Visual MRI: Merging information visualization and non-parametric clustering techniques for MRI dataset analysis

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ObjectiveThis paper presents Visual MRI, an innovative tool for the magnetic resonance imaging (MRI) analysis of tumoral tissues. The main goal of the analysis is to separate each magnetic resonance image in meaningful clusters, highlighting zones which are more probably related with the cancer evolution. Such non-invasive analysis serves to address novel cancer treatments, resulting in a less destabilizing and more effective type of therapy than the chemotherapy-based ones. The advancements brought by Visual MRI are two: first, it is an integration of effective information visualization (IV) techniques into a clustering framework, which separates each MRI image in a set of informative clusters; the second improvement relies in the clustering framework itself, which is derived from a recently re-discovered non-parametric grouping strategy, i.e., the mean shift.

论文关键词:Information visualization,Non-parametric clustering,Magnetic resonance imaging,Mean shift,Linked brushing,Visual mining,Dynamic contrast enhancement magnetic resonance imaging (DCE-MRI),Cancer therapy

论文评审过程:Received 24 November 2006, Revised 27 June 2008, Accepted 27 June 2008, Available online 4 September 2008.

论文官网地址:https://doi.org/10.1016/j.artmed.2008.06.006