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Automatic registration of imaging mass spectrometry data to the Allen Brain Atlas transcriptome

机译:将成像质谱数据自动注册到Allen Brain Atlas转录组

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Imaging Mass Spectrometry (IMS) is an emerging molecular imaging technology that provides spatially resolved information on biomolecular structures; each image pixel effectively represents a molecular mass spectrum. By combining the histological images and IMS-images, neuroanatomical structures can be distinguished based on their biomolecular features as opposed to morphological features. The combination of IMS data with spatially resolved gene expression maps of the mouse brain, as provided by the Allen Mouse Brain atlas, would enable comparative studies of spatial metabolic and gene expression patterns in life-sciences research and biomarker discovery. As such, it would be highly desirable to spatially register IMS slices to the Allen Brain Atlas (ABA). In this paper, we propose a multi-step automatic registration pipeline to register ABA histology to IMS-images. Key novelty of the method is the selection of the best reference section from the ABA, based on pre-processed histology sections. First, we extracted a hippocampus-specific geometrical feature from the given experimental histological section to initially localize it among the ABA sections. Then, feature-based linear registration is applied to the initially localized section and its two neighbors in the ABA to select the most similar reference section. A non-rigid registration yields a one-to-one mapping of the experimental IMS slice to the ABA. The pipeline was applied on 6 coronal sections from two mouse brains, showing high anatomical correspondence, demonstrating the feasibility of complementing biomolecule distributions from individual mice with the genome-wide ABA transcriptome.
机译:成像质谱(IMS)是一种新兴的分子成像技术,可提供有关生物分子结构的空间分辨信息。每个图像像素有效地代表了一个分子质谱。通过组合组织学图像和IMS图像,可以基于其生物分子特征而不是形态特征来区分神经解剖结构。 IMS数据与艾伦老鼠大脑图集提供的老鼠大脑在空间上可分辨的基因表达图的结合,将使生命科学研究和生物标记物发现中空间代谢和基因表达模式的比较研究成为可能。因此,非常需要将IMS切片在空间上注册到Allen Brain Atlas(ABA)。在本文中,我们提出了一个多步骤自动配准流水线来将ABA组织学配准到IMS图像。该方法的关键新颖之处在于,根据预处理的组织学切片,从ABA中选择最佳参考切片。首先,我们从给定的实验组织学部分中提取了海马特定的几何特征,以将其最初定位在ABA部分中。然后,将基于特征的线性配准应用于ABA中的初始局部区域及其两个相邻区域,以选择最相似的参考区域。非刚性配准产生实验IMS切片到ABA的一对一映射。该管道应用于两个老鼠大脑的6个冠状切片,显示出很高的解剖学对应性,证明了用全基因组ABA转录组补充单个老鼠的生物分子分布的可行性。

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