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Comparing the quality of accessing the medical literature using content-based visual and textual information retrieval

机译:使用基于内容的视觉和文本信息检索来比较访问医学文献的质量

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Content-based visual information (or image) retrieval (CBIR) has been an extremely active research domain within medical imaging over the past ten years, with the goal of improving the management of visual medical information. Many technical solutions have been proposed, and application scenarios for image retrieval as well as image classification have been set up. However, in contrast to medical information retrieval using textual methods, visual retrieval has only rarely been applied in clinical practice. This is despite the large amount and variety of visual information produced in hospitals every day. This information overload imposes a significant burden upon clinicians, and CBIR technologies have the potential to help the situation. However, in order for CBIR to become an accepted clinical tool, it must demonstrate a higher level of technical maturity than it has to date. Since 2004, the ImageCLEF benchmark has included a task for the comparison of visual information retrieval algorithms for medical applications. In 2005, a task for medical image classification was introduced and both tasks have been run successfully for the past four years. These benchmarks allow an annual comparison of visual retrieval techniques based on the same data sets and the same query tasks, enabling the meaningful comparison of various retrieval techniques. The datasets used from 2004-2007 contained images and annotations from medical teaching files. In 2008, however, the dataset used was made up of 67,000 images (along with their associated figure captions and the full text of their corresponding articles) from two Radiological Society of North America (RSNA) scientific journals.This article describes the results of the medical image retrieval task of the ImageCLEF 2008 evaluation campaign. We compare the retrieval results of both visual and textual information retrieval systems from 15 research groups on the aforementioned data set. The results show clearly that, currently, visual retrieval alone does not achieve the performance necessary for real-world clinical applications. Most of the common visual retrieval techniques have a MAP (Mean Average Precision) of around 2-3%, which is much lower than that achieved using textual retrieval (MAP=29%). Advanced machine learning techniques, together with good training data, have been shown to improve the performance of visual retrieval systems in the past. Multimodal retrieval (basing retrieval on both visual and textual information) can achieve better results than purely visual, but only when carefully applied. In many cases, multimodal retrieval systems performed even worse than purely textual retrieval systems. On the other hand, some multimodal retrieval systems demonstrated significantly increased early precision, which has been shown to be a desirable behavior in real-world systems.
机译:基于内容的视觉信息(或图像)检索(CBIR)在过去十年中一直是医学成像领域极为活跃的研究领域,其目标是改善视觉医学信息的管理。已经提出了许多技术方案,并且已经建立了用于图像检索以及图像分类的应用场景。但是,与使用文本方法检索医学信息相反,视觉检索在临床实践中仅很少使用。尽管每天在医院中产生大量且各种各样的视觉信息,但这种情况仍然存在。这种信息超载给临床医生带来了沉重负担,CBIR技术具有帮助解决这种情况的潜力。但是,为了使CBIR成为公认的临床工具,它必须展现出比迄今为止更高的技术成熟度。自2004年以来,ImageCLEF基准测试包括一项任务,用于比较医疗应用程序中的视觉信息检索算法。 2005年,引入了医学图像分类任务,并且在过去的四年中,这两项任务已成功运行。这些基准可以对基于相同数据集和相同查询任务的视觉检索技术进行年度比较,从而可以对各种检索技术进行有意义的比较。 2004-2007年使用的数据集包含医学教学文件中的图像和注释。但是,在2008年,使用的数据集由来自北美放射学会(RSNA)的两本科学期刊的67,000张图像(及其相关的图形标题和相应文章的全文)组成。 本文介绍了ImageCLEF 2008评估活动的医学图像检索任务的结果。我们在上述数据集上比较了来自15个研究组的视觉和文本信息检索系统的检索结果。结果清楚地表明,目前,仅视觉检索还无法实现现实世界中临床应用所必需的性能。大多数常见的视觉检索技术的MAP(平均平均精度)约为2-3%,远低于使用文本检索所获得的MAP(平均值= 29%)。过去,先进的机器学习技术以及良好的训练数据已被证明可以改善视觉检索系统的性能。多模式检索(基于视觉和文本信息的基础检索)可以获得比纯视觉更好的结果,但只有在仔细应用后才能实现。在许多情况下,多模式检索系统的性能甚至比纯文本检索系统还要差。另一方面,某些多模式检索系统显示出大大提高的早期精度,这已被证明是现实系统中的理想行为。

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