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Mass type-specific sparse representation for mass classification in computer-aided detection on mammograms

机译:在乳房X线照片的计算机辅助检测中用于质量分类的特定于质量类型的稀疏表示

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BackgroundBreast cancer is the leading cause of both incidence and mortality in women population. For this reason, much research effort has been devoted to develop Computer-Aided Detection (CAD) systems for early detection of the breast cancers on mammograms. In this paper, we propose a new and novel dictionary configuration underpinning sparse representation based classification (SRC). The key idea of the proposed algorithm is to improve the sparsity in terms of mass margins for the purpose of improving classification performance in CAD systems.MethodsThe aim of the proposed SRC framework is to construct separate dictionaries according to the types of mass margins. The underlying idea behind our method is that the separated dictionaries can enhance the sparsity of mass class (true-positive), leading to an improved performance for differentiating mammographic masses from normal tissues (false-positive). When a mass sample is given for classification, the sparse solutions based on corresponding dictionaries are separately solved and combined at score level. Experiments have been performed on both database (DB) named as Digital Database for Screening Mammography (DDSM) and clinical Full Field Digital Mammogram (FFDM) DBs. In our experiments, sparsity concentration in the true class (SCTC) and area under the Receiver operating characteristic (ROC) curve (AUC) were measured for the comparison between the proposed method and a conventional single dictionary based approach. In addition, a support vector machine (SVM) was used for comparing our method with state-of-the-arts classifier extensively used for mass classification.ResultsComparing with the conventional single dictionary configuration, the proposed approach is able to improve SCTC of up to 13.9% and 23.6% on DDSM and FFDM DBs, respectively. Moreover, the proposed method is able to improve AUC with 8.2% and 22.1% on DDSM and FFDM DBs, respectively. Comparing to SVM classifier, the proposed method improves AUC with 2.9% and 11.6% on DDSM and FFDM DBs, respectively.ConclusionsThe proposed dictionary configuration is found to well improve the sparsity of dictionaries, resulting in an enhanced classification performance. Moreover, the results show that the proposed method is better than conventional SVM classifier for classifying breast masses subject to various margins from normal tissues.
机译:背景乳腺癌是女性人群发病率和死亡率的主要原因。由于这个原因,已经进行了大量的研究工作来开发计算机辅助检测(CAD)系统,以便在乳房X线照片上早期发现乳腺癌。在本文中,我们提出了基于稀疏表示的分类(SRC)的新型字典配置。提出的算法的主要思想是提高质量裕度的稀疏性,以提高CAD系统的分类性能。方法提出的SRC框架的目的是根据质量裕度的类型构造单独的字典。我们方法背后的基本思想是,分开的词典可以增强质量分类的稀疏性(真阳性),从而提高了区分乳腺X线摄影质量与正常组织(假阳性)的性能。当给出大量样本进行分类时,基于相应字典的稀疏解将被单独求解并在得分级别上组合。已经对名为乳腺筛查数字化数据库(DDSM)和临床全视野数字化乳腺摄影(FFDM)DB的数据库(DB)进行了实验。在我们的实验中,测量了真实级别(SCTC)和接收器工作特征(ROC)曲线(AUC)下面积的稀疏浓度,以比较建议的方法和基于常规基于单个字典的方法。此外,使用支持向量机(SVM)将我们的方法与广泛用于质量分类的最新分类器进行比较。结果与传统的单字典配置相比,该方法能够将SCTC提高到DDSM和FFDM DB分别为13.9%和23.6%。此外,所提出的方法能够将DDSM和FFDM DB的AUC分别提高8.2%和22.1%。与支持向量机分类器相比,该方法在DDSM和FFDM DB上的AUC分别提高了2.9%和11.6%。结论所提出的字典配置可以很好地提高字典的稀疏性,从而提高分类性能。此外,结果表明,所提出的方法优于传统的SVM分类器,可以对受正常组织边缘影响的乳房肿块进行分类。

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