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Semantic Medical Prescriptions -- Towards Intelligent and Interoperable Medical Prescriptions

机译:语义医疗处方-迈向智能和可互操作的医疗处方

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Medication errors are the most common type of medical errors in health-care domain. The use of electronic prescribing systems (e-prescribing) have resulted in significant reductions in such errors. However, dealing with the heterogeneity of available information sources is still one of the main challenges of e-prescription systems. There already exists different sources of information addressing different aspects of pharmaceutical research (e.g. chemical, pharmacological and pharmaceutical drug data, clinical trials, approved prescription drugs, drugs activity against drug targets. etc.). Handling these dynamic pieces of information within current e-prescription systems without bridging the existing pharmaceutical information islands is a cumbersome task. In this paper we present semantic medical prescriptions which are intelligent e-prescription documents enriched by dynamic drug-related meta-data thereby know about their content and the possible interactions. Semantic prescriptions provide an interoperable interface which helps patients, physicians, pharmacists, researchers, pharmaceutical and insurance companies to collaboratively improve the quality of pharmaceutical services by facilitating the process of shared decision making. In order to showcase the applicability of semantic prescriptions we present an application called Pharmer. Pharmer employs datasets such as DBpedia, Drug Bank, Daily Med and RxNorm to automatically detect the drugs in the prescriptions and to collect multidimensional data on them. We evaluate the feasibility of the Pharmer by conducting a usability evaluation and report on the quantitative and qualitative results of our survey.
机译:用药错误是医疗领域中最常见的医疗错误类型。电子处方系统(电子处方)的使用大大减少了此类错误。但是,处理可用信息源的异构性仍然是电子处方系统的主要挑战之一。已经有针对制药研究不同方面的不同信息来源(例如化学,药理学和制药数据,临床试验,批准的处方药,针对药物靶标的药物活性等)。在当前的电子处方系统中处理这些动态信息而不桥接现有的制药信息孤岛是一项繁琐的任务。在本文中,我们介绍了语义医学处方,这是智能的电子处方文档,其中包含与药物相关的动态元数据,从而了解其内容以及可能的相互作用。语义处方提供了一个可互操作的界面,该界面可帮助患者,医生,药剂师,研究人员,制药和保险公司通过促进共同决策过程来共同提高制药服务的质量。为了展示语义处方的适用性,我们提出了一个名为Pharmer的应用程序。 Pharmer利用DBpedia,Drug Bank,Daily Med和RxNorm等数据集来自动检测处方中的药物并收集其中的多维数据。我们通过进行可用性评估来评估Pharmer的可行性,并报告调查的定量和定性结果。

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