University of California, San Diego, La Jolla, California, United States.
J Proteome Res. 2011 Oct 7;10(10):4734-43. doi: 10.1021/pr2005378. Epub 2011 Aug 25.
Mass Spectrometric Imaging (MSI) is a molecular imaging technique that allows the generation of 2D ion density maps for a large complement of the active molecules present in cells and sectioned tissues. Automatic segmentation of such maps according to patterns of co-expression of individual molecules can be used for discovery of novel molecular signatures (molecules that are specifically expressed in particular spatial regions). However, current segmentation techniques are biased toward the discovery of higher abundance molecules and large segments; they allow limited opportunity for user interaction, and validation is usually performed by similarity to known anatomical features. We describe here a novel method, AMASS (Algorithm for MSI Analysis by Semi-supervised Segmentation). AMASS relies on the discriminating power of a molecular signal instead of its intensity as a key feature, uses an internal consistency measure for validation, and allows significant user interaction and supervision as options. An automated segmentation of entire leech embryo data images resulted in segmentation domains congruent with many known organs, including heart, CNS ganglia, nephridia, nephridiopores, and lateral and ventral regions, each with a distinct molecular signature. Likewise, segmentation of a rat brain MSI slice data set yielded known brain features and provided interesting examples of co-expression between distinct brain regions. AMASS represents a new approach for the discovery of peptide masses with distinct spatial features of expression. Software source code and installation and usage guide are available at http://bix.ucsd.edu/AMASS/ .
质谱成像(MSI)是一种分子成像技术,它可以生成 2D 离子密度图,用于对细胞和切片组织中存在的大量活性分子进行分析。根据单个分子的共表达模式对这些图谱进行自动分割,可以用于发现新的分子特征(即在特定空间区域特异性表达的分子)。然而,目前的分割技术偏向于发现丰度较高的分子和较大的片段;它们允许用户交互的机会有限,验证通常是通过与已知解剖特征的相似性来完成的。我们在这里描述了一种新的方法,即 AMASS(基于半监督分割的 MSI 分析算法)。AMASS 依赖于分子信号的区分能力而不是其强度作为关键特征,使用内部一致性度量进行验证,并允许用户进行重要的交互和监督作为选项。对整个水蛭胚胎数据图像进行自动分割,得到的分割域与许多已知器官一致,包括心脏、中枢神经系统神经节、肾、肾孔和侧部和腹侧区域,每个区域都具有独特的分子特征。同样,对大鼠大脑 MSI 切片数据集的分割得到了已知的大脑特征,并提供了不同大脑区域之间共表达的有趣示例。AMASS 代表了一种用于发现具有独特表达空间特征的肽质量的新方法。软件源代码以及安装和使用指南可在 http://bix.ucsd.edu/AMASS/ 获得。