Artificial intelligence in cancer diagnostics: Governance for equity in low- and middle-income countries
), Dongli Peng(2), Aili Zhang(3),
(1) School of Business, Nanfang College, Guangzhou, Guangzhou,510970, China
(2) School of business,Wuxi Taihu University, Wuxi,Jiangsu , 214000, China
(3) Lyceum of the Philippines University, Manila, 0900, Philippines
Corresponding Author
Abstract
References
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