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A novel framework for the automated healthcare disaster based on intellectual machine learning

Catherene Julie Aarthy C. (School of Management, Hindustan Institute of Technology and Science, Chennai, India)
Rajkumar N. (Department of Computer Science, St. Claret College Bengaluru, Bengaluru, India)
V.P. Sriram (Department of MBA, Acharya Bangalore B School (ABBS), Bengaluru, India)
Badrinarayanan M.K. (School of Management, Hindustan Institute of Technology and Science, Chennai, India)
K. Bhavana Raj (Institute of Public Enterprise, Hyderabad, India)
Rajan Patel (Computer Engineering Department, Gandhinagar Institute of Technology, Ghandhinagar, India)

World Journal of Engineering

ISSN: 1708-5284

Article publication date: 10 May 2022

Issue publication date: 21 August 2023

41

Abstract

Purpose

The purpose of this paper used for catastrophe and pandemic preparedness was the craft of machine learning calculations. ML is the latest globe learning technique to assist in the identification and remediation of medical care catastrophes.

Design/methodology/approach

To the greatest extent possible, countries are terrified about debacles and pandemics, which, all in all, are exceptionally improbable occurrences. When health emergencies arise on the board, several issues arise for the medical team because of the lack of accurate information from numerous diverse sources, which is required to be available by suitable professionals.

Findings

Thus, the current investigation’s main objective is to demonstrate a structure that is dependent on the incorporation of recent advances, the Internet of Things and large information and which can settle this issue by using machine learning (ML) in all stages of catastrophe and providing accurate and compelling medical care.

Originality/value

The system upholds medical services characters by empowering information to be divided between them, enabling them to perform insightful estimations and enabling them to find significant, legitimate and precise patterns that are required for functional arrangement and better readiness in the event of crises. It is possible that the results of the system’s work may be used by the executives to assist chiefs in differentiating and forecasting the wellbeing repercussions of the fumbles.

Keywords

Citation

Julie Aarthy C., C., N., R., Sriram, V.P., M.K., B., Raj, K.B. and Patel, R. (2023), "A novel framework for the automated healthcare disaster based on intellectual machine learning", World Journal of Engineering, Vol. 20 No. 5, pp. 801-807. https://doi.org/10.1108/WJE-08-2021-0491

Publisher

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Emerald Publishing Limited

Copyright © 2022, Emerald Publishing Limited

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