Federated Learning for Thyroid Ultrasound Image Analysis to Protect Personal Information: Validation Study in a Real Health Care Environment
JMIR Medical Informatics2021Vol. 9(5), pp. e25869–e25869
Citations Over TimeTop 10% of 2021 papers
Haeyun Lee, Young Jun Chai, Hyunjin Joo, Kyungsu Lee, Jae Youn Hwang, Seok‐Mo Kim, Kwangsoon Kim, Inn‐Chul Nam, June Young Choi, Hyeong Won Yu, Myung‐Chul Lee, Hiroo Masuoka, Akira Miyauchi, Kyu Eun Lee, Sungwan Kim, Hyoun‐Joong Kong
Abstract
We demonstrated that the performance of federated learning using decentralized data was comparable to that of conventional deep learning using pooled data. Federated learning might be potentially useful for analyzing medical images while protecting patients' personal information.
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