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Synthetic brain imaging: grasping, mirror neurons and imitation.

机译:合成脑成像:抓取,镜像神经元和模仿。

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The article contributes to the quest to relate global data on brain and behavior (e.g. from PET, Positron Emission Tomography, and fMRI. functional Magnetic Resonance Imaging) to the underpinning neural networks. Models tied to human brain imaging data often focus on a few "boxes" based on brain regions associated with exceptionally high blood flow, rather than analyzing the cooperative computation of multiple brain regions. For analysis directly at the level of such data, a schema-based model may be most appropriate. To further address neurophysiological data, the Synthetic PET imaging method uses computational models of biological neural circuitry based on animal data to predict and analyze the results of human PET studies. This technique makes use of the hypothesis that rCBF (regional cerebral blood flow) is correlated with the integrated synaptic activity in a localized brain region. We also describe the possible extension of the Synthetic PET method to fMRI. The second half of the paper then exemplifies this general research program with two case studies, one on visuo-motor processing for control of grasping (Section 3 in which the focus is on Synthetic PET) and the imitation of motor skills (Sections 4 and 5, with a focus on Synthetic fMRI). Our discussion of imitation pays particular attention to data on the mirror system in monkey (neural circuitry which allows the brain to recognize actions as well as execute them). Finally, Section 6 outlines the immense challenges in integrating models of different portions of the nervous system which address detailed neurophysiological data from studies of primates and other species; summarizes key issues for developing the methodology of Synthetic Brain Imaging; and shows how comparative neuroscience and evolutionary arguments will allow us to extend Synthetic Brain Imaging even to language and other cognitive functions for which few or no animal data are available.
机译:本文致力于将有关大脑和行为的全球数据(例如来自PET,正电子发射断层扫描和fMRI,功能磁共振成像)与基础神经网络相关联。与人类大脑成像数据相关的模型通常集中在基于与异常高血流相关的大脑区域的几个“盒子”上,而不是分析多个大脑区域的协同计算。对于直接在此类数据级别进行分析,基于模式的模型可能是最合适的。为了进一步处理神经生理学数据,合成PET成像方法使用基于动物数据的生物神经回路计算模型来预测和分析人类PET研究的结果。该技术利用了rCBF(区域性脑血流)与局部脑区域中整合的突触活动相关的假设。我们还描述了合成PET方法对fMRI的可能扩展。然后,本文的后半部分通过两个案例研究来举例说明此一般性研究计划,一个案例研究是用于控制抓握的视觉运动处理(第3节,重点是合成PET)和模仿运动技能(第4和第5节) ,重点是合成功能磁共振成像)。我们对模仿的讨论要特别注意猴子的镜子系统(神经电路,它使大脑能够识别并执行动作)上的数据。最后,第6节概述了整合神经系统不同部分的模型所面临的巨大挑战,这些模型处理了来自灵长类和其他物种的详细神经生理学数据。总结了开发合成脑成像方法的关键问题;并展示了比较神经科学和进化论证将如何使我们将合成脑成像技术扩展到语言或其他认知功能,而这些语言和其他认知功能几乎没有动物数据。

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