The questionnaire was filled out by 514 respondents, but after eliminating those who did not meet all the criteria for inclusion in the study, inadequate answers, and outliers, 400 respondents were included in the final analysis.
3.4. Correlations of Sociodemographic, Work-Related, and COVID-19-Related Characteristics with Burnout Syndrome Dimensions
Correlations between the sociodemographic characteristics of the respondents and the dimensions of burnout syndrome are shown in
Table 4.
Emotional exhaustion was significantly positively related to gender (r = 0.38, p < 0.01), while it was significantly negatively related to socioeconomic status (r = −0.19, p < 0.01) and self-assessment of health condition (r = −0.21, p < 0.01). The findings indicated that emotional exhaustion was greater in women and that emotional exhaustion increased the lower the socioeconomic status of the respondents and the worse the health condition.
Depersonalization was significantly positively related to gender (r = 0.18, p < 0.01) and negatively related to the age of the respondents (r = −0.11, p < 0.01) and the number of children (r = −0.17, p < 0.01). The findings indicated that with the female gender come more experiences of depersonalization and that depersonalization decreased with the increase in the age of the respondents and with the increase in the number of their children.
Personal accomplishment was significantly positively related to the age of the respondents (r = 0.17,
p < 0.01), the number of children (r = 0.22,
p < 0.01), the number of household members (r = 0.21,
p < 0.01), and the religiosity of the respondents (r = 0.14,
p < 0.01). The findings indicated that the experience of personal accomplishment increased with the age of the respondents, with the number of their children, with the growth in the number of their households, and with the increase in their religiosity. Also, with the decreasing age of the respondents, the decreasing number of children they have, the decreasing number of their household members, and the reduction in their religiosity, the perception of their personal accomplishment decreased (
Table 4).
Table 5 shows the correlations between working conditions and dimensions of burnout syndrome.
Emotional exhaustion was most significantly related to the answer to the question, “Do you have enough time to rest after work?” (r = 0.38, p < 0.01). The correlation with the work environment was most unfavorable (r = −0.31, p < 0.01), followed by the respondent’s interaction with contaminated materials during work (r = −0.22, p < 0, 01), and then working status (r = −0.15, p < 0.01). These findings indicated that emotional exhaustion was greater when respondents estimated that they did not have enough time to rest after work when they worked in a COVID-19 zone, came into contact with contaminated material, and were employed on a full-time, permanent basis (i.e., for an indefinite period of time). Emotional exhaustion was positively related to the occupation (r = 0.15, p < 0.01), which indicated that medical technicians experienced greater exhaustion than doctors. Job dislocation (r = 0.13, p < 0.01) indicated that exhaustion was greater in respondents who were transferred to other departments due to the pandemic, as well as those who carried out shift work (r = 0.10, p < 0.05), which indicated that respondents who work in addition to day and night shifts experienced greater exhaustion than those who only work day shifts.
Depersonalization was significantly negatively related to the mentioned work environment variable (r = −0.26, p < 0.01) and then to work status (r = −0.13, p < 0.01), while it was positively related to lack of time for rest (r = 0.13, p < 0.01) and work that includes night shifts (r = 0.13, p < 0.01). These findings indicated that depersonalization was greater in subjects who worked in a COVID-19 zone compared to subjects who worked in regular clinical conditions, that depersonalization was greater in employees on a full-time permanent basis, that depersonalization in subjects increased with the strengthening of the feeling that they lack time for rest after work, and that respondents who also work night shifts have more depersonalization than respondents who only work day shifts.
The experience of personal accomplishment was significantly positively related to the number of years of service (r = 0.16,
p < 0.01). The findings indicated that with increasing length of service among respondents, their experience of personal accomplishment strengthens (
Table 5).
Table 6 shows the correlations between the characteristics associated with COVID-19 and burnout syndrome dimensions.
Emotional exhaustion had a significant negative correlation with the variable operationalized by a question related to the existence of concern that the respondent will infect his or her household with coronavirus (r = −0.32, p < 0.01), then with a question related to difficulties with sleep (r = −0.35, p < 0.01), as well as with the question of increasing the use of anxiolytics (r = −0.20, p < 0.01), and with the question related to the increase in cigarette consumption (r = −0.10, p < 0.05). It was also negatively related to the question of whether the respondent belongs to a risk group due to age or chronic disease (r = −0.16, p < 0.01), as well as whether the respondent has been vaccinated (r = −0.11, p < 0.05). The findings showed that the increase in emotional exhaustion in the respondents occurred together with an increase in their concern that they would infect their household, then with the increase in their sleeping difficulties, with the increase in the use of anxiolytics, and in the case of smokers, with the inability to increase the consumption of cigarettes. Furthermore, emotional exhaustion was higher in respondents who belong to the risk group due to age or chronic illness, as well as in those who have not been vaccinated.
Depersonalization had a significant negative correlation with the variable that was operationalized by a question related to the existence of respondents’ concern that their household will be infected with coronavirus (r = −0.16, p < 0.01), then with a question related to difficulties with sleep (r = −0.13, p < 0.01), and also with the question related to the increase in cigarette consumption (r = −0.10, p < 0.05). These findings indicate that the growth of depersonalization in the respondents occurred together with the increase in their concern that they will infect their household, with the occurrence of sleeping difficulties, and in smokers who increased cigarette consumption.
There were no significant correlations between variables related to COVID-19 and personal accomplishment as a dimension of burnout syndrome (
Table 6).
3.5. Regression Analyses of the Dimensions of Burnout Syndrome Based on All Examined Variables
The following three tables (
Table 7,
Table 8 and
Table 9) show the results of the multiple hierarchical regression analysis of the dimensions of burnout based on all the characteristics examined in this research (stepwise method). In each regression analysis, only statistically significant predictors are presented in order according to the significance of the t-statistic (
p-value). Multicollinearity was assessed using variance inflation factor (VIF) tests, and no problems were indicated, as the values for VIF in all three regression models of burnout dimensions were less than 5. Also, the values of Durbin–Watson statistics in all three regression models were within the limits of 1.5 to 2.5, which indicates that there were no autocorrelation problems.
Table 7 shows the results of the regression analysis of emotional exhaustion as a dimension of burnout syndrome. Seven significant predictors of emotional exhaustion were singled out. The regression model explains 37% of the variance in emotional exhaustion (adj. R
2 = 0.37,
p < 0.05).
The gender of the subject was the most significant predictor of emotional exhaustion as a dimension of burnout syndrome (ß = 0.27,
p < 0.01). The findings indicate that women had more emotional exhaustion as a dimension of burnout. The second significant predictor for explaining the variance in emotional exhaustion was the answer to the specific question of whether the respondent had enough time to rest after work. When respondents estimated that they did not have enough time to rest after work, their emotional exhaustion was higher (ß = 0.23,
p < 0.01). The respondent’s answer to the question: Have you had problems sleeping since the beginning of the epidemic? (1. Yes, or 2. No) was the next most significant predictor for explaining the variance in emotional exhaustion (ß = −0.17,
p < 0.01). The findings indicated that respondents who had sleep problems during the pandemic experienced more emotional exhaustion. The work environment was a significant predictor of emotional exhaustion as a dimension of burnout (ß = −0.14,
p < 0.01). Emotional exhaustion was lower if the respondents worked in regular clinical conditions and not in the COVID-19 zone. Working in the COVID-19 zone predicted greater emotional exhaustion. The subject’s health condition was a significant predictor of emotional exhaustion as a dimension of burnout (ß = −0.12,
p < 0.01). The findings indicated that, with a lower assessment of the health status of the subjects, their emotional exhaustion was greater. The answer to the question, “Are you worried about infecting your household with the coronavirus?” (1. Yes, or 2. No) in this model represented a significant predictor of emotional exhaustion as a dimension of burnout at work (ß = −0.11,
p < 0.01). The findings indicated that respondents who were worried about infecting their household experienced more emotional exhaustion. Work status was also a significant predictor of emotional exhaustion (ß = −0.14,
p < 0.05). The findings indicated that respondents who have a permanent job contract had less emotional exhaustion at work compared to employees who do not have a permanent job (temporary employees, interns, or volunteers) (
Table 7).
Table 8 shows the regression analysis of depersonalization as a dimension of burnout syndrome, which resulted in a model with five statistically significant predictors. The depersonalization regression model explains approximately 14% of its variance (adj. R
2 = 0.14,
p < 0.05).
In this model, the number of children the respondents have was a significant predictor of depersonalization as a dimension of burnout syndrome, which explained most of its variance in the model (ß = −0.25,
p < 0.01). The findings indicated that the more children the respondents had, the weaker their experience of depersonalization at work. The work environment was the next significant predictor of depersonalization as a dimension of burnout (ß = −0.18,
p < 0.01). Depersonalization was less if the respondents worked in regular clinical conditions and not in a COVID-19 zone. Working in a COVID-19 zone predicted greater depersonalization. Gender was the next significant predictor of depersonalization as a dimension of burnout syndrome (ß = 0.16,
p < 0.01). The findings indicated that the experience of depersonalization was more pronounced in female respondents. Work status was a significant predictor of depersonalization as a dimension of burnout (ß = −0.13,
p < 0.01). The findings indicated that the respondents who had a permanent job (i.e., a permanent contract) experienced less depersonalization compared to employees who did not have a permanent job (temporary employees, interns, or volunteers). As with the dimension of emotional exhaustion, respondents who were worried about infecting their household members with coronavirus experienced more depersonalization (ß = −0.09,
p < 0.05) (
Table 8).
Table 9 shows the results of the regression analysis of personal accomplishment as a dimension of burnout syndrome. Five significant predictors of personal accomplishment were singled out. The regression model explains 10% of the variance in personal accomplishment (adj. R
2 = 0.10,
p < 0.05). While the R
2 value for personal accomplishment (
Table 9) was low (0.10), this model provides exploratory insights into predictors of this burnout dimension. However, these findings should be interpreted cautiously and verified through further research.
The age of the respondent was the first significant predictor of personal accomplishment as a dimension of burnout syndrome, and in the given model, it explained most of its variance (ß = 0.21,
p < 0.01). The older the respondents, the more favorable their experience of personal accomplishment at work was. The number of household members with whom the respondents live was a significant predictor of personal accomplishment (ß = 0.18,
p < 0.01). The findings indicated that with the increase in the number of household members, the respondents’ perception of their personal efficiency at work also increased. The answer to the question “How would you rate your level of religiosity on a scale of 1 to 5”, where the number 1 means “I am not religious at all” and the number 5 means “I am very religious”, was a significant predictor of personal accomplishment (ß = 0.12,
p < 0.01). The findings indicated that with an increase in the degree of religiosity, the respondents’ experience of personal accomplishment increased. The findings also indicated the following: with weaker religiosity, the respondents’ experience of personal efficiency at work also weakened. Socioeconomic status was a significant predictor of personal accomplishment (ß = 0.11,
p < 0.01). The findings indicated that with higher socioeconomic status, the experience of personal accomplishment also increased. The reverse is also true: the lower the socioeconomic status of the respondents, the weaker their perception of personal accomplishment. The work status of the respondents was a significant predictor of personal accomplishment (ß = 0.11,
p < 0.05). The findings indicated that respondents who do not have a permanent job had a more favorable experience of personal accomplishment than respondents who have a permanent job (
Table 9).
To facilitate understanding, the most relevant correlations between MBI dimensions and sociodemographic/work-related/COVID-19-related factors are summarized below:
Emotional Exhaustion:
- -
Significantly associated with female gender (β = 0.27, p < 0.01), lack of time to rest (β = 0.23, p < 0.01), and sleep problems (β = −0.17, p < 0.01). HCWs working in COVID-19 frontline zones (β = −0.14, p < 0.01) reported higher emotional exhaustion.
Depersonalization:
- -
Higher among HCWs with fewer children (β = −0.20, p < 0.01) and those working in COVID-19 frontline zones (β = −0.18, p < 0.01). Significantly associated with temporary employment (β = −0.13, p < 0.01).
Personal Accomplishment:
- -
Positively associated with older age (β = 0.21, p < 0.01), number of household members (β = 0.18, p < 0.01), and religiosity (β = 0.12, p < 0.01).
3.6. Severity of Burnout Dimensions and Group Comparisons
Burnout severity was assessed using the MBI. Mean scores for burnout dimensions were:
Emotional exhaustion: M = 36.03, SD = 11.51.
Depersonalization: M = 8.92, SD = 6.40.
Personal accomplishment: M = 37.45, SD = 6.32.
Gender Differences:
Female HCWs reported significantly higher emotional exhaustion (M = 39.19, SD = 9.89) than males (M = 29.88, SD = 11.98; p < 0.05).
Age and Experience Comparisons:
Younger HCWs (≤30 years) experienced higher emotional exhaustion (M = 35.44, SD = 10.50) compared to older workers (>30 years; M = 36.16, SD = 11.73; p < 0.05).
There was no significant difference in years of experience when it comes to depersonalization and emotional exhaustion. Less experienced HCWs (<10 years) reported similar depersonalization and exhaustion to those HCWs with >10 years of service.