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Reducing the Toxicity Risk in Antibiotic Prescriptions by Combining Ontologies with a Multiple Criteria Decision Model

机译:通过将本体与多标准决策模型相结合来降低抗生素处方中的毒性风险

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摘要

We consider the risk of adverse drug events caused by antibiotic prescriptions. Antibiotics are the second most common cause of drug related adverse events and one of the most common classes of drugs associated with medical malpractice claims. To cope with this serious issue, physicians rely on guidelines, especially in the context of hospital prescriptions. Unfortunately such guidelines do not offer sufficient support to solve the problem of adverse events. To cope with these issues our work proposes a clinical decision support system based on expert medical knowledge, which combines semantic technologies with multiple criteria decision models. Our model links and assesses the adequacy of each treatment through the toxicity risk of side effects, in order to provide and explain to physicians a sorted list of possible antibiotics. We illustrate our approach through carefully selected case studies in collaboration with the EpiCURA Hospital Center in Belgium.
机译:我们考虑了抗生素处方引起的药物不良事件的风险。抗生素是与药物相关的不良事件的第二大最常见原因,也是与医疗事故索赔相关的最常见的一类药物。为了解决这个严重的问题,医生尤其是在医院处方方面依靠指南。不幸的是,这样的指南没有提供足够的支持来解决不良事件的问题。为了解决这些问题,我们的工作提出了一种基于专家医学知识的临床决策支持系统,该系统将语义技术与多种标准决策模型相结合。我们的模型通过副作用的毒性风险来链接和评估每种疗法的适当性,以便向医生提供并解释可能的抗生素的分类清单。我们通过与比利时EpiCURA医院中心合作精心选择的案例研究来说明我们的方法。

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