Applied Racial/Ethnic Healthcare Disparities Research Using Implicit Measures
Author(s) -
Nao Hagiwara,
John F. Dovidio,
Jeff Stone,
Louis A. Penner
Publication year - 2020
Publication title -
social cognition
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.181
H-Index - 76
eISSN - 1943-2798
pISSN - 0278-016X
DOI - 10.1521/soco.2020.38.supp.s68
Subject(s) - implicit association test , prejudice (legal term) , ethnic group , psychology , health care , implicit attitude , health equity , social psychology , association (psychology) , implicit bias , cognition , social cognition , cognitive bias , applied psychology , clinical psychology , psychotherapist , psychiatry , political science , law
Many healthcare disparities studies use the Implicit Association Test (IAT) to assess bias. Despite ongoing controversy around the IAT, its use has enabled researchers to reliably document an association between provider implicit prejudice and provider-to-patient communication (provider communication behaviors and patient reactions to them). Success in documenting such associations is likely due to the outcomes studied, study settings, and data structure unique to racial/ethnic healthcare disparities research. In contrast, there has been little evidence supporting the role of providers’ implicit bias in treatment recommendations. Researchers are encouraged to use multiple implicit measures to further investigate how, why, and under what circumstances providers’ implicit bias predicts provider-to-patient communication and treatment recommendations. Such efforts will contribute to the advancement of both basic social psychology/social cognition research and applied health disparities research: a better understanding of implicit social cognition and a more comprehensive identification of the sources of widespread racial/ethnic healthcare disparities, respectively.
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