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大数据时代的协作生物医学:以癌症为例。

Collaborative biomedicine in the age of big data: the case of cancer.

作者信息

Shaikh Abdul R, Butte Atul J, Schully Sheri D, Dalton William S, Khoury Muin J, Hesse Bradford W

机构信息

PricewaterhouseCoopers LLP, McLean, VA, United States.

出版信息

J Med Internet Res. 2014 Apr 7;16(4):e101. doi: 10.2196/jmir.2496.

Abstract

Biomedicine is undergoing a revolution driven by high throughput and connective computing that is transforming medical research and practice. Using oncology as an example, the speed and capacity of genomic sequencing technologies is advancing the utility of individual genetic profiles for anticipating risk and targeting therapeutics. The goal is to enable an era of "P4" medicine that will become increasingly more predictive, personalized, preemptive, and participative over time. This vision hinges on leveraging potentially innovative and disruptive technologies in medicine to accelerate discovery and to reorient clinical practice for patient-centered care. Based on a panel discussion at the Medicine 2.0 conference in Boston with representatives from the National Cancer Institute, Moffitt Cancer Center, and Stanford University School of Medicine, this paper explores how emerging sociotechnical frameworks, informatics platforms, and health-related policy can be used to encourage data liquidity and innovation. This builds on the Institute of Medicine's vision for a "rapid learning health care system" to enable an open source, population-based approach to cancer prevention and control.

摘要

生物医学正在经历一场由高通量和连接计算驱动的革命,这场革命正在改变医学研究和实践。以肿瘤学为例,基因组测序技术的速度和能力正在提高个体基因图谱在预测风险和靶向治疗方面的效用。目标是开启一个“P4”医学时代,随着时间的推移,它将变得越来越具有预测性、个性化、预防性和参与性。这一愿景取决于利用医学中潜在的创新和颠覆性技术来加速发现,并将临床实践重新定位为以患者为中心的护理。基于在波士顿举行的医学2.0会议上与美国国家癌症研究所、莫菲特癌症中心和斯坦福大学医学院代表的小组讨论,本文探讨了如何利用新兴的社会技术框架、信息学平台和健康相关政策来鼓励数据流通和创新。这建立在医学研究所对“快速学习医疗保健系统”的愿景之上,以实现一种基于人群的开源癌症预防和控制方法。

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