Distributed learning: a reliable privacy-preserving strategy to change multicenter collaborations using AI.
Margarita KirienkoMartina SolliniGaia NinattiDaniele LoiaconoEdoardo GiacomelloNoemi GozziFrancesco AmigoniLuca MainardiPier Luca LanziArturo ChitiPublished in: European journal of nuclear medicine and molecular imaging (2021)
Distributed learning resulted in a reliable strategy for model development; indeed, it performed equally to models trained on centralized datasets. Sensitive data can get preserved since they are not shared for model development. Distributed learning constitutes a promising solution for ML-based research and practice since large, diverse datasets are crucial for success.