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

Machines That Heal: Revolutionizing Diagnostics and Medical Intelligence

Machines That Heal: Revolutionizing Diagnostics and Medical Intelligence
View Sample PDF
Author(s): Ahmed ElSayary (Institute of Applied Technology, Dubai, UAE)
Copyright: 2027
Pages: 22
Source title: Encyclopedia of Modern Artificial Intelligence
Source Author(s)/Editor(s): Mehdi Khosrow-Pour, D.B.A. (Founding Editor-in-Chief, Information Resources Management Journal (IRMJ), USA)
DOI: 10.4018/407370

Purchase

View Machines That Heal: Revolutionizing Diagnostics and Medical Intelligence on the publisher's website for pricing and purchasing information.

Abstract

The integration of Generative Artificial Intelligence (GenAI) is redefining healthcare by enhancing diagnosis, treatment, and research. This article explores how GenAI supports early disease detection, predictive modeling, and personalized care. Through real-world examples in fields like dermatology and radiology, it demonstrates GenAI's role in improving diagnostic accuracy and operational efficiency. Leveraging machine learning, deep learning, and natural language processing (NLP), the article highlights applications such as image classification, clinical text analysis, and interpretation of lab results. The use of synthetic data for research and training is also examined as a key innovation driver. In addition, the article addresses ethical and regulatory challenges, including data privacy and explainability, offering a practical framework for responsible GenAI adoption in clinical settings. It equips educators, researchers, and practitioners with insights to build scalable, inclusive, and intelligent healthcare systems.

Related Content

Frederic Andres. © 2027. 14 pages.
Kalsoom Safdar, Khairul Najmy Abdul Rani, Mohd Aminudin Jamlos, Siti Julia Rosli, Muhammad Usman Younus, Zanab Safdar. © 2027. 27 pages.
Bani Adam, Binastya Anggara Sekti, Muhammad Adi Zacky Zahran. © 2027. 24 pages.
Swetha Margaret T. A., Renuka Devi D.. © 2027. 31 pages.
Maurice Saluschke, Michael Schulz. © 2027. 30 pages.
Mirjam Sepesy Maučec, Gregor Donaj. © 2027. 16 pages.
Jorge A. Ruiz-Vanoye, Ocotlan Diaz-Parra, Ricardo A. Barrera-Cámara, Alejandro Fuentes-Penna, Francisco R. Trejo-Macotela, Jaime Aguilar-Ortiz, Eric Simancas-Acevedo. © 2027. 21 pages.
Body Bottom