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PPSDT: A Novel Privacy-Preserving Single Decision Tree Algorithm for Clinical Decision-Support Systems Using IoT Devices

机译:PPSDT:一种用于使用物联网设备的临床决策支持系统的新型保护隐私的单一决策树算法

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摘要

Medical service providers offer their patients high quality services in return for their trust and satisfaction. The Internet of Things (IoT) in healthcare provides different solutions to enhance the patient-physician experience. Clinical Decision-Support Systems are used to improve the quality of health services by increasing the diagnosis pace and accuracy. Based on data mining techniques and historical medical records, a classification model is built to classify patients’ symptoms. In this paper, we propose a privacy-preserving clinical decision-support system based on our novel privacy-preserving single decision tree algorithm for diagnosing new symptoms without exposing patients’ data to different network attacks. A homomorphic encryption cipher is used to protect users’ data. In addition, the algorithm uses nonces to avoid one party from decrypting other parties’ data since they all will be using the same key pair. Our simulation results have shown that our novel algorithm have outperformed the Naïve Bayes algorithm by 46.46%; in addition to the effects of the key value and size on the run time. Furthermore, our model is validated by proves, which meet the privacy requirements of the hospitals’ datasets, frequency of attribute values, and diagnosed symptoms.
机译:医疗服务提供者为患者提供高质量的服务,以换取他们的信任和满意。医疗保健中的物联网(IoT)提供了不同的解决方案,以增强医患体验。临床决策支持系统用于通过提高诊断速度和准确性来提高卫生服务的质量。基于数据挖掘技术和历史病历,建立了分类模型以对患者的症状进行分类。在本文中,我们提出了一种基于我们新颖的隐私保护单决策树算法的隐私保护临床决策支持系统,该系统可用于诊断新症状而无需将患者数据暴露于不同的网络攻击中。同态加密密码用于保护用户的数据。此外,该算法使用随机数来避免一方解密另一方的数据,因为它们都将使用相同的密钥对。仿真结果表明,我们的新算法优于朴素贝叶斯算法46.46%。除了键值和大小对运行时间的影响之外。此外,我们的模型已通过证明进行了验证,证明符合医院数据集的隐私要求,属性值的频率以及诊断出的症状。

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