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A Common Space Approach to Comparative Neuroscience
Annual Review of Neuroscience ( IF 13.9 ) Pub Date : 2021-07-08 , DOI: 10.1146/annurev-neuro-100220-025942
Rogier B. Mars, Saad Jbabdi, Matthew F.S. Rushworth

Comparative neuroscience is entering the era of big data. New high-throughput methods and data-sharing initiatives have resulted in the availability of large, digital data sets containing many types of data from ever more species. Here, we present a framework for exploiting the new possibilities offered. The multimodality of the data allows vertical translations, which are comparisons of different aspects of brain organization within a single species and across scales. Horizontal translations compare particular aspects of brain organization across species, often by building abstract feature spaces. Combining vertical and horizontal translations allows for more sophisticated comparisons, including relating principles of brain organization across species by contrasting horizontal translations, and for making formal predictions of unobtainable data based on observed results in a model species.

中文翻译:


比较神经科学的共同空间方法

比较神经科学正在进入大数据时代。新的高通量方法和数据共享计划导致大型数字数据集的可用性,其中包含来自更多物种的多种类型的数据。在这里,我们提出了一个利用所提供的新可能性的框架。数据的多模态允许垂直翻译,这是对单个物种和跨尺度的大脑组织不同方面的比较。水平翻译通常通过构建抽象特征空间来比较跨物种大脑组织的特定方面。结合垂直和水平翻译可以进行更复杂的比较,包括通过对比水平翻译来关联跨物种的大脑组织原理,

更新日期:2021-07-09
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