The Impact of Telemedicine on Rural Health Care Access
Abstract
This paper explores the role of telemedicine in improving access to health care services in rural areas. By examining case studies and recent data, the study evaluates the effectiveness of telemedicine in reducing travel time, enhancing patient outcomes, and addressing the shortage of health care professionals in remote regions. The findings suggest that telemedicine can significantly bridge the gap between rural populations and essential health care services.
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