基于Dirichlet非参数混合模型的医学图像排序语义模型

Adrian S. Barb, C. Shyu
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引用次数: 1

摘要

随着诊断医学成像的最新进展,大量的医学图像产生并存储在数字图像库中。虽然这些知识库难以由医学专家手工分析,但可以使用基于计算机的方法对其进行评估,以丰富决策过程。例如,医学专家可以使用图像方法查询,通过显示包含相似视觉模式的先前评估病例来进行鉴别诊断。此外,经验不足的从业者可以从训练过程中的语义查询方法中受益,特别是对于难以解释的多种病理病例。在本文中,我们开发了一种基于狄利克雷过程非参数分布的医学图像排序方法。我们的方法在生成的特征空间中使用图像的自然分组来评估关联语义映射。然后使用相关的语义映射来生成图像中发现的视觉模式的语义理解的附加计算机模型。我们使用平均精密度和精确召回率图表来评估我们的方法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semantic models for ranking medical images using Dirichlet non-parametric mixture models
With recent advances in diagnostic medical imaging, huge quantities of medical images are produced and stored in digital image repositories. While these repositories are difficult to be analyzed manually by medical experts, they can be evaluated using computer-based methods to enrich the process of decision making. For example, query by image methods can be used by medical experts for differential diagnosis by displaying previously evaluated cases that contain similar visual patterns. Also, less experienced practitioners can benefit from query-by-semantic methods in training processes especially for difficult-to-interpret cases with multiple pathologies. In this article we develop a methodology for ranking medical images based on Dirichlet process nonparametric distributions. Our approach uses natural groupings of images in a generated feature space to evaluate associative semantic mappings. Relevant semantic mappings are then used to generate additive computer models of semantic understanding of visual patterns found in images. We evaluate the performance of our method using mean average precision and precision-recall charts.
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