Dependence between cognitive impairment and metabolic syndrome applied to a Brazilian elderly dataset
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Carlos Dias Maciel | Tadeu Junior Gross | Renata Bezerra Araújo | Francisco Assis Carvalho Vale | Michel Bessani | T. J. Gross | F. Vale | M. Bessani | R. Araújo
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