Novel keyword co-occurrence network-based methods to foster systematic reviews of scientific literature.

Systematic reviews of scientific literature are important for mapping the existing state of research and highlighting further growth channels in a field of study, but systematic reviews are inherently tedious, time consuming, and manual in nature. In recent years, keyword co-occurrence networks (KCN...

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Main Authors: Srinivasan Radhakrishnan, Serkan Erbis, Jacqueline A Isaacs, Sagar Kamarthi
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2017-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC5362196?pdf=render
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spelling doaj-dc10607b7a0a4da58eb911a6e501a06a2020-11-25T02:10:31ZengPublic Library of Science (PLoS)PLoS ONE1932-62032017-01-01123e017277810.1371/journal.pone.0172778Novel keyword co-occurrence network-based methods to foster systematic reviews of scientific literature.Srinivasan RadhakrishnanSerkan ErbisJacqueline A IsaacsSagar KamarthiSystematic reviews of scientific literature are important for mapping the existing state of research and highlighting further growth channels in a field of study, but systematic reviews are inherently tedious, time consuming, and manual in nature. In recent years, keyword co-occurrence networks (KCNs) are exploited for knowledge mapping. In a KCN, each keyword is represented as a node and each co-occurrence of a pair of words is represented as a link. The number of times that a pair of words co-occurs in multiple articles constitutes the weight of the link connecting the pair. The network constructed in this manner represents cumulative knowledge of a domain and helps to uncover meaningful knowledge components and insights based on the patterns and strength of links between keywords that appear in the literature. In this work, we propose a KCN-based approach that can be implemented prior to undertaking a systematic review to guide and accelerate the review process. The novelty of this method lies in the new metrics used for statistical analysis of a KCN that differ from those typically used for KCN analysis. The approach is demonstrated through its application to nano-related Environmental, Health, and Safety (EHS) risk literature. The KCN approach identified the knowledge components, knowledge structure, and research trends that match with those discovered through a traditional systematic review of the nanoEHS field. Because KCN-based analyses can be conducted more quickly to explore a vast amount of literature, this method can provide a knowledge map and insights prior to undertaking a rigorous traditional systematic review. This two-step approach can significantly reduce the effort and time required for a traditional systematic literature review. The proposed KCN-based pre-systematic review method is universal. It can be applied to any scientific field of study to prepare a knowledge map.http://europepmc.org/articles/PMC5362196?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Srinivasan Radhakrishnan
Serkan Erbis
Jacqueline A Isaacs
Sagar Kamarthi
spellingShingle Srinivasan Radhakrishnan
Serkan Erbis
Jacqueline A Isaacs
Sagar Kamarthi
Novel keyword co-occurrence network-based methods to foster systematic reviews of scientific literature.
PLoS ONE
author_facet Srinivasan Radhakrishnan
Serkan Erbis
Jacqueline A Isaacs
Sagar Kamarthi
author_sort Srinivasan Radhakrishnan
title Novel keyword co-occurrence network-based methods to foster systematic reviews of scientific literature.
title_short Novel keyword co-occurrence network-based methods to foster systematic reviews of scientific literature.
title_full Novel keyword co-occurrence network-based methods to foster systematic reviews of scientific literature.
title_fullStr Novel keyword co-occurrence network-based methods to foster systematic reviews of scientific literature.
title_full_unstemmed Novel keyword co-occurrence network-based methods to foster systematic reviews of scientific literature.
title_sort novel keyword co-occurrence network-based methods to foster systematic reviews of scientific literature.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2017-01-01
description Systematic reviews of scientific literature are important for mapping the existing state of research and highlighting further growth channels in a field of study, but systematic reviews are inherently tedious, time consuming, and manual in nature. In recent years, keyword co-occurrence networks (KCNs) are exploited for knowledge mapping. In a KCN, each keyword is represented as a node and each co-occurrence of a pair of words is represented as a link. The number of times that a pair of words co-occurs in multiple articles constitutes the weight of the link connecting the pair. The network constructed in this manner represents cumulative knowledge of a domain and helps to uncover meaningful knowledge components and insights based on the patterns and strength of links between keywords that appear in the literature. In this work, we propose a KCN-based approach that can be implemented prior to undertaking a systematic review to guide and accelerate the review process. The novelty of this method lies in the new metrics used for statistical analysis of a KCN that differ from those typically used for KCN analysis. The approach is demonstrated through its application to nano-related Environmental, Health, and Safety (EHS) risk literature. The KCN approach identified the knowledge components, knowledge structure, and research trends that match with those discovered through a traditional systematic review of the nanoEHS field. Because KCN-based analyses can be conducted more quickly to explore a vast amount of literature, this method can provide a knowledge map and insights prior to undertaking a rigorous traditional systematic review. This two-step approach can significantly reduce the effort and time required for a traditional systematic literature review. The proposed KCN-based pre-systematic review method is universal. It can be applied to any scientific field of study to prepare a knowledge map.
url http://europepmc.org/articles/PMC5362196?pdf=render
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