The aim of this study was to determine the level of self-harm behaviors among adolescents in the general population (students of secondary schools in Zagreb, Croatia), as well as to determine if the level of self-harm behaviors differed according to financial circumstances of the family and marital status of the parents. The study was conducted in 701 adolescents (male and female, age range 14 to 19 years). A specially designed questionnaire that included family and demographic data was used to determine the family financial circumstances. The Scale of Auto-Destructiveness measuring instrument was used to assess the level self-harm. Study results revealed that 87.3% of adolescents indicated average levels of self-harm, whereas above-average and high above-average self-harm was indicated in 12.7% of the adolescents. Results also showed that single-parent families significantly differentiated the level of self-harm among adolescents of both genders, whereas financial deprivation (perception of financial stress) partially differentiated these levels. Practical implications of this study emphasize the importance of social support to parents of adolescents grown up in single-parent and/or financially challenged families.

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http://dx.doi.org/10.20471/acc.2017.56.03.14DOI Listing

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