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Distributed Learning to Protect Privacy in Multi-centric Clinical Studies

机译:分布式学习以保护多维临床研究隐私

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Research in medicine has to deal with the growing amount of data about patients which are made available by modern technologies. All these data might be used to support statistical studies, and for identifying causal relations. To use these data, which are spread across hospitals, efficient merging techniques as well as policies to deal with this sensitive information are strongly needed. In this paper we introduce and empirically test a distributed learning approach, to train Support Vector Machines (SVM), that allows to overcome problems related to privacy and data being spread around. The introduced technique allows to train algorithms without sharing any patients-related information, ensuring privacy and avoids the development of merging tools. We tested this approach on a large dataset and we described results, in terms of convergence and performance; we also provide considerations about the features of an IT architecture designed to support distributed learning computations.
机译:医学研究必须处理现代技术可用的患者的越来越多的数据。所有这些数据都可用于支持统计研究,并识别因果关系。要使用这些数据,这在医院传播,强烈需要高效合并技术以及对处理这种敏感信息的政策。在本文中,我们介绍和经验测试分布式学习方法,以培训支持向量机(SVM),允许克服与隐私和数据相关的问题相关的问题。介绍的技术允许培训算法而不分享任何与患者相关的信息,确保隐私并避免合并工具的发展。我们在大型数据集中测试了这种方法,并在收敛和性能方面描述了结果;我们还提供了关于IT架构的功能,旨在支持分布式学习计算的IT架构的功能。

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