在临床护理过程中利用医疗保健企业进行发现

S. Murphy
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引用次数: 1

摘要

目的:尽管患者可能拥有丰富的影像、基因组、监测和个人设备数据,但尚未完全整合到临床护理中。方法:我们找出缺乏整合的三个原因。首先,大多数电子病历系统(EMRS)对“大数据”管理不善。这些数据大多可以在“云原生”平台上获得,这超出了大多数电子病历的范围,甚至检查患者是否可以获得这些数据通常也必须在电子病历之外完成。第二个原因是,从大数据中提取与医疗保健相关的特征通常需要复杂的机器学习算法,例如确定基因组变异是否会改变蛋白质。第三个原因是,呈现大数据的应用程序需要不断修改,以反映当前的知识状态,例如指示何时订购一套新的基因组测试。在某些情况下,应用程序需要每晚更新。结果:EMRS的新架构正在发展,它可以通过基于微服务的架构将大数据、机器学习和临床护理结合起来,该架构可以托管专注于临床护理相当特定方面的应用程序,例如管理癌症免疫治疗。结论:信息学创新、医学研究和临床护理携手并进,因为我们希望将基于科学的实践注入医疗保健。创新的方法将导致一个新的应用生态系统与医疗保健提供商互动,以实现一个仍有待确定的承诺。
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Instrumenting the Health Care Enterprise for Discovery in the Course of Clinical Care
Objectives: Although patients may have a wealth of imaging, genomic, monitoring, and personal device data, it has yet to be fully integrated into clinical care. Methods: We identify three reasons for the lack of integration. The first is that "Big Data" is poorly managed by most Electronic Medical Record Systems (EMRS). The data is mostly available on "cloud-native" platforms that are outside the scope of most EMRS, and even checking if such data is available on a patient often must be done outside the EMRS. The second reason is that extracting features from the Big Data that are relevant to healthcare often requires complex machine learning algorithms, such as determining if a genomic variant is protein-altering. The third reason is that applications that present the big data need to be modified constantly to reflect the current state of knowledge, such as instructing when to order a new set of genomic tests. In some cases, the applications need to be updated nightly. Results: A new architecture for the EMRS is evolving which could unite Big Data, machine learning, and clinical care through a microservice-based architecture which can host applications focused on quite specific aspects of clinical care, such as managing cancer immunotherapy. Conclusion: Informatics innovation, medical research, and clinical care go hand in hand as we look to infuse science-based practice into healthcare. Innovative methods will lead to in a new ecosystem of Apps interacting with healthcare providers to fulfill a promise that is still to be determined.
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