A Text Mining-Based Survey of Pre-Impressions of Medical Staff toward COVID-19 Vaccination in a Designated Medical Institution for Class II Infectious Diseases
The present study investigated the pre-impressions of medical staff toward coronavirus disease 2019 (COVID-19) vaccination in a designated medical institution for class II infectious diseases in Sakaide, Japan using a text mining analysis. A total of 387 medical staff were surveyed on their pre-vacc...
Guardado en:
Autores principales: | , , , , |
---|---|
Formato: | article |
Lenguaje: | EN |
Publicado: |
MDPI AG
2021
|
Materias: | |
Acceso en línea: | https://doaj.org/article/a3f705463a1543cba4e55e4d8ce103ae |
Etiquetas: |
Agregar Etiqueta
Sin Etiquetas, Sea el primero en etiquetar este registro!
|
id |
oai:doaj.org-article:a3f705463a1543cba4e55e4d8ce103ae |
---|---|
record_format |
dspace |
spelling |
oai:doaj.org-article:a3f705463a1543cba4e55e4d8ce103ae2021-11-25T19:10:54ZA Text Mining-Based Survey of Pre-Impressions of Medical Staff toward COVID-19 Vaccination in a Designated Medical Institution for Class II Infectious Diseases10.3390/vaccines91112822076-393Xhttps://doaj.org/article/a3f705463a1543cba4e55e4d8ce103ae2021-11-01T00:00:00Zhttps://www.mdpi.com/2076-393X/9/11/1282https://doaj.org/toc/2076-393XThe present study investigated the pre-impressions of medical staff toward coronavirus disease 2019 (COVID-19) vaccination in a designated medical institution for class II infectious diseases in Sakaide, Japan using a text mining analysis. A total of 387 medical staff were surveyed on their pre-vaccination impressions toward the COVID-19 vaccine using an open-ended questionnaire from March 1st to 7th (the first survey) and from March 22nd to 28th (the second survey) at Sakaide City Hospital, Sakaide, Japan. A total of 296 people answered the question for the first time and 234 people answered for the second time among the 387 people. The vaccination rate was slightly lower for the younger generation than for the older generation. Before the first vaccination, the younger generation expressed concerns about side effects as well as a negative impact on pregnancy. However, before the second vaccination, there were fewer concerns regarding side effects and words of reassurance were also noted. Nurses expressed more opinions about side effects in both the first and second vaccinations than other medical staff. Concerns regarding side effects among medical staff decreased with the progression of COVID-19 vaccination. These data may provide useful information about the promotion of COVID-19 vaccination to the public, particularly in the young generation and women.Yoshiro MoriNobuyuki MiyatakeHiromi SuzukiSetsuo OkadaKiyotaka TanimotoMDPI AGarticleCOVID-19vaccinationtext miningimpressionMedicineRENVaccines, Vol 9, Iss 1282, p 1282 (2021) |
institution |
DOAJ |
collection |
DOAJ |
language |
EN |
topic |
COVID-19 vaccination text mining impression Medicine R |
spellingShingle |
COVID-19 vaccination text mining impression Medicine R Yoshiro Mori Nobuyuki Miyatake Hiromi Suzuki Setsuo Okada Kiyotaka Tanimoto A Text Mining-Based Survey of Pre-Impressions of Medical Staff toward COVID-19 Vaccination in a Designated Medical Institution for Class II Infectious Diseases |
description |
The present study investigated the pre-impressions of medical staff toward coronavirus disease 2019 (COVID-19) vaccination in a designated medical institution for class II infectious diseases in Sakaide, Japan using a text mining analysis. A total of 387 medical staff were surveyed on their pre-vaccination impressions toward the COVID-19 vaccine using an open-ended questionnaire from March 1st to 7th (the first survey) and from March 22nd to 28th (the second survey) at Sakaide City Hospital, Sakaide, Japan. A total of 296 people answered the question for the first time and 234 people answered for the second time among the 387 people. The vaccination rate was slightly lower for the younger generation than for the older generation. Before the first vaccination, the younger generation expressed concerns about side effects as well as a negative impact on pregnancy. However, before the second vaccination, there were fewer concerns regarding side effects and words of reassurance were also noted. Nurses expressed more opinions about side effects in both the first and second vaccinations than other medical staff. Concerns regarding side effects among medical staff decreased with the progression of COVID-19 vaccination. These data may provide useful information about the promotion of COVID-19 vaccination to the public, particularly in the young generation and women. |
format |
article |
author |
Yoshiro Mori Nobuyuki Miyatake Hiromi Suzuki Setsuo Okada Kiyotaka Tanimoto |
author_facet |
Yoshiro Mori Nobuyuki Miyatake Hiromi Suzuki Setsuo Okada Kiyotaka Tanimoto |
author_sort |
Yoshiro Mori |
title |
A Text Mining-Based Survey of Pre-Impressions of Medical Staff toward COVID-19 Vaccination in a Designated Medical Institution for Class II Infectious Diseases |
title_short |
A Text Mining-Based Survey of Pre-Impressions of Medical Staff toward COVID-19 Vaccination in a Designated Medical Institution for Class II Infectious Diseases |
title_full |
A Text Mining-Based Survey of Pre-Impressions of Medical Staff toward COVID-19 Vaccination in a Designated Medical Institution for Class II Infectious Diseases |
title_fullStr |
A Text Mining-Based Survey of Pre-Impressions of Medical Staff toward COVID-19 Vaccination in a Designated Medical Institution for Class II Infectious Diseases |
title_full_unstemmed |
A Text Mining-Based Survey of Pre-Impressions of Medical Staff toward COVID-19 Vaccination in a Designated Medical Institution for Class II Infectious Diseases |
title_sort |
text mining-based survey of pre-impressions of medical staff toward covid-19 vaccination in a designated medical institution for class ii infectious diseases |
publisher |
MDPI AG |
publishDate |
2021 |
url |
https://doaj.org/article/a3f705463a1543cba4e55e4d8ce103ae |
work_keys_str_mv |
AT yoshiromori atextminingbasedsurveyofpreimpressionsofmedicalstafftowardcovid19vaccinationinadesignatedmedicalinstitutionforclassiiinfectiousdiseases AT nobuyukimiyatake atextminingbasedsurveyofpreimpressionsofmedicalstafftowardcovid19vaccinationinadesignatedmedicalinstitutionforclassiiinfectiousdiseases AT hiromisuzuki atextminingbasedsurveyofpreimpressionsofmedicalstafftowardcovid19vaccinationinadesignatedmedicalinstitutionforclassiiinfectiousdiseases AT setsuookada atextminingbasedsurveyofpreimpressionsofmedicalstafftowardcovid19vaccinationinadesignatedmedicalinstitutionforclassiiinfectiousdiseases AT kiyotakatanimoto atextminingbasedsurveyofpreimpressionsofmedicalstafftowardcovid19vaccinationinadesignatedmedicalinstitutionforclassiiinfectiousdiseases AT yoshiromori textminingbasedsurveyofpreimpressionsofmedicalstafftowardcovid19vaccinationinadesignatedmedicalinstitutionforclassiiinfectiousdiseases AT nobuyukimiyatake textminingbasedsurveyofpreimpressionsofmedicalstafftowardcovid19vaccinationinadesignatedmedicalinstitutionforclassiiinfectiousdiseases AT hiromisuzuki textminingbasedsurveyofpreimpressionsofmedicalstafftowardcovid19vaccinationinadesignatedmedicalinstitutionforclassiiinfectiousdiseases AT setsuookada textminingbasedsurveyofpreimpressionsofmedicalstafftowardcovid19vaccinationinadesignatedmedicalinstitutionforclassiiinfectiousdiseases AT kiyotakatanimoto textminingbasedsurveyofpreimpressionsofmedicalstafftowardcovid19vaccinationinadesignatedmedicalinstitutionforclassiiinfectiousdiseases |
_version_ |
1718410234688438272 |