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Depression is strongly associated with risk for suicidal behaviors. However, depression is a highly heterogeneous condition (i.e. there are more than 200 combinations of DSM-5-TR depressive symptoms to correspond to a depression diagnosis). Limited research to date has taken an empirical approach to see how people cluster together based on their classification of depressive symptoms and whether people in certain classes are more likely to report suicide outcomes than other classes. This analysis leverages the National Survey on Drug Use and Health and examines classes of depressive symptoms to explore differences in suicide-related outcomes by class among adults endorsing depressive symptoms (n = 41 969).
Methods
We used latent class analysis (LCA) to identify classes of individuals’ DSM-5 depressive symptoms presentation and then explored differences in suicide-related outcomes (i.e. suicide plans, suicide attempts) by the resulting classes.
Results
A four-class model was determined to optimize the fit criteria. Class 3 (high depressive symptoms) had significantly greater rates of suicide-related outcomes, followed by class 1 (high depressed mood and moderate worthlessness), with classes 4 and 2 having significantly lower rates of suicide-related outcomes.
Conclusions
The use of LCA provided valuable findings on the importance of leveraging both a multi-faceted assessment of depressive symptoms to identify cases where a high number of depressive symptoms are endorsed, and review of the specific symptoms endorsed. Worthlessness, in particular, may be of particular value to focus on within the context of suicide prevention.
People often find statistics confusing because anecdotes more effectively tell stories and no one’s direct experience matches the statistical realities. The younger any individual is introduced to any drug the higher the risk of developing dependence. This is especially true for marijuana because it affects neurodevelopment in early adolescence. However, Horwood has shown than the lifetime rate of marijuana dependence does not accurately portray the overall progression of use because the majority of those who ever become dependent discontinue or reduce use sufficiently to no longer meet the DSM criteria for Cannabis Use Disorder (CUD). While 43% of those with onset of marijuana use at 13 years old meet criteria for CUD at some time by age 30, only 15% are dependent during the previous year at 30. The generally accepted rate of CUD for those 12 and older who have ever used marijuana is approximately 9%, compared to a 15% dependence rate for alcohol. The more frequently individuals use marijuana, the more they use on each occasion. The increased rates of marijuana use in Conduct Disorder (CD), Antisocial Personality Disorder (ASPD) and Attention Deficit Hyperactivity Disorder (jsADHD) are discussed.
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