Privacy-preserving artificial intelligence in healthcare: Techniques and applications.

Journal: Computers in biology and medicine
Published Date:

Abstract

There has been an increasing interest in translating artificial intelligence (AI) research into clinically-validated applications to improve the performance, capacity, and efficacy of healthcare services. Despite substantial research worldwide, very few AI-based applications have successfully made it to clinics. Key barriers to the widespread adoption of clinically validated AI applications include non-standardized medical records, limited availability of curated datasets, and stringent legal/ethical requirements to preserve patients' privacy. Therefore, there is a pressing need to improvise new data-sharing methods in the age of AI that preserve patient privacy while developing AI-based healthcare applications. In the literature, significant attention has been devoted to developing privacy-preserving techniques and overcoming the issues hampering AI adoption in an actual clinical environment. To this end, this study summarizes the state-of-the-art approaches for preserving privacy in AI-based healthcare applications. Prominent privacy-preserving techniques such as Federated Learning and Hybrid Techniques are elaborated along with potential privacy attacks, security challenges, and future directions.

Authors

  • Nazish Khalid
    Information Technology University, Lahore, Pakistan. Electronic address: msee20010@itu.edu.pk.
  • Adnan Qayyum
    Department of Computer Engineering, University of Engineering and Technology Taxila, Taxila, 47050, Pakistan.
  • Muhammad Bilal
    Agri-Biophotonics Division, National Institute of Lasers and Optronics (NILOP), Nilore, Islamabad 45650, Pakistan.
  • Ala Al-Fuqaha
  • Junaid Qadir
    Department of Computer Engineering, Qatar University, Doha, Qatar.