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Computational Advances in Drug Safety: Systematic and Mapping Review of Knowledge Engineering Based Approaches

机译:药物安全性的计算进展:基于知识工程的方法的系统和制图综述

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摘要

Drug Safety (DS) is a domain with significant public health and social impact. Knowledge Engineering (KE) is the Computer Science discipline elaborating on methods and tools for developing “knowledge-intensive” systems, depending on a conceptual “knowledge” schema and some kind of “reasoning” process. The present systematic and mapping review aims to investigate KE-based approaches employed for DS and highlight the introduced added value as well as trends and possible gaps in the domain. Journal articles published between 2006 and 2017 were retrieved from PubMed/MEDLINE and Web of Science® (873 in total) and filtered based on a comprehensive set of inclusion/exclusion criteria. The 80 finally selected articles were reviewed on full-text, while the mapping process relied on a set of concrete criteria (concerning specific KE and DS core activities, special DS topics, employed data sources, reference ontologies/terminologies, and computational methods, etc.). The analysis results are publicly available as online interactive analytics graphs. The review clearly depicted increased use of KE approaches for DS. The collected data illustrate the use of KE for various DS aspects, such as Adverse Drug Event (ADE) information collection, detection, and assessment. Moreover, the quantified analysis of using KE for the respective DS core activities highlighted room for intensifying research on KE for ADE monitoring, prevention and reporting. Finally, the assessed use of the various data sources for DS special topics demonstrated extensive use of dominant data sources for DS surveillance, i.e., Spontaneous Reporting Systems, but also increasing interest in the use of emerging data sources, e.g., observational healthcare databases, biochemical/genetic databases, and social media. Various exemplar applications were identified with promising results, e.g., improvement in Adverse Drug Reaction (ADR) prediction, detection of drug interactions, and novel ADE profiles related with specific mechanisms of action, etc. Nevertheless, since the reviewed studies mostly concerned proof-of-concept implementations, more intense research is required to increase the maturity level that is necessary for KE approaches to reach routine DS practice. In conclusion, we argue that efficiently addressing DS data analytics and management challenges requires the introduction of high-throughput KE-based methods for effective knowledge discovery and management, resulting ultimately, in the establishment of a continuous learning DS system.
机译:药物安全(DS)是一个具有重大公共卫生和社会影响的领域。知识工程(KE)是计算机科学专业,它根据概念性的“知识”模式和某种“推理”过程,详细介绍用于开发“知识密集型”系统的方法和工具。本系统和制图综述旨在研究用于DS的基于KE的方法,并突出介绍引入的附加值以及该领域的趋势和可能的差距。从PubMed / MEDLINE和Web ofScience®(共873种)中检索2006年至2017年之间发表的期刊文章,并根据一套全面的纳入/排除标准进行过滤。最终选择的80篇文章是全文阅读的,而映射过程则依赖于一组具体的标准(关于特定的KE和DS核心活动,特殊的DS主题,所使用的数据源,参考本体/术语和计算方法等)。 )。分析结果可作为在线交互式分析图公开获得。审查清楚地描述了在DS中增加使用KE方法的情况。收集的数据说明了KE在各个DS方面的使用,例如不良药物事件(ADE)信息的收集,检测和评估。此外,将KE用于各个DS核心活动的量化分析突出显示了加强对KE进行ADE监测,预防和报告的研究的空间。最后,对DS特殊主题的各种数据源的使用评估表明,广泛使用了主要数据源进行DS监视,即自发报告系统,但对新兴数据源(例如观察医疗数据库,生化数据库)的使用也越来越引起关注。 / genetic数据库和社交媒体。确定了各种示例性应用,并获得了有希望的结果,例如,不良药物反应(ADR)预测的改善,药物相互作用的检测以及与特定作用机制相关的新型ADE档案等。尽管如此,由于综述的研究主要涉及证据的证明。 -概念的实现,需要进行更深入的研究以提高KE方法达到常规DS惯例所需的成熟度。总之,我们认为要有效解决DS数据分析和管理难题,就需要引入基于KE的高通量方法来进行有效的知识发现和管理,最终导致建立持续学习的DS系统。

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