基于多尺度Hessian特征提取的聚类微钙化表征

I. Zyout, I. Abdel-Qader
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引用次数: 2

摘要

微钙化(MCs)的分割显著影响基于形状的MCs诊断方法的性能,这仍然是一个挑战,因为它往往有很高的假阳性结果。基于纹理的MCs表征代表了一种可能的替代方法,它不需要预先分割MCs,并且可能提高MCs自动诊断的积极预测价值。本文提出了一种新的方法来提取纹理特征,特别是光谱测量,乳房x线摄影MCs使用多尺度黑森滤波(或等效的高斯二阶导数)。使用fisher评分标准对提取的特征进行单独排序,证明了归一化熵具有较好的预测能力。使用MIAS数据库中的一组乳房x光片区域(20例恶性病例和13例良性病例)来评估所提出的光谱特征的分类性能。利用k近邻分类器和ROC性能度量,提出的基于Hessian的特征提取得到性能指标Az = 0.83的ROC曲线,证明了提出的表征方案的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Characterization of clustered microcalcifications using multiscale Hessian based feature extraction
Segmentation of microcalcifications (MCs) significantly influences the performance of shape-based method for the diagnosis of MCs, which continues to be a challenge as it tends to have high false positive results. Texture based characterization of MCs represents a possible alternative that does not require prior segmentation of MCs and may improve the positive predictive value of automated diagnosis of MCs. This paper presents a new approach to extracting textural features, specifically spectral measures, of mammographie MCs using multiscale Hessian filtering (or equivalently second derivative of Gaussian). Extracted features were individually ranked using Fisher-score criterion, which demonstrated the superior predictive ability of the normalized entropy. A set of mammographie regions (20 malignant and 13 benign cases) from the MIAS database were used to evaluate the classification performance of the proposed spectral features. Utilizing k-nearest neighbor classifier and ROC performance measure, the proposed Hessian based extracted features produced ROC curves with performance index Az = 0.83, which demonstrated the effectiveness of the proposed characterization scheme.
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