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      Private predictive analysis on encrypted medical data.

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          Abstract

          Increasingly, confidential medical records are being stored in data centers hosted by hospitals or large companies. As sophisticated algorithms for predictive analysis on medical data continue to be developed, it is likely that, in the future, more and more computation will be done on private patient data. While encryption provides a tool for assuring the privacy of medical information, it limits the functionality for operating on such data. Conventional encryption methods used today provide only very restricted possibilities or none at all to operate on encrypted data without decrypting it first. Homomorphic encryption provides a tool for handling such computations on encrypted data, without decrypting the data, and without even needing the decryption key. In this paper, we discuss possible application scenarios for homomorphic encryption in order to ensure privacy of sensitive medical data. We describe how to privately conduct predictive analysis tasks on encrypted data using homomorphic encryption. As a proof of concept, we present a working implementation of a prediction service running in the cloud (hosted on Microsoft's Windows Azure), which takes as input private encrypted health data, and returns the probability for suffering cardiovascular disease in encrypted form. Since the cloud service uses homomorphic encryption, it makes this prediction while handling only encrypted data, learning nothing about the submitted confidential medical data.

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          Author and article information

          Journal
          J Biomed Inform
          Journal of biomedical informatics
          1532-0480
          1532-0464
          Aug 2014
          : 50
          Affiliations
          [1 ] Cryptography Research Group, Microsoft Research, Redmond, USA.
          [2 ] Cryptography Research Group, Microsoft Research, Redmond, USA. Electronic address: klauter@microsoft.com.
          Article
          S1532-0464(14)00088-4
          10.1016/j.jbi.2014.04.003
          24835616
          be551e16-a8e2-43f0-a99c-b685982d1a2f
          Copyright © 2014 Elsevier Inc. All rights reserved.
          History

          Encrypted medical data,Homomorphic encryption,Logistic regression,Predictive analysis,Proportional hazard model

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