Neurosurgery Thursday Residency Curriculum Series
Thursday, June 5, 2025 6:00–8:00 AM
- LocationVirtual Event / ASB-Third Floor-Conf Rm
- DescriptionTwo CME credits are granted for these weekly educational series presented by varying faculty. Alternating weekly the Tumor Board invites will be sent directly from the Cancer Center for one CME credit. Virtual Event: https://uchc.WebEx.com/meet/Neurosurgery
- Websitehttps://events.uconn.edu/event/49816-neurosurgery-thursday-residency-curriculum-series
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