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Multiscale Scatterplot Matrix for Visual and Interactive Exploration of Metabonomic Data

机译:用于代谢组学数据的可视化和交互式探索的多尺度散点图矩阵

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We describe a method turning scatterplot matrix visualizations into malleable graphical objects facilitating interaction and selection of pixelized data elements. The method relies on density estimation techniques [1,2] applied through standard image processing. A 2D scatterplot is considered as an image and is then transformed into nested regions that can be easily selected. Based on Wattenberg and Fisher [3], and as confirmed by our experience, we believe users have a good intuition interpreting and interacting with these multiscale graphical objects. Bio-molecular data serves here as a case study for our methodology. The method was discussed and designed in collaboration with experts in metabonomics and has proven to be useful and complementary to classical statistical methods.
机译:我们描述了一种将散点图矩阵可视化转变为可延展的图形对象的方法,以促进像素化数据元素的交互和选择。该方法依赖于通过标准图像处理应用的密度估计技术[1,2]。将二维散点图视为图像,然后将其转换为可以轻松选择的嵌套区域。基于Wattenberg和Fisher [3],并根据我们的经验证实,我们相信用户具有很好的直觉来解释这些多尺度图形对象并与之交互。这里,生物分子数据是我们方法学的案例研究。与代谢组学专家合作讨论和设计了该方法,事实证明该方法是有用的,并且是经典统计方法的补充。

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