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Introducing spatial neighbourhood in Evidential C-Means for segmentation of multi-source images: Application to prostate multi-parametric MRI

机译:在证据C均值中引入空间邻域以进行多源图像分割:在前列腺多参数MRI中的应用

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In this paper we introduce an evidential multi-source segmentation scheme for the extraction of prostate zonal anatomy using multi-parametric MRI. The Evidential C-Means (ECM) classifier was adapted to a segmentation scheme by introducing spatial neighbourhood-based relaxation step in its optimisation process. In order to do so, basic belief assignments on voxels membership were relaxed using distance-weighted combination of belief from spatial neighbours. For the application on prostate tissues, geometric a priori was modelled and used as an additional data source. Our method was first experimented on simulated images to prove the improvement brought to the ECM. A validation study of the segmentation method was then conducted on 31 patients MRI data. In order to take into account inter-observer variability, each MRI was manually segmented by three independent expert radiologists, and an estimated truth was computed using STAPLE algorithm. This validation proved that segmentation obtained with our method is accurate and comparable to expert segmentation. We also show that our segmentation scheme enables to detect and highlight outliers, which could be interpreted by physicians as irregular tissues. The use of belief functions also provides additional information on borders between structures. We do believe these are sources of evidence that could help physicians/algorithms in characterising tissues and structures. The method that is introduced in this paper is a step forward to the use of belief functions theory in the context of multi-source image segmentation. Nevertheless, a full comparison to both baseline (e.g. Gaussian Mixture Models) and recent (e.g. Graph Cut) segmentation methods is needed to assess its performance.
机译:在本文中,我们介绍了一种采用多参数MRI的证据多源分割方案,用于前列腺区解剖学提取。通过在优化过程中引入基于空间邻域的松弛步骤,将证据C均值(ECM)分类器应用于分段方案。为了做到这一点,通过使用来自空间邻域的信念的距离加权组合来放宽对体素成员的基本信念分配。对于在前列腺组织上的应用,先验几何建模并用作附加数据源。我们的方法首先在模拟图像上进行了实验,以证明对ECM的改进。然后对31位患者的MRI数据进行了分割方法的验证研究。为了考虑观察者之间的差异性,每位MRI由三位独立的放射专家手动分割,并使用STAPLE算法计算出估计的真相。该验证证明,使用我们的方法获得的细分准确且可与专家细分相媲美。我们还表明,我们的分割方案可以检测并突出显示离群值,这可以被医生解释为不规则组织。信念函数的使用还提供有关结构之间边界的其他信息。我们确实相信这些是可以帮助医师/算法表征组织和结构的证据来源。本文介绍的方法是在多源图像分割背景下使用置信函数理论的一步。尽管如此,仍需要与基线(例如高斯混合模型)和最近的(例如Graph Cut)分割方法进行全面比较以评估其性能。

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