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Region-Based Nasopharyngeal Carcinoma Lesion Segmentation from MRI Using Clustering- and Classification-Based Methods with Learning

机译:基于聚类和分类的学习方法从MRI中基于区域的鼻咽癌病变分割

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摘要

In clinical diagnosis of nasopharyngeal carcinoma (NPC) lesion, clinicians are often required to delineate boundaries of NPC on a number of tumor-bearing magnetic resonance images, which is a tedious and time-consuming procedure highly depending on expertise and experience of clinicians. Computer-aided tumor segmentation methods (either contour-based or region-based) are necessary to alleviate clinicians’ workload. For contour-based methods, a minimal user interaction to draw an initial contour inside or outside the tumor lesion for further curve evolution to match the tumor boundary is preferred, but parameters within most of these methods require manual adjustment, which is technically burdensome for clinicians without specific knowledge. Therefore, segmentation methods with a minimal user interaction as well as automatic parameters adjustment are often favored in clinical practice. In this paper, two region-based methods with parameters learning are introduced for NPC segmentation. Two hundred fifty-three MRI slices containing NPC lesion are utilized for evaluating the performance of the two methods, as well as being compared with other similar region-based tumor segmentation methods. Experimental results demonstrate the superiority of adopting learning in the two introduced methods. Also, they achieve comparable segmentation performance from a statistical point of view.
机译:在鼻咽癌(NPC)病变的临床诊断中,经常需要临床医生在许多带有肿瘤的磁共振图像上划定NPC的边界,这是一个繁琐且耗时的过程,很大程度上取决于临床医生的专业知识和经验。计算机辅助的肿瘤分割方法(基于轮廓的或基于区域的)对于减轻临床医生的工作量是必要的。对于基于轮廓的方法,最好是进行最少的用户交互以在肿瘤病变内部或外部绘制初始轮廓以进一步曲线演化以匹配肿瘤边界,但是大多数这些方法中的参数都需要手动调整,这在临床上对临床医生来说是繁重的工作没有特定的知识。因此,在临床实践中通常倾向于使用具有最小用户交互以及自动参数调整的分割方法。本文介绍了两种带参数学习的基于区域的NPC分割方法。包含NPC病变的253个MRI切片用于评估这两种方法的性能,并与其他类似的基于区域的肿瘤分割方法进行比较。实验结果证明了在两种介绍的方法中采用学习的优越性。此外,从统计角度来看,它们还具有可比的细分效果。

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