Development of non-invasive diabetes risk prediction models as decision support tools designed for application in the dental clinical environment

Informatics in Medicine Unlocked - Tập 17 - Trang 100254 - 2019
Harshad Hegde1, Neel Shimpi1, Aloksagar Panny1, Ingrid Glurich1, Pamela Christie1, Amit Acharya1
1Center for Oral and Systemic Health, Marshfield Clinic Research Institute, Marshfield, WI, USA

Tài liệu tham khảo

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