Medicine and HealthNature Machine Intelligence
Advancing COVID-19 diagnosis with privacy-preserving collaboration in artificial intelligence
X. Bai, H. Wang, et al.
Discover how the Unified CT-COVID AI Diagnostic Initiative, led by an impressive team of researchers including Xiang Bai and Hanchen Wang, is revolutionizing COVID-19 diagnosis while ensuring patient data privacy through federated learning. This innovative approach not only improves accuracy but also upholds confidentiality, demonstrating the future of AI in healthcare.
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