亚临床疾病的患者间一致性是否与电子病历相似性有关?

L. Chan, I. Benzie, Y. Liu, C. Shyu
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引用次数: 5

摘要

电子健康记录(EHR)为识别亚临床疾病和支持早期干预决策提供了临床证据。简单的字符串匹配无法将病历中概念相似但语言不同的临床术语联系起来,限制了电子病历的实用性。提出了一种基于医学临床术语系统化命名法的本体论相似度匹配方法。将病历的疾病项转换成向量空间,使得每个病历都可以用特征向量来表征。通过特征向量的核函数量化新记录与现有数据库记录之间的相似性。根据相似度评分对匹配进行排名。为了评估所提出的匹配方法,我们收集了香港47名受试者的病史和颈动脉超声成像结果。该数据集形成了1081对患者记录,并使用ROC分析来评估和比较本体学相似性匹配和简单字符串匹配与超声检查中发现的颈动脉斑块存在或不存在的准确性。结果表明,简单字符串匹配对记录对进行随机排序,而本体相似性匹配对记录对进行非随机排序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Is the inter-patient coincidence of a subclinical disorder related to EHR similarity?
Electronic Health Record (EHR) provide clinical evidence for identifying subclinical diseases and supporting decisions on early intervention. Simple string matching cannot link up the conceptually similar but verbally different clinical terms in patient records, limiting the usefulness of EHR. A novel ontological similarity matching approach supported by the Systematized Nomenclature of Medicine Clinical Terms (SNOMED-CT) is proposed in this paper. The disease terms of a patient record are transformed into a vector space so that each patient record can be characterized by a feature vector. The similarity between the new record and an existing database record was quantified by a kernel function of their feature vectors. The matches are ranked by their similarity scores. To evaluate the proposed matching approach, medical history and carotid ultrasonic imaging finding were collected from 47 subjects in Hong Kong. The dataset formed 1081 pairs of patient records and the ROC analysis was used to evaluate and compare the accuracy of the ontological similarity matching and the simple string matching against the presence or absence of carotid plaques identified in ultrasound examination. It was found that the simple string matching randomly rated the record pairs but the ontological similarity matching provided non-random rating.
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