Litcius/Paper detail

Privacy-preserving artificial intelligence in healthcare: Techniques and applications

Nazish Khalid, Adnan Qayyum, Muhammad Bilal, Ala Al‐Fuqaha, Junaid Qadir

2023Computers in Biology and Medicine522 citationsDOIOpen Access PDF

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.

Topics & Concepts

Computer scienceHealth careInformation privacyData sharingArtificial intelligencePatient privacyKey (lock)Applications of artificial intelligenceData scienceComputer securityMedicineEconomic growthPathologyEconomicsAlternative medicinePrivacy-Preserving Technologies in DataPrivacy, Security, and Data ProtectionArtificial Intelligence in Healthcare and Education