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An Improved Micro-Calcification Detection Algorithm Using a Novel Multifractal Texture Descriptor and CNN

机译:一种使用新型多重型纹理描述符和CNN的改进的微钙化检测算法

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Detecting individual micro-calcifications (MCs) in mammograms is a challenging problem due to heterogeneous properties and diverse composition of breast tissues. False positives (FPs) are therefore a common occurrence in the outputs of different detectors. This paper focuses on FP reduction and improvement of the final MCs detection accuracy in mammograms. The proposed method uses a combination of a MC detector which outputs a patch set containing candidate MC spots, and alpha images derived from multifractal analysis to enhance texture features of MC spots in each target patch. For further highlighting the texture features, a Weber's law based approach is used to construct a new multifractal measure and the corresponding alpha patches. In order to distinguish MC spots from the candidate set, a convolutional neural network (CNN) classifier is designed to process original mammogram patches and corresponding alpha patches together for classifying suspicious MC spots to true positive group or false positive group. Multifractal features contained in alpha images are fed into the proposed CNN model, which facilitate learning richer representations for MCs in local regions and presenting better classification performance. A digital mammogram dataset, INbreast, is used to test the proposed method. Experimental results are evaluated using free-response receiver operating characteristic (FROC) and area under the FROC curve (AUC). In our experiments, a desirable classification performance is observed after using the new alpha patch set in the designed CNN classifier, and the general MC detection results based on individual mammograms in a test set demonstrate that the proposed method reduces FP numbers and improves the MC detection accuracy effectively.
机译:由于异质性质和多种乳腺组织组成,检测乳房X乳网显示器中的个体微钙(MCS)是一个具有挑战性的问题。因此,误报(FPS)是不同探测器的输出中的常见发生。本文侧重于FP减少和改进乳房X光检查的最终MCS检测精度。所提出的方法使用MC检测器的组合,该MC检测器输出包含候选MC斑点的贴片集,以及从多重分析中导出的α图像,以增强每个目标补丁中MC斑点的纹理特征。为了进一步突出纹理特征,使用韦伯的定律方法来构建新的多重术测量和相应的alpha斑块。为了将MC斑点与候选集区区分开来,卷积神经网络(CNN)分类器被设计为处理原始乳房X线斑块和相应的alpha斑块,用于将可疑MC斑点分类为真正的正组或假正组。 α图像中包含的多重分术特征被馈送到所提出的CNN模型中,这促进了在当地区域中MCS的富裕表示并呈现更好的分类性能。数字乳房X线照片数据集,也用于测试所提出的方法。使用FROC曲线(AUC)下的自由响应接收器操作特性(FROC)和面积进行评估实验结果。在我们的实验中,在使用所设计的CNN分类器中设置的新alpha补丁之后观察到所需的分类性能,以及基于测试集中的各个乳房图示的通用MC检测结果证明了所提出的方法可降低FP号并改善MC检测有效准确。

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