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Thematic analysis of multiple sclerosis research by enhanced strategic diagram

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 نشر من قبل Rahimah Zakaria
 تاريخ النشر 2021
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This bibliometric review summarised the research trends and analysed research areas in multiple sclerosis (MS) over the last decade. The documents containing the term multiple sclerosis in the article title were retrieved from the Scopus database. We found a total of 18003 articles published in journals in the English language between 2012 and 2021. The emerging keywords identified utilising the enhanced strategic diagram were covid-19, teriflunomide, clinical trial, microglia, b cells, myelin, brain, white matter, functional connectivity, pain, employment, health-related quality of life, meta-analysis and comorbidity. In conclusion, this study demonstrates the tremendous growth of MS literature worldwide, which is expected to grow more than double during the next decade especially in the identified emerging topics.

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