| Literature DB >> 35327000 |
Ji-Eun Kim1, Tae-Shin Park1, Kwang Joon Kim1.
Abstract
The disease control rate is very low (at less than 30%) for diabetes. The use of digital healthcare technology is increasing recently for continuous management in daily life. In this study, a meta-analysis was conducted to evaluate the clinical effects of digital healthcare technology for patients with type 2 diabetes management. For a review of the literature, databases such as PubMed, Embase, and Cochrane Library were searched using Medical Subject Heading (MeSH) terms published up to 9 August 2021. As a result, 2354 articles were identified, and 12 randomized controlled trial articles were finally included. Digital healthcare technology combined management for type 2 diabetes significantly decreased HbA1c (p < 0.00001, standardized mean difference (SMD) = -0.49) and marginally decreased triglyceride, compared with usual care (p = 0.06, SMD = -0.18). However, it did not significantly affect BMI (p = 0.20, SMD = -0.47), total cholesterol (p = 0.13, SMD = -0.19), HLD-C (p = 0.89, SMD = -0.01), LDL-C (p = 0.95, SMD = -0.01), systolic BP (p = 0.83, SMD = 0.03), or diastolic BP (p = 0.23, SMD = 0.65), compared with usual care. These results indicate that digital healthcare technology can improve HbA1c and triglyceride levels of type 2 diabetes patients. Further well-designed randomized controlled clinical trials are needed to confirm the clinical effect of digital healthcare technology.Entities:
Keywords: HbA1c; digital healthcare technology; type 2 diabetes
Year: 2022 PMID: 35327000 PMCID: PMC8953302 DOI: 10.3390/healthcare10030522
Source DB: PubMed Journal: Healthcare (Basel) ISSN: 2227-9032
Figure 1Flow diagram of literature search.
Baseline characteristics of included studies evaluating digital healthcare technology interventions by healthcare providers.
| Author | Location | Intervention; | Comparison; | Healthcare Providers | Type of Tools | Contents of Intervention | Clinical Outcome Measurements |
|---|---|---|---|---|---|---|---|
| Anzaldo-Campos, M.C. et al. 2016 [ | Mexico, | (1) Physician | Glucose meter with USB connection | (1) Tracking glucose level | HbA1C (%), total cholesterol, LDL-C 1 | ||
| Hilmarsdottir E. et al. 2020 [ | Iceland, | Doctor | Smartphone application | (1) Guidance for a healthy lifestyle through the app | HbA1c (%), total cholesterol, triglycerides, HDL-C, LDL-C, weight, BMI, waist circumference, blood pressure (systolic, diastolic) | ||
| Hu, Y. et al. 2021 [ | China, | (1) Endocrinologist | Blood-glucose management platform | (1) Providing diabetes education (self-monitoring of blood glucose levels, dietary habits, medication timing, and physical activity) | HbA1c (%), hypoglycemic events, 4 UACR, carotid plaque | ||
| Kim, H.S. et al. 2016 [ | Korea, | (1) Doctor | Blood sugar monitoring through the Internet | (1) Tracking blood glucose levels and health conditions regularly | HbA1C (%), FBG, FBG, BMI, LDL-C, HDL-C, total cholesterol, triglycerides, weight, blood pressure | ||
| Kleinman, N.J. et al. 2016 [ | India, | (1) Doctor | Smartphone application, (m-Health 5 diabetes management platform) | (1) Reminding participants to complete missions every day | HbA1C (%), FBG, BMI | ||
| Lee, D.Y. et al. 2018 [ | Korea, | (1) Endocrinologist | Mobile application | (1) Tailored mobile coaching | HbA1c (%), BMI, blood pressure (systolic, diastolic), total cholesterol, triglycerides, HDL-C, LDL-C | ||
| Quinn, C.C. et al. 2011 [ | USA, | Doctor | Mobile diabetes management software application and a web portal | (1) Receiving automated and real-time messages specific to the entered data (educational, behavioral, and motivational message) | HbA1C (%), blood pressure (Systolic, Diastolic), LDL-C, HDL-C, triglycerides, total cholesterol | ||
| Quinn, C.C. et al. 2016 [ | USA, | Physician | Mobile diabetes management software application | (1) Receiving automated and real-time messages specific to the entered data (educational, behavioral, and motivational message) | HbA1C (%) | ||
| Sun, C. et al. 2019 [ | China, | (1) Medical team | mHealth management system based on mobile phone | (1) Sending medical advice and reminders to patients | HbA1c (%), FBG, total cholesterol, triglycerides, HDL-C, LDL-C, BMI, blood pressure (systolic, diastolic) | ||
| Wayne, N. et al. 2015 [ | Canada, | Health coach | Smartphone application | (1) Tracking key metrics (blood glucose levels, exercise frequency, exercise duration, exercise intensity, food intake, and mood) | HbA1C (%), weight, BMI, waist circumference | ||
| Yu, Y. et al. 2019 [ | China, | Physician | Smartphone application | (1) Virtual education through the app (diet library, video and picture demonstration for exercise, information about blood glucose monitoring, and latest guidelines) | HbA1c (%), FBG, 1.5-anhydroglucitol, proportions of patients achieving HbA1c < 7.0% | ||
| Zhai, Y. et al. 2020 [ | China, | (1) Physician | Smartphone application | (1) Providing support for diabetes self-management (diet advice, emotional management, and medication guidance) | HbA1c (%) |
1 Low-density lipoprotein, 2 high-density lipoprotein, 3 body mass index, 4 UACR, urine albumin-to-creatinine ratio, 5 mobile health, fasting blood glucose.
Figure 2Risk of bias graph.
Figure 3Check for funnel plot.
Figure 4Forest plot for meta-analysis results of HbA1c [10,11,12,13,14,15,16,17,18,19,20,21].
Figure 5Forest plot for meta-analysis results on BMI [10,11,13,14,15].
Figure 6Forest plot for meta-analysis results on total cholesterol [10,15,16].
Figure 7Forest plot for meta-analysis results on triglyceride [10,15,16].
Figure 8Forest plot for meta-analysis results on LDL-C [10,15,16].
Figure 9Forest plot for meta-analysis results on HDL-C [10,15,16].
Figure 10Forest plot for meta-analysis results on systolic blood pressure [10,11,13,15,16].
Figure 11Forest plot for meta-analysis results on diastolic blood pressure [10,11,13,15,16].