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Parallels between seminars and problem-based learning.

07:00 EST 13th February 2020 | BioPortfolio

Summary of "Parallels between seminars and problem-based learning."

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This article was published in the following journal.

Name: British journal of nursing (Mark Allen Publishing)
ISSN: 0966-0461
Pages: 165

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