BACKGROUND: Sex, race, and age disparities in pain assessment and treatment have been reported in the literature. However, less is known about how these demographic characteristics influence nurses' assessment of the emotional experiences of patients who are in pain. OBJECTIVES: To investigate the influence of patient demographic characteristics and facial expressions on nurses' assessment of patient mood in the context of pain. DESIGN: A cross-sectional study employing Virtual Human (VH) technology and lens model methodology. SETTINGS: The current study was delivered via the internet. PARTICIPANTS: Participants consisted of 54 registered nurses currently engaged in clinical practice. Nurses were recruited from healthcare settings across the United States. METHODS: Nurses viewed 32 patient vignettes consisting of a video clip of the VH patient and text-based clinical summary information describing a post-surgical context. Patient sex, race, age, and facial expression of pain were systematically manipulated across vignettes. Participants made positive and negative mood assessment ratings on computerized visual analogue scales. Idiographic multiple regression analyses were used to examine the patient characteristics that were significant predictors of nurses' assessment ratings. Nomothetic paired samples t-tests were used to compare ratings within cue for the entire sample. RESULTS: The results of idiographic and nomothetic analyses indicated that VH sex, race, age, and facial expression cues were significant predictors of the mood assessment ratings of many nurses. The age cue had the largest impact among the demographic variables. CONCLUSIONS: The results of the current study suggest that patient demographic characteristics and facial expressions may influence how nurses assess patient emotional status in the clinical pain context. These findings may lead to greater awareness by individual nurses and nursing administrators about the influence of patient demographic characteristics on clinical decision-making. Future research is needed to better understand these relationships, with the ultimate goal of improving patient care.
BACKGROUND: Sex, race, and age disparities in pain assessment and treatment have been reported in the literature. However, less is known about how these demographic characteristics influence nurses' assessment of the emotional experiences of patients who are in pain. OBJECTIVES: To investigate the influence of patient demographic characteristics and facial expressions on nurses' assessment of patient mood in the context of pain. DESIGN: A cross-sectional study employing Virtual Human (VH) technology and lens model methodology. SETTINGS: The current study was delivered via the internet. PARTICIPANTS: Participants consisted of 54 registered nurses currently engaged in clinical practice. Nurses were recruited from healthcare settings across the United States. METHODS: Nurses viewed 32 patient vignettes consisting of a video clip of the VH patient and text-based clinical summary information describing a post-surgical context. Patient sex, race, age, and facial expression of pain were systematically manipulated across vignettes. Participants made positive and negative mood assessment ratings on computerized visual analogue scales. Idiographic multiple regression analyses were used to examine the patient characteristics that were significant predictors of nurses' assessment ratings. Nomothetic paired samples t-tests were used to compare ratings within cue for the entire sample. RESULTS: The results of idiographic and nomothetic analyses indicated that VH sex, race, age, and facial expression cues were significant predictors of the mood assessment ratings of many nurses. The age cue had the largest impact among the demographic variables. CONCLUSIONS: The results of the current study suggest that patient demographic characteristics and facial expressions may influence how nurses assess patient emotional status in the clinical pain context. These findings may lead to greater awareness by individual nurses and nursing administrators about the influence of patient demographic characteristics on clinical decision-making. Future research is needed to better understand these relationships, with the ultimate goal of improving patient care.
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