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Computer-aided Detection of Mammographic Masses Based on Content-based Image Retrieval

机译:基于基于内容的图像检索的乳腺肿块计算机辅助检测

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摘要

A method for computer-aided detection (CAD) of mammographic masses is proposed and a prototype CAD system is presented. The method is based on content-based image retrieval (CBIR). A mammogram database containing 2000 mammographic regions is built in our prototype CBIR-CAD system. Every region of interested (ROI) in the database has known pathology. Specifically, there are 583 ROIs depicting biopsy-proven masses, and the rest 1417 ROIs are normal. Whenever a suspicious ROI is detected in a mammogram by a radiologist, it can be submitted as a query to this CBIR-CAD system. As the query results, a series of similar ROI images together with their known pathology knowledge will be retrieved from the database and displayed in the screen in descending order of their similarities to the query ROI to help the radiologist to make the diagnosis decision. Furthermore, our CBIR-CAD system will output a decision index (DI) to quantitatively indicate the probability that the query ROI contains a mass. The DI is calculated by the query matches. In the querying process, 24 features are extracted from each ROI to form a 24-dimensional vector. Euclidean distance in the 24-dimensional feature vector space is applied to measure the similarities between ROIs. The prototype CBIR-CAD system is evaluated based on the leave-one-out sampling scheme. The experiment results showed that the system can achieve a receiver operating characteristic (ROC) area index A_z =0.84 for detection of mammographic masses, which is better than the best results achieved by the other known mass CAD systems.
机译:提出了一种乳腺X线摄影计算机辅助检测方法,并提出了一种原型CAD系统。该方法基于基于内容的图像检索(CBIR)。在我们的原型CBIR-CAD系统中建立了一个包含2000个乳房X线照片区域的乳房X射线照片数据库。数据库中每个感兴趣的区域(ROI)都有已知的病理。具体来说,有583个ROI描绘了经活检证实的肿块,其余1417个ROI正常。放射线医生每次在乳房X光检查中检测到可疑ROI时,都可以将其作为查询提交给此CBIR-CAD系统。作为查询结果,将从数据库中检索一系列相似的ROI图像及其已知的病理学知识,并以它们与查询ROI的相似度从高到低的顺序显示在屏幕上,以帮助放射科医生做出诊断决定。此外,我们的CBIR-CAD系统将输出决策指数(DI),以定量表示查询ROI包含质量的概率。 DI是通过查询匹配来计算的。在查询过程中,从每个ROI中提取24个特征以形成24维向量。应用24维特征向量空间中的欧式距离来测量ROI之间的相似度。原型CBIR-CAD系统是根据遗忘式采样方案进行评估的。实验结果表明,该系统可实现乳房X线摄影质量检测的接收器工作特性(ROC)面积指数A_z = 0.84,这比其他已知质量CAD系统获得的最佳结果更好。

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