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The impact of artificial intelligence on remote healthcare: Enhancing patient engagement, connectivity, and overcoming challenges
36
Zitationen
3
Autoren
2025
Jahr
Abstract
The incorporation of advanced telemedicine technologies is helping artificial intelligence transform remote healthcare in the enhancement of patient care, diagnostics, monitoring, and overall medical treatment. This review examines how AI has transformed virtual healthcare with regard to patient engagement and connectivity, real-time monitoring of health status, and the accuracy of diagnosis. Key applications of AI, such as AI-enabled diagnostic systems, predictive analytics, and teleconsultation platforms, are reviewed for their strengths in overcoming the limitations of the traditional models of remote healthcare. This review consists of case studies on the applications of AI in different healthcare domains, such as cardiac monitoring, diabetes management, mental health teletherapy, and dermatology. It also looks into the ethical and regulatory challenges that arise, including bias in AI, data privacy, and accountability, in a way that emphasizes the necessity for robust regulatory frameworks in safeguarding patient safety. Future directions for AI innovation include such emerging technologies as 5G, blockchain, and IoMT, among others, that "will usher in a new era of remote healthcare delivery." • Artificial Intelligence Revolutionizes Remote Healthcare. Artificial intelligence transforms telemedicine to improve diagnostics, real-time monitoring, and patient engagement in remote healthcare services. • Advanced AI diagnostics: With AI applications screening for cancer image recognition and teleconsultation's predictive analytics, it could remove some health disparities while improving patient outcomes. • This includes chronic disease management, with AI-based solutions like the monitoring of patients with diabetes and cardiovascular diseases, detailing their particular risk, and refining their treatment through wearable devices and predictive models. • Ethical and Regulatory Concerns: Issues of bias, data privacy, and legal accountability in AI applications must be addressed to ensure that healthcare applications are fair and safe. • Future Innovations: AI will combine 5G, blockchain, and Internet of Medical Things (IoMT) for more significant applications in remote health care with people connected through more integrated data.
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