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Medical Image Categorization and Retrieval for PACS Using the GMM-KL Framework

机译:使用GMM-KL框架进行PACS的医学图像分类和检索

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This paper presents an image representation and matching framework for image categorization in medical image archives. Categorization enables one to determine automatically, based on the image content, the examined body region and imaging modality. It is a basic step in content-based image retrieval (CBIR) systems, the goal of which is to augment text-based search with visual information analysis. CBIR systems are currently being integrated with picture archiving and communication systems for increasing the overall search capabilities and tools available to radiologists. The proposed methodology is comprised of a continuous and probabilistic image representation scheme using Gaussian mixture modeling (GMM) along with information-theoretic image matching via the Kullback-Leibler (KL) measure. The GMM-KL framework is used for matching and categorizing X-ray images by body regions. A multidimensional feature space is used to represent the image input, including intensity, texture, and spatial information. Unsupervised clustering via the GMM is used to extract coherent regions in feature space that are then used in the matching process. A dominant characteristic of the radiological images is their poor contrast and large intensity variations. This presents a challenge to matching among the images, and is handled via an illumination-invariant representation. The GMM-KL framework is evaluated for image categorization and image retrieval on a dataset of 1500 radiological images. A classification rate of 97.5% was achieved. The classification results compare favorably with reported global and local representation schemes. Precision versus recall curves indicate a strong retrieval result as compared with other state-of-the-art retrieval techniques. Finally, category models are learned and results are presented for comparing images to learned category models
机译:本文提出了一种用于医学图像档案中图像分类的图像表示和匹配框架。分类使人们能够根据图像内容,检查的身体部位和成像方式自动确定。这是基于内容的图像检索(CBIR)系统中的基本步骤,其目标是通过视觉信息分析来增强基于文本的搜索。 CBIR系统当前正在与图片存档和通信系统集成在一起,以提高放射科医生可用的整体搜索功能和工具。所提出的方法包括使用高斯混合建模(GMM)的连续概率图像表示方案以及通过Kullback-Leibler(KL)度量进行的信息理论图像匹配。 GMM-KL框架用于按身体部位对X射线图像进行匹配和分类。多维特征空间用于表示图像输入,包括强度,纹理和空间信息。通过GMM的无监督聚类用于提取特征空间中的相干区域,然后将其用于匹配过程。放射图像的主要特征是其差的对比度和较大的强度变化。这给图像之间的匹配提出了挑战,并通过光照不变表示来处理。对GMM-KL框架进行了评估,以对1500幅放射图像的数据集进行图像分类和图像检索。达到97.5%的分类率。分类结果与已报道的全球和本地代表方案相比具有优势。与其他最新检索技术相比,精确度与查全率曲线表明检索结果强。最后,学习类别模型并提供结果以将图像与学习的类别模型进行比较

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