Barrett Harrison H, Wilson Donald W, Kupinski Matthew A, Aguwa Kasarachi, Ewell Lars, Hunter Robert, Müller Stefan
College of Optical Sciences and Department of Radiology, University of Arizona, Tucson AZ.
Proc SPIE Int Soc Opt Eng. 2010 Jan 1;7627:76270Z. doi: 10.1117/12.844189.
This paper presents a general framework for assessing imaging systems and image-analysis methods on the basis of therapeutic rather than diagnostic efficacy. By analogy to receiver operating characteristic (ROC) curves, it utilizes the Therapy Operating Characteristic or TOC curve, which is a plot of the probability of tumor control vs. the probability of normal-tissue complications as the overall level of a radiotherapy treatment beam is varied. The proposed figure of merit is the area under the TOC, denoted AUTOC. If the treatment planning algorithm is held constant, AUTOC is a metric for the imaging and image-analysis components, and in particular for segmentation algorithms that are used to delineate tumors and normal tissues. On the other hand, for a given set of segmented images, AUTOC can also be used as a metric for the treatment plan itself. A general mathematical theory of TOC and AUTOC is presented and then specialized to segmentation problems. Practical approaches to implementation of the theory in both simulation and clinical studies are presented. The method is illustrated with a a brief study of segmentation methods for prostate cancer.
本文提出了一个基于治疗效果而非诊断效果来评估成像系统和图像分析方法的通用框架。类似于接收器操作特性(ROC)曲线,它利用治疗操作特性或TOC曲线,该曲线是随着放射治疗束的整体水平变化,肿瘤控制概率与正常组织并发症概率的关系图。所提出的品质因数是TOC曲线下的面积,记为AUTOC。如果治疗计划算法保持不变,AUTOC是成像和图像分析组件的一个度量标准,特别是用于描绘肿瘤和正常组织的分割算法的度量标准。另一方面,对于给定的一组分割图像,AUTOC也可以用作治疗计划本身的度量标准。本文给出了TOC和AUTOC的一般数学理论,然后专门针对分割问题进行了讨论。还介绍了在模拟和临床研究中实施该理论的实际方法。通过对前列腺癌分割方法的简要研究来说明该方法。