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Derivation of an Observer Model Adapted to Irregular Signals Based on Convolution Channels

机译:基于卷积信道的不规则信号观测器模型的推导

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Anthropomorphic model observers are mathe- matical algorithms which are applied to images with the ultimate goal of predicting human signal detection and classification accuracy across varieties of backgrounds, image acquisitions and display conditions. A limitation of current channelized model observers is their inability to handle irregularly-shaped signals, which are common in clinical images, without a high number of directional channels. Here, we derive a new linear model observer based on convolution channels which we refer to as the “Filtered Channel observer” (FCO), as an extension of the channelized Hotelling observer (CHO) and the nonprewhitening with an eye filter (NPWE) observer. In analogy to the CHO, this linear model observer can take the form of a single template with an external noise term. To compare with human observers, we tested signals with irregular and asymmetrical shapes spanning the size of lesions down to those of microcalfications in 4-AFC breast tomosynthesis detection tasks, with three different contrasts for each case. Whereas humans uniformly outperformed conventional CHOs, the FCO observer outperformed humans for every signal with only one exception. Additive internal noise in the models allowed us to degrade model performance and match human performance. We could not match all the human performances with a model with a single internal noise component for all signal shape, size and contrast conditions. This suggests that either the internal noise might vary across signals or that the model cannot entirely capture the human detection strategy. However, the FCO model offers an efficient way to apprehend human observer performance for a non-symmetric signal.
机译:拟人模型观察者是应用于图像的数学算法,其最终目标是预测各种背景,图像采集和显示条件下的人类信号检测和分类准确性。当前的通道化模型观察者的局限性在于他们无法处理临床图像中常见的不规则形状的信号,而没有大量的定向通道。在这里,我们基于卷积通道派生了一个新的线性模型观察器,我们将其称为“滤波通道观察器”(FCO),作为通道化霍特林观察器(CHO)的扩展和非预增白与眼图滤镜(NPWE)观察器。类似于CHO,此线性模型观察器可以采用带有外部噪声项的单个模板的形式。为了与人类观察者进行比较,我们在4-AFC乳房断层合成检测任务中测试了具有不规则形状和不对称形状的信号,其范围从病变的大小到微钙化的大小,每种情况具有三种不同的对比。尽管人类在性能上始终胜过传统的CHO,但FCO观察者在每种信号方面的表现都优于人类,只有一个例外。模型中的附加内部噪声使我们能够降低模型性能并与人类性能相匹配。对于所有信号形状,大小和对比度条件,我们无法将具有单个内部噪声成分的模型与所有人类表演相匹配。这表明,内部噪声可能会因信号而异,或者模型无法完全捕获人类检测策略。但是,FCO模型提供了一种有效的方法来了解人类观察者对非对称信号的表现。

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