Journal of Pain Research (Dec 2024)

Beyond the Pain Management Clinic: The Role of AI-Integrated Remote Patient Monitoring in Chronic Disease Management – A Narrative Review

  • Patel PM,
  • Green M,
  • Tram J,
  • Wang E,
  • Murphy MZ,
  • Abd-Elsayed A,
  • Chakravarthy K

Journal volume & issue
Vol. Volume 17
pp. 4223 – 4237

Abstract

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Prachi M Patel,1 Maja Green,2 Jennifer Tram,3 Eugene Wang,4 Melissa Zhu Murphy,5 Alaa Abd-Elsayed,6 Krishnan Chakravarthy2 1Houston Methodist Willowbrook Hospital, Houston, TX, USA; 2NXTSTIM, San Diego, CA, USA; 3UCLA David Geffen School of Medicine/VA Greater Los Angeles Healthcare System, Los Angeles, CA, 90095, USA; 4Timothy Groth MD PC, Smithtown, NY, 11787, USA; 5North Texas Orthopedics and Spine Center, Grapevine, TX, 76051, USA; 6University of Wisconsin School of Medicine and Public Health, Madison, WI, USACorrespondence: Maja Green, Chief Scientific Officer, NXTSTIM Inc., Department of Pain Medicine, 5362 SweetwaterTrails, San Diego, CA, 92132, USA, Email [email protected]: Remote Patient Monitoring (RPM) stands as a pivotal advancement in patient-centered care, offering substantial improvements in the diagnosis, management, and outcomes of chronic conditions. Through the utilization of advanced digital technologies, RPM facilitates the real-time collection and transmission of critical health data, enabling clinicians to make prompt, informed decisions that enhance patient safety and care, particularly within home environments. This narrative review synthesizes evidence from peer-reviewed studies to evaluate the transformative role of RPM, particularly its integration with Artificial Intelligence (AI), in managing chronic conditions such as heart failure, diabetes, and chronic pain. By highlighting advancements in disease-specific RPM applications, the review underscores RPM’s versatility and its ability to empower patients through education, shared decision-making, and adherence to therapeutic regimens. The COVID-19 pandemic further emphasized the importance of RPM in ensuring healthcare continuity during systemic disruptions. The integration of AI with RPM has refined these capabilities, enabling personalized, real-time data collection and analysis. While chronic pain management serves as a focal area, the review also examines AI-enhanced RPM applications in cardiology and diabetes. AI-driven systems, such as the NXTSTIM EcoAI™, are highlighted for their potential to revolutionize treatment approaches through continuous monitoring, timely interventions, and improved patient outcomes. This progression from basic wearable devices to sophisticated, AI-driven systems underscores RPM’s ability to redefine healthcare delivery, reduce system burdens, and enhance quality of life across multiple chronic conditions. Looking forward, AI-integrated RPM is expected to further refine disease management strategies by offering more personalized and effective treatments. The broader implications, including its applicability to cardiology, diabetes, and pain management, showcase RPM’s capacity to deliver automated, data-driven care, thereby reducing healthcare burdens while enhancing patient outcomes and quality of life.Keywords: remote patient monitoring, RPM, chronic disease management, AI integrated care

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