Moral stigma attached to an occupation can scar workers through discrediting, shaming, and denying respect. It can also open the door to interpersonal mistreatment, but little is known about how morally stigmatized workers navigate anticipated disrespect to potentially avoid harm. We explore this issue in a study of an occupation carrying severe moral stigma and where disrespect and workplace mistreatment are pervasive: models in hip-hop and rap music videos. Through analyses of 71 interviews with 48 video models and 19 industry informants, field observations, and archival data, we show how severe moral stigma and industry constraints promote generalized disrespect of video models (i.e., denial of worth to all role occupants) and, thus, each model's personal vulnerability to mistreatment. Two distinct groups of models emerged from our analysis-those who viewed themselves as emboldened in their role identity and those who did not-and this emboldened role identity was associated with differing perceptions of their personal vulnerability to mistreatment and their behaviors to mitigate it. The first group of models, those reporting an emboldened role identity, perceived their vulnerability to mistreatment as controllable. They strategically used both assertive behaviors (that earned respect from others) passive behaviors (that avoided disrespect from others) to mitigate mistreatment. By contrast, the second group perceived their vulnerability to mistreatment as uncontrollable and reported using only passive behaviors (to avoid disrespect) when mistreatment was imminent. We discuss theoretical and practical implications of our findings, advancing knowledge of dirty work, workplace mistreatment, respect dynamics, and identity. (PsycInfo Database Record (c) 2024 APA, all rights reserved).
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Sci Rep
January 2025
Non-Communicable Diseases Research Center, Endocrinology and Metabolism Population Sciences Institute, Tehran University of Medical Sciences, Tehran, Iran.
The sexual health of female sex workers is of particular concern due to severe complications arising from multiple and unprotected sexual relationships. This qualitative study, the initial study conducted in Iran, explored the sexual health needs, barriers, and facilitators to accessing sexual health services among women at high risk of STIs in Arak. In this qualitative research study, we used a content analysis design.
View Article and Find Full Text PDFJ Am Geriatr Soc
January 2025
Department of Emergency Medicine, Weill Cornell Medical College/NewYork-Presbyterian Hospital, New York, New York, USA.
Background: An emergency department (ED) visit or hospitalization provides an opportunity to identify elder mistreatment and initiate intervention, but this seldom occurs. To address this, we developed the Vulnerable Elder Protection Team (VEPT), a novel interdisciplinary consultation service. We explored the long-term trajectories of patients receiving VEPT evaluation and intervention.
View Article and Find Full Text PDFInt J Equity Health
November 2024
Department of Politics and Public Administration/Zukunftskolleg, University of Konstanz, Konstanz, 78464, Germany.
Background: This study explored how gender inequalities in health systems influence women's experiences of obstetric violence in Ghana. Obstetric violence is recognised as a major public health concern and human rights violation. In particular, it reduces women's trust and use of health facilities for childbirth, thereby increasing the risks of maternal and neonatal mortality.
View Article and Find Full Text PDFJ Am Geriatr Soc
January 2025
Franklin County Office on Aging, Columbus, Ohio, USA.
Background: Community-dwelling older adults are at high risk for unmet social service needs. We describe a novel partnership embedding county services case managers in the Emergency Department (ED) to connect older adults to community services alongside their medical care.
Methods: Setting: A medium-sized urban ED with 55,000 patient visits a year.
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