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Federated Active Learning Framework for Efficient Annotation Strategy in Skin-Lesion Classification.
Deng, Zhipeng; Yang, Yuqiao; Suzuki, Kenji.
Affiliation
  • Deng Z; Biomedical Artificial Intelligence Research Unit (BMAI), Institute of Innovative Research, Tokyo Institute of Technology, Tokyo, Japan; Department of Information and Communications Engineering, School of Engineering, Tokyo Institute of Technology, Tokyo, Japan.
  • Yang Y; Biomedical Artificial Intelligence Research Unit (BMAI), Institute of Innovative Research, Tokyo Institute of Technology, Tokyo, Japan; Department of Information and Communications Engineering, School of Engineering, Tokyo Institute of Technology, Tokyo, Japan.
  • Suzuki K; Biomedical Artificial Intelligence Research Unit (BMAI), Institute of Innovative Research, Tokyo Institute of Technology, Tokyo, Japan; Department of Information and Communications Engineering, School of Engineering, Tokyo Institute of Technology, Tokyo, Japan. Electronic address: suzuki.k.di@m.titech.ac.jp.
J Invest Dermatol ; 2024 Jun 22.
Article de En | MEDLINE | ID: mdl-38909844
ABSTRACT
Federated learning (FL) enables multiple institutes to train models collaboratively without sharing private data. Current FL research focuses on communication efficiency, privacy protection, and personalization and assumes that the data of FL have already been ideally collected. However, in medical scenarios, data annotation demands both expertise and intensive labor, which is a critical problem in FL. Active learning (AL) has shown promising performance in reducing the number of data annotations in medical image analysis. We propose a federated AL framework in which AL is executed periodically and interactively under FL. We exploit a local model in each hospital and a global model acquired from FL to construct an ensemble. We use ensemble entropy-based AL as an efficient data-annotation strategy in FL. Therefore, our federated AL framework can decrease the amount of annotated data and preserve patient privacy while maintaining the performance of FL. To our knowledge, this federated AL framework applied to medical images has not been previously reported. We validated our framework on real-world dermoscopic datasets. Using only 50% of samples, our framework was able to achieve state-of-the-art performance on a skin-lesion classification task. Our framework performed better than several state-of-the-art AL methods under FL and achieved comparable performance with full-data FL.
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Texte intégral: 1 Collection: 01-internacional Base de données: MEDLINE Langue: En Journal: J Invest Dermatol Année: 2024 Type de document: Article Pays d'affiliation: Japon Pays de publication: États-Unis d'Amérique

Texte intégral: 1 Collection: 01-internacional Base de données: MEDLINE Langue: En Journal: J Invest Dermatol Année: 2024 Type de document: Article Pays d'affiliation: Japon Pays de publication: États-Unis d'Amérique