High-performance medicine: the convergence of human and artificial intelligence

Nature Medicine - Tập 25 Số 1 - Trang 44-56 - 2019
Eric J. Topol1
1Department of Molecular Medicine, Scripps Research, La Jolla, CA, USA

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