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转化研究2.0:加速合作发现的框架

Translational Research 2.0: a framework for accelerating collaborative discovery.

作者信息

Asakiewicz Chris

出版信息

Per Med. 2014 May;11(3):351-358. doi: 10.2217/pme.14.15.

DOI:10.2217/pme.14.15
PMID:29764063
Abstract

The world wide web has revolutionized the conduct of global, cross-disciplinary research. In the life sciences, interdisciplinary approaches to problem solving and collaboration are becoming increasingly important in facilitating knowledge discovery and integration. Web 2.0 technologies promise to have a profound impact - enabling reproducibility, aiding in discovery, and accelerating and transforming medical and healthcare research across the healthcare ecosystem. However, knowledge integration and discovery require a consistent foundation upon which to operate. A foundation should be capable of addressing some of the critical issues associated with how research is conducted within the ecosystem today and how it should be conducted for the future. This article will discuss a framework for enhancing collaborative knowledge discovery across the medical and healthcare research ecosystem. A framework that could serve as a foundation upon which ecosystem stakeholders can enhance the way data, information and knowledge is created, shared and used to accelerate the translation of knowledge from one area of the ecosystem to another.

摘要

万维网彻底改变了全球跨学科研究的开展方式。在生命科学领域,跨学科解决问题和合作的方法对于促进知识发现与整合变得越来越重要。Web 2.0技术有望产生深远影响——实现可重复性、辅助发现,并加速和变革整个医疗生态系统中的医学和医疗保健研究。然而,知识整合与发现需要一个一致的操作基础。一个基础应能够解决一些与当今生态系统中研究如何开展以及未来应如何开展相关的关键问题。本文将讨论一个用于加强整个医学和医疗保健研究生态系统中协作式知识发现的框架。一个可作为基础的框架,生态系统利益相关者可以据此改进数据、信息和知识的创建、共享及使用方式,以加速知识从生态系统的一个领域向另一个领域的转化。

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