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[From In-Person Didactic Sessions to Videoconferencing During the COVID-19 Pandemic: Satisfaction Survey among Participants]./ Cambio De Sesiones Docentes Presenciales a Virtuales Durante La Pandemia De COVID-19 En Un Servicio De Neurología: Descripción Del Proceso Y Satisfacción De Los Usuarios.

Alberto Villarejo‐Galende,Francisco Javier Azcárate-Díaz,María Isabel Laespada-García, Pablo Rábano‐Suárez,Mariano Ruiz-Ortiz, Cristina Domínguez‐González, Patricia Calleja‐Castaño, Antonio Martínez‐Salio, Sara Moreno‐García,D A Pérez-Martínez

Revue neurologique(2021)

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摘要
INTRODUCTION AND AIM: COVID-19 pandemic has disturbed many hospital activities, including medical education. We describe the switch from in-person didactic sessions to videoconferencing in a Neurology department. We analyse the opinions and satisfaction of participants. MATERIAL AND METHODS: Narrative description of the adopted measures; Online survey among participants. RESULTS: One of the three weekly sessions was cancelled, and two switched to videoconferencing. There were more participants online than in the conference hall. 49 users answered the survey, 51% women, mean age 40.5 years (range 25-65). Satisfaction was higher for previous face-to-face meetings (8.68) than for videoconferencing (8.12) (p=0.006). There was a significant inverse correlation between age and satisfaction with virtual sessions (r=-0.37; p=0.01), that was not found for in-person attendance. Most users (75.5%) would prefer to continue with online sessions when the pandemic is over, and 87.8% support inter-hospital remote meetings, but the safety of web platforms is a concern (53.1%). CONCLUSIONS: The change from in-person to virtual sessions is an easy measure to implement in a neurology department, with a good degree of satisfaction among users. There are some unsolved problems with the use of commercial web platforms and inter-hospital connection. Most users recommend leadership and support from educational and health authorities.
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