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Not sure? Handling hesitancy of COVID-19 vaccines

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 نشر من قبل Neil F. Johnson
 تاريخ النشر 2020
  مجال البحث فيزياء
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From the moment the first COVID-19 vaccines are rolled out, there will need to be a large fraction of the global population ready in line. It is therefore crucial to start managing the growing global hesitancy to any such COVID-19 vaccine. The current approach of trying to convince the nos cannot work quickly enough, nor can the current policy of trying to find, remove and/or rebut all the individual pieces of COVID and vaccine misinformation. Instead, we show how this can be done in a simpler way by moving away from chasing misinformation content and focusing instead on managing the yes--no--not-sure hesitancy ecosystem.

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