Abstract
In recent years, with the popularity of smart wearable devices, online diagnosis is becoming a promising medical technology and therefore promotes the progress of digital healthcare. Online diagnostic services relieve computing and storage requirements of wearable devices with the help of the cloud, while facilitating remote collaboration and data sharing, providing instant access to major diagnostics that patients can obtain the diagnosis within seconds, thereby saving a lot of time and economic costs. However, the frequent occurrence of security incidents based on wireless transmission of wearable devices further exacerbates the security risks of patient health data, and therefore the security of online diagnosis based on wearable devices should be taken seriously. This paper proposes privacy-preserving logistic regression based online disease diagnosis (LR-DDH), where the privacy of the medical data can be preserved with the use of homomorphic authenticated encryption. Theoretical analysis and experimental results demonstrate that the scheme LR-DDH proposed in this paper achieves efficient computation and communication under the premise of security.
•Partially homomorphic authentication encryption algorithm.•The characteristics of message homomorphism while maintaining the privacy requirements.•Urgent problems to be solved in the telemedicine system.•Privacy protection scheme for online diagnostic services based on wearable devices.