Mrinmoy Roy, G Dhruva, Maninder Singh, Mohit Jamwal
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Advancing Diabetes Diagnosis in South India Using Artificial Intelligence: A Hub-and-Spoke Model for Early Intervention.
Diabetes mellitus, a non-communicable metabolic disorder, is a significant global health concern, with rising prevalence rates resulting in increased economic burdens on healthcare systems. Early detection and diagnosis are crucial for preventing severe complications. Artificial Intelligence (AI) offers immense potential to revolutionize diabetes management and early detection. This study aims to understand the factors influencing medical professionals' adoption of AI-based tools for diabetes intervention, develop predictive models to identify potential adopters and propose a Hub-and-Spoke model for diabetes screening in South India, particularly in segments with a predominantly rice-based diet. By leveraging machine learning techniques, the study identifies key demographic and professional factors that predict AI adoption intent. The proposed Hub-and-Spoke model addresses logistical challenges in diabetes screening, particularly in underserved regions. This research contributes to the global effort to combat diabetes, improve healthcare outcomes, and optimize resource allocation.
期刊介绍:
Hospital Topics is the longest continuously published healthcare journal in the United States. Since 1922, Hospital Topics has provided healthcare professionals with research they can apply to improve the quality of access, management, and delivery of healthcare. Dedicated to those who bring healthcare to the public, Hospital Topics spans the whole spectrum of healthcare issues including, but not limited to information systems, fatigue management, medication errors, nursing compensation, midwifery, job satisfaction among managers, team building, and bringing primary care to rural areas. Through articles on theory, applied research, and practice, Hospital Topics addresses the central concerns of today"s healthcare professional and leader.