrent neural network model that performs sampling-based inference in a visual setting. The model also captures various experimental observations on neural variability and oscillations in individuals with autism. By linking neural connectivity, dynamics, and function, this work contributes to understanding the physiological underpinnings of perceptual traits in autism spectrum disorder.
Theories for autism spectrum disorder (ASD) have been formulated at different levels, ranging from physiological observations to perceptual and behavioral descriptions. Understanding the physiological underpinnings of perceptual traits in ASD remains a significant challenge in the field. Here we show how a recurrent neural circuit model that was optimized to perform sampling-based inference and displays characteristic features of cortical dynamics can help bridge this gap. The model was able to establish a mechanistic link between two descriptive levels for ASD: a physiological level, in terms of inhibitory dysfunction, neural variability, and oscillations, and a perceptual level, in terms of hypopriors in Bayesian computations. We took two parallel paths-inducing hypopriors in the probabilistic model, and an inhibitory dysfunction in the network model-which lead to consistent results in terms of the represented posteriors, providing support for the view that both descriptions might constitute two sides of the same coin. Author Summary Two different views of autism, one regarding altered probabilistic computations, and one regarding inhibitory dysfunction, are brought together by means of a recurrent neural network model trained to perform sampling-based inference in a visual setting. Moreover, the model captures a variety of experimental observations regarding differences in neural variability and oscillations in subjects with autism. By linking neural connectivity, dynamics, and function, this work contributes to the understanding of the physiological underpinnings of perceptual traits in autism spectrum disorder.

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