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首页> 外文期刊>Physics in medicine and biology. >Prostate cancer multi-feature analysis using trans-rectal ultrasound images
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Prostate cancer multi-feature analysis using trans-rectal ultrasound images

机译:经直肠超声图像对前列腺癌的多特征分析

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This note focuses on extracting and analysing prostate texture features from trans-rectal ultrasound (TRUS) images for tissue characterization. One of the principal contributions of this investigation is the use of the information of the images' frequency domain features and spatial domain features to attain a more accurate diagnosis. Each image is divided into regions of interest (ROIs) by the Gabor multi-resolution analysis, a crucial stage, in which segmentation is achieved according to the frequency response of the image pixels. The pixels with a similar response to the same filter are grouped to form one ROI. Next, from each ROI two different statistical feature sets are constructed; the first set includes four grey level dependence matrix (GLDM) features and the second set consists of five grey level difference vector (GLDV) features. These constructed feature sets are then ranked by the mutual information feature selection (MIFS) algorithm. Here, the features that provide the maximum mutual information of each feature and class (cancerous and non-cancerous) and the minimum mutual information of the selected features are chosen, yeilding a reduced feature subset. The two constructed feature sets, GLDM and GLDV, as well as the reduced feature subset, are examined in terms of three different classifiers: the condensed k-nearest neighbour (CNN), the decision tree (DT) and the support vector machine (SVM). The accuracy classification results range from 87.5% to 93.75%, where the performance of the SVM and that of the DT are significantly better than the performance of the CNN.
机译:本文着重于从经直肠超声(TRUS)图像中提取和分析前列腺的纹理特征,以进行组织表征。这项研究的主要贡献之一是利用图像的频域特征和空间域特征信息来获得更准确的诊断。通过Gabor多分辨率分析将每个图像划分为感兴趣区域(ROI),这是至关重要的阶段,其中根据图像像素的频率响应实现分割。对同一滤镜有相似响应的像素被分组以形成一个ROI。接下来,从每个ROI构建两个不同的统计特征集;第一组包括四个灰度依赖矩阵(GLDM)特征,第二组包括五个灰度差矢量(GLDV)特征。然后,通过互信息特征选择(MIFS)算法对这些构建的特征集进行排名。在此,选择提供每个特征和类别(癌变和非癌变)的最大互信息以及所选特征的最小互信息的特征,从而形成精简的特征子集。根据三个不同的分类器检查了两个构造的特征集GLDM和GLDV以及简化的特征子集:凝聚k最近邻(CNN),决策树(DT)和支持向量机(SVM) )。准确性分类结果的范围为87.5%至93.75%,其中SVM和DT的性能明显优于CNN的性能。

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