首页> 外文期刊>Journal of digital imaging: the official journal of the Society for Computer Applications in Radiology >Evaluation of negation and uncertainty detection and its impact on precision and recall in search.
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Evaluation of negation and uncertainty detection and its impact on precision and recall in search.

机译:否定和不确定性检测的评估及其对搜索精度和查全率的影响。

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摘要

Radiology reports contain information that can be mined using a search engine for teaching, research, and quality assurance purposes. Current search engines look for exact matches to the search term, but they do not differentiate between reports in which the search term appears in a positive context (i.e., being present) from those in which the search term appears in the context of negation and uncertainty. We describe RadReportMiner, a context-aware search engine, and compare its retrieval performance with a generic search engine, Google Desktop. We created a corpus of 464 radiology reports which described at least one of five findings (appendicitis, hydronephrosis, fracture, optic neuritis, and pneumonia). Each report was classified by a radiologist as positive (finding described to be present) or negative (finding described to be absent or uncertain). The same reports were then classified by RadReportMiner and Google Desktop. RadReportMiner achieved a higher precision (81%), compared with Google Desktop (27%; p < 0.0001). RadReportMiner had a lower recall (72%) compared with Google Desktop (87%; p = 0.006). We conclude that adding negation and uncertainty identification to a word-based radiology report search engine improves the precision of search results over a search engine that does not take this information into account. Our approach may be useful to adopt into current report retrieval systems to help radiologists to more accurately search for radiology reports.
机译:放射学报告包含可以使用搜索引擎进行挖掘的信息,以进行教学,研究和质量保证。当前的搜索引擎正在寻找与搜索词完全匹配的搜索引擎,但是它们没有区分在否定和不确定性情况下搜索词出现在正向上下文(即存在)中的报告和在哪个报告中出现。 。我们描述了RadReportMiner(一种上下文感知搜索引擎),并将其检索性能与通用搜索引擎Google桌面进行比较。我们创建了464份放射学报告的资料集,其中描述了至少五个发现(阑尾炎,肾积水,骨折,视神经炎和肺炎)之一。放射线医师将每个报告分类为肯定(描述为存在)或否定(描述为不存在或不确定)。然后,RadReportMiner和Google桌面对相同的报告进行分类。与Google桌面(27%; p <0.0001)相比,RadReportMiner的精度更高(81%)。与Google桌面(87%; p = 0.006)相比,RadReportMiner的召回率较低(72%)。我们得出结论,在不考虑此信息的搜索引擎上,向基于单词的放射学报告搜索引擎添加否定和不确定性标识可以提高搜索结果的精度。我们的方法可能适用于当前的报告检索系统,以帮助放射科医生更准确地搜索放射学报告。

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