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An international study presenting a federated learning AI platform for pediatric brain tumors
Journal article   Open access   Peer reviewed

An international study presenting a federated learning AI platform for pediatric brain tumors

Edward H. Lee, Michelle Han, Jason Wright, Michael Kuwabara, Jacob Mevorach, Gang Fu, Olivia Choudhury, Ujjwal Ratan, Michael Zhang, Matthias W. Wagner, …
Nature communications, Vol.15(1), pp.7615-11
09/02/2024
PMID: 39223133

Abstract

Multidisciplinary Sciences Science & Technology Science & Technology - Other Topics
While multiple factors impact disease, artificial intelligence (AI) studies in medicine often use small, non-diverse patient cohorts due to data sharing and privacy issues. Federated learning (FL) has emerged as a solution, enabling training across hospitals without direct data sharing. Here, we present FL-PedBrain, an FL platform for pediatric posterior fossa brain tumors, and evaluate its performance on a diverse, realistic, multi-center cohort. Pediatric brain tumors were targeted due to the scarcity of such datasets, even in tertiary care hospitals. Our platform orchestrates federated training for joint tumor classification and segmentation across 19 international sites. FL-PedBrain exhibits less than a 1.5% decrease in classification and a 3% reduction in segmentation performance compared to centralized data training. FL boosts segmentation performance by 20 to 30% on three external, out-of-network sites. Finally, we explore the sources of data heterogeneity and examine FL robustness in real-world scenarios with data imbalances. Federated learning (FL) has emerged as a potential solution to train machine learning models in multiple clinical datasets while preserving patient privacy. Here, the authors develop an MRI-based FL platform for pediatric posterior fossa brain tumors-FL-PedBrain-and evaluate it on a diverse multi-center cohort.
url
https://doi.org/10.1038/s41467-024-51172-5View
Published (Version of record) Open

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