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Remote Patient Monitoring: A Paradigm Shift
0
Zitationen
5
Autoren
2025
Jahr
Abstract
Revolutionizing the healthcare delivery process, Remote Patient Monitoring (RPM) alters the traditional way of communication between care providers and patients. It delves into the multifaceted effect of RPM that relates to its changing position in the healthcare environment. This also means that with technological advancements, like wearable techs, integrating other devices under IoT, and using AI technologies, RPM allows for healthcare parameters’ tracking outside normal clinical settings. Consequently, this transition towards proactive data-enabled medical practice provides patients with a chance to take part in their treatment as well as offering doctors immediate information for making decisions. In this chapter, we explore the use of Remote Patient Monitoring (RPM) in different healthcare areas, such as longterm condition care, senior care, and post-surgery recovery, to demonstrate its capacity to enhance patients’ results, cut down on health expenses, and improve the quality of care. The paper also highlights legal policies that govern RPM’s implementation, putting a lot of emphasis on privacy issues, security measures, and adherence to healthcare legislation. Furthermore, it addresses ethical considerations, including patient consent, ownership of data, and fairness in reaching information. We seek for the future in aspects like predictive analytics, personalized medicine, and global expansion of RPM initiatives. But despite all these encouraging possibilities that RPM holds, there are still some challenges that must be overcome, such as lack of interoperability, reimbursement difficulties, and differences in digital health literacy. This abstract concludes by highlighting the transformative capabilities of RPM in reforming healthcare landscapes toward a more connected patient-centric model of care delivery. By promoting teamwork between stakeholders and addressing barriers that exist today, RPM could change healthcare delivery, which will enhance patient outcomes thus improving lives across the globe
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