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Feedback-Driven Radiology Exam Report Retrieval with Semantics

机译:反馈驱动的放射学考试报告用语义检索

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Clinical documents are vital resources for radiologists to have a better understanding of patient history. The use of clinical documents can complement the often brief reasons for exams that are provided by physicians in order to perform more informed diagnoses. With the large number of study exams that radiologists have to perform on a daily basis, it becomes too time-consuming for radiologists to sift through each patient's clinical documents. It is therefore important to provide a capability that can present contextually relevant clinical documents, and at the same time satisfy the diverse information needs among radiologists from different specialties. In this work, we propose a knowledge-based semantic similarity approach that uses domain-specific relationships such as part-of along with taxonomic relationships such as is-a to identify relevant radiology exam records. Our approach also incorporates explicit relevance feedback to personalize radiologists information needs. We evaluated our approach on a corpus of 6,265 radiology exam reports through study sessions with radiologists and demonstrated that the retrieval performance of our approach yields an improvement of 5% over the baseline. We further performed intra-class and inter-class similarities using a subset of 2,384 reports spanning across 10 exam codes. Our result shows that intra-class similarities are always higher than the inter-class similarities and our approach was able to obtain 6% percent improvement in intra-class similarities against the baseline. Our results suggest that the use of domain-specific relationships together with relevance feedback provides a significant value to improve the accuracy of the retrieval of radiology exam reports.
机译:临床文献是放射科医生的重要资源,以更好地了解患者历史。临床文献的使用可以补充医生提供的考试的经常短暂原因,以便进行更明智的诊断。随着大量的学习考试,放射科医师必须每天执行,放射科学家通过每位患者的临床文件筛选太耗时。因此,重要的是提供一种能够提出上下文相关的临床文件的能力,同时满足来自不同专业的放射科学家之间的不同信息需求。在这项工作中,我们提出了一种基于知识的语义相似性方法,该语义相似性方法使用域的特定关系,例如分类的分类关系,例如IS-A,以识别相关放射学考试记录。我们的方法还纳入了个性化放射科学家信息需求的明确相关反馈。我们通过与放射科医师的学习会议进行了评估了我们在6,265个放射学考试报告中的方法,并证明了我们的方法的检索性能产生了5%的基线。我们进一步使用跨越10个考试代码的2,384个报告的子集进行了类内和阶级的相似性。我们的结果表明,类内相似之处总是高于阶级间相似性,并且我们的方法能够在基线上获得阶级相似性的6%百分比。我们的结果表明,使用域特定关系与相关反馈一起提供了重要的价值,以提高放射学考试报告检索的准确性。

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