首页> 外文会议>PACS and Imaging Informatics; Progress in Biomedical Optics and Imaging; vol.6 no.25 >A General Framework for Content-Based Medical Image Retrieval with its Application to Mammograms
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A General Framework for Content-Based Medical Image Retrieval with its Application to Mammograms

机译:基于内容的医学图像检索通用框架及其在乳腺X线照片中的应用

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In the medical field, content-based image retrieval (CBIR) is used to aid radiologists in the retrieval of images with similar contents. CBIR methods are usually developed for specific features of images, so that those methods are not readily applicable across different kinds of medical images. This study proposes a sound methodology for CBIR of mammograms, which is applicable to various formats of medical image. The methodology is divided into two parts-image analysis and image retrieval. In the image analysis part, 19 abnormal regions of interest (ROI) and 20 normal ROIs are selected as samples for the whole ROI dataset. These two groups of ROIs are used to analyze 11 textural features based on gray level co-occurrence matrices. The multivariate t test is then applied to examine the significance of the differences for these 11 textural features from normal and abnormal ROIs. The discriminating features are incorporated into a feature descriptor for the ROI. This descriptor is embedded into the CBIR system. In the image retrieval part, a CBIR system for mammograms is developed. For normalization of feature vectors, a novel technique is proposed to clip the values of feature elements of the top 5%, and then project each image feature onto the unit sphere. To determine the similarity between query image and each ROI in the dataset, the L_2 norm is used to measure the similarity between two images. This system was designed by query-by-example (QBE). Query images were selected from different classes of abnormal ROIs. To evaluate the performance of the CBIR system, the precision and recall were measured. A maximum precision of 51% and recall of 19% were obtained using the gray level co-occurrence matrices and a distance of 5. The averages of precision and recall are 49% and 18% in this experiment.
机译:在医学领域,基于内容的图像检索(CBIR)用于帮助放射科医生检索具有相似内容的图像。 CBIR方法通常是针对图像的特定特征而开发的,因此这些方法不适用于不同类型的医学图像。这项研究提出了一种适用于乳房X线照片的CBIR的合理方法,适用于各种格式的医学图像。该方法分为图像分析和图像检索两部分。在图像分析部分中,选择19个异常关注区域(ROI)和20个正常ROI作为整个ROI数据集的样本。这两组ROI用于基于灰度共现矩阵分析11种纹理特征。然后应用多元t检验来检验这11种纹理特征与正常和异常ROI的差异的显着性。区分特征被合并到ROI的特征描述符中。该描述符嵌入到CBIR系统中。在图像检索部分,开发了用于乳房X线照片的CBIR系统。为了对特征向量进行归一化,提出了一种新颖的技术来裁剪前5%的特征元素的值,然后将每个图像特征投影到单位球体上。为了确定查询图像与数据集中每个ROI之间的相似性,L_2范数用于衡量两个图像之间的相似性。该系统是通过示例查询(QBE)设计的。从不同类别的异常ROI中选择查询图像。为了评估CBIR系统的性能,测量了精度和召回率。使用灰度共现矩阵和距离为5时,最大精度为51%,召回率为19%。在此实验中,精度和召回率的平均值分别为49%和18%。

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