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Learning Image Context for Segmentation of Prostate in CT-Guided Radiotherapy

机译:CT引导放射治疗前列腺分割的学习图像背景

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摘要

Accurate segmentation of prostate is the key to the success of external beam radiotherapy of prostate cancer. However, accurate segmentation of prostate in computer tomography (CT) images remains challenging mainly due to three factors: (1) low image contrast between the prostate and its surrounding tissues, (2) unpredictable prostate motion across different treatment days, and (3) large variations of intensities and shapes of bladder and rectum around the prostate. In this paper, an online-learning and patient-specific classification method based on the location-adaptive image context is presented to deal with all these challenging issues and achieve the precise segmentation of prostate in CT images. Specifically, two sets of location-adaptive classifiers are placed, respectively, along the two coordinate directions of the planning image space of a patient, and further trained with the planning image and also the previous-segmented treatment images of the same patient to jointly perform prostate segmentation for a new treatment image (of the same patient). In particular, each location-adaptive classifier, which itself consists of a set of sequential sub-classifiers, is recursively trained with both the static image appearance features and the iteratively-updated image context features (extracted at different scales and orientations) for better identification of each prostate region. The proposed learning-based prostate segmentation method has been extensively evaluated on 161 images of 11 patients, each with more than 9 daily treatment 3D CT images. Our method achieves the mean Dice value 0.908 and the mean ± SD of average surface distance (ASD) value 1.40 ± 0.57 mm. Its performance is also compared with three prostate segmentation methods, indicating the best segmentation accuracy by the proposed method among all methods under comparison.
机译:前列腺的准确细分是前列腺癌外梁放射成功的关键。但是,计算机断层扫描(CT)图像中前列腺的准确分割主要是由于三个因素的挑战:(1)前列腺和周围组织之间的低图像对比,(2)在不同治疗日的不可预测的前列腺运动,和(3)前列腺周围的膀胱和直肠的强度和形状的大变化。在本文中,提出了一种基于位置自适应图像上下文的在线学习和患者特定的分类方法,以处理所有这些具有挑战性的问题,并在CT图像中实现前列腺的精确分割。具体地,沿着患者的规划图像空间的两个坐标方向分别放置两组位置 - 自适应分类器,并且通过规划图像进一步训练,以及同一患者的先前分段治疗图像以共同执行新治疗图像(同一患者)的前列腺分割。特别地,本身由一组连续子分类器组成的每个位置 - 自适应分类器被递归地训练,静态图像外观特征和迭代更新的图像上下文特征(在不同的尺度和方向上提取)以便更好地识别每个前列腺区域。提出的基于学习的前列腺分段方法已经过广泛评估了11名患者的161个图像,每个图像每天都有超过9种每次治疗3D CT图像。我们的方法达到平均含量0.908,平均表面距离(ASD)值为1.40±0.57mm,平均±SD。它的性能也与三个前列腺分段方法进行比较,表明在相比之下的所有方法中,通过所提出的方法表示最佳分割精度。

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