首页> 外文期刊>Neuropsychologia >Neural bases of peri-hand space plasticity through tool-use: insights from a combined computational-experimental approach.
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Neural bases of peri-hand space plasticity through tool-use: insights from a combined computational-experimental approach.

机译:通过使用工具来获得手周围空间可塑性的神经基础:来自组合计算-实验方法的见解。

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Visual peripersonal space (i.e., the space immediately surrounding the body) is represented by multimodal neurons integrating tactile stimuli applied on a body part with visual stimuli delivered near the same body part, e.g., the hand. Tool use may modify the boundaries of the peri-hand area, where vision and touch are integrated. The neural mechanisms underlying such plasticity have not been yet identified. To this aim, neural network modelling may be integrated with experimental research. In the present work, we pursued two main objectives: (i) using an artificial neural network to postulate some physiological mechanisms for peri-hand space plasticity in order to account for in-vivo data; (ii) validating model predictions with an ad-hoc behavioural experiment on an extinction patient. The model assumes that the modification of peri-hand space arises from a Hebbian growing of visual synapses converging into the multimodal area, which extends the visual receptive field (RF) of the peripersonal bimodal neurons. Under this hypothesis, the model is able to interpret and explain controversial results in the current literature, showing how different tool-use tasks during the learning phase result in different re-sizing effects of the peri-hand space. Importantly, the model also implies that, after tool-use, a far visual stimulus acts as a near one, independently of whether the tool is present or absent in the subject's hand. This prediction has been validated by an in-vivo experiment on a right brain-damaged patient suffering from visual-tactile extinction. This study demonstrates how neural network modelling may integrate with experimental studies, by generating new predictions and suggesting novel experiments to investigate cognitive processes.
机译:视觉人际空间(即,紧挨着身体的空间)由多模态神经元表示,该神经元将施加在身体部位的触觉刺激与在相同身体部位(例如手)附近传递的视觉刺激整合在一起。使用工具可能会改变视觉和触觉融合在一起的手围区域的边界。尚未确定这种可塑性的神经机制。为此,可以将神经网络建模与实验研究相结合。在目前的工作中,我们追求两个主要目标:(i)使用人工神经网络为手周围空间可塑性提出一些生理机制,以便解释体内数据; (ii)通过对绝种患者的临时行为实验来验证模型预测。该模型假定周手空间的改变是由于视觉突触的希伯来人增长而汇聚到多峰区域,从而扩展了人周双峰神经元的视觉感受野(RF)。在这种假设下,该模型能够解释和解释当前文献中的有争议的结果,表明在学习阶段不同的工具使用任务如何导致手围空间的不同大小调整效果。重要的是,该模型还暗示,在使用工具后,远距视觉刺激就像是近距离刺激,而与对象手中是否存在工具无关。这项预测已通过一项对患有视觉灭绝的右脑损伤患者的体内实验进行了验证。这项研究通过产生新的预测并提出新颖的实验来研究认知过程,证明了神经网络建模如何与实验研究相结合。

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