开发用于大规模蛋白质组学时间序列数据的可视化分析工具

Jenny Vuong, C. Stolte, Sandeep Kaur, S. O’Donoghue
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引用次数: 0

摘要

高分辨率质谱法现在可以追踪细胞中磷蛋白组的所有时间变化。由此产生的时间序列数据集对可视化分析社区提出了一个成熟的挑战:如何在单个图表中有效地可视化数千种蛋白质和蛋白质复合物的时间概况。为了解决这一挑战,我们最近提出了一种新的图形布局策略Minardo,它使用“轨道”而不是节点来交流细胞信号通路,同时显示所有事件,按顺时针顺序排列。在这里,我们总结了Minardo中使用的关键视觉概念,以解决细胞信号传输数据的复杂性。我们还讨论了Minardo正在进行的工作,以允许交互式和协作方法来管理大型蛋白质组学时间序列数据集。
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Developing a Visual Analytics Tool for Large-Scale Proteomics Time-Series Data
High-resolution mass spectrometry can now track all temporal changes in the phosphoproteomes of cells. The resulting time-series datasets pose a challenge ripe for the visual analytics community: how to effectively visualise - in a single graph-time-profiles for many thousands of proteins and protein complexes. To address this challenge we recently proposed a novel graph layout strategy Minardo that uses 'tracks' instead of nodes to communicate cell signalling pathways, displaying all events simultaneously, ordered in clockwise progression. Here, we summarize the key visual concepts used in Minardo to address the complexity of cell signalling data. We also discuss ongoing work on Minardo to allow interactive and collaborative approaches to managing large proteomics time-series datasets.
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