Graduate School of Knowledge Service Engineering, KAIST, Daejeon, Republic of Korea.
Department of Laboratory Medicine, National Cancer Center, Goyang, Republic of Korea.
J Healthc Eng. 2018 Dec 24;2018:3943417. doi: 10.1155/2018/3943417. eCollection 2018.
Clinical decision support (CDS) search is performed to retrieve key medical literature that can assist the practice of medical experts by offering appropriate medical information relevant to the medical case in hand. In this paper, we present a novel CDS search framework designed for passage retrieval from biomedical textbooks in order to support clinical decision-making using laboratory test results. The framework utilizes two unique characteristics of the textual reports derived from the test results, which are syntax variation and negation information. The proposed framework consists of three components: domain ontology, index repository, and query processing engine. We first created a domain ontology to resolve syntax variation by applying the ontology to detect medical concepts from the test results with language translation. We then preprocessed and performed indexing of biomedical textbooks recommended by clinicians for passage retrieval. We finally built the query-processing engine tailored for CDS, including translation, concept detection, query expansion, pseudo-relevance feedback at the local and global levels, and ranking with differential weighting of negation information. To evaluate the effectiveness of the proposed framework, we followed the standard information retrieval evaluation procedure. An evaluation dataset was created, including 28,581 textual reports for 30 laboratory test results and 56,228 passages from widely used biomedical textbooks, recommended by clinicians. Overall, our proposed passage retrieval framework, GPRF-NEG, outperforms the baseline by 36.2, 100.5, and 69.7 percent for MRR, -precision, and Precision at 5, respectively. Our study results indicate that the proposed CDS search framework specifically designed for passage retrieval of biomedical literature represents a practically viable choice for clinicians as it supports their decision-making processes by providing relevant passages extracted from the sources that they prefer to refer to, with improved performances.
临床决策支持(CDS)搜索旨在检索关键医学文献,通过提供与手头医疗案例相关的适当医学信息来协助医学专家实践。在本文中,我们提出了一种新颖的 CDS 搜索框架,旨在从生物医学教科书中进行段落检索,以支持使用实验室测试结果进行临床决策。该框架利用源自测试结果的文本报告的两个独特特征,即语法变化和否定信息。该框架由三个组件组成:领域本体、索引库和查询处理引擎。我们首先创建了一个领域本体,通过应用本体从测试结果中检测医学概念,从而解决语法变化。然后,我们预处理并对临床医生推荐的生物医学教科书进行了索引,以进行段落检索。最后,我们构建了专门针对 CDS 的查询处理引擎,包括翻译、概念检测、查询扩展、局部和全局伪相关反馈以及具有否定信息差分加权的排名。为了评估所提出框架的有效性,我们遵循了标准的信息检索评估程序。创建了一个评估数据集,包括 30 个实验室测试结果的 28581 个文本报告和临床医生推荐的广泛使用的生物医学教科书中的 56228 个段落。总体而言,我们提出的段落检索框架 GPRF-NEG 在 MRR、-precision 和 Precision@5 方面分别比基线提高了 36.2%、100.5%和 69.7%。我们的研究结果表明,专门为生物医学文献的段落检索设计的 CDS 搜索框架是临床医生的一种可行选择,因为它通过提供他们倾向于参考的来源中提取的相关段落来支持他们的决策过程,从而提高了性能。