Mussurakis S, Buckley D L, Horsman A
Centre for MR Investigations, University of Hull, Hull Royal Infirmary, England.
J Comput Assist Tomogr. 1997 May-Jun;21(3):431-8. doi: 10.1097/00004728-199705000-00017.
In this study, three region-of-interest (ROI) analysis methods based on operator-defined and semiautomated sampling of pharmacokinetic breast maps of contrast uptake are described. The observer variability and impact of the methods on the estimated enhancement characteristics of invasive cancer are also presented.
Fifty-four women with invasive breast cancer underwent dynamic Gd-DTPA-enhanced MRI. ROIs were drawn by two observers on parametric images obtained from compartmental modeling of the dynamic data. Three methods were used: (a) An irregular ROI was drawn to include as much of the enhancing part of the tumor as possible (large ROI); (b) a 12 pixel circular ROI was placed at the most rapidly enhancing part of the large region (small ROI); and (c) a computer algorithm interrogated the large region pixel by pixel using a 9 pixel square mask and selected the region with the highest mean parameter value (semiautomated ROI).
Significant observer variability and bias were found in the enhancement measurements using the large ROI method. There was no observer bias associated with the other methods, but the variability of the small ROI method was substantial. An almost perfect observer agreement was achieved using the semiautomated method. The small and semiautomated ROI methods produced significantly higher enhancement ratios than the large ROI method, especially in grade III carcinomas.
Variability is inherent in subjective ROI analysis, but the semiautomated method of ROI selection and sampling of parameter images of the breast is an efficient and reliable alternative that may allow better standardization of the MR technique.
在本研究中,描述了三种基于操作员定义和对比剂摄取药代动力学乳腺图谱半自动采样的感兴趣区域(ROI)分析方法。还介绍了观察者变异性以及这些方法对浸润性癌估计增强特征的影响。
54名患有浸润性乳腺癌的女性接受了动态钆喷酸葡胺增强磁共振成像(MRI)检查。两名观察者在从动态数据的房室模型获得的参数图像上绘制ROI。使用了三种方法:(a)绘制不规则ROI以尽可能多地包含肿瘤的增强部分(大ROI);(b)在大区域增强最快的部分放置一个12像素的圆形ROI(小ROI);(c)一种计算机算法使用9像素的方形掩码逐像素询问大区域,并选择平均参数值最高的区域(半自动ROI)。
使用大ROI方法进行增强测量时发现了显著的观察者变异性和偏差。其他方法不存在观察者偏差,但小ROI方法的变异性很大。使用半自动方法实现了几乎完美的观察者一致性。小ROI和半自动ROI方法产生的增强率明显高于大ROI方法,尤其是在III级癌中。
主观ROI分析中存在变异性是固有的,但乳腺参数图像的ROI选择和采样的半自动方法是一种有效且可靠的替代方法,可能有助于更好地规范MR技术。