A blockchain-based federated learning mechanism for privacy preservation of healthcare IoT data

Comput Biol Med. 2023 Dec:167:107630. doi: 10.1016/j.compbiomed.2023.107630. Epub 2023 Oct 31.

Abstract

The Corona virus outbreak sped up the process of digitalizing healthcare. The ubiquity of IoT devices in healthcare has thrust the Healthcare Internet of Things (HIoT) to the forefront as a viable answer to the shortage of healthcare professionals. However, the medical field's ability to utilize this technology may be constrained by rules governing the sharing of data and privacy issues. Furthermore, endangering human life is what happens when a medical machine learning system is tricked or hacked. As a result, robust protections against cyberattacks are essential in the medical sector. This research uses two technologies, namely federated learning and blockchain, to solve these problems. The ultimate goal is to construct a trusted federated learning system on the blockchain that can predict people who are at risk for developing diabetes. The study's findings were deemed satisfactory as it achieved a multilayer perceptron accuracy of 97.11% and an average federated learning accuracy of 93.95%.

Keywords: Blockchain; Federated Learning; Healthcare IoT; Internet of Things; Machine Learning; Privacy preservation; Smart Contract.

MeSH terms

  • Blockchain*
  • Coronavirus Infections*
  • Coronavirus*
  • Education, Medical*
  • Humans
  • Privacy