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Domain-Specific Image Analysis for Cervical Neoplasia Detection Based on Conditional Random Fields

机译:基于条件随机场的宫颈肿瘤检测领域特定图像分析

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摘要

This paper presents a domain-specific automated image analysis framework for the detection of pre-cancerous and cancerous lesions of the uterine cervix. Our proposed framework departs from previous methods in that we include domain-specific diagnostic features in a probabilistic manner using conditional random fields. Likewise, we provide a novel window-based performance assessment scheme for 2D image analysis which addresses the intrinsic problem of image misalignment. Image regions corresponding to different tissue types are indentified for the extraction of domain-specific anatomical features. The unique optical properties of each tissue type and the diagnostic relationships between neighboring regions are incorporated in the proposed conditional random field model. The validity of our method is examined using clinical data from 48 patients, and its diagnostic potential is demonstrated by a performance comparison with expert colposcopy annotations, using histopathology as the ground truth. The proposed automated diagnostic approach can support or potentially replace conventional colposcopy, allow tissue specimen sampling to be performed in a more objective manner, and lower the number of cervical cancer cases in developing countries by providing a cost effective screening solution in low-resource settings.
机译:本文提出了一个领域特定的自动图像分析框架,用于检测子宫颈癌前病变和癌病变。我们提出的框架与以前的方法不同,因为我们使用条件随机字段以概率方式包括特定于域的诊断功能。同样,我们为2D图像分析提供了一种基于窗口的新颖性能评估方案,解决了图像未对准的内在问题。确定对应于不同组织类型的图像区域,以提取域特定的解剖特征。每种组织类型的独特光学特性以及相邻区域之间的诊断关系都包含在建议的条件随机场模型中。我们使用48例患者的临床数据检查了该方法的有效性,并以组织病理学作为基本事实,通过与专家阴道镜注解的性能比较证明了其诊断潜力。所提出的自动诊断方法可以支持或潜在地取代传统的阴道镜检查,允许以更客观的方式进行组织标本采样,并通过在低资源环境下提供经济高效的筛查解决方案来减少发展中国家的宫颈癌病例数。

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