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Bayesian Transductive Markov Random Fields for Interactive Segmentation in Retinal Disorders

机译:贝叶斯传导马尔可夫随机场在视网膜疾病中的交互式分割

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In the realm of computer aided diagnosis (CAD) interactive segmentation schemes have been well received by physicians, where the combination of human and machine intelligence can provide improved segmentation efficacy with minimal expert intervention [1-3]. Transductive learning (TL) or semi-supervised learning (SSL) is a suitable framework for learning-based interactive segmentation given the scarce label problem. In this paper we present extended work on Bayesian transduction and regularized conditional mixtures for interactive segmentation [3]. We present a Markov random field model integrating a semi-parametric conditional mixture model within a Bayesian transductive learning and inference setting. The model allows efficient learning and inference in a semi-supervised setting given only minimal approximate label information. Preliminary experimental results on multimodal images of retinal disorders such as drusen, geographic atrophy (GA), and choroidal neovascularisation (CNV) with exudates and sub-retinal fibrosis show promising segmentation performance.
机译:在计算机辅助诊断(CAD)领域中,交互式分割方案已为医生所接受,其中人机智能的结合可在最少的专家干预下提供改进的分割功效[1-3]。在缺乏标签问题的情况下,转换学习(TL)或半监督学习(SSL)是基于学习的交互式细分的合适框架。在本文中,我们提出了有关贝叶斯转导和正则条件混合的交互式分割的扩展工作[3]。我们提出了一个马氏随机场模型,该模型在贝叶斯转换学习和推理环境中整合了半参数条件混合模型。该模型仅给出最少的近似标签信息,即可在半监督的情况下进行有效的学习和推理。视网膜疾病(如玻璃疣,地理萎缩(GA)和脉络膜新生血管形成(CNV)以及渗出液和视网膜下纤维化)的多模态图像的初步实验结果显示了有希望的分割性能。

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