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Articles

Urban high school students’ perceptions of race, gender, and benefits from participating in a STEMM pipeline programme: a sociocultural case study

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Pages 2271-2289 | Received 13 Feb 2019, Accepted 21 Jul 2021, Published online: 27 Aug 2021
 

ABSTRACT

Motivated by lack of diversity in Science Technology Engineering Mathematics and Medicine (STEMM) professions, this case-study explores a group of 25 high achieving, low SES, mostly female, majority-minority high school students’ perception of race, ethnicity, and gender as factors for success in their future as STEMM professionals. Additionally, the study elucidates the benefits of participating in a pipeline programme designed to promote high skill and high wage jobs in the medical and health fields. Emergent themes of race and merit prominently surfaced. Responses to the effect of race and gender varied by subgroup, with the themes of the ‘power of personal merit’ over sociocultural factors emerging as the most striking theme. Participants’ perceived benefits aligned with the programme goals: broadening of STEM knowledge, access to role-models, and hands-on experience. Teachings on social inequality and more access to female, minority role-models are suggested to prepare participants for their entrance into the STEMM field.

Disclosure statement

No potential conflict of interest was reported by the author(s).

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