Metabolomics and Machine Learning Identify Metabolic Differences and Potential Biomarkers for Frequent Versus Infrequent Gout Flares
Ming Wang(Fudan University), Changgui Li(Qingdao University), Yongzhen Tao(Shanghai Institute of Nutrition and Health), Ningning Liang(City University of Hong Kong), Jie Lü(Qingdao University), Lingling Cui(Tongji Hospital), Han Qi(Qingdao University), Robert Terkeltaub(VA San Diego Healthcare System), Shuhui Hu(Qingdao University), Nicola Dalbeth(University of Auckland), Rong Wang(China Pharmaceutical University), Zhen Liu(Qingdao Institute of Bioenergy and Bioprocess Technology), Rui Li(Chinese Academy of Sciences), Tony R. Merriman(University of Alabama at Birmingham), Huiyong Yin(City University of Hong Kong), Lei Pang(Qingdao University)
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