University of California, San Diego, La Jolla, California 92093, United States.
J Proteome Res. 2011 Apr 1;10(4):1915-28. doi: 10.1021/pr101159e. Epub 2011 Mar 15.
MSI is a molecular imaging technique that allows for the generation of topographic 2D maps for various endogenous and some exogenous molecules without prior specification of the molecule. In this paper, we start with the premise that a region of interest (ROI) is given to us based on preselected morphological criteria. Given an ROI, we develop a pipeline, first to determine mass values with distinct expression signatures, localized to the ROI, and second to identify the peptides corresponding to these mass values. To identify spatially differentiated masses, we implement a statistic that allows us to estimate, for each spectral peak, the probability that it is over- or under-expressed within the ROI versus outside. To identify peptides corresponding to these masses, we apply LC-MS/MS to fragment endogenous (nonprotease digested) peptides. A novel pipeline based on constructing sequence tags de novo from both original and decharged spectra and a subsequent database search is used to identify peptides. As the MSI signal and the identified peptide are only related by a single mass value, we isolate the corresponding transcript and perform a second validation via in situ hybridization of the transcript. We tested our approach, MSI-Query, on a number of ROIs in the medicinal leech, Hirudo medicinalis, including the central nervous system (CNS). The Hirudo CNS is capable of regenerating itself after injury, thus forming an important model system for neuropeptide identification. The pipeline helps identify a number of novel peptides. Specifically, we identify a gene that we name HmIF4, which is a member of the intermediate filament family involved in neural development and a second novel, uncharacterized peptide. A third peptide, derived from the histone H2B, is also identified, in agreement with the previously suggested role of histone H2B in axon targeting.
MSI 是一种分子成像技术,它允许在没有事先指定分子的情况下生成各种内源性和一些外源性分子的地形 2D 图谱。在本文中,我们假设已经根据预选的形态学标准为我们提供了一个感兴趣区域(ROI)。给定一个 ROI,我们开发了一个管道,首先确定具有独特表达特征的质量值,这些质量值定位在 ROI 内,其次确定与这些质量值相对应的肽。为了识别空间上不同的质量,我们实现了一种统计方法,该方法允许我们估计每个光谱峰的概率,即在 ROI 内还是在 ROI 外过度或欠表达。为了识别与这些质量相对应的肽,我们应用 LC-MS/MS 对内源(未蛋白酶消化)肽进行片段化。我们应用一种基于从头构建原始和去电荷光谱的序列标签的新管道,并进行随后的数据库搜索,以识别肽。由于 MSI 信号和鉴定的肽仅通过单个质量值相关,我们分离相应的转录本,并通过转录本的原位杂交进行第二次验证。我们在医用水蛭 Hirudo medicinalis 的几个 ROI 上测试了我们的方法 MSI-Query,包括中枢神经系统(CNS)。医用水蛭的 CNS 在受伤后能够自我再生,因此成为鉴定神经肽的重要模型系统。该管道有助于识别许多新的肽。具体来说,我们鉴定了一个名为 HmIF4 的基因,它是参与神经发育的中间丝家族的成员,以及第二个新的、未表征的肽。还鉴定了第三个来自组蛋白 H2B 的肽,这与组蛋白 H2B 在轴突靶向中的先前建议作用一致。