Google Trends can improve surveillance of Type 2 diabetes
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Weisi Guo | Henry Crosby | Rob Procter | Sarunkorn Chotvijit | Malkiat Thiarai | Nataliya Tkachenko | Emma Bradley | Stephen Jarvis | S. Jarvis | R. Procter | Weisi Guo | Neha Gupta | Charlotte Gilks | Eliot Shore | S. Chotvijit | M. Thiarai | Emma Bradley | N. Tkachenko | Neha Gupta | Henry Crosby | Charlotte Gilks | Eliot Shore
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