首页> 外文期刊>Journal of digital imaging: the official journal of the Society for Computer Applications in Radiology >Prostate tissue texture feature extraction for suspicious regions identification on TRUS images.
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Prostate tissue texture feature extraction for suspicious regions identification on TRUS images.

机译:前列腺组织纹理特征提取,用于在TRUS图像上识别可疑区域。

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摘要

In this work, two different approaches are proposed for region of interest (ROI) segmentation using transrectal ultrasound (TRUS) images. The two methods aim to extract informative features that are able to characterize suspicious regions in the TRUS images. Both proposed methods are based on multi-resolution analysis that is characterized by its high localization in both the frequency and the spatial domains. Being highly localized in both domains, the proposed methods are expected to accurately identify the suspicious ROIs. On one hand, the first method depends on a Gabor filter that captures the high frequency changes in the image regions. On the other hand, the second method depends on classifying the wavelet coefficients of the image. It is shown in this paper that both methods reveal details in the ROIs which correlate with their pathological representations. It was found that there is a good match between the regions identified using the two methods, a result that supports the ability of each of the proposed methods to mimic the radiologist's decision in identifying suspicious regions. Studying two ROI segmentation methods is important since the only available dataset is the radiologist's suspicious regions, and there is a need to support the results obtained by either one of the proposed methods. This work is mainly a preliminary proof of concept study that will ultimately be expanded to a larger scale study whose aim will be introducing an assisting tool to help the radiologist identify the suspicious regions.
机译:在这项工作中,提出了两种不同的方法来使用直肠超声(TRUS)图像进行感兴趣区域(ROI)分割。这两种方法旨在提取能够表征TRUS图像中可疑区域的信息性特征。两种提议的方法都基于多分辨率分析,其特征在于其在频域和空间域的高度局限性。由于在两个域中都高度本地化,因此所提出的方法有望准确识别可疑的ROI。一方面,第一种方法依赖于Gabor滤波器,该滤波器捕获图像区域中的高频变化。另一方面,第二种方法取决于对图像的小波系数进行分类。本文表明,这两种方法都揭示了ROI中与病理表示相关的细节。发现使用两种方法识别的区域之间存在良好的匹配,这一结果支持了每种提议的方法模仿放射线医师对可疑区域进行识别的决定的能力。研究两种ROI分割方法非常重要,因为唯一可用的数据集是放射科医生的可疑区域,并且需要支持通过任何一种建议方法获得的结果。这项工作主要是概念研究的初步证明,最终将扩展到更大规模的研究,其目的是引入辅助工具以帮助放射科医生识别可疑区域。

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