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Natural Language Processing Versus Content-Based Image Analysis for Medical Document Retrieval

机译:自然语言处理与基于内容的图像分析在医学文献检索中的应用

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摘要

One of the most significant recent advances in health information systems has been the shift from paper to electronic documents. While research on automatic text and image processing has taken separate paths, there is a growing need for joint efforts, particularly for electronic health records and biomedical literature databases. This work aims at comparing text-based versus image-based access to multimodal medical documents using state-of-the-art methods of processing text and image components. A collection of 180 medical documents containing an image accompanied by a short text describing it was divided into training and test sets. Content-based image analysis and natural language processing techniques are applied individually and combined for multimodal document analysis. The evaluation consists of an indexing task and a retrieval task based on the “gold standard” codes manually assigned to corpus documents. The performance of text-based and image-based access, as well as combined document features, is compared. Image analysis proves more adequate for both the indexing and retrieval of the images. In the indexing task, multimodal analysis outperforms both independent image and text analysis. This experiment shows that text describing images can be usefully analyzed in the framework of a hybrid text/image retrieval system.
机译:健康信息系统中最重要的最新进展之一就是从纸质文档到电子文档的转变。尽管对自动文本和图像处理的研究采取了不同的方法,但对共同努力的需求日益增长,特别是对于电子健康记录和生物医学文献数据库。这项工作旨在使用处理文本和图像组件的最新方法,比较基于文本和基于图像的多模式医疗文档访问。收集了180张医学文档,其中包含图像和描述该图像的简短文字,并分为训练集和测试集。基于内容的图像分析和自然语言处理技术被单独应用并组合用于多模式文档分析。评估包括索引任务和基于手动分配给语料库文档的“黄金标准”代码的检索任务。比较了基于文本和基于图像的访问以及组合文档功能的性能。事实证明,图像分析对于图像的索引编制和检索都更为合适。在索引任务中,多峰分析的性能优于独立的图像和文本分析。该实验表明,可以在混合文本/图像检索系统的框架中对描述图像的文本进行有用的分析。

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