Literature DB >> 28860882

Health promotion, psychological distress, and disease prevention in the workplace: a cross-sectional study of Italian adults.

Tiziana Ramaci1, Monica Pellerone1, Caterina Ledda2, Venerando Rapisarda2.   

Abstract

BACKGROUND: Job insecurity resulting from new types of employment contracts, together with organizational dynamics such as restructuring and internationalization, is emerging as an important source of organizational and individual stress, often transforming the workplace into a hostile and, above all, extremely demanding context from a psychological point of view.
MATERIALS AND METHODS: The aim of this study was to identify the possible relationships between individual and organizational dimensions of work (such as engagement, autonomy, personal and collective efficacy at work, and satisfaction) and their impact on stress levels. The survey involved 120 Italian workers: 72 females (60%) and 48 males (40%), with a mean age of 41.8 years ±7.31 years. The groups of participants were selected on the basis of employment contract type (traditional or atypical) to emphasize potential differences. The study was conducted using a set of self-administered questionnaires, including the Psychological Stress Measure and Utrecht Work Engagement Scale.
RESULTS: The data show that personal and collective efficacy at work correlates negatively with stress, which in turn correlates negatively with engagement and satisfaction. The results support the hypothesis that job insecurity could be considered a strong predictor of poor health.
CONCLUSION: The study should be considered as a preliminary assessment prior to studies of broader interventions to increase quality of life.

Entities:  

Keywords:  autonomy; efficacy; organizational process; satisfaction; stress; well-being; workers

Year:  2017        PMID: 28860882      PMCID: PMC5565380          DOI: 10.2147/RMHP.S139756

Source DB:  PubMed          Journal:  Risk Manag Healthc Policy        ISSN: 1179-1594


Introduction

The sociocultural transformations of the past decade have affected life and work contexts, prompting people to rethink life projects, values, and beliefs.1,2 Recent literature provides evidence that flexibility benefits a person and leads to healthier outcomes which include fulfillment, positive sensations, and autonomy.3–5 The literature also demonstrates a relationship between the perception of well-being in a work context and several benefits such as health improvement and reduced levels of stress. Sometimes, however, the abuse of flexibility has inevitably led to the configuration of a workplace marked by insecure working and a precarious personal life. Flexibility, which characterizes new contractual forms, has helped to reshape the relationship between the individual’s personal life and their working experience; changing the significance and centrality of work. Traditional and permanent work contracts are continually being replaced by boundless working experiences: in fact, while the “traditional” contract represents a kind of work rapport regulated by a stable full-time contract or permanent (typical) employment, the “atypical” type of employment is regulated by short-term contracts, impacting, for instance, on trainees, project workers, and occasional laborers.6,7 From this perspective, flexibility could become a negative experience because precariousness could adversely affect the employee’s quality of life, increasing psychological stress. A recent study shows that insecurity in the workplace, arising from organizational dynamics such as restructuring and internationalization, is often associated with contractual arrangements and flexibility.7 A report by the European Agency for Safety and Health at Work (EU-OSHA),51 which considers the relationship between stress and quality of life, highlights the psychosocial risk factors in the changing world of work. In addition, recent studies have introduced a distinction between objective and subjective psychosocial risk factors: the first, a concrete and objective type, is based on mobile work and characterized by flexible employment forms; the second, more intangible and subjective, arises from the worker’s perception.5,7 Several studies have investigated attitudes, business practices and working practices, and the relationships between certain health risks and workers’ distress in the workplace.8–12 In particular, research shows an inverse correlation between job flexibility and well-being.13–17 For example, a high job flexibility is deemed as a negative experience in terms of precariousness and organizational disadvantages,18 especially in minor groups (such as youth, women, and temporary workers) who experience, more than other workers, great difficulties in managing their careers19 and satisfying their professional ambitions.20 The workplace is the context where individuals spend most of their time; hence, it represents a significant part of their life. For this reason, it is essential to understand the composition of a worker’s psychological well-being because their perception of well-being influences the quality of work, relationships with others, and their performance, and also affects their attitudes and behaviors within the job context.21 Furthermore, understanding the determinants of psychological well-being is crucial to improving satisfaction and performance among employees. Studying the factors that influence the feelings and emotions of workers could also help to eliminate negative behaviors and encourage employees to have a more positive attitude at work. In particular, studies of high reliability organizations,22 security,23 and safety climates should be particularly relevant to the understanding and goal-setting that occurs in organizations.24,25 These researches, using an approach focused on both individual-level and organizational-level determinants, impact on a wide range of health, functioning, and quality-of-life outcomes. Based on these researches, the aims of this study were the following: to determine the relationship between the perception of working conditions and psychological distress among workers in Southern Italy with different types of contract, and operating in different sectors (public and private), with an objective of improving health promotion and stress prevention, and to measure the possible predictive variables of psychological stress. In accordance with the literature on the subject, the following were hypothesized: 1) the level of autonomy at work (measured by types of contract and classified under public or private categories) could influence psychological stress among participants; 2) the level of autonomy could influence work engagement and, in particular, the sense of vigor, dedication, and absorption; 3) the level of autonomy could influence the levels of satisfaction in organizational and relational contexts; 4) there would be a correlation between the individual and organizational indicators of psychological stress; and 5) the possible predictive variables of psychological stress are gender, perception of personal efficacy at work, and general level of engagement.

Materials and methods

A cross-sectional study was conducted from May to December 2016. All 120 participants in the study were administrative employees in the public or private sector. Participants were recruited in their workplace. They were informed about the study aims and procedures, and they provided written informed consent. After informed consent was obtained, questionnaires were distributed to the participants. The questionnaires were distributed by qualified researchers, and participants were given 30 minutes to complete them. The questionnaires were completed anonymously. A package of questionnaires was also distributed among managers for self-completion. It was stipulated to the respondents that the results would only be used to describe groups. Individual data would not be presented to the organizations’ officials where respondents worked. Convenience sampling was used to recruit the participants; in particular, the participants were selected consecutively in order of appearance according to their accessibility (also known as consecutive sampling). The sampling process was finished when the total number of participants (sample saturation) and/or the time limit (time saturation) were reached. Although randomization is a probabilistic process to obtain two comparable groups, the samples used in these studies are generally not representative of the target population. In fact, in the context of nonprobabilistic sampling, the likelihood of selecting some individuals from the target population is null. This type of sampling does not render a representative sample; therefore, the observed results are usually not generalizable to the target population. Still, unrepresentative samples may be useful for specific research objectives and in finding answers to particular research questions and may contribute to the generation of new hypotheses. The Internal Review Board of the Faculty of Human and Social Sciences at the Kore University of Enna approved the present research.

Measures

This study was conducted using a set of self-administered questionnaires. The instruments used were as follows: ad hoc questionnaire, Psychological Stress Measure, Utrecht Work Engagement Scale (UWES), Personal Efficacy Scale at work (EPOP), Collective Efficacy Scale at work (ECOP), and Job Satisfaction Subscale. The ad hoc questionnaire was divided into two parts. The first included several sociodemographic variables such as age, gender, and school grade. The aim of the second part was to evaluate an individual’s occupational history for possible associations with psychological stress and for the level of autonomy at work, measuring the following aspects: type of contract (such as typical or atypical); work position (managerial, employee, blue collar, and/or consultant, for example); sector (such as public administration, general government, or private institution); years of service; and the perception of autonomy with choices ranging from 1 (“no autonomy”) to 6 (“autonomy”). The Psychological Stress Measure26,27 is an instrument designed to measure stress by evaluating subjective feelings of stress without referring to “stress” or “stressors.” It is designed using 49 items drawn from descriptors generated by focus groups on stress, grouped in six clusters: Cluster I – Lost Control, Irritability; Cluster II – Psychopathological Sensations; Cluster III – Effort and Confusion; Cluster IV – Depressive Anxiety; Cluster V – Pain and Physical Problems; and Cluster VI – Hyperactivity. Respondents should mark the answer that best indicates the degree to which each statement applies to them in recent experience, using a range from 1 (“none at all”) to 4 (“a lot”). Following is an example: “Recently, that is in the last 4 or 5 days, I feel irritable, my nerves are frayed. I am impatient with people and things.” Coefficient α reliabilities for the scales have been calculated as 0.95.26,27 The UWES is an instrument designed to measure work engagement by investigating psychological conditions associated with a positive and satisfactory job.28,29 The UWES is an instrument consisting of 17 items on a seven-point scale, ranging from 0 (“never”) to 6 (“each day”), which measures the three basic dimensions of work engagement: Vigor, Dedication, and Absorption. Examples are as follows: “How frequently do you feel at your work, ‘I am bursting with energy’”; “I find the work that I do full of meaning and purpose”; “Time flies when I am working.” Scores are obtained by averaging the responses of the participants, and the highest average scores reflect higher levels of engagement. Coefficient α reliabilities for the scale have been calculated as 0.94.28,29 The EPOP and ECOP are two scales consisting of six items that measure, respectively, the perception of efficacy as an individual (EPOP) and as a team (ECOP).30 The subjects are asked to indicate their level of agreement on a scale of 7 points, ranging from 1 (“strongly disagree”) to 7 (“strongly agree”). An example of an item from EPOP is as follows: “I am always able to handle emergencies and the inevitable unforeseen factors in my work.” An example from ECOP is as follows: “Even during an emergency, the organization is able to provide customers with a high-quality service.” Coefficient α reliabilities for the scales have been calculated as 0.75 (EPOP) and 0.89 (ECOP).30 The Job Satisfaction Subscale is a test to detect a broad spectrum of psychosocial stress in an organization.31 It is formed of 22 items that measure job satisfaction and welfare at work. An example item is: “What do you think and how do you feel about your relationships with others at work?” Each item is rated on a 6-point response scale, using a range from 0 (“strong satisfaction”) to 6 (“strong dissatisfaction”). Coefficient α reliabilities for the scale have been calculated as 0.96.30

Statistical analysis

All datasets were analyzed using SPSS version 22.0 (IBM Corp., Armonk, NY, USA). Descriptive analyses were performed using the percentages of frequencies. Scores were reported as a mean and standard deviation. For bivariate analysis independent, t-tests were performed to evaluate differences in quantitative variables. Gender and age differences were assessed at a preliminary stage by means of t-tests and analysis of variance (ANOVA) for different samples. Pearson’s correlation and multiple linear regression analyses were used to assess the research hypotheses. The level of significance was set at r≤0.05.

Results

In total, 126 workers were selected to participate in the present study. All of them were asked to complete the questionnaires, which were completed by 120 workers (95% response rate). Of this total population, 72 were females (60%) and 48 were males (40%). The ages ranged from 28 to 59 years (M=41.8±7.31). As regards their working characteristics, only 10% of the participants came from managerial positions, and the whole group had a mean age of employment equal to 47.5±5.12. Table 1 shows the working characteristics of the participants.
Table 1

Sample characteristics

VariableResults
Schooling
 Secondary school87 (72.5%)
 Graduate33 (27.5%)
Type of contract
 Typical69 (57.5%)
 Atypical51 (42.5%)
Work position
 Managerial11 (9.2%)
 Employee70 (58.3%)
 Blue collar15 (12.5%)
 Consultant24 (20%)
Years of service13.7±7.92
Hours of service per day6.50±1.51
Sector
 Public86 (71.7%)
 Private34 (28.3%)
Professional area
 Defense9 (7.5%)
 Health and well-being33 (27.5%)
 Education44 (36.7%)
 Services34 (28.3%)
The results of the questionnaires highlight a statistically significant difference in relation to psychological stress. As shown in Table 2, females showed a higher level of Psychopathological Sensations (F=5.09; r<0.05); Effort and Confusion (F=7.84; r<0.01); Depressive Anxiety (F=25.22; r<0.001); and Physical Problems (F=24.39; r<0.001).
Table 2

Discrimination scores in reference to Psychological Stress

VariableDiscrimination scores Gender
Discrimination scores Type of contract
Discrimination scores sector
Male
Female
Typical
Atypical
Public
Private
M±SDM±SDM±SDM±SDM±SDM±SD
Cluster I1.48±0.5051.67±0.6831.48±6.091.67±6.221.55±0.5871.59±0.701
Cluster II1.27±0.4491.51±0.650*1.36±0.5931.49±0.5791.38±0.6171.50±0.508
Cluster III1.23±0.4951.54±0.691*1.36±0.5421.49±0.7031.34±0.5661.62±0.697*
Cluster IV1.17±0.3791.71±0.680*1.49±0.5051.49±0.7011.44±0.6061.62±0.657
Cluster V1.13±3.341.81±0.914*1.48±0.6991.61±0.9401.43±0.6951.79±1.008*
Cluster VI1.88±0.7031.81±0.7811.67±0.7002.06±0.759*1.73±0.7422.09±0.712*

Notes:

p<0.01. Cluster I = Lost control, Irritability; Cluster II = Psychopathological Sensations; Cluster III = Effort and Confusion; Cluster IV = Depressive Anxiety; Cluster V = Pain and Physical problems; Cluster VI = Hyperactivity.

As regards their Work Engagement (Table 3), males seemed to present a higher level of personal efficacy (F=24.23; r<0.001) and collective efficacy at work (F=10.01; r<0.01).
Table 3

Discrimination scores in reference to Work Engagement

VariableDiscrimination scores Gender
Discrimination scores Type of contract
Discrimination scores Sector
Male
Female
Typical
Atypical
Public
Private
M±SDM±SDM±SDM±SDM±SDM±SD
Vigor4.45±1.024.29±1.084.45±0.5924.22±1.194.35±0.944.36±1.30
Dedication4.53±1.244.23±1.354.26±1.264.47±1.374.31±1.234.46±1.49
Absorption4.03±1.1924.22±6.483.90±3.784.22±1.273.90±0.934.38±1.45
Personal Efficacy at work5.95±0.535.43±0.575.69±0.635.58±0.575.68±0.615.55±0.58
Collective Efficacy at work5.60±0.624.90±1.455.20±1.395.14±1.015.27±1.284.94±1.1
Autonomy at work4.02±1.373.89±1.514.01±1.483.83±1.433.92±1.464.00±1.45
There was a statistically significant gap between the public and the private employees in relation to one scale of UWES (Table 3), which is the Absorption dimension (F=4.76; r<0.05). The private employees (Table 2) showed a greater level of Effort and Confusion (F=5.23; r<0.05), Pain and Physical Problems (F=5.10; r<0.05), and Hyperactivity (F=5.72; r<0.05). As regards Job Satisfaction, the analysis shows the absence of significant differences (r<0.05). Regarding the first hypothesis of this research, a univariate ANOVA showed the influence of the Level of Autonomy at work on Psychological Stress. In particular, the analysis shows that as autonomy increases, a progressive reduction of psychological stress was observed in all six clusters: Lost Control and Irritability (F=8.27; r<0.001); Psychopathological Sensations (F=4.20; r<0.01); Effort and Confusion (F=8.04; r<0.001); Depressive Anxiety (F=4.65; r<0.01); Pain and Physical Problems (F=4.88; r<0.001); and Hyperactivity (F=3.97; r=0.01). Regarding the second hypothesis, a univariate ANOVA showed the influence of the Level of Autonomy on Work Engagement; in particular, the data showed that a higher level of autonomy seemed to determine an elevated sense of Vigor (F=3.80; r<0.01), Dedication (F=2.4; r<0.05), and Absorption (F=4.3; r<0.001). Regarding the third hypothesis, a univariate ANOVA test showed that a higher Level of Autonomy seemed to determine lower scores of Satisfaction for organizational processes (F=3.39; r<0.05), but a higher level of Satisfaction for relational ones (F=3.55; r<0.01). Additionally, regarding perceptions of efficacy, a Pearson’s r correlation analysis underlined the absence of a relationship between the measures of the perception of efficacy as an individual (EPOP) and as a team (ECOP); that is, efficacy to successfully master the critical demands of work situations (r>0.05). Another correlation analysis was conducted to investigate a possible relationship between individual and organizational indicators of psychological stress (the fourth hypothesis). Analysis of the data showed that Effort and Confusion (Cluster III), Depressive Anxiety (Cluster IV), and Pain and Physical problems (Cluster V) were negatively correlated with two of the three dimensions of Work Engagement: Vigor and Dedication. In addition, Psychopathological Sensations (Cluster II) and Effort and Confusion (Cluster III) were positively correlated with Job Satisfaction. Finally, Hyperactivity seemed to correlate positively with four of the five dimensions of Satisfaction: Satisfaction for Job, Structure, Process, and Relationships (Table 4).
Table 4

Correlation between the individual/organizational indicators of Psychological Stress

Psychological Stress (MSP)SCSJSSSPSRVIDEABEPOPECOP
Cluster I−0.170.08−0.18−0.10−0.04−0.37*−0.010.05−0.40*0.01
Cluster II0.050.20**0.140.030.02−0.35*−0.32*−0.11−0.090.09
Cluster III−0.020.22**−0.050.110.02−0.32*−0.19**0.08−0.51*−0.23**
Cluster IV0.010.12−0.090.09−0.17−0.33*−0.39*−0.18−0.35*−0.19**
Cluster V−0.100.08−0.16−0.06−0.18**−0.29*−0.24*−0.04−0.32*−0.18**
Cluster VI0.120.36*0.23**0.18**0.19**−0.05−0.090.140.01−0.07

Notes:

p<0.01;

p<0.05. Cluster I = Lost control; Cluster II = Psychopathological Sensations; Cluster III = Effort and Confusion; Cluster IV = Depressive Anxiety; Cluster V = Pain and Physical problems; Cluster VI = Hyperactivity.

Abbreviations: MSP, Psychological Stress Measure; SC, Satisfaction for Career; SJ, Satisfaction for Job; SS, Satisfaction for Structure; SP, Satisfaction for Process; SR, Satisfaction for Relationships; VI, Vigor; DE, Dedication; AB, Absorption; EPOP, Personal Efficacy at work; ECOP, Collective Efficacy at work.

Regarding the fifth hypothesis (possible predictors of psychological stress), regression analysis showed that the only predictor of Lost Control and Irritability (Cluster I) was the perception of personal efficacy at work (β=−0.37), explaining 23.5% of the total variance. As regards Psychopathological Sensations (Cluster II), regression analysis showed the following variables to be the predictors: gender (β=0.25) and the total level of engagement (β=−0.26), explaining 18.1% of the total variance. With regard to Effort and Confusion (Cluster III), personal efficacy at work and the total level of engagement were among the predictive variables (Table 5), explaining 36.3% of the total variance.
Table 5

Model summary of regression analysis that predicts Effort and Confusion

VariableR2Adjusted R2β not adjustedSEβtp
Gender0.600.360.080.120.060.660.51
Age0.0080.010.090.920.36
Typical/atypical contract−0.0350.17−0.03−0.210.84
Public/private sector0.3370.180.251.930.06
Years of services0.10.100.100.990.32
General Satisfaction0.0020.000.060.710.48
Personal Efficacy−0.0650.02−0.39−3.980.00
Collective Efficacy−0.0050.01−0.06−0.660.51
Engagement−0.0060.00−0.18−2.180.03

Abbreviations: SE, standard error; β, beta standardized coefficients.

As Table 6 shows, the predictors for Depressive Anxiety (Cluster IV) were the following variables: gender, age, and the total level of engagement, explaining 36.4% of the total variance.
Table 6

Model summary of regression analysis that predicts Depressive Anxiety

VariableR2Adjusted R2β not adjustedSEβtp
Gender0.600.360.360.130.282.880.01
Age0.020.010.232.270.03
Typical/atypical contract−0.140.18−0.11−0.770.44
Public/private sector0.350.180.251.910.06
Years of services0.000.100.000.010.99
General Satisfaction0.000.00−0.07−0.900.37
Personal Efficacy−0.020.02−0.13−1.280.20
Collective Efficacy−0.010.01−0.05−0.580.56
Engagement−0.010.00−0.37−4.450.00

Abbreviations: SE, standard error; β, beta standardized coefficients.

Similarly, the predictors of Pain and Physical Problems (Cluster V) were the gender variable and the total level of engagement (Table 7), explaining 31% of the total variance.
Table 7

Model summary of regression analysis that predicts Pain and Physical problems

VariableR2Adjusted R2β not adjustedSEβtp
Gender0.560.310.580.170.353.450.00
Age0.010.010.100.980.33
Typical/atypical contract0.090.240.060.380.70
Public/private sector0.340.240.191.410.16
Years of services0.140.140.111.050.30
General satisfaction−0.010.00−0.16−1.870.07
Personal efficacy−0.010.02−0.06−0.550.58
Collective efficacy−0.010.01−0.07−0.680.50
Engagement−0.010.00−0.25−2.880.01

Abbreviations: SE, standard error; β, beta standardized coefficients.

The last regression analysis showed that the general level of job satisfaction (β=0.23) can be considered the only predictor of Hyperactivity (Cluster VI), explaining 14.8% of the total variance.

Discussion

The results of this study are consistent with the indications in the literature about the interaction between an individual and the organization in ensuring well-being in the workplace.32–35 The assumption in this study is that well-being in the workplace is related to job satisfaction and this, in turn, is stimulated by the subjective skills needed to find a positive personal equilibrium within organizational contexts.36 This study shows significant differences in the measurement of job satisfaction, work engagement, and personal and collective efficacy needed to successfully master the critical demands of job situations. In particular, and in accordance with the first research hypothesis, the data show the influence of a lower level of autonomy at work on the perception of lost control, on psychopathological sensations such as effort and depressive anxiety, on irritability and consequently hyperactivity, and, above all, on the perception of physical problems. These results are consistent with other surveys that show that a worker’s energy, enthusiasm, and pride strongly influence the level of distress they may be experiencing.39 However, as amply described in the literature, it is important to examine not only job characteristics but also other variables that have an influence on stress levels, such as personal,45 family,46 and relational contexts.47 In this context, our data highlight the finding that males manifest higher levels of self-efficacy than females. This is in accordance with the literature which indicates the presence of a complex interplay between job stress and a wide range of possible approaches to mental health promotion in the workplace, including flexible working arrangements, career progression opportunities, ergonomics and the workplace environment, and an improved recognition of risk factors for poor mental health.48,49 The findings of the present study, as suggested by the second hypothesis, show that a high level of autonomy seems to influence work engagement and, in particular, to be strongly related to an elevated perception of energy and mental resilience (or vigor), a sense of significance, enthusiasm and inspiration (or dedication), and high levels of concentration and commitment in the working context (or absorption). However, the data also show that a low level of autonomy seems to reduce a sense of satisfaction in the organizational context, as suggested by the third hypothesis. This finding is in accordance with the model of Cotton and Hart,39 who studied the direct effects of stress arising from work characteristics and found that autonomy was related to organizational stress. According to the literature, individuals who manifest well-being develop satisfying relationships, and there is a significant correlation between measures of psychological distress and scores related to personal, relational, and job satisfaction.37,38 The findings of the present study, as suggested by the fourth hypothesis, are in agreement here. The data show that the perception of confusion, depressive anxiety, and physical problems are negatively correlated with vigor and dedication in the working context. Conversely, the perception of hyperactivity seems to correlate positively with satisfaction for job type, structure, process, and relationships. Britt et al40 found that job satisfaction was much more strongly associated with psychological problems than with physical complaints and very closely allied with engagement. Other research have found job satisfaction to be related to good health, positive work outcomes, perceptions of self-efficacy,41 lower work stress,42 and well-being.43 Furthermore, the literature shows that job satisfaction is correlated slightly less with depression, anxiety, self-esteem, and general mental health issues.44 On the last research hypothesis, the data show that the perception of personal efficacy at work is predictive of the tendency to lose control and be irritable. In contrast to this, being a female and having a low level of engagement seem to predict a higher level of psychopathological sensations, the presence of pain and physical problems, and the presence of depressive anxiety. A low level of engagement and personal efficacy at work can be considered as predictors of the presence of effort and confusion in job contexts. The only predictive variable of hyperactivity is a lower level of job satisfaction. The results confirm the validity of Karasek’s50 model of job decision latitude, defined as the working individual’s potential control over their tasks and conduct during the working day. According to this model, workers might even thrive under low-level stress conditions if they have autonomy, such as a high level of control over their goals. From this perspective, the demands act as a source of challenge rather than as a source of mental and physical stress. In this context, one must find ways to augment the autonomy or control of the workers while leaving productivity demands unaltered, because workers might even thrive under conditions of higher productivity goals if they possess the required level of control. While the present study provides general support for the research hypotheses, some limitations need to be noted and addressed in future research. One limitation of the present study was the use of convenience sampling methods for data collection. Second, the small sample size makes it difficult to gather a representative sample and prevents generalizations that can be externally validated. Third, the data may not reflect attitudes and concerns in other regions and sectors in Italy. For these reasons, therefore, even though the results are comparable to those observed in the literature, they should be interpreted with caution due to the nature of the participants involved. A further limitation is the use of a cross-sectional survey method. A cross-sectional survey is not sufficient to establish causal relationships, which makes it difficult to determine if psychological stress is antecedent to, linked to, or a consequence of work engagement (such as low vigor, dedication, and absorption), or if efficacy at work is antecedent or a consequence of job satisfaction. To counter the drawbacks of the cross-sectional design, and in the context of health promotion and disease prevention in the workplace, future research should be conducted in other organizational contexts with the aim of enriching the database and facilitating the identification of further individual and organizational dimensions that contribute to positive outcomes at work.

Conclusion

Health and well-being in the workplace is an increasing concern for organizations. This preoccupation is mainly attributable to the positive links that have been found between the health and well-being of employees and their productivity and performance. Because of this relationship, there are incentives for employers to intervene to support and promote the health and well-being of their employees. Depending on the intervention, there is great potential gains to outweigh the costs. In addition to raising productivity, interventions to support health promotion in the workplace can reduce the cost of health care for employees, which is particularly important in countries such as the USA where health insurance is paid directly by employers. Such interventions can also be part of a strategy to respond to duties and regulations regarding responsible employment. However, the most cited rationale for intervention in the workplace is to improve the quality of life and the productivity of workers and to reduce economic losses through absence, sickness, and disability. Examples of the kinds of interventions that have been implemented to promote health and well-being include counseling for issues such as personal, behavioral, or family problems; educational or behavioral interventions directed at stress management; and health information and assistance. The results of this study provide feedback as to how stressors are perceived by the individual and provide a useful resource for creating health and well-being in the workplace. The content of this paper is closely aligned with case studies52–55 that document the relationship between psychological stress reduction and high levels of engagement, job satisfaction, and job control. The data show that well-being in the workplace is related to people’s mental health because those who are psychologically healthy tend to have better attitudes at work and can manage their time and handle stress more effectively. The evidence suggests that individual and environmental factors are not independent of one another and, while there are numerous interventions available, a multicomponent approach is likely to be more effective in alleviating stress and increasing efficacy at work.
  14 in total

1.  Stressors, resources, and strain at work: a longitudinal test of the triple-match principle.

Authors:  Jan de Jonge; Christian Dormann
Journal:  J Appl Psychol       Date:  2006-11

2.  Organizational wellness programs: a meta-analysis.

Authors:  Kizzy M Parks; Lisa A Steelman
Journal:  J Occup Health Psychol       Date:  2008-01

3.  Workplace wellness programs can generate savings.

Authors:  Katherine Baicker; David Cutler; Zirui Song
Journal:  Health Aff (Millwood)       Date:  2010-01-14       Impact factor: 6.301

4.  Overall well-being as a predictor of health care, productivity, and retention outcomes in a large employer.

Authors:  Lindsay E Sears; Yuyan Shi; Carter R Coberley; James E Pope
Journal:  Popul Health Manag       Date:  2013-03-12       Impact factor: 2.459

5.  Identity development, intelligence structure, and interests: a cross-sectional study in a group of Italian adolescents during the decision-making process.

Authors:  Monica Pellerone; Alessia Passanisi; Mario Filippo Paolo Bellomo
Journal:  Psychol Res Behav Manag       Date:  2015-08-20

6.  Parenting, identity development, internalizing symptoms, and alcohol use: a cross-sectional study in a group of Italian adolescents.

Authors:  Monica Pellerone; Giacomo Tolini; Caterina Polopoli
Journal:  Neuropsychiatr Dis Treat       Date:  2016-07-18       Impact factor: 2.570

7.  The influence of parenting on maladaptive cognitive schema: a cross-sectional research on a group of adults.

Authors:  Monica Pellerone; Calogero Iacolino; Giuseppe Mannino; Ivan Formica; Simona Maria Zabbara
Journal:  Psychol Res Behav Manag       Date:  2017-02-01

8.  Gender stereotypes in occupational choice: a cross-sectional study on a group of Italian adolescents.

Authors:  Tiziana Ramaci; Monica Pellerone; Caterina Ledda; Giovambattista Presti; Valeria Squatrito; Venerando Rapisarda
Journal:  Psychol Res Behav Manag       Date:  2017-04-18

9.  Attitude of Health Care Workers (HCWs) toward Patients Affected by HIV/AIDS and Drug Users: A Cross-Sectional Study.

Authors:  Caterina Ledda; Francesca Cicciù; Beatrice Puglisi; Tiziana Ramaci; Giuseppe Nunnari; Venerando Rapisarda
Journal:  Int J Environ Res Public Health       Date:  2017-03-09       Impact factor: 3.390

10.  Posttraumatic stress symptoms, dissociation, and alexithymia in an Italian sample of flood victims.

Authors:  Giuseppe Craparo; Alessio Gori; Elvira Mazzola; Irene Petruccelli; Monica Pellerone; Giuseppe Rotondo
Journal:  Neuropsychiatr Dis Treat       Date:  2014-11-28       Impact factor: 2.570

View more
  9 in total

1.  Employability and Job Insecurity: The Role of Personal Resources on Work-Related Stress.

Authors:  Tiziana Ramaci; Palmira Faraci; Giuseppe Santisi; Giusy Danila Valenti
Journal:  Eur J Psychol       Date:  2021-05-31

2.  Editorial: Occupational Medicine: Disease Risk Factors and Health Promotion.

Authors:  Vladimir Jurisic; Caterina Ledda; Nicola Mucci; Silvio Tafuri; Luigi Vimercati
Journal:  Front Public Health       Date:  2022-01-25

3.  Editorial: Occupational risks of healthcare personnel.

Authors:  Helena C Maltezou; Begoña Martínez-Jarreta; Venerando Rapisarda; Caterina Ledda
Journal:  Front Public Health       Date:  2022-09-21

4.  A Comparison of the Ability Emotional Intelligence of Head Teachers With School Teachers in Other Positions.

Authors:  María José Gutiérrez-Cobo; Rosario Cabello; Juan Rodríguez-Corrales; Alberto Megías-Robles; Raquel Gómez-Leal; Pablo Fernández-Berrocal
Journal:  Front Psychol       Date:  2019-04-17

5.  Straining at Work and Its Relationship with Personality Profiles and Individual Consequences in Healthcare Workers (HCWs).

Authors:  Tiziana Ramaci; Massimiliano Barattucci; Francesca Vella; Paola Senia; Emanuele Cannizzaro; Alessandro Scorciapino; Caterina Ledda; Andrea De Giorgio; Venerando Rapisarda
Journal:  Int J Environ Res Public Health       Date:  2020-01-17       Impact factor: 3.390

6.  Mindfulness-Based IARA Model® Proves Effective to Reduce Stress and Anxiety in Health Care Professionals. A Six-Month Follow-Up Study.

Authors:  Massimiliano Barattucci; Anna Maria Padovan; Ermanno Vitale; Venerando Rapisarda; Tiziana Ramaci; Andrea De Giorgio
Journal:  Int J Environ Res Public Health       Date:  2019-11-12       Impact factor: 3.390

7.  Night-Time Shift Work and Related Stress Responses: A Study on Security Guards.

Authors:  Emanuele Cannizzaro; Luigi Cirrincione; Walter Mazzucco; Alessandro Scorciapino; Cesare Catalano; Tiziana Ramaci; Caterina Ledda; Fulvio Plescia
Journal:  Int J Environ Res Public Health       Date:  2020-01-15       Impact factor: 3.390

8.  Professional Social Media Usage and Work Engagement Among Professionals in Finland Before and During the COVID-19 Pandemic: Four-Wave Follow-Up Study.

Authors:  Reetta Oksa; Markus Kaakinen; Nina Savela; Jari J Hakanen; Atte Oksanen
Journal:  J Med Internet Res       Date:  2021-06-15       Impact factor: 5.428

9.  Home Working and Physical Activity during SARS-CoV-2 Pandemic: A Longitudinal Cohort Study.

Authors:  Venerando Rapisarda; Carla Loreto; Laura De Angelis; Giuditta Simoncelli; Claudia Lombardo; Riccardo Resina; Nicola Mucci; Agata Matarazzo; Luigi Vimercati; Caterina Ledda
Journal:  Int J Environ Res Public Health       Date:  2021-12-10       Impact factor: 3.390

  9 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.