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Automatic Anatomy Recognition in Post-Tonsillectomy MR images of obese children with OSAS

机译:肥胖儿童OSAS扁桃体切除术后MR图像的自动解剖识别

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Automatic Anatomy Recognition (AAR) is a recently developed approach for the automatic whole body wide organ segmentation. We previously tested that methodology on image cases with some pathology where the organs were not distorted significantly. In this paper, we present an advancement of AAR to handle organs which may have been modified or resected by surgical intervention. We focus on MRI of the neck in pediatric Obstructive Sleep Apnea Syndrome (OSAS). The proposed method consists of an AAR step followed by support vector machine techniques to detect the presence/absence of organs. The AAR step employs a hierarchical organization of the organs for model building. For each organ, a fuzzy model over a population is built. The model of the body region is then described in terms of the fuzzy models and a host of other descriptors which include parent to offspring relationship estimated over the population. Organs are recognized following the organ hierarchy by using an optimal threshold based search. The SVM step subsequently checks for evidence of the presence of organs. Experimental results show that AAR techniques can be combined with machine learning strategies within the AAR recognition framework for good performance in recognizing missing organs, in our case missing tonsils in post-tonsillectomy images as well as in simulating tonsillectomy images. The previous recognition performance is maintained achieving an organ localization accuracy of within 1 voxel when the organ is actually not removed. To our knowledge, no methods have been reported to date for handling significantly deformed or missing organs, especially in neck MRI.
机译:自动解剖结构识别(AAR)是最近开发的一种用于全身全器官自动分割的方法。我们之前曾在器官未受到明显扭曲的某些病理学情况下,对这种图像案例进行了测试。在本文中,我们介绍了AAR的进展,以处理可能已通过外科手术修改或切除的器官。我们专注于小儿阻塞性睡眠呼吸暂停综合症(OSAS)的颈部MRI。所提出的方法包括一个AAR步骤,然后是支持向量机技术以检测器官的存在/不存在。 AAR步骤采用器官的层次结构进行模型构建。对于每个器官,建立总体上的模糊模型。然后根据模糊模型和许多其他描述符来描述身体区域的模型,这些描述符包括在总体上估计的父母与子女的关系。通过使用基于最佳阈值的搜索,可以按照器官层次结构识别器官。 SVM步骤随后检查器官存在的证据。实验结果表明,AAR技术可以在AAR识别框架内与机器学习策略相结合,从而在识别缺失的器官方面表现出良好的性能,在我们的案例中,是扁桃体切除术后图像以及模拟扁桃体切除术图像中缺失的扁桃体。当实际上不去除器官时,可以保持先前的识别性能,以达到1个体素以内的器官定位精度。据我们所知,迄今尚无报道处理严重变形或缺失器官的方法,尤其是在颈部MRI中。

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