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Copyright ©The Author(s) 2025.
World J Diabetes. Aug 15, 2025; 16(8): 107733
Published online Aug 15, 2025. doi: 10.4239/wjd.v16.i8.107733
Table 1 Comparing context for digital diabetes care in China and India, 2021-2023
Domain
China
India
Ref.
Population, 2023World Bank Development Indicators[45]
    Total population (millions)14101438
    Population aged > 65 years (%)14.26.8
    GDP per capita (current United States $)126142480
    Gini coefficient46.532.8
Diabetes prevalence, 2022NCD Risk Factor Collaboration[1]
    Adults with diabetes (millions)148212
    Percentage of global diabetes cases (%)1826
    Age-adjusted prevalence (%)14.313.9
Rural context, 2021World Bank Development Indicators[45]
    Rural population (millions)499915
    Rural population (% of total)35.463.6
    Rural population growth (annual%)-2.90.11
    Digital infrastructure, 2023
    Rate of internet users, national estimates (%)77.551.5Statista[46,47]
    Rate of internet users, rural areas estimates (%)61.853Cyberspace Administration of China[48], World Bank[49]
Healthcare System Context, 2021WHO Global Health Observatory[44]
    Life expectancy at birth77.170.2
    Physician density (per 10000 population)25.27.3
    Nurse density (per 10000 population)3317.3
    Out-of-pocket expenditure (% of CHE)3450
    Government health expenditure (% of GDP)2.911.12
    Premature mortality from NCDs (% probability)1622
Table 2 Comparison of key digital health intervention studies for diabetes in rural China and India
Study
Sample size
Intervention description
Primary outcome(s)
Key results
Interventions in China and India
SimCard[9]2086Smartphone-based decision support for community health workersAntihypertensive medication useMedication use increased by 24.4% in China and 26.6% in India
Interventions in China
ROADMAP[8]19601mHealth-enabled hierarchical diabetes managementHbA1c controlMean HbA1c difference: -0.30%; Better effect in rural areas
SMARTDiabetes[12]2072Self-management app with family health promoter supportProportion achieving multiple targets (HbA1c, BP, LDL)Mean HbA1c difference: -0.33%; Effective in rural areas but not in urban settings
Interventions in India
mWellcare[28]3698mHealth system for integrated NCD managementBlood pressure and HbA1c controlNo significant difference in HbA1c compared to enhanced usual care
K-DPP[37]1007Peer-supported lifestyle modificationDiabetes incidenceNo significant reduction in diabetes incidence; Improved cardiovascular risk factors in rural communities
Chunampet project[31]23380Telemedicine with mobile screening vanHbA1c controlMean HbA1c decrease from 9.3% to 8.5% (non-randomized design)
Table 3 Key lessons from digital health tools applied for diabetes in rural China and India
Theme
Key lessons
Supporting evidence and examples
Health system context alignmentDigital interventions must align with existing healthcare structures and governance systemsSimCard tailored implementation to different health system contexts in China and India[9]; ROADMAP adapted to China's hierarchical healthcare system[8]
Targeting high-need populationsDigital interventions show greater effectiveness in populations with poorer baseline control and in remote areasROADMAP showed stronger effects for patients with baseline HbA1c > 8%[8]; Chunampet project demonstrated substantial HbA1c reduction in remote populations in India[31]; SMARTDiabetes was more effective in rural than urban areas in China[12]
Leveraging existing social structuresFamily and community support structures are particularly effective in rural settingsFamily Health Promoters assisting patients with self-management and use of the SMARTDiabetes app were associated with improved diabetes control in China[12]; Kerala Diabetes Prevention Program utilized trained peer leaders effectively in India[37]
Support task-sharingDigital tools enable task-sharing among health professionals to reduce physician’s high workloadDedicated digital platforms were developed for volunteer community health workers and licensed physicians who shared healthcare tasks in rural India in the SimCard trial[9]; India’s I-TREC model redistributed workflow from physicians to nurses, enabling nurses to conduct initial assessments[32]
Co-creation and stakeholder engagementCo-creation enhances intervention acceptability, feasibility, and implementation potentialJindal et al[32] developed I-TREC through multiple stakeholder advisory boards and formal partnerships with government agencies; Yin et al[33] systematically identified implementation barriers through stakeholder interviews before designing interventions in rural China