首页> 外文会议>Image Processing pt.3; Progress in Biomedical Optics and Imaging; vol.7 no.30 >AIS TLS-ESPRIT Feature Selection for Prostate Tissue Characterization
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AIS TLS-ESPRIT Feature Selection for Prostate Tissue Characterization

机译:用于前列腺组织表征的AIS TLS-ESPRIT功能选择

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The work in this paper aims for analyzing spectral features of the prostate using Trans-Rectal Ultra-Sound images (TRUS) for tissue classification. This research is expected to augment beginner radiologists' decision with the experience of more experienced radiologists. Moreover, Since, in some situations the biopsy results in false negatives due to inaccurate biopsy locations, therefore this research also aims to assist in determining the biopsy locations to decrease the false negative results. In this paper, a new technique for prostate tissue characterization is developed. The proposed system is composed of four stages. The first stage is automatically identifying Regions Of Interest (ROIs). This is achieved using the Gabor multiresolution analysis method, where preliminary regions are identified using the frequency response of the pixels, pixels that have the same response to the same filter are assigned to the same cluster. Next, the radiologist knowledge is integrated to the system to select the most suspicious ROIs among the prelimianry identified regions. The second stage is constructing the spectral features from the identified ROIs. The proposed technique is based on a novel spectral feature set for the TRUS images using the Total Least Square Estimation of Signal Parameters via Rotational Invariance Techniques (TLS-ESPRIT). Classifier based feature selection is then performed to select the most salient features using the recently proposed Artificial Immune System (AIS) optimization technique. Finally, Support Vector Machine (SVM) classifier is used as an accuracy measure, our proposed system obtains a classification accuracy of 94.4%, with 100% sensitivity and 83.3% sensetivity.
机译:本文的工作旨在使用经直肠超声图像(TRUS)进行组织分类来分析前列腺的频谱特征。这项研究有望借助经验丰富的放射科医生的经验来增强初学者放射科医生的决策。此外,由于在某些情况下活检会由于活检位置不正确而导致假阴性,因此,本研究还旨在帮助确定活检位置以减少假阴性结果。在本文中,开发了一种用于前列腺组织表征的新技术。拟议的系统由四个阶段组成。第一步是自动识别感兴趣区域(ROI)。这可以使用Gabor多分辨率分析方法来实现,在该方法中,使用像素的频率响应来识别初步区域,将对相同滤波器具有相同响应的像素分配给相同群集。接下来,将放射线医生的知识集成到系统中,以在初步鉴定的区域中选择最可疑的ROI。第二阶段是从已识别的ROI构建光谱特征。所提出的技术基于通过旋转不变技术(TLS-ESPRIT)使用信号参数的总最小二乘估计为TRUS图像提供的新颖光谱特征集。然后使用最近提出的人工免疫系统(AIS)优化技术执行基于分类器的特征选择,以选择最显着的特征。最后,使用支持向量机(SVM)分类器作为准确性度量,我们提出的系统获得了94.4%的分类准确率,100%的灵敏度和83.3%的灵敏度。

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