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用于结合检测与估计任务的风险分析、理想观察者和接收者操作特征曲线。

Risk analysis, ideal observers, and receiver operating characteristic curves for tasks that combine detection and estimation.

作者信息

Clarkson Eric

机构信息

University of Arizona, College of Optical Sciences, Tucson, Arizona, United States.

出版信息

J Med Imaging (Bellingham). 2019 Jan;6(1):015502. doi: 10.1117/1.JMI.6.1.015502. Epub 2019 Feb 22.

Abstract

Previously published work on joint estimation/detection tasks has focused on the area under the estimation receiver operating characteristic (EROC) curve as a figure of merit (FOM) for these tasks in imaging. Another FOM for these joint tasks is the Bayesian risk, where a cost is assigned to all detection outcomes and to the estimation errors, and then averaged over all sources of randomness in the object ensemble and the imaging system. Important elements of the cost function, which are not included in standard EROC analysis, are that the cost for a false positive depends on the estimate produced for the parameter vector, and the cost for a false negative depends on the true value of the parameter vector. The ideal observer in this setting, which minimizes the risk, is derived for two applications. In the first application, a parameter vector is estimated only in the case of a signal present classification. For the second application, parameter vectors are estimated for either classification, and these vectors may have different dimensions. In both applications, a risk-based estimation receiver operating characteristic curve is defined and an expression for the area under this curve is given. It is also shown that, for some observers, this area may be estimated from a two alternative forced choice test. Finally, if the classifier is optimized for a given estimator, then it is shown that the slope of the risk-based estimation receiver operating characteristic curve at each point is the negative of the ratio of the prior probabilities for the two classes.

摘要

先前发表的关于联合估计/检测任务的研究主要关注估计接收者操作特征(EROC)曲线下的面积,将其作为成像中这些任务的品质因数(FOM)。这些联合任务的另一个FOM是贝叶斯风险,即给所有检测结果和估计误差分配一个代价,然后在目标集合和成像系统中所有随机源上进行平均。代价函数的重要元素(标准EROC分析中未包含)是,误报的代价取决于为参数向量生成的估计值,漏报的代价取决于参数向量的真实值。针对两种应用推导了在此设置下使风险最小化的理想观察者。在第一种应用中,仅在存在信号分类的情况下估计参数向量。对于第二种应用,针对分类估计参数向量,并且这些向量可能具有不同的维度。在这两种应用中,定义了基于风险的估计接收者操作特征曲线,并给出了该曲线下面积的表达式。还表明,对于某些观察者,可以从二项选择强迫选择测试中估计该面积。最后,如果针对给定估计器优化分类器,那么表明基于风险的估计接收者操作特征曲线在每个点的斜率是两类先验概率之比的负数。

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