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

Predictive Analysis-Based AI-Driven Data Security Authentication and Authorization for Medical Warehousing Mechanisms

Predictive Analysis-Based AI-Driven Data Security Authentication and Authorization for Medical Warehousing Mechanisms
View Sample PDF
Author(s): G. A. Senthil (Agni College of Technology, India)and R. Prabha (Sri Sairam Institute of Technology, India)
Copyright: 2025
Pages: 26
Source title: Strategic Innovations of AI and ML for E-Commerce Data Security
Source Author(s)/Editor(s): Gaganpreet Kaur (Chitkara University, India), Jatin Arora (Chitkara University, India), Vishal Jain (Sharda University, Greater Noida, India)and Asadullah Shaikh (Najran University, Saudi Arabia)
DOI: 10.4018/979-8-3693-5718-7.ch015

Purchase


Abstract

Maintaining data security is important for several reasons, as it shields patients, first and foremost, from fraud, identity theft, and prejudice due to their medical history. This paper presents a comprehensive framework for enhancing data security authentication and authorization within medical warehousing mechanisms in the context of e-commerce, leveraging predictive analysis, artificial intelligence (AI), and blockchain technology. In an era where the integrity and confidentiality of medical data are paramount, the proposed framework integrates advanced predictive analysis models and AI-driven authentication mechanisms with the immutable nature of blockchain to ensure robust security measures. The proposed solution presents an innovative approach to enhance data security authentication and authorization within medical warehousing mechanisms, leveraging predictive analysis and AI algorithms within the context of e-commerce-enabled blockchain. Specifically, the study focuses on employing Naive Bayes, LSTM, and XGBoost for predictive analysis to fortify security measures.

Related Content

Parth Nagar, Srinath M. S.. © 2027. 48 pages.
Swapnali Pravin Gaikwad, Saurabh Vinayak Hembade. © 2027. 36 pages.
Titiksha Tulsidas Bhagat, Shweta Bondre, Vipin Bondre, Uma Yadav, Priya Dasarwar. © 2027. 26 pages.
Anshik Kumar Tiwari, Brindha Subburaj. © 2027. 22 pages.
Grace Shalini T., Pratham Shrivastav, Parthiv Gopa. © 2027. 36 pages.
S. Aarthi, Jaypalsinh A. Gohil. © 2027. 30 pages.
Arul Selvam P., Tamije Selvy P.. © 2027. 30 pages.
Body Bottom