Sheshadri H S, Kandaswamy A
Department of ECE, PSG College of Technology, Coimbatore 641004, Tamilnadu, India.
Comput Med Imaging Graph. 2007 Jan;31(1):46-8. doi: 10.1016/j.compmedimag.2006.09.015. Epub 2006 Oct 27.
An important approach for describing a region is to quantify its structure content. In this paper, the use of functions for computing texture based on statistical measures is described. Six textural features for mammogram images are defined. The segmentation based on these textures would classify the breast tissue under four categories. The algorithm evaluates the region properties of the mammogram image and thereby would classify the image under four important categories based on the intensity level of histograms. Experiments have been conducted on images of mini-MIAS database (Mammogram Image Analysis Society database (UK)). The breast tissue classification thus obtained is comparatively better than the other normal methods. The validation of the work has been done by visual inspection of the segmented image by an expert radiologist. This work is a part of developing a computer aided decision (CAD) system for early detection of breast cancer. The classification results agree with the standard specified by the ACR-BIRADS (American College of Radiology-Breat Imaging And Reporting Data Systems). The accuracy of classification has been found to be 80% as per the visual inspection by an expert radiologist.
描述一个区域的一种重要方法是量化其结构内容。本文描述了基于统计量计算纹理的函数的使用。定义了六种用于乳房X光图像的纹理特征。基于这些纹理的分割将乳腺组织分为四类。该算法评估乳房X光图像的区域属性,从而根据直方图的强度水平将图像分为四个重要类别。已对迷你MIAS数据库(英国乳房X光图像分析协会数据库)的图像进行了实验。由此获得的乳腺组织分类比其他常规方法相对更好。这项工作的验证是由专业放射科医生对分割后的图像进行目视检查完成的。这项工作是开发用于早期检测乳腺癌的计算机辅助诊断(CAD)系统的一部分。分类结果与美国放射学会乳腺影像报告和数据系统(ACR-BIRADS)规定的标准一致。根据专业放射科医生的目视检查,发现分类准确率为80%。