首页> 外文期刊>Radiotherapy and oncology: Journal of the European Society for Therapeutic Radiology and Oncology >Creating a data exchange strategy for radiotherapy research: Towards federated databases and anonymised public datasets
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Creating a data exchange strategy for radiotherapy research: Towards federated databases and anonymised public datasets

机译:为放射疗法研究创建数据交换策略:建立联合数据库和匿名公共数据集

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Disconnected cancer research data management and lack of information exchange about planned and ongoing research are complicating the utilisation of internationally collected medical information for improving cancer patient care. Rapidly collecting/pooling data can accelerate 'translational research in radiation therapy and oncology. The exchange of study data is one of the fundamental principles behind data aggregation and data mining. The possibilities of reproducing the original study results, performing further analyses on existing research data to generate new hypotheses or developing computational models to support medical decisions (e.g. risk/benefit analysis of treatment options) represent just a fraction of the potential benefits of medical data-pooling. Distributed machine learning and knowledge exchange from federated databases can be considered as one beyond other attractive approaches for knowledge generation within "Big Data". Data interoperability between research institutions should be the major concern behind a wider collaboration. Information captured in electronic patient records (EPRs) and study case report forms (eCRFs), linked together with medical imaging and treatment planning data, are deemed to be fundamental elements for large multi-centre studies in the field of radiation therapy and oncology. To fully utilise the captured medical information, the study data have to be more than just an electronic version of a traditional (un-modifiable) paper CRF. Challenges that have to be addressed are data interoperability, utilisation of standards, data quality and privacy concerns, data ownership, rights to publish, data pooling architecture and storage. This paper discusses a framework for conceptual packages of ideas focused on a strategic development for international research data exchange in the field of radiation therapy and oncology. (C) 2014 Elsevier Ireland Ltd. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/3.0/).
机译:断开的癌症研究数据管理以及缺乏有关计划中的研究和正在进行中的研究的信息交换,使利用国际收集的医学信息来改善癌症患者的护理变得复杂。快速收集/汇集数据可以加快放射治疗和肿瘤学的翻译研究。研究数据的交换是数据聚合和数据挖掘背后的基本原理之一。复制原始研究结果,对现有研究数据进行进一步分析以产生新假设或开发计算模型以支持医疗决策(例如治疗方案的风险/收益分析)的可能性仅代表医疗数据潜在收益的一小部分,集中。来自联合数据库的分布式机器学习和知识交换可以被视为超越“大数据”中知识生成的其他有吸引力方法之一。研究机构之间的数据互操作性应该成为更广泛合作背后的主要关注点。电子病历(EPR)和研究病例报告表(eCRF)中捕获的信息与医学影像和治疗计划数据链接在一起,被认为是放射治疗和肿瘤学领域大型多中心研究的基本要素。为了充分利用捕获的医学信息,研究数据必须不仅仅是传统(不可修改)纸质CRF的电子版本。必须解决的挑战是数据互操作性,标准的使用,数据质量和隐私问题,数据所有权,发布权,数据池体系结构和存储。本文讨论了一系列概念性构想的框架,这些构架的重点是放射治疗和肿瘤学领域国际研究数据交换的战略发展。 (C)2014 Elsevier Ireland Ltd.。这是CC BY-NC-ND许可(http://creativecommons.org/licenses/by-nc-nd/3.0/)下的开放访问文章。

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