PhosNetVis:一种基于网络的工具,用于快速激酶-底物富集分析和磷酸化蛋白质组学数据的交互式二维/三维网络可视化。

ArXiv Pub Date : 2024-12-18
Osho Rawal, Berk Turhan, Irene Font Peradejordi, Shreya Chandrasekar, Selim Kalayci, Sacha Gnjatic, Jeffrey Johnson, Mehdi Bouhaddou, Zeynep H Gümüş
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引用次数: 0

摘要

蛋白质磷酸化涉及另一种蛋白质(激酶)对蛋白质(底物)残基的可逆修饰。液相色谱-质谱研究正在快速生成跨越多种条件的海量蛋白质磷酸化数据集。随后,研究人员必须推断出造成每个底物磷酸化位点变化的激酶。然而,推断激酶-底物相互作用(KSI)的工具并没有进行优化,无法以交互方式探索由此产生的庞大而复杂的网络、重要的磷酸位点和状态。因此,我们需要一种工具来促进磷酸化蛋白质组学数据集的用户友好型分析、交互式探索、可视化和交流。我们推出的 PhosNetVis 是一种基于网络的工具,通过简化磷酸化蛋白质组学数据分析步骤,让各种计算技能水平的研究人员都能轻松推断、生成和交互式探索二维或三维的 KSI 网络。PhostNetVis 降低了研究人员快速生成高质量可视化数据集的门槛,使他们能从磷酸化蛋白质组学数据集中获得生物学见解。可在以下网址获取:https://gumuslab.github.io/PhosNetVis/。
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PhosNetVis: A web-based tool for fast kinase-substrate enrichment analysis and interactive 2D/3D network visualizations of phosphoproteomics data.

Protein phosphorylation involves the reversible modification of a protein (substrate) residue by another protein (kinase). Liquid chromatography-mass spectrometry studies are rapidly generating massive protein phosphorylation datasets across multiple conditions. Researchers then must infer kinases responsible for changes in phosphosites of each substrate. However, tools that infer kinase-substrate interactions (KSIs) are not optimized to interactively explore the resulting large and complex networks, significant phosphosites, and states. There is thus an unmet need for a tool that facilitates user-friendly analysis, interactive exploration, visualization, and communication of phosphoproteomics datasets. We present PhosNetVis, a web-based tool for researchers of all computational skill levels to easily infer, generate and interactively explore KSI networks in 2D or 3D by streamlining phosphoproteomics data analysis steps within a single tool. PhostNetVis lowers barriers for researchers in rapidly generating high-quality visualizations to gain biological insights from their phosphoproteomics datasets. It is available at: https://gumuslab.github.io/PhosNetVis/.

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