Addressing Hispanic Veterans that live in rural area's needs to improve suicide prevention efforts

Abstract: Despite the alarming recent increase in suicide rates among Hispanic Veterans, suicide among this population remains relatively understudied and little is known about their needs and how to prevent suicide in this population. A mixed methods approach was utilized to conduct a needs assessment of community suicide prevention services and resources available to Hispanic Veterans living in rural areas in the Veterans Health Administration's Veterans Integrated Services Network (VISN) 8. Five themes related to the suicide prevention's needs and gaps in services were identified: (1) lack of adequate information; (2) disruptions in social support network; (3) limited or lack of access to services; (4) risky behaviors; and (5) natural disasters. Understanding the unique needs of Hispanic Veterans in rural communities and the gaps in services in these areas can help in the development of tailored suicide prevention efforts and potentially mitigate suicide disparities.

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