Wong J, Yan D, Michalski J, Graham M, Halverson K, Harms W, Purdy J
Department of Radiation Oncology, William Beaumont Hospital, Royal Oak, MI 48073, USA.
Int J Radiat Oncol Biol Phys. 1995 Dec 1;33(5):1301-10. doi: 10.1016/0360-3016(95)00270-7.
Daily portal images acquired using electronic portal imaging devices contain important information about the setup variation of the individual patient. The data can be used to evaluate the treatment and to derive correction for the individual patient. The large volume of images also require software tools for efficient analysis. This article describes the approach of cumulative verification image analysis (CVIA) specifically designed as an offline tool to extract quantitative information from daily portal images.
The user interface, image and graphics display, and algorithms of the CVIA tool have been implemented in ANSCI C using the X Window graphics standards. The tool consists of three major components: (a) definition of treatment geometry and anatomical information; (b) registration of portal images with a reference image to determine setup variation; and (c) quantitative analysis of all setup variation measurements. The CVIA tool is not automated. User interaction is required and preferred. Successful alignment of anatomies on portal images at present remains mostly dependent on clinical judgment. Predefined templates of block shapes and anatomies are used for image registration to enhance efficiency, taking advantage of the fact that much of the tool's operation is repeated in the analysis of daily portal images.
The CVIA tool is portable and has been implemented on workstations with different operating systems. Analysis of 20 sequential daily portal images can be completed in less than 1 h. The temporal information is used to characterize setup variation in terms of its systematic, random and time-dependent components. The cumulative information is used to derive block overlap isofrequency distributions (BOIDs), which quantify the effective coverage of the prescribed treatment area throughout the course of treatment. Finally, a set of software utilities is available to facilitate feedback of the information for treatment plan recalculation and to test various decision strategies for treatment adjustment.
The CVIA tool provides comprehensive analysis of daily images acquired with electronic portal imaging devices. Its offline approach allows characterization of the nature of setup variation for the individual patient that would have been difficult to deduce using only a few daily or weekly portal images. Distribution of the tool will help establish an important database of setup variation from many clinics. The information derived from CVIA can also serve as the foundation to integrate treatment verification, treatment planning, and treatment delivery.
使用电子射野影像装置获取的每日射野影像包含有关个体患者摆位变化的重要信息。这些数据可用于评估治疗情况并为个体患者得出校正值。大量的影像还需要软件工具来进行高效分析。本文描述了累积验证影像分析(CVIA)方法,该方法专门设计为一种离线工具,用于从每日射野影像中提取定量信息。
CVIA工具的用户界面、图像和图形显示以及算法已使用X窗口图形标准在ANSI C中实现。该工具由三个主要组件组成:(a)治疗几何结构和解剖信息的定义;(b)将射野影像与参考影像配准以确定摆位变化;(c)对所有摆位变化测量值进行定量分析。CVIA工具不是自动化的。需要并提倡用户交互。目前,射野影像上解剖结构的成功对齐大多仍依赖于临床判断。利用在每日射野影像分析中该工具的许多操作会重复这一事实,使用预定义的挡块形状和解剖结构模板进行图像配准以提高效率。
CVIA工具具有可移植性,已在不同操作系统的工作站上实现。20幅连续的每日射野影像的分析可在不到1小时内完成。时间信息用于根据其系统、随机和时间相关成分来表征摆位变化。累积信息用于得出挡块重叠等频数分布(BOID),其量化了在整个治疗过程中规定治疗区域的有效覆盖情况。最后,有一组软件实用程序可用于促进信息反馈以重新计算治疗计划,并测试各种治疗调整决策策略。
CVIA工具对使用电子射野影像装置获取的每日影像提供了全面分析。其离线方法允许表征个体患者摆位变化的性质,而仅使用少数每日或每周的射野影像很难推断出这些性质。该工具的分发将有助于建立一个来自许多诊所的重要摆位变化数据库。从CVIA获得的信息还可作为整合治疗验证、治疗计划和治疗实施的基础。