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Streaming visualisation of quantitative mass spectrometry data based on a novel raw signal decomposition method

机译:基于新型原始信号分解方法的定量质谱数据流式可视化

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摘要

As data rates rise, there is a danger that informatics for high-throughput LC-MS becomes more opaque and inaccessible to practitioners. It is therefore critical that efficient visualisation tools are available to facilitate quality control, verification, validation, interpretation, and sharing of raw MS data and the results of MS analyses. Currently, MS data is stored as contiguous spectra. Recall of individual spectra is quick but panoramas, zooming and panning across whole datasets necessitates processing/memory overheads impractical for interactive use. Moreover, visualisation is challenging if significant quantification data is missing due to data-dependent acquisition of MS/MS spectra. In order to tackle these issues, we leverage our seaMass technique for novel signal decomposition. LC-MS data is modelled as a 2D surface through selection of a sparse set of weighted B-spline basis functions from an over-complete dictionary. By ordering and spatially partitioning the weights with an R-tree data model, efficient streaming visualisations are achieved. In this paper, we describe the core MS1 visualisation engine and overlay of MS/MS annotations. This enables the mass spectrometrist to quickly inspect whole runs for ionisation/chromatographic issues, MS/MS precursors for coverage problems, or putative biomarkers for interferences, for example. The open-source software is available from .
机译:随着数据速率的提高,高通量LC-MS的信息学将变得更加不透明,从业人员也将无法访问。因此,至关重要的是,要有有效的可视化工具来促进质量控制,验证,确认,解释和共享原始MS数据和MS分析结果。当前,MS数据存储为连续光谱。调用单个光谱很快,但是要在整个数据集中进行全景图,缩放和平移,就需要进行交互使用时不可行的处理/内存开销。此外,如果由于依赖于数据的MS / MS光谱采集而丢失大量定量数据,则可视化具有挑战性。为了解决这些问题,我们利用seaMass技术进行新颖的信号分解。通过从过完整的字典中选择一组稀疏的加权B样条基函数,可以将LC-MS数据建模为2D表面。通过使用R树数据模型对权重进行排序和空间划分,可以实现有效的流可视化。在本文中,我们描述了核心的MS1可视化引擎和MS / MS注释的叠加。例如,这使质谱仪能够快速检查整个运行中的电离/色谱问题,MS / MS前体是否存在覆盖问题或假定的生物标志物是否存在干扰。开源软件可从下载。

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