Chalana V, Kim Y
MathSoft Data Analysis Products Division, Seattle, WA 98109-3044, USA.
IEEE Trans Med Imaging. 1997 Oct;16(5):642-52. doi: 10.1109/42.640755.
Image segmentation is the partition of an image into a set of nonoverlapping regions whose union is the entire image. The image is decomposed into meaningful parts which are uniform with respect to certain characteristics, such as gray level or texture. In this paper, we propose a methodology for evaluating medical image segmentation algorithms wherein the only information available is boundaries outlined by multiple expert observers. In this case, the results of the segmentation algorithm can be evaluated against the multiple observers' outlines. We have derived statistics to enable us to find whether the computer-generated boundaries agree with the observers' hand-outlined boundaries as much as the different observers agree with each other. We illustrate the use of this methodology by evaluating image segmentation algorithms on two different applications in ultrasound imaging. In the first application, we attempt to find the epicardial and endocardial boundaries from cardiac ultrasound images, and in the second application, our goal is to find the fetal skull and abdomen boundaries from prenatal ultrasound images.
图像分割是将一幅图像划分为一组不重叠的区域,这些区域的并集构成整个图像。图像被分解为在某些特征(如灰度级或纹理)方面具有一致性的有意义部分。在本文中,我们提出了一种评估医学图像分割算法的方法,其中唯一可用的信息是由多个专家观察者勾勒出的边界。在这种情况下,可以根据多个观察者的轮廓来评估分割算法的结果。我们推导了一些统计量,以便能够确定计算机生成的边界与观察者手动勾勒的边界的吻合程度,以及不同观察者之间的吻合程度。我们通过在超声成像的两个不同应用中评估图像分割算法来说明这种方法的使用。在第一个应用中,我们试图从心脏超声图像中找到心外膜和心内膜边界,在第二个应用中,我们的目标是从产前超声图像中找到胎儿颅骨和腹部边界。