by: lynn a. agre, mph ph.d. candidate, rutgers university, school of social work

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Action: Does Adolescent Action: Does Adolescent Self-Rated Risk Self-Rated Risk Evaluation Predict Evaluation Predict Deleterious Decision Deleterious Decision Making? Making? By: Lynn A. Agre, MPH Ph.D. Candidate, Rutgers University, School of Social Work American Public Health Association November, 2006

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When Intention Precedes Action: Does Adolescent Self-Rated Risk Evaluation Predict Deleterious Decision Making?. By: Lynn A. Agre, MPH Ph.D. Candidate, Rutgers University, School of Social Work American Public Health Association November, 2006. Introduction. - PowerPoint PPT Presentation

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Page 1: By: Lynn A. Agre, MPH  Ph.D. Candidate, Rutgers University, School of Social Work

When Intention Precedes When Intention Precedes Action: Does Adolescent Self-Action: Does Adolescent Self-Rated Risk Evaluation Predict Rated Risk Evaluation Predict Deleterious Decision Making?Deleterious Decision Making?

By:Lynn A. Agre, MPH

Ph.D. Candidate, Rutgers University,School of Social Work

American Public Health AssociationNovember, 2006

Page 2: By: Lynn A. Agre, MPH  Ph.D. Candidate, Rutgers University, School of Social Work

IntroductionIntroduction The premise for this query into adolescent self-rated

risk as a cofactor in determining the likelihood to engage health risk behaviors, such as substance use and earlier sexual behavior, arises out of the self-rated health literature, a five-point Likert scale demonstrated to be a strong predictor for mortality among adults (Idler and Benjamini, 1997).

The self-rated risk scale used in the Young Adult portion of the National Longitudinal Survey on Youth in the 1998, 2000 and 2002 waves evaluates how discerning adolescents are in their planfullness and proclivity toward sensation seeking.

Page 3: By: Lynn A. Agre, MPH  Ph.D. Candidate, Rutgers University, School of Social Work

Research QuestionsResearch Questions It is postulated that those adolescents who

identify as more risk prone versus risk adverse are more likely to engage in alcohol and drug use, in addition to sexual behavior, particularly in early adolescence.

Further, it is also hypothesized that youth who originate from households of mothers with higher educational attainment, as a proxy for social support, will be less likely to engage in health risk behaviors, such as substance use and early onset of sexual behavior (Rosenbaum and Kandel 1990).

Page 4: By: Lynn A. Agre, MPH  Ph.D. Candidate, Rutgers University, School of Social Work

Influence of Social Support on Influence of Social Support on Prosocial BehaviorProsocial Behavior

Social support can be included under the general rubric of social environmental factors as an essential component in buffering certain patterns of behavior and how these affect adolescent health risk decision making.

The process of social support is contingent upon the participation of another person in a reciprocal relationship where some benefit is exchanged between the person experiencing the illness episode or crisis and the other who is not.

House (1981) defines four different types of social support: emotional, appraisal, informational and instrumental.

Page 5: By: Lynn A. Agre, MPH  Ph.D. Candidate, Rutgers University, School of Social Work

Influence of Maternal Influence of Maternal Education as Appraisal and Education as Appraisal and

Informational SupportInformational Support Emotional support refers to emotional concern, love

and empathy received from those in the domain. Appraisal support entails deriving information relevant

to self-evaluation. Informational support pertains to seeking knowledge

about the situation. Instrumental support involves help with daily activities. Maternal support in this context is measured as social

support, since maternal education has been demonstrated to delay the initiation of health risk behaviors in adolescence (Mensch and Kandel, 1992).

Page 6: By: Lynn A. Agre, MPH  Ph.D. Candidate, Rutgers University, School of Social Work
Page 7: By: Lynn A. Agre, MPH  Ph.D. Candidate, Rutgers University, School of Social Work

Theoretical FrameworkTheoretical Framework The framework selected for assessing the multiple

interacting environments is the Bronfenbrenner ecological approach (1979), comprised of the individual, family, and extra-familial level (Small and Luster, 1994) contained in the ecosystem (Ginther, Haveman, and Wolfe, 2000).

In this study, the effect on health risk behavior is based upon an adolescent’s self-rated perception of risk in conjunction with the influence of multiple environments.

Bronfenbrenner’s ecological paradigm considers role expectations of the individual in different environments in contrast to the internal-external locus of control model simply viewing impulse control as total reliance on inhibition of self (Rotter, 1966).

Page 8: By: Lynn A. Agre, MPH  Ph.D. Candidate, Rutgers University, School of Social Work
Page 9: By: Lynn A. Agre, MPH  Ph.D. Candidate, Rutgers University, School of Social Work

Internal-External Locus of Internal-External Locus of Control (Rotter, 1966)Control (Rotter, 1966)

The internal-external locus of control model does not take into account how multiple environments and the influence of the behavioral exchange within those environments can temper the individual’s capacity to engage in behavior detrimental to physical and mental well-being.

Therefore, the Bronfenbrenner model views the individual as both the decision maker and the operator, neither placing the blame on the self, nor viewing another as blameworthy.

Rather, the change in behavior is dependent upon the fluid process of one environment influencing another.

Thus, various forms of social support in these different contexts of the ecosystem, i.e.micro-, meso- and exo-systems—act as buffers when disruptions occur in each of these domains.

Page 10: By: Lynn A. Agre, MPH  Ph.D. Candidate, Rutgers University, School of Social Work
Page 11: By: Lynn A. Agre, MPH  Ph.D. Candidate, Rutgers University, School of Social Work

Model: Presaged Intention Model: Presaged Intention Predicts OutcomePredicts Outcome

The predictor variables included in the analysis are maternal age, maternal education, adolescent age, gender and race.

The psychosocial indexes encompass: (1) the seven-item short form of the CESD (Derogatis, 1977) on which respondents indicate on a four‑point scale how often they have experienced symptoms of depression during the past week; (2) the self-mastery scale consisting of select measures originally developed by Rosenberg and Pearlin (1978); (3) self-esteem scale as a composite of ten variables about perception of control over life problems and capacity to solve these problems; and (4) parenting scale assessing the adolescent’s perception of how well parents agree on household rules.

The individual measures for each potential scale have been summed to create one single variable.

Page 12: By: Lynn A. Agre, MPH  Ph.D. Candidate, Rutgers University, School of Social Work
Page 13: By: Lynn A. Agre, MPH  Ph.D. Candidate, Rutgers University, School of Social Work

Scale ConstructionScale Construction The higher the score on each of the indexes the better the

mastery, the self-esteem and the quality of parenting as perceived by the adolescent.

In contrast, however, the higher the score on the short form of the CESD, the worse the depressive symptoms according to the adolescent.

The neighborhood index evaluates the quality of the neighborhood environment from the respondent’s point of view, using the dichotomous yes/no format.

Finally, the risk behavior scale contains six reverse-coded items where a higher score means greater willingness to engage in risk behavior i.e.: (i) often does things without thinking; (ii) planning takes the fun out of things; (iii) uses self‑control to keep out of trouble; (iv) enjoys taking risks; (v) enjoys new/exciting experiences; and (vi) feels life without danger is dull.

Page 14: By: Lynn A. Agre, MPH  Ph.D. Candidate, Rutgers University, School of Social Work

Bivariate MethodsBivariate Methods Methods for testing group distinction between high and low

risk takers, include t-tests to examine mean differences between the sociodemographic control measures and the psychosocial scales, all of which are significant.

Mantel-Haenszel Chi-Square is also employed to test for independence between psychosocial well being states and high and low risk propensity, and a variety of health behaviors including age at first alcohol, tobacco and marijuana use and age at initiation of sexual behavior.

This analysis of association between two binary variables is applied to ascertain if proportion of one group is different from another.

The low and high risk groups are statistically distinct from each other at the .05 significance level on all the psychosocial scales and detrimental health behavior variables.

Page 15: By: Lynn A. Agre, MPH  Ph.D. Candidate, Rutgers University, School of Social Work

Multivariate ResultsMultivariate Results In the multivariate model, higher adolescents scores on the

self-rated risk index are significantly correlated with other psychosocial well-being measures such as greater depressive symptoms, lower self-esteem, but a higher sense of mastery.

The regression analysis demonstrates that alcohol and drug use affects adolescents likelihood to rate herself/himself as risk prone and increase the likelihood of initiation of sexual intercourse at a younger age.

Male adolescents are more likely to engage in risk behavior at an earlier age than females, particularly African American males.

Neighborhood quality does not increase likelihood of an adolescent to perceive herself/himself as risk prone but does increase the initiation of sexual activity at a younger age.

Page 16: By: Lynn A. Agre, MPH  Ph.D. Candidate, Rutgers University, School of Social Work

DiscussionDiscussion Adolescents who report more depressive

symptoms also perceives themselves as higher risk takers.

Risk is studied as a matrix of concomitant exposure to adverse social conditions, the youth’s judgment of that milieu and her/his internalization of his response and sensitivities to those environs.(Link and Phelan, 1997).

Self-assessment of risk during adolescence could emerge as a potential predictor in determining later-life health trajectories.

Page 17: By: Lynn A. Agre, MPH  Ph.D. Candidate, Rutgers University, School of Social Work

Regression Analysis - Dependent Variable: Age Regression Analysis - Dependent Variable: Age when first had sex 1998when first had sex 1998

Page 18: By: Lynn A. Agre, MPH  Ph.D. Candidate, Rutgers University, School of Social Work

Regression Analysis -Regression Analysis - Dependent Variable: Dependent Variable: Age when first had sex 1998 (Continued)Age when first had sex 1998 (Continued)

Page 19: By: Lynn A. Agre, MPH  Ph.D. Candidate, Rutgers University, School of Social Work

Regression Analysis - Dependent Variable:Regression Analysis - Dependent Variable: Risk Scale 1998 Risk Scale 1998

Page 20: By: Lynn A. Agre, MPH  Ph.D. Candidate, Rutgers University, School of Social Work

Regression Analysis - Dependent Variable: Regression Analysis - Dependent Variable: RISK2_1998 (Continued)RISK2_1998 (Continued)

Page 21: By: Lynn A. Agre, MPH  Ph.D. Candidate, Rutgers University, School of Social Work

Regression Analysis -Regression Analysis -Dependent Variable: # of people had sex Dependent Variable: # of people had sex with in last 12 months 1998 (Continued)with in last 12 months 1998 (Continued)

Page 22: By: Lynn A. Agre, MPH  Ph.D. Candidate, Rutgers University, School of Social Work

- Regression Analysis -- Regression Analysis -Dependent Variable: # of people had sex Dependent Variable: # of people had sex with in last 12 months 1998 (Continued)with in last 12 months 1998 (Continued)

Page 23: By: Lynn A. Agre, MPH  Ph.D. Candidate, Rutgers University, School of Social Work

- Regression Analysis -- Regression Analysis -Dependent Variable: On Average how often Dependent Variable: On Average how often

R drank in the past 12 months.R drank in the past 12 months.

Page 24: By: Lynn A. Agre, MPH  Ph.D. Candidate, Rutgers University, School of Social Work

- Regression Analysis -- Regression Analysis -Dependent Variable: On Average how often Dependent Variable: On Average how often R drank in the past 12 months (Continued)R drank in the past 12 months (Continued)

Page 25: By: Lynn A. Agre, MPH  Ph.D. Candidate, Rutgers University, School of Social Work

- Regression Analysis -- Regression Analysis -Dependent Variable: Age when first began to Dependent Variable: Age when first began to

drink alcohol once a month or more 1998drink alcohol once a month or more 1998

Page 26: By: Lynn A. Agre, MPH  Ph.D. Candidate, Rutgers University, School of Social Work

- Regression Analysis -- Regression Analysis -Dependent Variable: Age when first began to Dependent Variable: Age when first began to

drink alcohol once a month or more 1998 drink alcohol once a month or more 1998 (Continued)(Continued)

Page 27: By: Lynn A. Agre, MPH  Ph.D. Candidate, Rutgers University, School of Social Work

- Regression Analysis -- Regression Analysis -Dependent Variable: How often in past 30 Dependent Variable: How often in past 30

days smoked cigarettes? 1998days smoked cigarettes? 1998

Page 28: By: Lynn A. Agre, MPH  Ph.D. Candidate, Rutgers University, School of Social Work

- Regression Analysis -- Regression Analysis -Dependent Variable: How often in past 30 Dependent Variable: How often in past 30

days smoked cigarettes? (Continued)days smoked cigarettes? (Continued)

Page 29: By: Lynn A. Agre, MPH  Ph.D. Candidate, Rutgers University, School of Social Work

- Regression Analysis -- Regression Analysis -Dependent Variable: Age of respondent Dependent Variable: Age of respondent

when first used marijuana? 1998when first used marijuana? 1998

Page 30: By: Lynn A. Agre, MPH  Ph.D. Candidate, Rutgers University, School of Social Work

- Regression Analysis -- Regression Analysis -Dependent Variable: Age of respondent Dependent Variable: Age of respondent

when first used marijuana? (Cont.)when first used marijuana? (Cont.)

Page 31: By: Lynn A. Agre, MPH  Ph.D. Candidate, Rutgers University, School of Social Work

Behavior & Health Risk Decision MakingBehavior & Health Risk Decision Making