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The Learning-Adapting-Leveling model: From theory to hypothesis of steps for implementation of basic genome-based evidence in personalized medicine

机译:学习适应水平模型:从理论到假设,在个性化医学中实施基于基本基因组的证据的步骤

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We see a backlog in the effective and efficient integration of personalized medicine applications such as genome-based information and technologies into healthcare systems. This article aims to expand on the steps of a published innovative model, which addresses the bottleneck of real-time integration into healthcare. We present a deconstruction of the Learning-Adapting-Leveling model to simplify the steps. We found out that throughout the technology transfer pipeline, contacts, assessments and adaptations/feedback loops are made with health needs assessment, health technology assessment and health impact assessment professionals in the same order by the academic-industrial complex, resulting in early-on involvement of all stakeholders. We conclude that the model steps can be used to resolve the bottleneck of implementation of personalized medicine application into healthcare systems.
机译:我们将有效地,高效地将个性化医学应用(例如基于基因组的信息和技术)集成到医疗保健系统中看到了积压的待办事项。本文旨在扩展已发布的创新模型的步骤,该模型解决了实时集成到医疗保健中的瓶颈。我们提出解构学习适应水平模型以简化步骤。我们发现,在整个技术转让流程中,学术,工业综合体与健康需求评估,健康技术评估和健康影响评估专业人员以相同的顺序进行联系,评估和适应/反馈循环,从而导致早期参与所有利益相关者。我们得出结论,可以使用模型步骤来解决将个性化医学应用程序应用于医疗保健系统的瓶颈。

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