Motivation and job satisfaction of community health workers in Ethiopia: A mixed-methods approach.

Author:

Ejigu Yohannes1ORCID,Abera Netsanet2,Haileselassie Werissaw3,Berhanu Negalign4,Haile Biniyam Tadesse1,Nigatu Frehiwot5,Tewfik Nurhan6,Kiflie Yibeltal1,Medhin Girmay7,Walelign Fasil8,Demissie Mekdes9,Tigabu Setegn10,Taddesse Daniel11,Dadi Tegene Legese12,Teklu Alula11

Affiliation:

1. Jimma University, Faculty of Public Health, Department of Health Policy and Management

2. Institute of Public Health, Hawassa University, Hawassa, Ethiopia

3. Addis Ababa University School of Public Health

4. Jimma University, Faculty of Public Health, department of Health Policy and and management

5. International Institute for Primary Health Care-Ethiopia

6. International Institute for Primary Health Care

7. Addis Ababa University, Aklilu Lemma Institute of Pathobiology

8. Wollo University, School of Public Health

9. Monitoring, Evaluation, Research and quality Improvement (MERQ), Addis Ababa Office

10. Monitoring, Evaluation, Research and Quality improvement (MERQ) Plc. Addis Ababa Officei

11. Monitoring, Evaluation, Research and Quality improvement (MERQ) Plc. Addis Ababa Office

12. School of Public Health, Hawassa University

Abstract

Abstract Background: Ethiopia has been providing health care to its rural population since 2004 using female Community Health Workers called Health Extension Workers (HEWs). The HEWs are credited with several achievements in improving the country's health indicators. However, information about the HEWs' motivation and job satisfaction is limited. The aim of this study was to assess the HEWs' motivation and job satisfaction, as well as the factors that influence them. Methods: A mixed-methods study was nested within a national health extension program assessment conducted from March 01 to May 31, 2019. A structured questionnaire which looked at motivation and satisfaction with Likert type single-question and multiple-item measures was used to collect quantitative data from 584 HEWs. Focus group discussion and in-depth interviews were used to gather qualitative data. Means and percentages were used to descriptively summarize important variables. Linear regression was used to identify factors associated with job satisfaction. The qualitative data was analysed thematically. Result: Overall, 48.6% of HEWs were satisfied with their jobs, with a mean score of 2.5 out of 4.0. The result showed a high level of satisfaction with autonomy (72%), relationships with co-workers (67%), and recognition (56%). Low level of satisfaction was linked to pay, and benefits (13%); opportunities for promotion (29%); and education (34%). Regression analysis showed that HEWs in the age category of 30 years and older had lower satisfaction scores as compared to HEWs in the age category of 18 to 24 years (adjusted β = -7.71, 95% CI: -14.42, -0.99). The qualitative result revealed that desire to help the community, recognition or respect gained from the community, and achievement were the major motivating factors. In contrast, inadequate pay and benefit packages, limited education and career advancement opportunities, workload, work environment, limited supportive supervision, and absence of opportunity to change workplace were the demotivating factors.Conclusion: The overall job satisfaction of HEWs was low; extrinsic factors, such as inadequate pay and benefits, limited education, and career advancement opportunities were the major sources of demotivation. Policy makers and human resource managers should revise their human resource policies and guidelines to address the main sources of low level of job satisfaction and demotivation.

Publisher

Research Square Platform LLC

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