Introduction: As a result of the coronavirus pandemic, outpatient consultations in National Health Service Lanarkshire were conducted using various forms of teleconsultation. A qualitative study was undertaken to ascertain how senior medical students valued the experience of outpatient teleconsultations in comparison to face-to-face consultations during the pandemic.

Methods: Anonymised, voluntary surveys were emailed to all medical students who attended clinical placements in specialties utilising teleconsultations. Participants were asked to compare their experience of and perceived value of virtual consultants to face-to-face consultations. Thematic and statistical analysis was performed on the collected data.

Results: Participants unanimously agreed face-to-face consultations enabled learning, with 71.4% (n = 7) having similar experiences in video consultations if a senior was physically present beside them. Video consultation, when the senior clinician was also present virtually, was deemed useful to a lesser extent (66.7%, n = 6). Only half (57.1%, n = 14) valued the learning from telephone consultations. Qualitative analysis revealed that although face to face was the preferred consultation style, there was useful learning gained in all modalities. Students appreciated discussion with senior clinicians to facilitate learning and valued involvement in the consultation through history taking, especially in teleconsultations.

Discussion: Teleconsultation was an effective learning tool for medical students during the coronavirus pandemic, which preserved student exposure to patients during lockdown. This study is optimistic that widespread incorporation of teleconsultation, in all modality, has the ability to support students' clinical exposure and learning, which is becoming increasingly limited as medical student numbers continue to rise and with the ongoing effects of the pandemic.

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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9234373PMC
http://dx.doi.org/10.1177/1357633X221103828DOI Listing

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