Semantic Web in Healthcare: A Systematic Literature Review of
Application, Research Gap, and Future Research Avenues
- URL: http://arxiv.org/abs/2211.00058v1
- Date: Wed, 19 Oct 2022 23:41:45 GMT
- Title: Semantic Web in Healthcare: A Systematic Literature Review of
Application, Research Gap, and Future Research Avenues
- Authors: A. K. M. Bahalul Haque, B. M. Arifuzzaman, Sayed Abu Noman Siddik,
Abul Kalam, Tabassum Sadia Shahjahan, T. S. Saleena, Morshed Alam, Md. Rabiul
Islam, Foyez Ahmmed,5and Md. Jamal Hossain
- Abstract summary: This systematic literature review aims to assess and critique previous findings on Semantic Web in healthcare systems.
We looked at 65 papers and came up with five themes: e-service, disease, information management, frontier technology, and regulatory conditions.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Today, healthcare has become one of the largest and most fast-paced
industries due to the rapid development of digital healthcare technologies. The
fundamental thing to enhance healthcare services is communicating and linking
massive volumes of available healthcare data. However, the key challenge in
reaching this ambitious goal is letting the information exchange across
heterogeneous sources and methods as well as establishing efficient tools and
techniques. Semantic Web (SW) technology can help to tackle these problems.
They can enhance knowledge exchange, information management, data
interoperability, and decision support in healthcare systems. They can also be
utilized to create various e-healthcare systems that aid medical practitioners
in making decisions and provide patients with crucial medical information and
automated hospital services. This systematic literature review (SLR) on SW in
healthcare systems aims to assess and critique previous findings while adhering
to appropriate research procedures. We looked at 65 papers and came up with
five themes: e-service, disease, information management, frontier technology,
and regulatory conditions. In each thematic research area, we presented the
contributions of previous literature. We emphasized the topic by responding to
five specific research questions. We have finished the SLR study by identifying
research gaps and establishing future research goals that will help to minimize
the difficulty of adopting SW in healthcare systems and provide new approaches
for SW-based medical systems progress.
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