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A privacy-preserving framework for distributed clinical decision support

机译:分布式临床决策支持的隐私保留框架

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We propose a framework for distributed knowledge-mining that results in a useful clinical decision support tool in the form of a decision tree. This framework facilitates knowledge building using statistics based on patient data from multiple sites that satisfy a certain filtering condition, without the need for actual data to leave the participating sites. Our information retrieval and diagnostics supporting tool accommodates heterogeneous data schemas associated with participating sites. It also supports prevention of personally identifiable information leakage and preservation of privacy, which are important security concerns in management of clinical data transactions. Results of experiments conducted on 8 and 16 sites with a small number of patients per site (if any) satisfying specific partial diagnostics criteria are presented. The experiments coupled with restricting a fraction of attributes from sharing statistics as well as applying different constraints on privacy at various sites demonstrate the usefulness of the tool.
机译:我们为分布式知识挖掘提出了一个框架,导致决策树形式的有用的临床决策支持工具。该框架使用来自满足某个过滤条件的多个站点的患者数据,促进了使用统计数据的知识构建,而无需实际数据离开参与站点。我们的信息检索和诊断支持工具可容纳与参与网站相关的异构数据模式。它还支持预防个人身份信息泄露和保护隐私,这是临床数据交易管理中的重要安全问题。提出了在8和16位点进行的实验结果,呈现满足特定部分诊断标准的少数患者(如果有的话)。耦合的实验与限制分数分享分享统计数据以及在各个站点的隐私对隐私的不同约束展示了工具的有用性。

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