A Semantic-Based Approach for Managing Healthcare Big Data: A Survey

Author:

Hammad Rafat1ORCID,Barhoush Malek1ORCID,Abed-alguni Bilal H.1ORCID

Affiliation:

1. Yarmouk University, Irbid, Jordan

Abstract

Healthcare information systems can reduce the expenses of treatment, foresee episodes of pestilences, help stay away from preventable illnesses, and improve personal life satisfaction. As of late, considerable volumes of heterogeneous and differing medicinal services data are being produced from different sources covering clinic records of patients, lab results, and wearable devices, making it hard for conventional data processing to handle and manage this amount of data. Confronted with the difficulties and challenges facing the process of managing healthcare big data such as volume, velocity, and variety, healthcare information systems need to use new methods and techniques for managing and processing such data to extract useful information and knowledge. In the recent few years, a large number of organizations and companies have shown enthusiasm for using semantic web technologies with healthcare big data to convert data into knowledge and intelligence. In this paper, we review the state of the art on the semantic web for the healthcare industry. Based on our literature review, we will discuss how different techniques, standards, and points of view created by the semantic web community can participate in addressing the challenges related to healthcare big data.

Publisher

Hindawi Limited

Subject

Health Informatics,Biomedical Engineering,Surgery,Biotechnology

Reference96 articles.

1. Semantic heterogeneity reduction for big data in industrial automation;V. Jirkovský;ITAT,2014

2. Big data analytics;P. Russom;TDWI best practices report,2011

3. 3D data management: controlling data volume, velocity and variety;D. Laney;META Group Research Note,2001

4. A formal definition of big data based on its essential features;A. De Mauro;Library Review,2016

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