Federated AI, Current State, and Future Potential
Phoebe Clark, Eric K. Oermann, Dinah Chen, Lama A. Al‐Aswad
Abstract
Artificial intelligence and machine learning applications are becoming increasingly popular in health care and medical devices. The development of accurate machine learning algorithms requires large quantities of good and diverse data. This poses a challenge in health care because of the sensitive nature of sharing patient data. Decentralized algorithms through federated learning avoid data aggregation. In this paper we give an overview of federated learning, current examples in healthcare and ophthalmology, challenges, and next steps.
Topics & Concepts
Federated learningComputer scienceHealth careArtificial intelligenceState (computer science)Data scienceData sharingBig dataMachine learningData miningPolitical scienceMedicineAlgorithmAlternative medicinePathologyLawRetinal Imaging and AnalysisArtificial Intelligence in Healthcare and EducationPrivacy-Preserving Technologies in Data