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Brain tumor extraction using graph based classification of MRI time series for diagnostic assistance

机译:使用基于图的MRI时间序列分类进行脑肿瘤提取以进行诊断

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摘要

Automatic extraction of brain tumor regions from temporal sequence of MRI images has a great contribution for diagnostic assistance since it helps the expert to reduce the area of the region to analyze. However, it presents a challenging task for medical applications. Compared to single images, MRI images time series carry more rich information. Therefore, extracting the appropriate information among these data is more difficult. Moreover, spatio-temporal relationship modeling using graphs offers a simple way for powerful analysis. In this paper, a graph-based classification of MRI image time series is applied. It uses the advantages of graph representation of such data in order to extract the relevant information. This framework proved its efficiency in the context of Satellite Images Time Series (SITS) classification in order to monitor land cover evolution. Therefore, we intend to take advantage of this SVM graph based classification of image time series in medical imaging context. Using graph representation, an adapted labeling and temporal neighborhood definition are used for MRI time series' regions modeling. Then, SVM classification using graph kernel is applied to extract brain tumor regions. The experimental results have been conducted on real MRI data proving the accuracy of the proposed approach.
机译:从MRI图像的时间序列中自动提取脑肿瘤区域对诊断辅助有很大的帮助,因为它可以帮助专家减少要分析的区域的面积。然而,这对医学应用提出了挑战性的任务。与单幅图像相比,MRI图像时间序列携带更多的信息。因此,在这些数据中提取适当的信息更加困难。此外,使用图的时空关系建模为强大的分析提供了一种简单的方法。在本文中,应用了基于图的MRI图像时间序列分类。它利用此类数据的图形表示的优势来提取相关信息。该框架在卫星图像时间序列(SITS)分类的背景下证明了其效率,以监控土地覆盖的演变。因此,我们打算在医学成像环境中利用这种基于SVM图的图像时间序列分类。使用图形表示,将经过修改的标记和时间邻域定义用于MRI时间序列的区域建模。然后,使用图核的SVM分类应用于提取脑肿瘤区域。实验结果已经在真实的MRI数据上进行,证明了该方法的准确性。

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