Conceptual Models of Depression in Primary Care Patients

Author:

Karasz Alison1,Garcia Nerina2,Ferri Lucia3

Affiliation:

1. Albert Einstein College of Medicine/Montefiore Medical Center,

2. Bellevue Hospital

3. Albert Einstein College of Medicine/Montefiore Medical Center

Abstract

Conventional psychiatric treatment models are based on a biopsychiatric model of depression. A plausible explanation for low rates of depression treatment utilization among ethnic minorities and the poor is that members of these communities do not share the cultural assumptions underlying the biopsychiatric model. The study examined conceptual models of depression among depressed patients from various ethnic groups, focusing on the degree to which patients’ conceptual models “matched” a biopsychiatric model of depression. The sample included 74 primary care patients from three ethnic groups screening positive for depression. The authors administered qualitative interviews assessing patients’ conceptual representations of depression. The analysis proceeded in two phases. The first phase involved a strategy called “quantitizing” the qualitative data. A rating scheme was developed and applied to the data by a rater blind to study hypotheses. The data were subjected to statistical analyses. The second phase of the analysis involved the analysis of thematic data using standard qualitative techniques. Study hypotheses were largely supported. The qualitative analysis provided a detailed picture of primary care patients’ conceptual models of depression and suggested interesting directions for future research.

Publisher

SAGE Publications

Subject

Anthropology,Cultural Studies,Social Psychology

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