Predictive models for cardiovascular and kidney outcomes in patients with type 2 diabetes: systematic review and meta-analyses
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G. Guyatt | Sheyu Li | R. Mustafa | F. Foroutan | P. Vandvik | Q. Hao | Cynthia Chan | A. Malik | T. Buchan | J. Chambers | J. Zhu | Yujin Suk | F. Ge | Le Huang | Lina Abril Vargas
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