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Visual Mri: Merging Information Visualization And Non-parametric Clustering Techniques For Mri Dataset Analysis

机译:Visual Mri:融合信息可视化和用于Mri数据集分析的非参数聚类技术

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to highly different segmentation results. Usually, these values are set by hands. Here, with the MRI-mean shift algorithm, we propose a strategy based on a structured optimality criterion which faces effectively this issue, resulting in a completely unsupervised clustering framework. A linked brushing visualization technique is then used for representing clusters on the parameter space and on the MRI image, where physicians can observe further anatomical details. In order to allow the physician to easily use all the analysis and visualization tools, a visual interface has been designed and implemented, resulting in a computational framework susceptible of evaluation and testing by physicians. Results: Visual MRI has been adopted by physicians in a real clinical research setting. To describe the main features of the system, some examples of usage on real cases are shown, following step by step all the actions scientists can do on an MRI image. To assess the contribution of Visual MRI given to the research setting, a validation of the clustering results in a medical sense has been carried out. Conclusions: From a general point of view, the two main objectives reached in this paper are: (1) merging information visualization and data mining approaches to support clinical research and (2) proposing an effective and fully automated clustering technique. More particularly, a new application for MRI data analysis, named Visual MRI, is proposed, aiming at improving the support of medical researchers in the context of cancer therapy; moreover, a non-parametric technique for cluster analysis, named MRI-mean shift, has been drawn. The results show the effectiveness and the efficacy of the proposed application.
机译:产生截然不同的细分结果。通常,这些值是手动设置的。在这里,借助MRI均值偏移算法,我们提出了一种基于结构化最优性准则的策略,该策略有效地解决了这一问题,从而形成了完全无监督的聚类框架。然后使用链接的刷牙可视化技术来表示参数空间和MRI图像上的簇,医生可以在其中观察更多的解剖细节。为了使医师能够轻松使用所有分析和可视化工具,已设计并实现了可视界面,从而形成了易于医师评估和测试的计算框架。结果:视觉MRI已在实际的临床研究环境中被医生采用。为了描述该系统的主要功能,显示了一些在实际案例中的用法示例,并逐步遵循科学家可以对MRI图像执行的所有操作。为了评估视觉MRI对研究环境的贡献,已经对医学意义上的聚类结果进行了验证。结论:从一般的角度来看,本文达到的两个主要目标是:(1)融合信息可视化和数据挖掘方法以支持临床研究;(2)提出一种有效且全自动的聚类技术。更具体地说,提出了一种新的MRI数据分析应用程序,称为Visual MRI,旨在改善医学研究人员在癌症治疗中的支持。此外,已经提出了一种非参数的聚类分析技术,称为MRI均值偏移。结果显示了所提出的应用的有效性和功效。

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