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Privacy-Preserving Artificial Intelligence: Application to Precision Medicine

机译:保护隐私的人工智能:在精密医学中的应用

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Motivated by state-of-the-art performances across a wide variety of areas, over the last few years Machine Learning has drawn a significant amount of attention from the healthcare domain. Despite their potential in enabling person-alized medicine applications, the adoption of Deep Learning based solutions in clinical workflows has been hindered in many cases by the strict regulations concerning the privacy of patient health data. We propose a solution that relies on Fully Homomorphic Encryption, particularly on the MORE scheme, as a mechanism for enabling computations on sensitive health data, without revealing the underlying data. The chosen variant of the encryption scheme allows for the computations in the Neural Network model to be directly performed on floating point numbers, while incurring a reasonably small computational overhead. For feasibility evaluation, we demonstrate on the MNIST digit recognition task that Deep Learning can be performed on encrypted data without compromising the accuracy. We then address a more complex task by training a model on encrypted data to estimate the outputs of a whole-body circulation (WBC) model. These results underline the potential of the proposed approach to outperform current solutions by delivering comparable results to the unencrypted Deep Learning based solutions, in a reasonable amount of time. Lastly, the security aspects of the encryption scheme are analyzed, and we show that, even though the chosen encryption scheme favors performance and utility at the cost of weaker security, it can still be used in certain practical applications.
机译:在过去的几年中,受各领域最新性能的推动,机器学习已引起医疗保健领域的极大关注。尽管它们具有实现个性化医学应用的潜力,但是在很多情况下,有关患者健康数据隐私的严格规定阻碍了基于深度学习的解决方案在临床工作流程中的采用。我们提出了一种解决方案,该解决方案依赖于完全同态加密(尤其是MORE方案),作为一种对敏感健康数据进行计算而无需透露基础数据的机制。所选择的加密方案变体允许在浮点数上直接执行神经网络模型中的计算,同时产生相当小的计算开销。为了进行可行性评估,我们在MNIST数字识别任务上证明了可以在不影响准确性的情况下对加密数据执行深度学习。然后,我们通过在加密数据上训练模型以估计全身循环(WBC)模型的输出来解决更复杂的任务。这些结果通过在合理的时间内将可比较的结果传递给未加密的基于深度学习的解决方案,突显了所提出的方法优于当前解决方案的潜力。最后,对加密方案的安全性方面进行了分析,结果表明,即使所选择的加密方案以牺牲安全性为代价来提高性能和实用性,它仍然可以在某些实际应用中使用。

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