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Semantics-driven frequent data pattern mining on electronic health records for effective adverse drug event monitoring

机译:语义驱动的电子病历上频繁数据模式挖掘,可有效监测不良药物事件

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Continued surveillance of post-marketing Adverse Drug Events (ADEs) is considered essential for patient safety, and Electronic Health Records (EHRs) serve as a critical source for identifying relevant information. But effective EHR knowledge discovery and data mining is not trivial because involved data usually have significantly different semantics among each other. Semantic technologies are believed to greatly assist in this regard; unfortunately, semantic technologies and conventional data mining remain largely separate disciplines, and the fusion of these two disciplines is still in its infancy. This position paper explores two semantics-driven frequent data pattern mining algorithms for EHR knowledge discovery, aiming at more effective ADE monitoring in a population. By effectively utilizing human knowledge formally encoded in EHR domain ontologies, our proposed algorithms will enhance the identification of the drug ADE causality out of large amounts of heterogeneous data sets. Through mining a large corpus of representative EHRs at semantic level, we will be able to compile a comprehensive list of ADE endpoints by obtaining critical, but originally hidden and implicit, frequent data patterns. Ultimately, our software to be developed will significantly facilitate effective ADE monitoring and prediction. Moreover, our research is expected to produce broader impacts on the pharmaceutical industry by reducing the R & D cost for new drug discovery and on transforming current pharmacovigilance methods to reduce adverse events and hence improve human health.
机译:上市后不良药品事件(ADE)的持续监视被认为对患者安全至关重要,电子健康记录(EHR)是识别相关信息的重要来源。但是有效的EHR知识发现和数据挖掘并非无关紧要,因为所涉及的数据通常在彼此之间具有明显不同的语义。据信语义技术在这方面有很大帮助。不幸的是,语义技术和常规数据挖掘在很大程度上仍然是独立的学科,而这两个学科的融合仍处于起步阶段。本立场文件探讨了两种语义驱动的频繁数据模式挖掘算法,用于EHR知识发现,旨在更有效地监控人群中的ADE。通过有效地利用在EHR域本体中形式化编码的人类知识,我们提出的算法将从大量异类数据集中增强对药物ADE因果关系的识别。通过在语义级别挖掘大量具有代表性的EHR语料库,我们将能够通过获取关键的,但最初是隐藏的和隐式的频繁数据模式来编译ADE端点的完整列表。最终,我们将开发的软件将极大地促进有效的ADE监视和预测。此外,我们的研究有望通过降低新药研发的研发成本以及改变当前的药物警戒方法以减少不良事件并因此改善人类健康状况而对制药业产生更广泛的影响。

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