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Framework for workflow-driven Clinical Decision Support in oncology

机译:工作流程驱动的肿瘤学临床决策支持框架

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Successful implementation of meaningful Clinical Decision Support (CDS) solutions in healthcare has the potential to reduce the knowledge gap between clinical research and practice, especially in a complex genetic disease such as cancer. While significant effort has been invested in the implementation of tools for CDS in the last few decades, their uptake in the clinic has been limited. The barriers to adoption have been extensively discussed in the literature. In oncology, current CDS solutions are not able to support the complex decisions required for stratification and personalized treatment of patients and to keep up with the high rate of change in therapeutic options and knowledge. We propose a CDS framework that facilitates the implementation of decision support that flexibly integrates a large variety of clinical models and can bring to the clinic comprehensive solutions leveraging the latest available knowledge. We include both literature-based models and models built within the p-medicine research project using the available comprehensive datasets from clinical trials and care. The solution is open to the biomedical community, enabling the reuse of existing models for third-party CDS implementations and for the development of new models, and supporting collaboration among modelers, CDS implementers, biomedical researchers and clinicians. To increase adoption and support the complexity of patient management along the care continuum, we also propose to support and leverage the clinical processes defined and adhered to by healthcare organizations. We design an architecture that extends the CDS framework with workflow modeling and execution functionality to leverage the existing clinical processes. The knowledge models are embedded in the workflow models and executed at the right time, when and where the recommendation is needed in the clinical process. Next to supporting the decisions, this solution supports by default the decision processes as well and explo- ts the knowledge embedded in those processes.
机译:在医疗保健领域成功实施有意义的临床决策支持(CDS)解决方案具有缩小临床研究与实践之间的知识鸿沟的潜力,尤其是在诸如癌症等复杂遗传疾病中。在过去的几十年中,尽管为实施CDS工具付出了巨大的努力,但在临床上对CDS工具的使用却受到限制。文献中已经广泛讨论了采用的障碍。在肿瘤学中,当前的CDS解决方案无法支持对患者进行分层和个性化治疗所需的复杂决策,并且无法跟上治疗选择和知识的高变化率。我们提出了一个CDS框架,该框架可促进决策支持的实施,该决策支持可灵活地集成各种临床模型,并可以利用最新的可用知识为临床带来全面的解决方案。我们包括基于文献的模型和在p-医学研究项目中使用从临床试验和护理获得的全面数据集构建的模型。该解决方案向生物医学界开放,可将现有模型重用于第三方CDS实施以及开发新模型,并支持建模人员,CDS实施者,生物医学研究人员和临床医生之间的协作。为了增加采用率并支持整个护理过程中患者管理的复杂性,我们还建议支持和利用医疗保健组织定义和遵守的临床流程。我们设计了一种架构,该架构通过工作流建模和执行功能扩展了CDS框架,以利用现有的临床流程。知识模型被嵌入到工作流模型中,并在临床过程中何时何地需要推荐的正确时间执行。除了支持决策,此解决方案还默认支持决策过程,并挖掘嵌入在这些过程中的知识。

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