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Landmark-Driven, Atlas-Based Segmentation of Mouse Brain Tissue Images Containing Gene Expression Data

机译:含有基因表达数据的小鼠脑组织图像的地标驱动,基于地图集的基于地图分割

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摘要

To better understand the development and function of the mammalian brain, researchers have begun to systematically collect a large number of gene expression patterns throughout the mouse brain using technology recently developed for this task. Associating specific gene activity with specific functional locations in the brain anatomy results in a greater understanding of the role of the gene's products. To perform such an association for a large amount of data, reliable automated methods that characterize the distribution of gene expression in relation to a standard anatomical model are required. In this paper, we present an anatomical landmark detection method that has been incorporated into an atlas-based segmentation. The addition of this technique significantly increases the accuracy of automated atlas-deformation. The resulting large-scale annotation will help scientists interpret gene expression patterns more rapidly and accurately.
机译:为了更好地了解哺乳动物大脑的发展和功能,研究人员已经开始使用最近为此任务开发的技术系统地收集整个小鼠脑中的大量基因表达模式。将特定基因活性与脑解剖学中的特定功能位置相关联导致对基因产品的作用进行更大的理解。为了对大量数据进行这种关联,需要表征与标准解剖模型相关的基因表达分布的可靠自动化方法。在本文中,我们提出了一种解剖标志标准检测方法,该方法已被纳入基于地图集的分段。这种技术的添加显着提高了自动图集变形的准确性。由此产生的大规模注释将帮助科学家更快,准确地解释基因表达模式。

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