To examine what factors impact college students in the United States who are deciding to initiate or continue mental health services. Spring 2021 undergraduate students (N = 453) at a large urban university. Online, cross-sectional survey with mental health service experience as the independent variable and social support, accessibility, attitudes toward mental health, mental health literacy, and trust of mental health professionals as the dependent variables, as well as thematic analysis of reasons to discontinue services. Individuals with lower levels of social support and higher levels of mental health literacy were more likely to have received therapy. Participants tended to discontinue services because of negative experiences, accessibility problems, negative attitudes toward services, or they felt better. Mental health literacy, social support, and accessibility are significant predictors of college student service use and should be taken into consideration by university administration.

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http://dx.doi.org/10.1080/07448481.2022.2089851DOI Listing

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