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Content-based image retrieval system for HRCT lung images: assisting radiologists in self-learning and diagnosis of Interstitial Lung Diseases

机译:基于内容的HRCT肺图像图像检索系统:辅助放射科学家在自学习和诊断间质性肺病

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Content-based Image Retrieval (CBIR) is a technique that can exploit the wealth of the data stored in a repository and help radiologists in decision making by providing references to the image in hand. A CBIR system for High-Resolution Computed Tomography (HRCT) lung images depicting signs of Interstitial Lung Diseases (ILDs) can be built and used as a self-learning tool for budding radiologists. The study of a few lung image retrieval systems available in the literature identifies some important issues that need to be taken care of. In most of the works, the creation of the reference database involves painstaking manual activity, which is time-consuming and needs skilled labor. A lot of human interventions are required, particularly for the proper delineation of the region of interest (ROI) that represents pathology in each of the images in a database. In most cases, the size of the ROIs representing different disease findings are fixed (i.e., either a fixed size square or circle), which at times may not be a proper representation of the disease pattern and as a consequence, it might limit the system's performance. Until date, a few learning-based approaches have been developed for content-based image retrieval of HRCT lung images, which either learn the similarity using a classifier or get trained through relevance feedback. For medical image analysis, the availability of labelled data for learning makes these learning-based retrieval systems meaningful as it enhances their performance in contrast to their simple distance-based counterpart. The objective of this paper is to develop a CBIR system for ILDs that is reliable and needs minimal human intervention. The paper evaluates the performance of three popular segmentation algorithms. It identifies the best for the effective and automated delineation of an arbitrary region of interest (AROI) depicting the sign of ILDs on HRCT images of the thorax in contrast to the manual delineation of fixed size ROI. This minimizes the manual effort for the creation and maintenance of the reference database, as well as the manual delineation of AROI during query formation. Moreover, AROI created through the automated clustering is found to have a better representation of disease patterns. Three recently proposed general-purpose learning based CBIR techniques are implemented and tested for retrieval of HRCT lung images depicting the sign of ILDs. The best method is suggested after careful evaluation of all the competing techniques.
机译:基于内容的图像检索(CBIR)是一种技术,它可以利用存储在存储库中的数据的财富,并通过提供手中的图像的引用来帮助放射科学家的决策。可以建造用于高分辨率计算断层扫描(HRCT)肺图像的CBIR系统,描绘了间质肺病(ILDS)的迹象,并用作萌芽放射科学家的自学工具。在文献中提供的一些肺图像检索系统的研究确定了需要处理的一些重要问题。在大多数作品中,参考数据库的创建涉及艰苦的手动活动,这是耗时和需要熟练的劳动力。需要大量的人类干预措施,特别是对于对数据库中的每个图像中的感兴趣区域(ROI)的适当描绘,这是对数据库中的每个图像中的病理学。在大多数情况下,代表不同疾病发现的ROI的大小是固定的(即固定尺寸的正方形或圆圈),其有时可能不是疾病模式的适当代表,因此可能会限制系统的表现。直到日期,已经为基于内容的图像检索的HRCT肺图像检索的基于学习的方法,其使用分类器或通过相关反馈进行培训来学习相似度。对于医学图像分析,用于学习的标记数据的可用性使得这些基于学习的检索系统有意义,因为它与基于简单的距离对应的对比度增强了它们的性能。本文的目的是为ILD开发CBIR系统,可靠,需要最小的人类干预。本文评估了三种流行分割算法的性能。它识别最适合于有效和自动描绘的最佳利益区域(AROI),其描绘了胸部的HRCT图像对比的HRCT图像的标志与固定大小ROI的手动描绘。这最大限度地减少了用于创建和维护参考数据库的手动努力,以及在查询形成期间的AROI的手动描绘。此外,发现通过自动聚类创建的AROI具有更好的疾病模式表示。实现并测试了三个最近提出的基于通用学习的CBIR技术,以检索描述ILD的标志的HRCT肺图像。在仔细评估所有竞争技术后提出了最佳方法。

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