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Nonoptimal Component Placement, but Short Processing Paths, due to Long-Distance Projections in Neural Systems

机译:神经系统中的长距离投影,导致组件放置不理想,但处理路径短

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摘要

It has been suggested that neural systems across several scales of organization show optimal component placement, in which any spatial rearrangement of the components would lead to an increase of total wiring. Using extensive connectivity datasets for diverse neural networks combined with spatial coordinates for network nodes, we applied an optimization algorithm to the network layouts, in order to search for wire-saving component rearrangements. We found that optimized component rearrangements could substantially reduce total wiring length in all tested neural networks. Specifically, total wiring among 95 primate (Macaque) cortical areas could be decreased by 32%, and wiring of neuronal networks in the nematode Caenorhabditis elegans could be reduced by 48% on the global level, and by 49% for neurons within frontal ganglia. Wiring length reductions were possible due to the existence of long-distance projections in neural networks. We explored the role of these projections by comparing the original networks with minimally rewired networks of the same size, which possessed only the shortest possible connections. In the minimally rewired networks, the number of processing steps along the shortest paths between components was significantly increased compared to the original networks. Additional benchmark comparisons also indicated that neural networks are more similar to network layouts that minimize the length of processing paths, rather than wiring length. These findings suggest that neural systems are not exclusively optimized for minimal global wiring, but for a variety of factors including the minimization of processing steps.
机译:已经提出,跨多个组织规模的神经系统显示出最佳的组件放置,其中组件的任何空间重排都会导致总布线的增加。通过将用于各种神经网络的广泛连接数据集与网络节点的空间坐标相结合,我们将优化算法应用于网络布局,以搜索节省线路的组件重排。我们发现优化的组件重排可以显着减少所有经过测试的神经网络的总布线长度。具体而言,在全球范围内,可将95个灵长类(猕猴)皮质区域中的总布线减少32%,并将线虫秀丽隐杆线虫中的神经元网络的布线减少48%,将额神经节内的神经元的布线减少49%。由于神经网络中存在长距离投影,因此可以减少接线长度。我们通过将原始网络与相同大小,仅具有最短连接的最小重布线网络进行比较,探索了这些预测的作用。在最少重新布线的网络中,与原始网络相比,沿着组件之间最短路径的处理步骤数量大大增加。额外的基准测试比较还表明,神经网络与网络布局更相似,后者将处理路径的长度(而不是布线长度)最小化。这些发现表明,神经系统并不仅针对最小的全局布线进行了优化,还针对包括最小化处理步骤在内的多种因素进行了优化。

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  • 年度 2006
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  • 原文格式 PDF
  • 正文语种 {"code":"en","name":"English","id":9}
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