Advancements in wearable medical devices in IoT technology are shaping the modern healthcare system. With the emergence of the Internet of Healthcare Things (IoHT), we are witnessing how efficient healthcare services are provided to patients and how healthcare professionals are effectively used AI-based models to analyze the data collected from IoHT devices for the treatment of various diseases. To avoid privacy breaches, these data must be processed and analyzed in compliance with the legal rules and regulations such as HIPAA and GDPR. Federated learning is a machine leaning based approach that allows multiple entities to collaboratively train a ML model without sharing their data. This is particularly useful in the healthcare domain where data privacy and security are big concerns. Even though FL addresses some privacy concerns, there is still no formal proof of privacy guarantees for IoHT data. Privacy Enhancing Technologies (PETs) are a set of tools and techniques that are designed to enhance the privacy and security of online communications and data sharing. PETs provide a range of features that help protect users' personal information and sensitive data from unauthorized access and tracking. This paper reviews PETs in detail and comprehensively in relation to FL in the IoHT setting and identifies several key challenges for future research.
翻译:穿戴式医疗设备在物联网技术中的发展正在塑造现代医疗卫生系统。随着“医疗物联网”(IoHT)的出现,我们见证了病人如何获得高效的医疗服务,以及医疗专业人员如何使用基于人工智能的模型来分析从IoHT设备收集的数据,治疗各种疾病。为避免隐私泄漏,这些数据必须在符合法规和规定,如HIPAA和GDPR等隐私保护法规的前提下进行处理和分析。联邦学习是一种基于机器学习的方法,允许多个实体在不共享数据的情况下协同训练机器学习模型。这在医疗领域尤为有用,因为数据隐私和安全是重大问题。尽管联邦学习能够解决一些隐私问题,但仍缺乏对医疗物联网数据隐私保护的正式证明。隐私增强技术是一组旨在增强在线通信和数据共享的隐私和安全工具和技术集。PET提供了一系列功能,有助于保护用户的个人信息和敏感数据免受未经授权的访问和跟踪。本文全面综述了隐私增强技术在医疗物联网联邦学习中的应用,识别了未来研究面临的一些关键挑战。