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PPDP: An efficient and privacy-preserving disease prediction scheme in cloud-based e-Healthcare system

机译:PPDP:基于云的电子医疗系统中的一种高效且可保护隐私的疾病预测方案

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AbstractDisease prediction systems have played an important role in people’s life, since predicting the risk of diseases is essential for people to lead a healthy life. The recent proliferation of data mining techniques has given rise to disease prediction systems. Specifically, with the vast amount of medical data generated every day, Single-Layer Perceptron can be utilized to obtain valuable information to construct a disease prediction system. Although the disease prediction system is quite promising, many challenges may limit it in practical use, including information security and prediction efficiency. In this paper, we propose an efficient and privacy-preserving disease prediction system, called PPDP. In PPDP, patients’ historical medical data are encrypted and outsourced to the cloud server, which can be further utilized to train prediction models by using Single-Layer Perceptron learning algorithm in a privacy-preserving way. The risk of diseases for new coming medical data can be computed based on the prediction models. In particular, PPDP builds on new medical data encryption, disease learning and disease prediction algorithms that novelly utilize random matrices. Security analysis indicates that PPDP offers a required level of privacy protection. In addition, real experiments on different datasets show that computation costs of data encryption, disease learning and disease prediction are several magnitudes lower than existing disease prediction schemes.HighlightsAn efficient privacy-preserving disease prediction scheme (PPDP) is proposed.PPDP can train prediction models without leaking the privacy of sensitive data.Security analysis indicates that PPDP is secure under a well-defined threat model.The performance evaluation on different datasets demonstrates PPDP’s efficiency.
机译: 摘要 疾病预测系统在人们的生活中发挥了重要作用,因为预测疾病的风险对于人们过健康的生活至关重要。数据挖掘技术的最新发展催生了疾病预测系统。具体而言,随着每天生成的大量医学数据,单层感知器可用于获取有价值的信息,以构建疾病预测系统。尽管疾病预测系统前景广阔,但实际应用中仍面临许多挑战,包括信息安全性和预测效率。在本文中,我们提出了一种高效且可保护隐私的疾病预测系统,称为PPDP。在PPDP中,将患者的历史医学数据加密并外包给云服务器,然后可以通过使用单层Perceptron学习算法以隐私保护的方式将其进一步用于训练预测模型。可以基于预测模型计算新来的医学数据的疾病风险。特别是,PPDP建立在新的医学数据加密,疾病学习和疾病预测算法的基础之上,这些算法新颖地利用了随机矩阵。安全分析表明,PPDP提供了所需级别的隐私保护。此外,对不同数据集的真实实验表明,数据加密,疾病学习和疾病预测的计算成本比现有疾病预测方案要低几个数量级。 突出显示 提出了一种有效的隐私保护疾病预测方案(PPDP)。 PPDP可以训练预测模型而不会泄漏敏感数据的隐私。 / ce:para> 安全性分析表明,PPDP在定义明确的威胁模型下是安全的。 对不同数据集的性能评估证明了PPDP的效率。

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