首页> 外文会议>Image Processing pt.2; Progress in Biomedical Optics and Imaging; vol.6 no.24 >A Relevance Vector Machine Technique for Automatic Detection of Clustered Microcalcifications
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A Relevance Vector Machine Technique for Automatic Detection of Clustered Microcalcifications

机译:关联矢量机技术用于自动检测聚类微钙化

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Microcalcification (MC) clusters in mammograms can be important early signs of breast cancer in women. Accurate detection of MC clusters is an important but challenging problem. In this paper, we propose the use of a recently developed machine learning technique - relevance vector machine (RVM) - for automatic detection of MCs in digitized mammograms. RVM is based on Bayesian estimation theory, and as a feature it can yield a decision function that depends on only a very small number of so-called relevance vectors. We formulate MC detection as a supervised-learning problem, and use RVM to classify if an MC object is present or not at each location in a mammogram image. MC clusters are then identified by grouping the detected MC objects. The proposed method is tested using a database of 141 clinical mammograms, and compared with a support vector machine (SVM) classifier which we developed previously. The detection performance is evaluated using the free-response receiver operating characteristic (FROC) curves. It is demonstrated that the RVM classifier matches closely with the SVM classifier in detection performance, and does so with a much sparser kernel representation than the SVM classifier. Consequently, the RVM classifier greatly reduces the computational complexity, making it more suitable for real-time processing of MC clusters in mammograms.
机译:乳房X线照片中的微钙化(MC)簇可能是女性乳腺癌的重要早期征兆。准确检测MC群集是一个重要但具有挑战性的问题。在本文中,我们建议使用最新开发的机器学习技术-相关向量机(RVM)-自动检测数字化X线摄片中的MC。 RVM基于贝叶斯估计理论,因此它可以产生仅依赖于非常少数量的所谓相关性向量的决策函数。我们将MC检测公式化为有监督的学习问题,并使用RVM对乳房X线照片中每个位置是否存在MC对象进行分类。然后,通过对检测到的MC对象进行分组来识别MC群集。使用141个临床乳房X线照片的数据库对提出的方法进行了测试,并与我们之前开发的支持向量机(SVM)分类器进行了比较。使用自由响应接收器工作特性(FROC)曲线评估检测性能。事实证明,RVM分类器在检测性能上与SVM分类器紧密匹配,并且与SVM分类器相比具有更稀疏的内核表示。因此,RVM分类器大大降低了计算复杂度,使其更适合于乳房X光检查中MC群集的实时处理。

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