Let's Talk with Michelle
Tuesday, September 24, 2024 1:00–2:30 PM
- DescriptionStudents who may benefit from attending a Let's Talk: Mental Health Office Hours session include:Students who want help connecting to resources but are unsure where to begin Students who are looking for advice on a non-clinical issue Students who are unsure about therapy and are curious about what it is like to talk to a therapist Students who may have concerns about the mental health of a friend and seek advice on how to support their friend If a student is not an imminent risk, and is refusing your support in contacting our office, you may also consider contacting the UConn Student CARE Team (https://studentcareteam.uconn.edu/). This session is held by Sijia (Michelle) Chen, M.S.Ed (https://studenthealth.uconn.edu/person/sijia-chen/)
- Websitehttps://events.uconn.edu/student-health-and-wellness/event/164366-lets-talk-with-michelle
- CategoriesHealth & Wellness
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