IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

Artificial Intelligence-Powered Digital Twin Predictive Analytics Model for Smart Healthcare System: Leveraging Digital Twins' Potential to Improve Healthcare Outcomes

Artificial Intelligence-Powered Digital Twin Predictive Analytics Model for Smart Healthcare System: Leveraging Digital Twins' Potential to Improve Healthcare Outcomes
View Sample PDF
Author(s): Palanivel Kuppusamy (Pondicherry University, India)
Copyright: 2025
Pages: 54
Source title: AI-Powered Digital Twins for Predictive Healthcare: Creating Virtual Replicas of Humans
Source Author(s)/Editor(s): Balasubramaniam S. (Kerala University of Digital Sciences, Innovation, and Technology, India)and Seifedine Kadry (Lebanese American University, Lebanon & Noroff University College, Norway)
DOI: 10.4018/979-8-3373-0538-7.ch009

Purchase


Abstract

Health monitoring systems and healthcare organizations produce vast amounts of complicated data, which present opportunities for creative research in medical decision-making. These data capture advances have opened unthinkable domains for AI and digital twin-related healthcare applications. AI-powered digital twin supports healthcare process automation, real-time health monitoring, enhanced medical decision-making, personalized healthcare, and predictive analytics. These applications can create AI-powered digital twin models that mimic human physiology using various advanced computing approaches. The potential of digital twins can be used to advance medical research and better healthcare outcomes. Hence, this chapter aims to provide an Artificial Intelligence-powered digital twin predictive analytics model for an innovative healthcare system. Integrating digital twins into the smart healthcare field can improve healthcare procedures, provide personalized treatment, and create a smart and intelligent healthcare ecosystem.

Related Content

Latifa Mednini, Mouna Damak Turki. © 2026. 26 pages.
Georgios A. Deirmentzoglou, Eleni E. Anastasopoulou, Andreas N. Masouras. © 2026. 16 pages.
Marcos Komodromos, Andreas Masouras, Sofia Anastasiadou, Marios Vassiliou. © 2026. 20 pages.
Pravin Kumar. © 2026. 36 pages.
Marios Vassiliou. © 2026. 26 pages.
Parihar Suresh Dahake, Prashant Gulabchand Chhajer, Vishal Mehta. © 2026. 50 pages.
Anirban Ghatak. © 2026. 36 pages.
Body Bottom