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首页> 外文期刊>Analytical chemistry >Automated Anatomical Interpretation of Ion Distributions in Tissue: Linking Imaging Mass Spectrometry to Curated Atlases
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Automated Anatomical Interpretation of Ion Distributions in Tissue: Linking Imaging Mass Spectrometry to Curated Atlases

机译:组织中离子分布的自动解剖学解释:链接成像质谱与治疗图集

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Imaging mass spectrometry (IMS) has become a prime tool for studying the distribution of biomolecules in tissue. Although IMS data sets can become very large, computational methods have made it practically feasible to search these experiments for relevant findings. However, these methods lack access to an important source of information that many human interpretations rely upon: anatomical insight. In this work, we address this need by (1) integrating a curated anatomical data source with an empirically acquired IMS data source, establishing an algorithm-accessible link between them and (2) demonstrating the potential of such an IMS-anatomical atlas link by applying it toward automated anatomical interpretation of ion distributions in tissue. The concept is demonstrated in mouse brain tissue, using the Allen Mouse Brain Atlas as the curated anatomical data source that is linked to MALDI-based IMS experiments. We first develop a method to spatially map the anatomical atlas to the IMS data sets using nonrigid registration techniques. Once a mapping is established, a second computational method, called correlation-based querying, gives an elementary demonstration of the link by delivering basic insight into relationships between ion images and anatomical structures. Finally, a third algorithm moves further beyond both registration and correlation by providing automated anatomical interpretation of ion images. This task is approached as an optimization problem that deconstructs ion distributions as combinations of known anatomical structures. We demonstrate that establishing a link between an IMS experiment and an anatomical atlas enables automated anatomical annotation, which can serve as an important accelerator both for human and machine-guided exploration of IMS experiments.
机译:成像质谱(IMS)已成为研究组织中生物分子分布的主要工具。尽管IMS数据集可能变得非常大,但计算方法已使在这些实验中搜索相关发现变得切实可行。但是,这些方法无法获得许多人类解释所依赖的重要信息来源:解剖学见解。在这项工作中,我们通过(1)将经过整理的解剖数据源与根据经验获取的IMS数据源进行集成,在它们之间建立算法可访问的链接,以及(2)通过以下方式证明这种IMS解剖图谱链接的潜力将其应用于组织中离子分布的自动解剖学解释。使用艾伦(Allen)小鼠脑图集作为与基于MALDI的IMS实验相关的精选解剖学数据源,该概念已在小鼠脑组织中得到证明。我们首先开发一种使用非刚性配准技术将解剖图谱空间映射到IMS数据集的方法。建立映射后,第二种计算方法(称为基于相关性的查询)通过提供对离子图像与解剖结构之间关系的基本了解,对链接进行了基本演示。最后,第三种算法通过提供离子图像的自动解剖解释,进一步超越了配准和相关性。该任务被作为优化问题来解决,该优化问题将离子分布解构为已知解剖结构的组合。我们证明,在IMS实验与解剖图谱之间建立链接可以实现自动解剖注释,这可以作为人和机器指导的IMS实验探索的重要加速器。

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