Chiu et al., 2016 - Google Patents
BMI trajectories as a harbinger of pre-diabetes or underdiagnosed diabetes: an 18-year retrospective cohort study in TaiwanChiu et al., 2016
View HTML- Document ID
- 1776308504705690994
- Author
- Chiu C
- Li S
- Wu C
- Du Y
- Publication year
- Publication venue
- Journal of general internal medicine
External Links
Snippet
Background Although prior studies have examined BMI trajectories in Western populations, little is known regarding how BMI trajectories in Asian populations vary between adults with and without diabetes. Objective To examine how BMI trajectories vary between those …
- 206010012601 Diabetes mellitus 0 title abstract description 189
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