首页> 外文会议>International Workshop on Digital Mammography(IWDM 2006) >Capturing Microcalcification Patterns in Dense Parenchyma with Wavelet-Based Eigenimages
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Capturing Microcalcification Patterns in Dense Parenchyma with Wavelet-Based Eigenimages

机译:用基于小波的特征模仿捕获致密的实质中的微钙化模式

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A method is proposed based on the combination of wavelet analysis and principal component analysis (PCA). Microcalcification (MC) candidate regions are initially labeled using area and contrast criteria. Mallat’s redundant dyadic wavelet transform is used to analyze the frequency content of image patterns at horizontal and vertical directions. PCA is used to efficiently encode MC patterns in wavelet-decomposed images. Feature weights are computed from the projection of each candidate MC pattern at the wavelet-based principal components. To assess the effectiveness of the proposed method, the same analysis is carried out in original images. Candidate MC patterns are classified by means of Linear Discriminant Analysis (LDA). Free-response Receiver Operating Characteristic (FROC) curves are produced for identifying MC clusters. The highest performance is obtained when PCA is applied in wavelet decomposed images achieving 80% sensitivity at 0.5 false positives per image in a dataset with 50 subtle MC clusters in dense parenchyma.
机译:基于小波分析和主成分分析(PCA)的组合提出了一种方法。微钙化(MC)候选区域最初使用面积和对比标准标记。 Mallat的冗余二元小波变换用于分析水平和垂直方向上的图像模式的频率含量。 PCA用于有效地编码小波分解图像中的MC模式。从基于小波的主组件的每个候选MC模式的投影计算特征权重。为了评估所提出的方法的有效性,在原始图像中执行相同的分析。候选MC模式通过线性判别分析(LDA)进行分类。为识别MC集群而产生自由响应接收器操作特性(FROC)曲线。当PCA应用于小波分解图像时获得的最高性能在数据集中在具有50微颗粒的数据集中的0.5晶阳性下实现80%的灵敏度。

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