A Neurorobotics Simulation of Autistic Behavior Induced by Unusual Sensory Precision.

Hayato Idei, Shingo Murata, Yiwen Chen, Yuichi Yamashita, Jun Tani, Tetsuya Ogata
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引用次数: 24

Abstract

Recently, applying computational models developed in cognitive science to psychiatric disorders has been recognized as an essential approach for understanding cognitive mechanisms underlying psychiatric symptoms. Autism spectrum disorder is a neurodevelopmental disorder that is hypothesized to affect information processes in the brain involving the estimation of sensory precision (uncertainty), but the mechanism by which observed symptoms are generated from such abnormalities has not been thoroughly investigated. Using a humanoid robot controlled by a neural network using a precision-weighted prediction error minimization mechanism, it is suggested that both increased and decreased sensory precision could induce the behavioral rigidity characterized by resistance to change that is characteristic of autistic behavior. Specifically, decreased sensory precision caused any error signals to be disregarded, leading to invariability of the robot’s intention, while increased sensory precision caused an excessive response to error signals, leading to fluctuations and subsequent fixation of intention. The results may provide a system-level explanation of mechanisms underlying different types of behavioral rigidity in autism spectrum and other psychiatric disorders. In addition, our findings suggest that symptoms caused by decreased and increased sensory precision could be distinguishable by examining the internal experience of patients and neural activity coding prediction error signals in the biological brain.

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Abstract Image

异常感觉精度诱导自闭症行为的神经机器人模拟。
最近,将认知科学发展的计算模型应用于精神疾病已被认为是理解精神症状背后的认知机制的重要途径。自闭症谱系障碍是一种神经发育障碍,它被认为会影响大脑中的信息处理,包括对感觉精度(不确定性)的估计,但观察到的症状产生于这种异常的机制尚未得到彻底的研究。采用基于精度加权预测误差最小化机制的神经网络控制人形机器人,结果表明感官精度的提高和降低都可能诱发自闭症行为特征中以抗拒变化为特征的行为刚性。具体来说,感官精度的降低会导致任何错误信号被忽略,从而导致机器人意图的不变性,而感官精度的提高会导致机器人对错误信号的过度反应,从而导致机器人意图的波动和随后的固定。该结果可能为自闭症谱系和其他精神疾病中不同类型行为僵化的机制提供系统层面的解释。此外,我们的研究结果表明,通过检查患者的内部体验和生物脑中的神经活动编码预测错误信号,可以区分由感觉精度降低和增加引起的症状。
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来源期刊
CiteScore
4.30
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审稿时长
17 weeks
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