Internet of things‐based approach for glycemic control in people with type 2 diabetes: A randomized controlled trial

Author:

Bouchi Ryotaro12ORCID,Izumi Kazuo3,Ishizuka Naoki34,Uemura Yukari3,Ohtsu Hiroshi5,Miyo Kengo6,Tanaka Shigeho78,Satoh‐Asahara Noriko9ORCID,Hara Kazuo10,Odawara Masato11,Kusunoki Yoshiki12ORCID,Koyama Hidenori12,Onoue Takeshi13ORCID,Arima Hiroshi13,Tsushita Kazuyo714,Watada Hirotaka15ORCID,Kadowaki Takashi16,Ueki Kohjiro217

Affiliation:

1. Diabetes and Metabolism Information Center Research Institute, National Center for Global Health and Medicine Tokyo Japan

2. Department of Diabetes and Endocrinology and Metabolism Center Hospital, National Center for Global Health and Medicine Tokyo Japan

3. Center for Clinical Sciences National Center for Global Health and Medicine Tokyo Japan

4. Center for Digital Transformation of Healthcare, Graduate School of Medicine Kyoto University Kyoto Japan

5. Clinical Research and Trial Center Juntendo University Tokyo Japan

6. Center for Medical Informatics Intelligence National Center for Global Health and Medicine Tokyo Japan

7. Faculty of Nutrition Kagawa Nutrition University Saitama Japan

8. Department of Nutrition and Metabolism National Institute of Health and Nutrition, National Institutes of Biomedical Innovation, Health and Nutrition Tokyo Japan

9. Department of Endocrinology, Metabolism and Hypertension Research Clinical Research Institute, National Hospital Organization Kyoto Medical Center Kyoto Japan

10. Department of Endocrinology and Metabolism, Saitama Medical Center Jichi Medical University Saitama Japan

11. Department of Diabetology, Metabolism and Endocrinology Tokyo Medical University Hospital Tokyo Japan

12. Department of Diabetes, Endocrinology and Clinical Immunology, School of Medicine Hyogo Medical University Hyogo Japan

13. Departments of Endocrinology and Diabetes Nagoya University Graduate School of Medicine Nagoya Japan

14. Comprehensive Health Science Center Aichi Health Promotion Foundation Higashiura‐cho Aichi Japan

15. Department of Metabolism and Endocrinology Juntendo University Graduate School of Medicine Tokyo Japan

16. Toranomon Hospital Tokyo Japan

17. Diabetes Research Center Research Institute, National Center for Global Health and Medicine Tokyo Japan

Abstract

ABSTRACTAimsThe utilization of long‐term effect of internet of things (IoT) on glycemic control is controversial. This trial aimed to examine the effect of an IoT‐based approach for type 2 diabetes.Materials and MethodsThis randomized controlled trial enrolled 1,159 adults aged 20–74 years with type 2 diabetes with a HbA1c of 6.0–8.9% (42–74 mmol/mol), who were using a smartphone on a daily basis were randomly assigned to either the IoT‐based approach group (ITG) or the control group (CTG). The ITG were supervised to utilize an IoT automated system that demonstrates a summary of lifelogging data (weight, blood pressure, and physical activities) and provides feedback messages that promote behavioral changes in both diet and exercise. The primary end point was a HbA1c change over 52 weeks.ResultsAmong the patients, 581 were assigned to the ITG and 578 were in the CTG. The changes in HbA1c from baseline to the final measurement at 52 weeks [mean (standard deviation)] were −0.000 (0.6225)% in ITG and − 0.006 (0.6449)% in CTG, respectively (P = 0.8766). In the per protocol set, including ITG using the IoT system almost daily and CTG, excluding those using the application almost daily, the difference in HbA1c from baseline to 52 weeks were −0.098 (0.579)% and 0.027 (0.571)%, respectively (P = 0.0201). We observed no significant difference in the adverse event profile between the groups.ConclusionsThe IoT‐based approach did not reduce HbA1c in patients with type 2 diabetes. IoT‐based intervention using data on the daily glycemic control and HbA1c level may be required to improve glycemic control.

Funder

Japan Agency for Medical Research and Development

Publisher

Wiley

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