IEEE Trans Nanobioscience. 2019 Jul;18(3):335-342. doi: 10.1109/TNB.2019.2909324. Epub 2019 Apr 9.
Precision medicine (PM) is regarded as an information retrieval (IR) task in which biomedical articles containing treatment information about specific diseases or genetic variants are retrieved in response to patient record for the purpose of providing medical evidence to the point-of-care. In existing PM approaches, manual keywords, such as "treatment" and "therapy," are considered direct indicators of treatment information and are thereby introduced to expand the original query. However, the common medical concepts that are implicitly related to treatment (such as "oncogene" and "tumor"), and differ the relevant documents from the non-relevant ones, are yet to be utilized. To bridge the gap, in this paper, we propose an extension of the state-of-the-art neural IR (NIR) models, including K-NRM and DRMM, to encapsulate the PM solutions within a neural network framework, referred to as NIR . Specifically, the proposed approach mines a global list of common medical concepts from documents that are judged pertinent to different queries. Thereafter, the mined implicit concepts are incorporated within an NIR framework to enhance the effectiveness of PM. The experimental results on the standard Text REtrieval Conference (TREC) PM track benchmark confirm the superior performance of the proposed NIR model.
精准医学(PM)被视为一种信息检索(IR)任务,其目的是根据患者记录检索包含特定疾病或遗传变异治疗信息的生物医学文章,以便为即时护理提供医学证据。在现有的 PM 方法中,手动关键字(如“治疗”和“疗法”)被认为是治疗信息的直接指标,因此被引入以扩展原始查询。然而,与治疗相关的常见医学概念(如“癌基因”和“肿瘤”)尚未被利用,这些概念与治疗信息隐含相关,能够区分相关文档和不相关文档。为了弥补这一差距,本文提出了一种扩展的最先进的神经信息检索(NIR)模型,包括 K-NRM 和 DRMM,将 PM 解决方案封装在神经网络框架内,称为 NIR。具体来说,该方法从与不同查询相关的文档中挖掘出一个常见医学概念的全局列表。然后,将挖掘到的隐含概念纳入 NIR 框架中,以提高 PM 的效果。在标准文本检索会议(TREC)PM 跟踪基准测试上的实验结果证实了所提出的 NIR 模型的优越性能。