用于医疗记录搜索的查询和患者理解框架

Nut Limsopatham
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引用次数: 2

摘要

电子医疗记录(emr)在世界范围内越来越多地用于促进改善医疗保健服务[2,3]。它们描述了与患者有关的临床决策过程,详细说明了观察到的症状、进行的诊断测试、确定的诊断和规定的治疗。然而,由于病历中固有的隐性知识——这些知识可能为医生所知,但却隐藏在信息检索(IR)系统中[3],因此,病历搜索具有挑战性。例如,提及治疗(如药物)可能会向医生表明已经做出了特定的诊断,即使在患者的电子病历中没有明确提到这一点。此外,临床医生未观察到症状的事实可能会排除某些特定的诊断。我们的工作重点是搜索电子病历,以识别与查询中所述医疗状况相关的病史的患者。由此产生的系统可以有利于医疗保健提供者、管理人员和研究人员,他们可能希望分析特定医疗程序对抗特定疾病的有效性[2,4]。在检索过程中,医疗保健提供者可能指示许多包含标准来描述感兴趣的患者类型。例如,使用的标准可能包括个人概况(例如年龄和性别)或一些特定的医学症状和测试,从而可以识别电子病历符合标准的患者。为了获得有效的检索性能,我们假设,在这样一个医疗IR系统中,信息需求和患者都应该基于医疗过程的发展方式进行建模。具体来说,我们的论文指出,由于医疗决策过程通常包括四个方面(症状,诊断测试,诊断和治疗),医疗搜索系统应该考虑到这些方面,并应用推断来恢复可能的隐性知识。我们假设在检索过程的不同层次(即句子、记录和记录间层次)考虑这些方面及其衍生的隐性知识可以提高检索性能。事实上,我们建议建立一个查询和患者理解框架,通过在检索过程的三个不同层次上对上述四个方面(症状、诊断测试、诊断和治疗)进行建模和推理,可以从emr和查询中获得见解。
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A query and patient understanding framework for medical records search
Electronic medical records (EMRs) are being increasingly used worldwide to facilitate improved healthcare services [2,3]. They describe the clinical decision process relating to a patient, detailing the observed symptoms, the conducted diagnostic tests, the identified diagnoses and the prescribed treatments. However, medical records search is challenging, due to the implicit knowledge inherent within the medical records - such knowledge may be known by medical practitioners, but hidden to an information retrieval (IR) system [3]. For instance, the mention of a treatment such as a drug may indicate to a practitioner that a particular diagnosis has been made even if this was not explicitly mentioned in the patient's EMRs. Moreover, the fact that a symptom has not been observed by a clinician may rule out some specific diagnoses. Our work focuses on searching EMRs to identify patients with medical histories relevant to the medical condition(s) stated in a query. The resulting system can be beneficial to healthcare providers, administrators, and researchers who may wish to analyse the effectiveness of a particular medical procedure to combat a specific disease [2,4]. During retrieval, a healthcare provider may indicate a number of inclusion criteria to describe the type of patients of interest. For example, the used criteria may include personal profiles (e.g. age and gender) or some specific medical symptoms and tests, allowing to identify patients that have EMRs matching the criteria. To attain effective retrieval performance, we hypothesise that, in such a medical IR system, both the information needs and patients should be modelled based on how the medical process is developed. Specifically, our thesis states that since the medical decision process typically encompasses four aspects (symptom, diagnostic test, diagnosis, and treatment), a medical search system should take into account these aspects and apply inferences to recover possible implicit knowledge. We postulate that considering these aspects and their derived implicit knowledge at different levels of the retrieval process (namely, sentence, record, and inter-record level) enhances the retrieval performance. Indeed, we propose to build a query and patient understanding framework that can gain insights from EMRs and queries, by modelling and reasoning during retrieval in terms of the four aforementioned aspects (symptom, diagnostic test, diagnosis, and treatment) at three different levels of the retrieval process.
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