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Auto-contouring via Automatic Anatomy Recognition of Organs at Risk in Head and Neck Cancer on CT images

机译:通过CT图像上的头颈癌风险器官自动解剖学自动识别轮廓

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摘要

Contouring of the organs at risk is a vital part of routine radiation therapy planning. For the head and neck (H&N) region, this is more challenging due to the complexity of anatomy, the presence of streak artifacts, and the variations of object appearance. In this paper, we describe the latest advances in our Automatic Anatomy Recognition (AAR) approach, which aims to automatically contour multiple objects in the head and neck region on planning CT images. Our method has three major steps: model building, object recognition, and object delineation. First, the better-quality images from our cohort of H&N CT studies are used to build fuzzy models and find the optimal hierarchy for arranging objects based on the relationship between objects. Then, the object recognition step exploits the rich prior anatomic information encoded in the hierarchy to derive the location and pose for each object, which leads to generalizable and robust methods and mitigation of object localization challenges. Finally, the delineation algorithms employ local features to contour the boundary based on object recognition results. We make several improvements within the AAR framework, including finding recognition-error-driven optimal hierarchy, modeling boundary relationships, combining texture and intensity, and evaluating object quality. Experiments were conducted on the largest ensemble of clinical data sets reported to date, including 216 planning CT studies and over 2,600 object samples. The preliminary results show that on data sets with minimal (<4 slices) streak artifacts and other deviations, overall recognition accuracy reaches 2 voxels, with overall delineation Dice coefficient close to 0.8 and Hausdorff Distance within 1 voxel.
机译:危及器官的轮廓是常规放射治疗计划的重要组成部分。对于头部(H&N)区域,由于解剖结构的复杂性,条纹伪影的存在以及物体外观的变化,这更具挑战性。在本文中,我们描述了自动解剖识别(AAR)方法的最新进展,该方法旨在在计划CT图像时自动对头部和颈部区域中的多个对象进行轮廓绘制。我们的方法包括三个主要步骤:模型构建,对象识别和对象描绘。首先,我们的H&N CT研究队列中质量更好的图像用于建立模糊模型,并根据对象之间的关系找到用于安排对象的最佳层次。然后,对象识别步骤利用在层次结构中编码的丰富的先验解剖学信息来推导每个对象的位置和姿势,这导致了可推广且鲁棒的方法并减轻了对象定位的挑战。最后,描绘算法利用局部特征根据物体识别结果对边界进行轮廓绘制。我们在AAR框架内进行了一些改进,包括查找识别错误驱动的最佳层次,对边界关系进行建模,将纹理和强度结合在一起以及评估对象质量。对迄今为止报道的最大的临床数据集进行了实验,包括216项计划中的CT研究和2600多个对象样本。初步结果表明,在具有最小(<4片)条纹伪影和其他偏差的数据集上,总体识别精度达到2个体素,总体轮廓Dice系数接近0.8,Hausdorff距离在1个体素之内。

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