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在乳腺X线摄影中使用纹理分析来描绘可疑肿块。

The use of texture analysis to delineate suspicious masses in mammography.

作者信息

Gupta R, Undrill P E

机构信息

Department of Bio-Medical Physics and BioEngineering, University of Aberdeen, Foresterhill, UK.

出版信息

Phys Med Biol. 1995 May;40(5):835-55. doi: 10.1088/0031-9155/40/5/009.

DOI:10.1088/0031-9155/40/5/009
PMID:7652011
Abstract

In mammography, national breast screening programmes have lead to a large increase in the number of mammograms needing to be studied by radiologists. Lesion indicators can be pointlike as in microcalcifications or extended as in stellate (spiculate) lesions or regular masses. Texture analysis has been proposed as a promising method for studying radiographic images in relation to the quantitation of extended objects. Filters have been designed, which may be used to segment or classify an image using textural features, and these have been reported as being of value in automatic mammographic glandular tissue classification. The work reported here suggests the incorporation of additional steps of image processing in an attempt to improve the performance of these filters in the quantitation of lesions. By deriving approximate outlines, which are used to identify suspicious regions, the investigation illustrates the properties of one of the filters. After applying the method to a small prediagnosed database of stellate lesions and regular masses, the results show that the filter is able to outline the malignant masses in all cases presented. The erroneous areas extracted are small for the initial part of the work, which deals with 256 x 256 pixel image extracts, though slightly larger in some cases when the whole mammogram is considered. Simple methods for the removal of these artefacts are proposed. For each non-suspicious case studied, the sum of any false positive areas is statistically insignificant when compared with the regions correctly outlined in the prediagnosed instances.

摘要

在乳腺钼靶摄影中,国家乳腺筛查计划导致需要放射科医生研究的乳腺钼靶图像数量大幅增加。病变指标可以是点状的,如微钙化,也可以是扩展的,如星芒状(毛刺状)病变或规则肿块。纹理分析已被提出作为一种有前景的方法,用于研究与扩展物体定量相关的放射图像。已经设计了滤波器,可用于利用纹理特征对图像进行分割或分类,并且这些滤波器在乳腺钼靶图像自动乳腺组织分类中已被报道具有价值。此处报道的工作建议纳入额外的图像处理步骤,以试图提高这些滤波器在病变定量方面的性能。通过推导用于识别可疑区域的近似轮廓,该研究阐述了其中一种滤波器的特性。将该方法应用于一个小型的预先诊断的星芒状病变和规则肿块数据库后,结果表明该滤波器能够勾勒出所有呈现病例中的恶性肿块轮廓。对于处理256×256像素图像提取物的工作初始部分,提取的错误区域较小,尽管在考虑整个乳腺钼靶图像的某些情况下会稍大一些。提出了去除这些伪影的简单方法。对于所研究的每个非可疑病例,与预先诊断实例中正确勾勒的区域相比,任何假阳性区域的总和在统计学上不显著。

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