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A Feature-Based Learning Framework for Accurate Prostate Localization in CT Images

机译:基于特征的学习框架,可在CT图像中准确进行前列腺定位

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Automatic segmentation of prostate in computed tomography (CT) images plays an important role in medical image analysis and image-guided radiation therapy. It remains as a challenging problem mainly due to three issues: 1) the image contrast between the prostate and its surrounding tissues is low in prostate CT images and no obvious boundaries can be observed; 2) the unpredictable prostate motion causes large position variations of the prostate in the treatment images scanned at different treatment days; and 3) the uncertainty of the existence of bowel gas in treatment images significantly changes the image appearance even for images taken from the same patient. To address these issues, in this paper we propose a feature-based learning framework for accurate prostate localization in CT images. The main contributions of the proposed method lie in the following aspects. 1) Anatomical features are extracted from input images and adopted as signatures for each voxel. The most robust and informative features are identified by the feature selection process to help localize the prostate. 2) Regions with salient features but irrelevant to the localization of prostate, such as regions filled with bowel gas, are automatically filtered out by the proposed method. 3) An online update mechanism is adopted to adaptively combine both population information and patient-specific information to localize the prostate. The proposed method is evaluated on a CT prostate dataset of 24 patients to localize the prostate, where each patient has more than 10 longitudinal images scanned at different treatment times. It is also compared with several state-of-the-art prostate localization algorithms in CT images, and the experimental results demonstrate that the proposed method achieves the highest localization accuracy among all the methods under comparison.
机译:在计算机断层扫描(CT)图像中对前列腺进行自动分割在医学图像分析和图像引导放射治疗中起着重要作用。它仍然是一个具有挑战性的问题,主要是由于以下三个问题:1)在前列腺CT图像中,前列腺及其周围组织之间的图像对比度很低,无法观察到明显的边界; 2)不可预测的前列腺运动会导致在不同治疗日扫描的治疗图像中前列腺位置发生较大变化; 3)即使对于同一位患者拍摄的图像,治疗图像中肠气体存在的不确定性也会显着改变图像外观。为了解决这些问题,在本文中,我们提出了一种基于特征的学习框架,用于在CT图像中进行精确的前列腺定位。所提出的方法的主要贡献在于以下几个方面。 1)从输入图像中提取解剖特征并将其用作每个体素的签名。特征选择过程可识别出最强大和最有用的特征,以帮助定位前列腺。 2)具有明显特征但与前列腺定位无关的区域,例如充满肠气的区域,通过所提出的方法被自动滤除。 3)采用在线更新机制来自适应地结合人口信息和患者特定信息以定位前列腺。在24位患者的CT前列腺数据集上对提出的方法进行了评估,以定位前列腺,每个患者在不同的治疗时间扫描了10幅以上的纵向图像。还将它与CT图像中的几种最先进的前列腺定位算法进行了比较,实验结果表明,在所比较的所有方法中,该方法均实现了最高的定位精度。

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