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Automatically Characterizing Sensory-Motor Patterns Underlying Reach-to-Grasp Movements on a Physical Depth Inversion Illusion

机译:在物理深度反转错觉上自动表征触手可及的运动背后的感觉电机模式

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Recently, movement variability has been of great interest to motor control physiologists as it constitutes a physical, quantifiable form of sensory feedback to aid in planning, updating, and executing complex actions. In marked contrast, the psychological and psychiatric arenas mainly rely on verbal descriptions and interpretations of behavior via observation. Consequently, a large gap exists between the body's manifestations of mental states and their descriptions, creating a disembodied approach in the psychological and neural sciences: contributions of the peripheral nervous system to central control, executive functions, and decision-making processes are poorly understood. How do we shift from a psychological, theorizing approach to characterize complex behaviors more objectively? We introduce a novel, objective, statistical framework, and visuomotor control paradigm to help characterize the stochastic signatures of minute fluctuations in overt movements during a visuomotor task. We also quantify a new class of covert movements that spontaneously occur without instruction. These are largely beneath awareness, but inevitably present in all behaviors. The inclusion of these motions in our analyses introduces a new paradigm in sensory-motor integration. As it turns out, these movements, often overlooked as motor noise, contain valuable information that contributes to the emergence of different kinesthetic percepts. We apply these new methods to help better understand perception-action loops. To investigate how perceptual inputs affect reach behavior, we use a depth inversion illusion (DII): the same physical stimulus produces two distinct depth percepts that are nearly orthogonal, enabling a robust comparison of competing percepts. We find that the moment-by-moment empirically estimated motor output variability can inform us of the participants' perceptual states, detecting physiologically relevant signals from the peripheral nervous system that reveal internal mental states evoked by the bi-stable illusion. Our work proposes a new statistical platform to objectively separate changes in visual perception by quantifying the unfolding of movement, emphasizing the importance of including in the motion analyses all overt and covert aspects of motor behavior.
机译:最近,运动可变性已引起运动控制生理学家的极大兴趣,因为它构成了一种物理的,可量化的感觉反馈形式,有助于计划,更新和执行复杂的动作。与之形成鲜明对比的是,心理和精神病学领域主要依靠口头描述和行为观察来解释。因此,人体的精神状态表现与其描述之间存在很大的差距,从而在心理学和神经科学中创建了一种不具体的方法:人们对外围神经系统对中枢控制,执行功能和决策过程的贡献知之甚少。我们如何从心理学的理论方法转变为更客观地表征复杂行为?我们介绍了一种新颖,客观,统计的框架和视觉运动控制范式,以帮助描述在视觉运动任务期间明显运动中微小波动的随机特征。我们还量化了无需指示即可自发发生的一类新的秘密运动。这些很大程度上处于意识之下,但不可避免地存在于所有行为中。这些运动包括在我们的分析中引入了感觉运动整合的新范式。事实证明,这些通常被忽略为运动噪音的运动包含了有助于形成不同运动感觉觉的有价值的信息。我们应用这些新方法来帮助更好地理解感知行为循环。为了研究知觉输入如何影响触及行为,我们使用深度反转错觉(DII):相同的物理刺激会产生两个不同的,接近正交的深度知觉,从而可以对竞争性知觉进行可靠的比较。我们发现,通过瞬时的经验估算出的运动输出波动可以告知我们参与者的知觉状态,检测到来自周围神经系统的生理相关信号,这些信号揭示了由双稳态错觉引起的内部心理状态。我们的工作提出了一个新的统计平台,可以通过量化运动的展开来客观地区分视觉感知的变化,并强调在运动分析中包括运动行为的所有公开和秘密方面的重要性。

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