Semantic Information Retrieval on Medical Texts

L. Tamine, L. Goeuriot
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引用次数: 13

Abstract

The explosive growth and widespread accessibility of medical information on the Internet have led to a surge of research activity in a wide range of scientific communities including health informatics and information retrieval (IR). One of the common concerns of this research, across these disciplines, is how to design either clinical decision support systems or medical search engines capable of providing adequate support for both novices (e.g., patients and their next-of-kin) and experts (e.g., physicians, clinicians) tackling complex tasks (e.g., search for diagnosis, search for a treatment). However, despite the significant multi-disciplinary research advances, current medical search systems exhibit low levels of performance. This survey provides an overview of the state of the art in the disciplines of IR and health informatics, and bridging these disciplines shows how semantic search techniques can facilitate medical IR. First,we will give a broad picture of semantic search and medical IR and then highlight the major scientific challenges. Second, focusing on the semantic gap challenge, we will discuss representative state-of-the-art work related to feature-based as well as semantic-based representation and matching models that support medical search systems. In addition to seminal works, we will present recent works that rely on research advancements in deep learning. Third, we make a thorough cross-model analysis and provide some findings and lessons learned. Finally, we discuss some open issues and possible promising directions for future research trends.
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医学文本语义信息检索
互联网上医疗信息的爆炸性增长和广泛可及性导致了包括卫生信息学和信息检索(IR)在内的广泛科学界研究活动的激增。在这些学科中,本研究的共同关注点之一是如何设计临床决策支持系统或医学搜索引擎,能够为新手(例如,患者及其近亲)和专家(例如,医生,临床医生)处理复杂任务(例如,搜索诊断,搜索治疗)提供足够的支持。然而,尽管有重大的多学科研究进展,目前的医疗搜索系统表现出低水平的性能。本调查概述了IR和健康信息学学科的最新进展,并将这些学科联系起来,展示了语义搜索技术如何促进医学IR。首先,我们将给出语义搜索和医学IR的广泛图景,然后强调主要的科学挑战。其次,关注语义差距挑战,我们将讨论与支持医疗搜索系统的基于特征和基于语义的表示和匹配模型相关的代表性最新研究。除了开创性的工作外,我们还将介绍依赖于深度学习研究进展的最新工作。第三,我们进行了深入的跨模型分析,并提供了一些发现和经验教训。最后,我们讨论了一些有待解决的问题和未来可能的研究方向。
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