Application of spatial grey level dependence methods to digitized mammograms

B. Aldrich, M. Desai
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引用次数: 16

Abstract

The efficacy of using spatial grey level dependence (SGLD) methods is proposed for the evaluation of the textural content of digitized mammograms. In film-screen mammography, the physician uses his awareness of features present on the mammogram to achieve the diagnosis of (or absence of) a disease state. The image perceived by the physician represents the projection of a 3D object onto film and certain limitations are imposed by the characteristics of the imaging modality as well as by the means for creating a discrete representation of the image. Spatial grey level dependence methods have the promise to reveal significant salient information about the underlying structural elements that indicate disease and also have the potential to provide additional information with regard to the medical objective. In the paper, statistics computed from the SGLD are used to highlight features of potential medical interest in mammograms. In particular, the local energy and inertia are calculated for malignant and benign lesions. In preliminary results, it is found that these measurements have an apparent ability to provide discrimination between regions of low textural energy and randomness from regions of high textural energy and randomness. Typically, these types of regions are associated with benign and malignant image profiles, respectively. Examples are given where these techniques are applied to lesions in digitized mammograms at a 100 micron spatial resolution and 12 bit gray scale resolution.<>
空间灰度相关性方法在数字化乳房x线照片中的应用
提出了利用空间灰度依赖(SGLD)方法评价数字化乳房x光片纹理内容的有效性。在胶片筛查乳房x光检查中,医生利用他对乳房x光照片上出现的特征的认识来实现疾病状态的诊断(或不诊断)。医生感知到的图像代表了3D物体在胶片上的投影,成像模式的特征以及创建图像离散表示的方法施加了某些限制。空间灰度依赖方法有望揭示有关指示疾病的潜在结构要素的重要突出信息,并有可能提供有关医疗目标的额外信息。在本文中,从SGLD计算的统计数据用于突出乳房x光检查中潜在医学兴趣的特征。特别地,计算了恶性和良性病变的局部能量和惯性。在初步结果中发现,这些测量具有明显的区分低纹理能量和随机性区域与高纹理能量和随机性区域的能力。通常,这些类型的区域分别与良性和恶性的图像轮廓相关联。给出了这些技术应用于100微米空间分辨率和12位灰度分辨率的数字化乳房x线照片中的病变的示例。
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