Nishikawa R M, Giger M L, Doi K, Vyborny C J, Schmidt R A
Kurt Rossmann Laboratories for Radiologic Image Research, Department of Radiology, University of Chicago, IL 60637, USA.
Med Biol Eng Comput. 1995 Mar;33(2):174-8. doi: 10.1007/BF02523037.
A computer-aided diagnosis scheme to assist radiologists in detecting clustered microcalcifications from mammograms is being developed. Starting with a digital mammogram, the scheme consists of three steps. First, the image is filtered so that the signal-to-noise ratio of microcalcifications is increased by suppression of the normal background structure of the breast. Secondly, potential microcalcifications are extracted from the filtered image with a series of three different techniques: a global thresholding based on the grey-level histogram of the full filtered image, an erosion operator for eliminating very small signals, and a local adaptive grey-level thresholding. Thirdly, some false-positive signals are eliminated by means of a texture analysis technique, and a non-linear clustering algorithm is then used for grouping the remaining signals. With this method, the scheme can detect approximately 85% of true clusters, with an average of two false clusters detected per image.
一种旨在辅助放射科医生从乳房X光片中检测成簇微小钙化的计算机辅助诊断方案正在研发中。该方案从数字化乳房X光片开始,包括三个步骤。首先,对图像进行滤波,通过抑制乳房的正常背景结构来提高微小钙化的信噪比。其次,使用一系列三种不同技术从滤波后的图像中提取潜在的微小钙化:基于全滤波图像灰度直方图的全局阈值化、用于消除非常小信号的腐蚀算子以及局部自适应灰度阈值化。第三,通过纹理分析技术消除一些假阳性信号,然后使用非线性聚类算法对剩余信号进行分组。通过这种方法,该方案能够检测出大约85%的真实簇,平均每张图像检测到两个假簇。