Dept. of Electr. & Comput. Eng., Vanderbilt Univ., Nashville, TN.
IEEE Trans Med Imaging. 1994;13(4):716-24. doi: 10.1109/42.363096.
The analysis of MR images is evolving from qualitative to quantitative. More and more, the question asked by clinicians is how much and where, rather than a simple statement on the presence or absence of abnormalities. The authors present a study in which the results obtained with a semiautomatic, multispectral segmentation technique are quantitatively compared to manually delineated regions. The core of the semiautomatic image analysis system is a supervised artificial neural network classifier augmented with dedicated preand postprocessing algorithms, including anisotropic noise filtering and a surface-fitting method for the correction of spatial intensity variations. The study was focused on the quantitation of white matter lesions in the human brain. A total of 36 images from six brain volumes was analyzed twice by each of two operators, under supervision of a neuroradiologist. Both the intra- and interrater variability of the methods were studied in terms of the average tissue area detected per slice, the correlation coefficients between area measurements, and a measure of similarity derived from the kappa statistic. The results indicate that, compared to a manual method, the use of the semiautomatic technique not only facilitates the analysis of the images, but also has similar or lower intra- and interrater variabilities.
磁共振图像分析正从定性分析向定量分析转变。临床医生越来越关注的问题是病变的程度和位置,而不只是简单地判断是否存在异常。作者报告了一项研究,其中使用半自动多光谱分割技术获得的结果与手动勾画的区域进行了定量比较。半自动图像分析系统的核心是一个监督人工神经网络分类器,该分类器辅以专用的预处理和后处理算法,包括各向异性噪声滤波和表面拟合方法,以纠正空间强度变化。该研究集中于定量分析人脑的白质病变。共有 36 张来自 6 个脑区的图像,由两名操作人员分别在神经放射科医生的监督下进行了两次分析。从每个层面检测到的平均组织面积、面积测量之间的相关系数以及基于kappa 统计的相似性度量等方面,对两种方法的组内和组间变异性进行了研究。结果表明,与手动方法相比,半自动技术不仅有助于图像分析,而且具有相似或更低的组内和组间变异性。