Gender differences in risks of suicide and suicidal behaviors in the USA: a narrative review

Abstract: Purpose of Review: We review recent research (2018-2023) on gender differences in suicidal behaviors (i.e., suicidal ideations and attempts, death by suicide). We examine research studies in the following areas: developmental period, substance use, and special populations (Veterans, sexual and gender minorities). Recent Findings: Novel Results were found in these different areas. For example, suicide rates for female youth are increasing at a faster rate relative to male youth. Further, some evidence suggests that heavy alcohol use/binge drinking is a significant and growing risk factor for suicidal behaviors in women. Military service may be a more significant risk factor for suicidal behaviors among male Veterans compared to female Veterans. Additionally, suicide rates are rising for gender minority youth/young adults. Recent research on gender differences in suicide outcomes demonstrates Findings that align with previous research, as well as new insights on this important topic.

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