Objective: The COVID-19 pandemic affected in-person educational activities and required medical schools to adapt and enrich their curriculum to ensure ongoing professional development. During the height of the COVID-19 pandemic, students expressed a significant desire to contribute and continue their medical education. Service learning promotes experiential learning and Professional Identity Formation (PIF). This study examines the impact that a service-learning elective had on medical students' education and PIF.

Methods: Offering a service-learning elective allowed students to remain engaged in educational activities and pandemic-relief efforts. We conducted a qualitative analysis of 132 written reflections by medical students who completed a 2- or a 4-week service-learning elective to assess for major themes and impact on PIF.

Results: Participation in service learning had a favorable impact on PIF as expressed by the personal qualities student identified as having developed or improved upon because of their participation. Enhancement of communication skills, teamwork skills, compassion, and empathy were major themes conveyed in student reflections. Qualities of resilience were also portrayed through the write-up as students noted how the elective allowed for active engagement in community pandemic-relief efforts and created opportunities for overcoming obstacles related to service learning projects they participated in.

Conclusions: Service learning in medical school has a dual purpose of providing community support while imparting significant learning opportunities for PIF in medical students.

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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11425726PMC
http://dx.doi.org/10.1177/23821205241262686DOI Listing

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