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Decoding the anatomical network of spatial attention

机译:解码空间关注的解剖网络

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摘要

The study of stroke patients with modern lesion-symptom analysis techniques has yielded valuable insights into the representation of spatial attention in the human brain. Here we introduce an approach-multivariate pattern analysis-that no longer assumes independent contributions of brain regions but rather quantifies the joint contribution of multiple brain regions in determining behavior. In a large sample of stroke patients, we found patterns of damage more predictive of spatial neglect than the best-performing single voxel. In addition, modeling multiple brain regions-those that are frequently damaged and, importantly, spared-provided more predictive information than modeling single regions. Interestingly, we also found that the superior temporal gyrus demonstrated a consistent ability to improve classifier performance when added to other regions, implying uniquely predictive information. In sharp contrast, classifier performance for both the angular gyrus and insular cortex was reliably enhanced by the addition of other brain regions, suggesting these regions lack independent predictive information for spatial neglect. Our findings highlight the utility of multivariate pattern analysis in lesion mapping, furnishing neuroscience with a modern approach for using lesion data to study human brain function.
机译:用现代病灶-症状分析技术对中风患者的研究对人脑中空间注意力的表示产生了有价值的见解。在这里,我们介绍了一种方法-多变量模式分析-不再假设大脑区域具有独立的作用,而是在确定行为时量化多个大脑区域的联合作用。在大量的中风患者样本中,我们发现,与表现最佳的单个体素相比,损伤的模式更能预测空间的忽略。此外,与对单个区域建模相比,对多个大脑区域建模-经常被损坏的大脑区域,重要的是,提供了更多的预测信息。有趣的是,我们还发现,当添加到其他区域时,上级颞回显示出持续提高分类器性能的能力,这暗示了独特的预测信息。与之形成鲜明对比的是,通过添加其他大脑区域,可以可靠地增强对角回和岛状皮质的分类器性能,这表明这些区域缺乏空间忽略的独立预测信息。我们的发现凸显了多元模式分析在病灶映射中的实用性,为神经科学提供了一种使用病灶数据来研究人脑功能的现代方法。

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