Chakraborty D P
Department of Radiology, University of Pittsburgh, 3520 5th Avenue, Suite 300, Pittsburgh, PA 15261, USA.
Phys Med Biol. 2006 Jul 21;51(14):3449-62. doi: 10.1088/0031-9155/51/14/012. Epub 2006 Jul 6.
Search is a basic activity that is performed routinely in many different tasks. In the context of medical imaging it involves locating lesions in images under conditions of uncertainty regarding the number and locations of lesions that may be present. A search model is presented that applies to situations, as in the free-response paradigm, where on each image the number of normal regions that could be mistaken for lesions is unknown, and the number of observer generated localizations of suspicious regions (marks) is unpredictable. The search model is based on a two-stage model that has been proposed in the literature, according to which, at the first stage (the preattentive stage) the observer uses mainly peripheral vision to identify likely lesion candidates, and at the second stage the observer decides (i.e., cognitively evaluates) whether or not to report the candidates. The search model regards the unpredictable numbers of lesion and non-lesion localizations as random variables and models them via appropriate statistical distributions. The model has three parameters quantifying the lesion signal-to-noise ratio, the observer's expertise at rejecting non-lesion locations, and the observer's expertise at finding lesions. A figure-of-merit quantifying the observer's search performance is described. The search model bears a close resemblance to the initial detection and candidate analysis (IDCA) model that has been recently proposed for analysing computer aided detection (CAD) algorithms. The ability to analytically model and quantify the search process would enable more powerful assessment and optimization of performance in these activities, which could be highly significant.
搜索是一项基本活动,在许多不同任务中经常进行。在医学成像领域,它涉及在可能存在的病变数量和位置不确定的情况下,在图像中定位病变。本文提出了一种搜索模型,该模型适用于自由反应范式中的情况,即在每张图像上,可能被误认为病变的正常区域数量未知,且观察者生成的可疑区域(标记)定位数量不可预测。该搜索模型基于文献中提出的两阶段模型,根据该模型,在第一阶段(前注意阶段),观察者主要利用周边视觉识别可能的病变候选区域,在第二阶段,观察者决定(即进行认知评估)是否报告这些候选区域。该搜索模型将病变和非病变定位的不可预测数量视为随机变量,并通过适当的统计分布对其进行建模。该模型有三个参数,分别量化病变信噪比、观察者拒绝非病变位置的专业程度以及观察者发现病变的专业程度。描述了一个量化观察者搜索性能的品质因数。该搜索模型与最近提出的用于分析计算机辅助检测(CAD)算法的初始检测和候选分析(IDCA)模型非常相似。能够对搜索过程进行分析建模和量化,将使这些活动中的性能评估和优化更加强大,这可能具有重要意义。