An ontological fuzzy Smith-Waterman with applications to patient retrieval in Electronic Medical Records

M. Popescu
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引用次数: 10

Abstract

With the introduction of Electronic Medical Records (EMR) systems in health care institutions, a huge data repository has been created. By employing computational intelligence (CI) techniques, this data repository can be used to address important health care issues such as improving quality and reducing medical errors. In this paper, we introduce a general word sequence alignment method based on a fuzzy version of the Smith-Waterman (SW) dynamic programming algorithm. The word similarity matrix used in computing the sequence alignment is calculated based on a domain ontology (taxonomy). The fuzzy version of the SW algorithm is designed to accommodate words not present in the initial dictionary used to precompute the similarity matrix, hence avoiding its recalculation. We apply the developed algorithm for patient retrieval in an EMR. Each patient is described by an ordered sequence of ICD9 diagnoses. We analyze various properties of the proposed algorithm on a patient dataset that contains 107 patients described by ICD9 diagnose sequences.
本体论模糊Smith-Waterman及其在电子病历患者检索中的应用
随着医疗保健机构引入电子医疗记录(EMR)系统,已经创建了一个巨大的数据存储库。通过使用计算智能(CI)技术,该数据存储库可用于解决重要的医疗保健问题,例如提高质量和减少医疗错误。本文介绍了一种基于模糊版Smith-Waterman (SW)动态规划算法的通用词序列比对方法。计算序列比对所用的词相似度矩阵是基于领域本体(分类)计算的。模糊版本的SW算法被设计为容纳不存在于用于预先计算相似矩阵的初始字典中的单词,从而避免其重新计算。我们将开发的算法应用于电子病历中的患者检索。每个病人都是通过ICD9诊断的有序序列来描述的。我们在包含107例由ICD9诊断序列描述的患者数据集上分析了所提出算法的各种特性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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