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Visual Data Mining by Virtual Reality for Protein-Protein Interaction Networks

机译:通过虚拟现实进行的可视化数据挖掘,用于蛋白质-蛋白质相互作用网络

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Currently, visualization techniques in the genetic field require a very important modeling phase in terms of resources. 2D based projections of traditional visualization techniques are rarely adapted to manage and process such huge mass of information. To overcome such limitation, we propose to use a new graph modeling technique. This, when used in conjunction with virtual reality technology, allows biologists to have a wide visibility and fluent exploration through several points of view and user interaction, thus enabling what we can call visual data mining of big scientific data. The general principle of our approach is to build a biological network model in the form of a graph with a spatial representation adapted to the visualization of biological networks in a virtual environment. The results show that the improvement of the node distribution algorithm allows a better and more intuitive visualization, compared to the equivalent two-dimensional visualization.
机译:当前,遗传领域的可视化技术在资源方面需要非常重要的建模阶段。传统可视化技术的基于2D的投影很少适应于管理和处理如此大量的信息。为了克服这种限制,我们建议使用一种新的图形建模技术。当与虚拟现实技术结合使用时,生物学家可以通过多种观点和用户交互来获得广泛的视野和流畅的探索,从而使我们可以称之为可视化的大科学数据数据挖掘。我们方法的一般原理是以图形形式构建具有适应虚拟环境中生物网络可视化的空间表示形式的生物网络模型。结果表明,与等效的二维可视化相比,节点分布算法的改进可以实现更好,更直观的可视化。

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