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Class-specific weighting for Markov random field estimation: Application to medical image segmentation

机译:马尔可夫随机场估计的特定类别加权:在医学图像分割中的应用

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摘要

Many estimation tasks require Bayesian classifiers capable of adjusting their performance (e.g. sensitivity/specificity). In situations where the optimal classification decision can be identified by an exhaustive search over all possible classes, means for adjusting classifier performance, such as probability thresholding or weighting the a posteriori probabilities, are well established. Unfortunately, analogous methods compatible with Markov random fields (i.e. large collections of dependent random variables) are noticeably absent from the literature. Consequently, most Markov random field (MRF) based classification systems typically restrict their performance to a single, static operating point (i.e. a paired sensitivity/specificity). To address this deficiency, we previously introduced an extension of maximum posterior marginals (MPM) estimation that allows certain classes to be weighted more heavily than others, thus providing a means for varying classifier performance. However, this extension is not appropriate for the more popular maximum a posteriori (MAP) estimation. Thus, a strategy for varying the performance of MAP estimators is still needed. Such a strategy is essential for several reasons: (1) the MAP cost function may be more appropriate in certain classification tasks than the MPM cost function, (2) the literature provides a surfeit of MAP estimation implementations, several of which are considerably faster than the typical Markov Chain Monte Carlo methods used for MPM, and (3) MAP estimation is used far more often than MPM. Consequently, in this paper we introduce multiplicative weighted MAP (MWMAP) estimation-achieved via the incorporation of multiplicative weights into the MAP cost function-which allows certain classes to be preferred over others. This creates a natural bias for specific classes, and consequently a means for adjusting classifier performance. Similarly, we show how this multiplicative weighting strategy can be applied to the MPM cost function (in place of the strategy we presented previously), yielding multiplicative weighted MPM (MWMPM) estimation. Furthermore, we describe how MWMAP and MWMPM can be implemented using adaptations of current estimation strategies such as iterated conditional modes and MPM Monte Carlo. To illustrate these implementations, we first integrate them into two separate MRF-based classification systems for detecting carcinoma of the prostate (CaP) on (1) digitized histological sections from radical prostatectomies and (2) T2-weighted 4 Tesla ex vivo prostate MRI. To highlight the extensibility of MWMAP and MWMPM to estimation tasks involving more than two classes, we also incorporate these estimation criteria into a MRF-based classifier used to segment synthetic brain MR images. In the context of these tasks, we show how our novel estimation criteria can be used to arbitrarily adjust the sensitivities of these systems, yielding receiver operator characteristic curves (and surfaces).
机译:许多估算任务要求贝叶斯分类器能够调整其性能(例如,灵敏度/特异性)。在可以通过详尽搜索所有可能的类别来识别最佳分类决策的情况下,用于调整分类器性能的方法(例如概率阈值或加权后验概率)已得到很好的建立。不幸的是,文献中明显缺乏与马尔可夫随机场(即,因变量随机变量的大集合)兼容的类似方法。因此,大多数基于马尔可夫随机场(MRF)的分类系统通常会将其性能限制在单个静态工作点(即,成对的灵敏度/特异性)。为了解决这一缺陷,我们先前引入了最大后验边际(MPM)估计的扩展,该扩展允许某些类别比其他类别具有更大的权重,从而提供了一种用于改变分类器性能的方法。但是,此扩展不适用于更流行的最大后验(MAP)估计。因此,仍然需要改变MAP估计器性能的策略。出于以下几个原因,这种策略必不可少:(1)在某些分类任务中,MAP成本函数可能比MPM成本函数更合适;(2)文献提供了很多MAP估计实现,其中一些估计速度比用于MPM的典型马尔可夫链蒙特卡罗方法,以及(3)MAP估计比MPM所使用的频率更高。因此,在本文中,我们介绍了通过将乘法权重合并到MAP成本函数中而实现的乘法加权MAP(MWMAP)估计,它使某些类别比其他类别更可取。这会为特定类别造成自然偏见,并因此成为调整分类器性能的一种手段。类似地,我们展示了如何将此乘法加权策略应用于MPM成本函数(代替我们之前介绍的策略),从而得出乘法加权MPM(MWMPM)估计。此外,我们描述了如何使用当前估计策略(如迭代条件模式和MPM蒙特卡洛)的改编来实现MWMAP和MWMPM。为了说明这些实现,我们首先将它们集成到两个单独的基于MRF的分类系统中,以在(1)根治性前列腺切除术的数字化组织切片和(2)T2加权4 Tesla离体前列腺MRI上检测前列腺癌(CaP)。为了突出MWMAP和MWMPM对涉及两个以上类别的估计任务的可扩展性,我们还将这些估计标准合并到基于MRF的分类器中,该分类器用于分割合成脑MR图像。在这些任务的背景下,我们展示了如何使用我们新颖的估算标准来任意调整这些系统的灵敏度,从而生成接收器操作员特征曲线(和表面)。

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