Correlates of perceived military to civilian transition challenges among Canadian Armed Forces Veterans

Abstract: Introduction: Analyses of the Canadian Armed Forces Transition and Well-Being Survey (CAFTWS) were conducted to identify the most prominent challenges faced by Canadian Armed Forces (CAF) Veterans during their military to civilian transition, and to assess the associations of various characteristics, including release type and health status, with experiencing such challenges. Methods: Prevalence estimates and logistic regression analyses were computed on data from the CAFTWS, which was administered in 2017 to 1,414 Regular Force Veterans released from the CAF in the previous year. Results: The two (of seven) perceived transition challenges with the strongest associations with difficult post-military adjustment were loss of military identity (adjusted odds ratio [AOR] = 5.4) and financial preparedness (AOR = 2.3). In adjusted regression analyses, Veterans who had a non-commissioned rank, primarily served in the army, 10–19 years of service, a medical release, and poor physical or mental health, were more likely to report loss of military identity. Veterans who had a junior non-commissioned rank, a medical release, and poor physical or mental health were more likely to report challenges with financial preparedness. Furthermore, significant interaction effects between Veterans’ release type and their health status were observed. Discussion: This study extends prior research to inform ongoing efforts to support the well-being of CAF members adjusting to post-service life. Findings emphasize the importance of preparing transitioning service members and civilian communities for the social identity challenges they may encounter. Findings also support the value of programs and services that help prepare transitioning service members with managing finances, finding education and employment, relocating, finding health care providers, and understanding benefits and services.

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