MNNMDA: Predicting human microbe-disease association via a method to minimize matrix nuclear norm
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Geng Tian | Jialiang Yang | Binsheng He | Jianjun He | Pingping Bing | Meihua Bao | Mei-jun Zhang | Jun Ma | Haigang Li | Haiyan Liu | Kunhui He
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