Research Article |
Open Access
|
| Published online: 30
May 2025
Artificial Intelligence for Predictive Healthcare: Real-Time Insight Generation from Diverse Patient Data
Dipanshu Kumar Singh,* Keshav Kumar Bharti, Bikram Shahi and Anamika Larhgotra
Department of Computer Science, Chandigarh University, Mohali, Punjab, 160036, India
*Email: dipanshusingh7645@gmail.com
J. Inf. Commun. Technol. Algorithms Syst. Appl., 2025, 1(1), 25301 https://doi.org/10.64189/ict.25302
Received: 21 March 2025; Revised: 30 April 2025; Accepted: 22 May 2025.
Abstract
The research studies an AI-based system that distributes instantaneous predictive medical information between various healthcare platforms used for disease analysis and risk evaluation and anomaly detection. Supervision from intuitive machine learning enables this system to assess enormous medical datasets in order to deliver current accurate data needed by physicians for clinical treatment choices. The system attains strong performance criteria during reporting to display readiness for clinical implementation throughout various healthcare environments. Medical workflows resist full AI integration due to three fundamental challenges which combine data heterogeneity with model scalability limitations and ethical problems. Technology systems establish data privacy protection by using privacy-preserving methods involving differential privacy and federated learning. A new focus in artificial intelligence research develops XAI methods to build understandable systems that enhance user trust and system usability. Evolutionary medical information demands a real-time system with adaptive learning capabilities by implementing cloudbased computing alongside edge capabilities which should also unite multiple data formats in system enhancements. The system demonstrates potential to transform personalized healthcare through expanded applications by addressing existing barriers to improve both patient care and healthcare operational effectiveness in diverse healthcare settings.
Graphical Abstract
Novelty statement
Personalized healthcare through expanded applications by addressing existing barriers to improve both patient care and healthcare operational effectiveness in diverse healthcare settings.