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COINSTAC: A Privacy Enabled Model and Prototype for Leveraging and Processing Decentralized Brain Imaging Data

机译:COINSTAC:利用隐私的模型和原型用于处理和处理分散的脑成像数据

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摘要

The field of neuroimaging has embraced the need for sharing and collaboration. Data sharing mandates from public funding agencies and major journal publishers have spurred the development of data repositories and neuroinformatics consortia. However, efficient and effective data sharing still faces several hurdles. For example, open data sharing is on the rise but is not suitable for sensitive data that are not easily shared, such as genetics. Current approaches can be cumbersome (such as negotiating multiple data sharing agreements). There are also significant data transfer, organization and computational challenges. Centralized repositories only partially address the issues. We propose a dynamic, decentralized platform for large scale analyses called the Collaborative Informatics and Neuroimaging Suite Toolkit for Anonymous Computation (COINSTAC). The COINSTAC solution can include data missing from central repositories, allows pooling of both open and “closed” repositories by developing privacy-preserving versions of widely-used algorithms, and incorporates the tools within an easy-to-use platform enabling distributed computation. We present an initial prototype system which we demonstrate on two multi-site data sets, without aggregating the data. In addition, by iterating across sites, the COINSTAC model enables meta-analytic solutions to converge to “pooled-data” solutions (i.e., as if the entire data were in hand). More advanced approaches such as feature generation, matrix factorization models, and preprocessing can be incorporated into such a model. In sum, COINSTAC enables access to the many currently unavailable data sets, a user friendly privacy enabled interface for decentralized analysis, and a powerful solution that complements existing data sharing solutions.
机译:神经影像学领域已经包含了共享和协作的需求。来自公共资助机构和主要期刊出版商的数据共享授权刺激了数据存储库和神经信息学财团的发展。但是,有效的数据共享仍然面临几个障碍。例如,开放数据共享正在兴起,但不适用于不容易共享的敏感数据,例如遗传学。当前的方法可能很麻烦(例如,协商多个数据共享协议)。数据传输,组织和计算方面也存在重大挑战。集中存储库仅部分解决了这些问题。我们为大型分析提出了一个动态的,分散的平台,称为匿名计算协作信息学和神经影像套件工具包(COINSTAC)。 COINSTAC解决方案可以包括中央存储库中缺少的数据,可以通过开发广泛使用算法的隐私保护版本来合并开放存储库和“封闭式”存储库,并将这些工具整合到易于使用的平台中,从而实现分布式计算。我们提供了一个初始的原型系统,我们在两个多站点数据集上进行了演示,而没有汇总数据。此外,通过跨站点进行迭代,COINSTAC模型使元分析解决方案可以收敛到“合并数据”解决方案(即好像所有数据都在手)。可以将更高级的方法(例如特征生成,矩阵分解模型和预处理)合并到此类模型中。总而言之,COINSTAC可以访问许多当前不可用的数据集,用于分散式分析的用户友好型启用了隐私的界面,以及对现有数据共享解决方案进行补充的强大解决方案。

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