期刊论文详细信息
Frontiers in Psychiatry
The language of healthcare worker emotional exhaustion: A linguistic analysis of longitudinal survey
Psychiatry
Kathryn C. Adair1  J. Bryan Sexton1  Franz F. Belz2  Allan S. Frankel3  Joshua Proulx3 
[1] Duke Center for Healthcare Safety and Quality, Duke University Health System, Durham, NC, United States;Duke School of Medicine, Duke University, Durham, NC, United States;Safe and Reliable Healthcare, Evergreen, CO, United States;
关键词: burnout;    emotional exhaustion;    stress;    well-being;    LIWC;    linguistic analyses;    healthcare worker (HCW);    healthcare quality;   
DOI  :  10.3389/fpsyt.2022.1044378
 received in 2022-09-14, accepted in 2022-11-30,  发布年份 2022
来源: Frontiers
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【 摘 要 】

ImportanceEmotional exhaustion (EE) rates in healthcare workers (HCWs) have reached alarming levels and been linked to worse quality of care. Prior research has shown linguistic characteristics of writing samples can predict mental health disorders. Understanding whether linguistic characteristics are associated with EE could help identify and predict EE.ObjectivesTo examine whether linguistic characteristics of HCW writing associate with prior, current, and future EE.Design, setting, and participantsA large hospital system in the Mid-West had 11,336 HCWs complete annual quality improvement surveys in 2019, and 10,564 HCWs in 2020. Surveys included a measure of EE, an open-ended comment box, and an anonymous identifier enabling HCW responses to be linked across years. Linguistic Inquiry and Word Count (LIWC) software assessed the frequency of one exploratory and eight a priori hypothesized linguistic categories in written comments. Analysis of covariance (ANCOVA) assessed associations between these categories and past, present, and future HCW EE adjusting for the word count of comments. Comments with <20 words were excluded.Main outcomes and measuresThe frequency of the linguistic categories (word count, first person singular, first person plural, present focus, past focus, positive emotion, negative emotion, social, power) in HCW comments were examined across EE quartiles.ResultsFor the 2019 and 2020 surveys, respondents wrote 3,529 and 3,246 comments, respectively, of which 2,101 and 1,418 comments (103,474 and 85,335 words) contained ≥20 words. Comments using more negative emotion (p < 0.001), power (i.e., references relevant to status, dominance, and social hierarchies, e.g., own, order, and allow) words (p < 0.0001), and words overall (p < 0.001) were associated with higher current and future EE. Using positive emotion words (p < 0.001) was associated with lower EE in 2019 (but not 2020). Contrary to hypotheses, using more first person singular (p < 0.001) predicted lower current and future EE. Past and present focus, first person plural, and social words did not predict EE. Current EE did not predict future language use.ConclusionFive linguistic categories predicted current and subsequent HCW EE. Notably, EE did not predict future language. These linguistic markers suggest a language of EE, offering insights into EE’s etiology, consequences, measurement, and intervention. Future use of these findings could include the ability to identify and support individuals and units at high risk of EE based on their linguistic characteristics.

【 授权许可】

Unknown   
Copyright © 2022 Belz, Adair, Proulx, Frankel and Sexton.

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