|
Early Effects of a
School-Based Human
Immunodeficiency
Virus Infection and Sexual Risk
Prevention
Intervention
JAMA HIV/AIDS
HIV/AIDS Resource Center, The Journal of American Medical Association
http://www.ama-assn.org/poa7567.htm#methods
Vol. 152, pp.
961-970, Oct. 1998
David M. Siegel, MD,
MPH; Marilyn J. Aten, PhD, RN; Klaus J. Roghmann, PhD; Maisha
Enaharo, MPH
Objective: To determine the short-term effect of a middle and high
school-based human immunodeficiency virus and sexuality intervention
(Rochester AIDS Prevention Project for Youth [RAPP]) on knowledge,
self-efficacy, and behavior intention
Design: Nonrandomized intervention study with 2 intervention groups and
1 control group.
Setting: Middle and high school health classes in an urban,
predominantly minority school district.
Participants: Middle and high school students (N=3635) enrolled in
health classes in 9 schools; 50% African American, 16% Hispanic, 20%
white, and 14% other. Less than 10% of students refused participation.
Intervention: There were 3 study conditions: (1) Control, usual health
education curriculum taught by classroom teacher; (2) RAPP adult health
educator, intervention curriculum implemented by ethnically diverse
male-female pairs of highly trained health educators; and (3) RAPP peer
educator, intervention implemented by male-female pairs of extensively
trained high school students. Health classes within schools were
assigned to 1 of the 3 conditions each semester, and simultaneous
implementation of the control program with health educators or peer
educators in the same school and during the same semester was not
permitted.
Main
Outcome Measure: A confidential questionnaire administered to all study
subjects before and immediately after the intervention, containing
scales to measure knowledge, sexual self-efficacy, and safe behavior
intention.
Results: Preintervention data indicated that the study population was
involved in sexual activity and other risk behaviors at rates comparable
to those of other urban adolescent populations. Examination of 3 outcome
constructs as dependent variables (knowledge, sexual self-efficacy, and
safe behavior intention) revealed that the health educators and peer
educators increased students' knowledge significantly more than did the
control condition for both middle (females, P<.01; males, P<.01) and
high (females, P<.001; males, P<.001) school. Comparisons of
self-efficacy changes across intervention groups did not reach
statistical significance, and safe behavior intention changes differed
significantly by intervention group for high school but not for middle
school students. For all analyses, the preintervention scores for each
outcome variable were the most powerful predictors of postintervention
scores, and analysis of variance models predicted substantial overall
variance.
Conclusions: At short-term follow-up, the RAPP intervention had a
powerful effect on knowledge for all students and a moderate effect on
sexual self-efficacy and safe behavior intention, particularly for high
school students. The peer educators were found to be equally and, for
some variables, more effective than the highly trained adult educators.
The substantial effect of the baseline scores and the high prevalence of
risk behavior already evident by seventh grade indicate the importance
of early implementation of school-based sexuality programs.
Arch
Pediatr Adolesc Med. 1998;152:961-970
Editor's Note: The 2 interventions seem to be effective in changing
short-term knowledge. I hope that the authors plan a follow-up on
student-reported behavior . . . and then wouldn't it be great to
determine actual practice. I can dream, can't I? Catherine D. DeAngelis,
MD
Adolescent sexual risk behaviors continue to represent one of the most
serious public health problems in the United States.[1-4] Consequences
of these activities include pregnancy,[2,5,6] sexually transmitted
diseases (STDs)[7-12] and, most recently, human immunodeficiency virus
infection and the acquired immunodeficiency syndrome (HIV/AIDS).[13-18]
While adolescents still represent less than 1% of the nation's
identified HIV/AIDS population,[16,17] the disease incubation period
extends well beyond 10 years and it is currently estimated that 1 in 5
Americans with AIDS was infected during adolescence.[18] In response to
this increasing and profound HIV/AIDS risk, as well as those of STDs and
pregnancy, a multitude of strategies have been adolescents.
These
preventive and risk reduction efforts include school-based curricula
reflecting a wide variety of informational content and methods. Program
goals can be categorized as abstinence only, sex education, or HIV/STD
education. Key distinguishing features exist among these program
categories. Abstinence programs do not include discussion of birth
control aside from contraceptive failure and/or disease
prevention.[19,20] In contrast, sex education and HIV/STD education
programs include information about abstinence, sexuality, contraception,
and disease prevention.[21] A range of methods have been used by
school-based interventions to disseminate information and impart
behavioral skills. These include teaching by peers, classroom teachers,
and/or adults from outside agencies; incorporation of highly interactive
exercises and skill-based methods with or without didactic
presentations; and the direct or indirect involvement of parents and
guardians.[19-21,22-25] Curricula also vary widely in duration,
consisting of anywhere from1 to 30 classroom sessions. Program
effectiveness, as measured by changes in knowledge, attitudes,
self-efficacy, behavioral intention, and behavior, has varied. The
importance of examining self-efficacy (the adolescent's belief in his or
her ability to engage in a specific behavior) and behavior intention
(the adolescent's belief that he or she will engage in a particular
behavior within the next year) is derived from theories of behavior
change. Social learning theory,[26] the theory of reasoned action,[27]
and the theory of planned behavior[28] all hold that in addition to
knowledge about the ramifications of chosen behaviors, one's
self-efficacy regarding the behavior is an important predictor of one's
intention to behave in a certain way. Further, behavior intention is
proposed to be closely linked to behavior. The ultimate effectiveness of
risk reduction programs can only be meaningfully assessed by measuring
the maintenance of safe behavior or adherence to safer sex practices
over a significant duration (eg, >6 months). As a potential first step
to long-term change it is also important to address early program
effects (1-3 months after intervention).
While
knowledge alone has not been found to be sufficient to change behavior,
it is certainly a necessary prerequisite.[29,30] Several studies have
reported success in improving students' information base around
sexuality and HIV/AIDS. Project SNAPP,[24] a randomized study based in 6
urban middle schools, used an 8-session, peer-taught, skills-based,
highly interactive HIV and pregnancy prevention intervention, which was
compared with the existing school curriculum. While a positive effect on
knowledge was noted, the 17-month follow-up revealed an improvement in
only 2 of 21 relevant attitudes or beliefs, and there was no significant
change in sexual or contraceptive behaviors. Other investigators have
similarly described knowledge increases, but with mixed results in other
measured constructs.[29,31-33] Main et al,[31] reporting on a
15-session, skills-based HIV prevention curriculum implemented in
Colorado, noted significant HIV knowledge increases among students in 10
intervention schools as opposed to students in 7 comparison schools. The
experimental students also expressed greater intentions to engage in
safer sex practices within the next 2-month period.
In a
review of the effectiveness of 40 interventions designed to reduce AIDS
risk in adolescents, Kim et al[33] reported that of the 12 studies that
assessed changes in attitudes toward personal preventive behavior, 7
(58%) found significant improvement, but that most of these were
nonrandomized designs. Other articles describing knowledge and attitude
changes tended to find improvement in the former but not consistently in
the latter.[23,31-33] Weeks et al[34] reported significant increases in
contraceptive self-efficacy among middle school students in Chicago,
Ill, after a 15-session classroom-based intervention. Walter and
Vaughan[25] also observed significant, albeit modest, changes in
self-efficacy related to HIV preventive actions among high school
students participating in a 6-session AIDS prevention curriculum.
However, Newman et al[35] reported a decrease in middle school students'
self-efficacy related to AIDS prevention behaviors as well as their
level of communication with peers and family members about AIDS
following a 1-hour HIV education program developed and taught by the Red
Cross. In this study knowledge scores also failed to increase as a
result of the brief intervention. Thus, school-based programs aimed at
HIV risk among adolescents seem to have some successes, consistently in
the area of knowledge change and somewhat in self-efficacy and
attitudes, but only in the context of substantial content and duration.
The reasons for intervention success or failure have yet to be fully
explained.
An
important factor both for implementation and evaluation of school-based
studies is student attendance. That is, students may not be present for
an entire intervention and yet they participate in pretesting and
posttesting and become part of the outcome database. While this, of
course, is consistent with all clinical trials, the methodologic
consideration is whether to eliminate students who have not attended all
sessions (a severely compromising choice that ignores the realities of
generalizability) or make an attempt to measure the "dose," or degree of
exposure to the program.[36] Surprisingly, intervention dose and its
relation to intervention effect has been rarely considered in
school-based work. Additionally, studies often fail to include any
measure of the learning adequacy of the existing classroom environment.
Relevant variables include the physical environment, support of the
learning process, and control of students in the classroom.
The
Rochester AIDS Prevention Project for Youth (RAPP) is a middle and high
school-based intervention trial. We report below on preintervention to
immediate postintervention changes in knowledge concerning HIV/AIDS and
sexuality, self-efficacy, and behavior intention. The effects on these
dependent variables of dose as well as the adequacy of the learning
environment are included in the analyses.
PARTICIPANTS AND METHODS
Comparison of
Sample Descriptive Characteristics...
SAMPLE
The
subjects (N=3696, Table 1) were drawn from 9 urban schools in Rochester,
NY(population, 250,000). The criteria for study inclusion were that
students be (1) enrolled in required health education classes and (2)
fluent in either English or Spanish. Ethnicity of the sample was
diverse: 50% African American, 16% Hispanic, 20% white non-Hispanic, and
14% other ethnic backgrounds, including Asians, Native Americans, and
those who indicated that they were biracial. The socioeconomic status
(SES) of the sample was assessed by subject-reported ZIP code and street
address (socioeconomic area, or SEA [described later]) and the mean SEA
rating was 5.2 (SD=2.7), slightly lower for middle than high school
students. Approximately 70% of the families with children in this school
district have incomes placing them below the federal poverty line.
PROCEDURE
Intervention
Students were recruited within their regular school health education
classes to participate in RAPP, a quasi-experimental, classroom-based
intervention designed to increase knowledge and skills aimed at safe
behavior regarding sexuality and HIV/AIDS. Classes were assigned within
semesters to 1 of 3 conditions: (1) control, the usual health regular
health education teacher; (2) RAPP adult health educator, the RAPP
intervention implemented by an ethnically diverse male-female pair of
highly trained adult educators; or (3) RAPP peer educator, volunteer
high school students who completed approximately 50 hours of preparation
by RAPP staff and taught the RAPP curriculum as pairs of educators.
Health education in middle school was taught in seventh grade only,
while in high school students had the option to take health class in
10th, 11th, or 12th grade; most students chose 10th or 11th grade. The
semester assignments of classes to intervention condition was based on
feasibility issues and availability of peer educators. The primary goals
were that (1) all conditions were to occur in all classes and schools by
the conclusion of the study; and (2) control and experimental conditions
could not coexist in the same school during a given semester. These
design features enhanced generalizability by ensuring that the
intervention was spread across a variety of different schools, and
helped to avoid contamination between intervention and control
classrooms. The RAPP intervention consisted of 10 (high school) or 12
(middle school) consecutive health class sessions(usually 2 or 3
sessions per week) delivered for a period of 2 to 7 weeks. The
intervention was integrated into the regular school health education
schedule to avoid disruption within schools and to build an intervention
that might generalize to other schools in the future. With one exception
during the intervention period of 2.5 years, all study conditions took
place at both middle and high schools.
The content of the intervention
was based on current literature concerning school-based interventions,
expertise of the RAPP health educators, and principles from the theory
of reasoned action and normal adolescent development. Early sessions
emphasized self-esteem and decision-making strategies, while later
classes progressed through in-depth discussion and skill-based
activities concerning sexuality, STDs, pregnancy, and finally HIV/AIDS.
This last topic received particular emphasis, and all sessions included
small and large group activities such as games, role playing, and
take-home exercises, often requiring parental input. Priority was placed
on maximum engagement of the students in a highly interactive and
dynamic learning experience in both intervention conditions. In this
article we focus on the preintervention to immediate postintervention
measurement of knowledge, sex self-efficacy, and behavior intention and
compare observed changes in intervention groups with each other and with
the control group
Data
Collection
Students were asked to complete a confidential survey before
intervention and immediately after intervention, as well as 6 and 12
months after intervention, after verbal and written study explanation.
Passive parental consent for student participation was obtained.
Parent(s) of all students scheduled to take health education in the
upcoming school year are routinely sent a letter from the district
Director of Health and Physical Education informing them that family
life education, including sexuality, will be taught and they can request
their son or daughter not participate in that unit. During the time of
the study, a description of the RAPP program was a part of this letter
and parents were given the opportunity to inquire further about RAPP
and/or refuse participation. Questions were directed to the study's
principal investigator (D.M.S.), who met with parents individually to
address their concerns. Very few (<10) families withdrew their children
from the program. The study was reviewed and approved by both the
administration of the local school district and the university
institutional research review board. Students were assured that no names
would be used on any surveys, that their answers would be seen only by
research staff, and that they could participate in the health classes in
which the education and skills project occurred without completing the
research instrument. Few eligible students refused to participate in the
study; more than 90% completed the survey before intervention. Subjects
were tracked over time by using (1) a school district-assigned
identification number; and (2) a RAPP study identification number. This
procedure ensured that, despite student mobility, duplicate subject
enrollment did not occur. The survey instrument, available in both
English and Spanish, was read to students during class by the project
health educators and required approximately 40 minutes for completion
Study
Instrument
The
survey questionnaire, pilot tested on 450 students preceding the main
study, was composed of sections measuring constructs determined to be
important in assessing the effects of the RAPP curriculum. Those
reported here include demographics, knowledge, self-efficacy regarding
sexual matters, behavior intention within the next year, history of risk
behaviors, and history of sexual experiences. In addition to the
student-completed questionnaires, the RAPP health educators measured the
adequacy of the existing health education-learning environment in each
class, resulting in a "class climate" score.
VARIABLES MEASURED
Demographics
Age
in years, gender, ethnicity, and a proxy for SES were measured. Although
the student population of the school district is generally of low SES,
there was concern that some differences might exist across study
subjects and potentially confound our findings. For confidentiality
reasons, and recognizing that younger teenagers often do not know about
household income or employment and education of family members, we used
an SES proxy as follows. Street name and ZIP code for the student's
residence (as given on the questionnaire) were used to code census
tracts, and this allowed a 1 to 10 SEA ranking for each student. The
10-point ranking was based on median house value, rent, and family
income, as well as educational level of the adult population and
proportion of professionals and executives among the employed population
within each census tract. The median house value in the city in 1990 was
$60,700, the average monthly rent was $360, the mean annual family
income was $25,000, and 16% of the adults had a college degree. While a
family's SES might rarely be inconsistent with that of the census tract
in which they resided, we decided that SEA was more reliable and valid
than household-specific income and educational data provided by the
students. The large study sample also minimized the influence of
potential remaining measurement error.
Knowledge
The
26-item knowledge scale tested information concerning human
reproduction, decision-making, communication with others concerning
sexual matters, HIV/AIDS and other STDs, high-risk behaviors and their
sequelae, and other adolescent sexuality items. Students responded to
statements with yes if they believed the statement was true, no if they
believed the statement was false, and "not sure" (a choice scored as
incorrect and included to minimize guessing and the possible inflation
of correct response scores). To avoid a ceiling effect, individual items
were included only if they were shown to have less than 80% correct
responses by middle and high school students during the pilot phase. The
scale score range was from 0 to 26, and alpha reliability was .79.
Sexual Self-Efficacy
Eight
items, each with a 7-point response scale, measured sex self-efficacy.
This was adapted from similar work developed by Misovich et al[37] and
tested how hard (score of 1) or easy(score of 7) it would be to carry
out each of 8 behaviors in relation to sexuality (eg, How hard or easy
would it be for you to "convince your partner that a condom must be used
before you have intercourse," "remain abstinent and avoid having sex,"
and others). Efficacy was scored as the sum of the 8 items and ranged
from 8 to 56, alpha reliability was .74, and test-retest reliability,
based on 450 control subjects during a 4-week period, was 0.66.
Principal component factor analysis supported a 1-factor solution (eigenvalue=2.9),
accounting for 36% of variance.
Safe
Behavior Intention
Figure 1. Risk
Behavior Intention Scale...
An
index of intention to behave in safe ways (Figure) was developed using 9
items asking students to indicate their agreement or disagreement (on
7-point response scales) with statements such as “I will be abstinent
(not do it) this year" or "If someone wanted to have sexual intercourse
(do it) with me, I would probably do it." Items measured intention to
engage in the following risk behaviors: sexual behavior (intention to be
abstinent or have intercourse during the next year, intention to have
multiple partners), becoming a teenage parent, disease risks (HIV/AIDS,
STDs), and substance abuse. Items were scored with anchors of risk (1)
or safe intention (7) and summed. The possible score range was 9 to 63;
alpha reliability was .74 (N=2385) and .74(N=1526) for middle and high
school students, respectively. Test-retest correlations across 2 to 4
weeks were 0.77 (N=381) and 0.81 (N=380) for middle and high school
students, and a principal component factor analysis suggested a 1-factor
solution (eigenvalue=3.2), accounting for35% of variance.
Life
Risk History
To
measure the risk history of each subject, 15 items from the Youth Risk
Behavior Survey[38] were used, including questions about school- and
community-related behaviors (eg, skipping school, getting into fights,
carrying weapons, crime conviction), substance abuse, and cigarette
smoking. We asked a panel of 25 experts in adolescent health (both
clinicians and behavioral scientists) to rank the behavior items from
low to high risk as follows: 0 for no or minimal risk (eg, missed school
without permission), 1 for some risk (eg, tried marijuana), or 2 for
substantial risk (eg, used marijuana regularly). Students responded as
to whether they had ever participated in these behaviors. There was a
possible score range of 0 to 31, alpha reliability was .79, and
test-retest reliability during a 4-week period was 0.84. Factor analysis
again suggested a 1-factor solution (eigenvalue=4.3), accounting for 25%
of variance.
History of Sexual Intercourse
Before intervention, students were asked about their history of sexual
intercourse as part of 7 different questionnaire items addressing onset,
frequency, and multiple partner experience. We examined the degree to
which students were consistent across all 7 items in which there was an
opportunity to answer "I have never had sex," to be confident regarding
the validity of response, and, particularly for the younger students, to
assure that subjects understood the concept of sexual intercourse prior
to initiating the intervention. Students were categorized as ever having
had sexual intercourse (score of 1) or never having had sexual
intercourse (score of 0).
Dose
The
dose of intervention (number of classes attended) may represent an
important contribution to change in HIV prevention studies.[36] Thus, we
asked students to indicate the extent to which they attended RAPP
classes from 1 (not at all) to 5 (all classes).
Class
Climate
To
test for any differences across various learning settings that might
have influenced the effect of the intervention, the learning adequacy of
the existing health education class environment was observed and scored
by the adult RAPP educators for all participating teachers and
classrooms. Working independently, each member of a pair of educators in
a classroom rated the physical environment and the regular health
teacher's facilitation of the RAPP curriculum. The 18 items were summed
to form an overall "class climate" score (scale score range, 0-36).
Rater agreement was high (r>0.80) and the 2 scores were averaged.
Table 2.
Comparison of Study
Variables...
DATA
ANALYSES
Recognizing that age and gender would likely significantly affect
baseline findings as well as intervention effect, we stratifed all data
into 4 groups: (1) middle school females, (2) middle school males, (3)
high school females, and (4) high school males. Intervention effect was
then tested within these groups. Before intervention, all study
variables were compared within school level for the 3 intervention
groups using the 2 statistic for categorical data and analyses of
variance (ANOVA) for continuous level variables (Table 1 and Table 2).
To examine differences between pretest and posttest scores,
repeated-measure ANOVAs were used with demographics (age, SEA), the
existing life risk score, the class climate score, and the relevant
pretest score for the scale in question (knowledge, self-efficacy, or
behavior intention) introduced first as covariates. Then the factors of
ethnicity and sex history were entered, followed by the intervention
level factor (1=control, 2=health educator, 3=peer educator). Because
the sample was large and statistical significance may be easily reached
with large samples, a more rigorous significance threshold of P<.01
(rather than .05) was chosen.
To
test for the dose effect, Pearson product moment correlations were
computed between the student's self-report of attendance and the 3
outcome variables of interest. These analyses were compared only for the
students in the 2 RAPP intervention groups (health educator and peer
educator classes), because controls were prevented from any RAPP class
attendance. This characteristic of control subjects (ie, by definition
their dose was 0) precluded entering dose in the
ANOVA
analyses.
Table of Contents
RESULTS
PREINTERVENTION
COMPARISONS BY SCHOOL LEVEL AND GENDER
The
total sample consisted of 1028 female and 971 male middle school
students and 877 female and 820 male high school students. Within school
level, comparable proportions of students were assigned to each of the 3
intervention groups. As compared with middle school, the high school
students were approximately 4 years older (F3,3631=7901.5, P<.001), and
of slightly higher SEA status (F=10.4, P<.001). There were ethnic
differences (29=44.4, P<.001), with somewhat greater percentages of
Hispanic and "other" ethnic backgrounds represented among the younger
students (Table 1). The life risk history mean scores by groups (in
ascending order) were 5.7(middle school females), 6.8 (high school
females), 7.2 (middle school males), and 8.3 (high school males)
(F=39.4, P<.001). There were no significant differences across the 3
intervention groups for middle school students. However, for high school
students, the peer educator group was slightly younger (F=72.5, P<.000),
of higher SEA (F=12.0, P<.000), included fewer Hispanic students and
more non-Hispanic white students (2=35.4, P<.000), and were less likely
to have reported a history of sexual intercourse (2=21.1, P<.000) (Table
1). Further, peer-taught high school students reported lower life risk
scores (F=5.6, P<.000) and greater safety intention (F=13.3, P<.000)
than controls or adult- taught students (Table 2). In addition, there
were several significant gender-specific differences. While only 26.9%
of the younger females indicated that they had experienced intercourse,
the majority of the younger males (64.7%) indicated that they were
sexually experienced. For the older students, 67% of female and79% of
male high school students reported that they had been sexually active.
In relation to the class climate score, there were significant
differences by school level (F=278.9, P<.001), with the class
environments of the older students rated as being higher (that is more
conducive to learning) than those at middle school.
The 3
variables of interest for examination of intervention effects
(knowledge, self-efficacy, and behavior intention) were also compared
before intervention by school level and gender. As would be expected,
knowledge was greater at the high school level (F=208.9, P<.001), while
there were no gender differences at either school level. For
self-efficacy, there were both school level and gender differences
(F=94.8, P<.001); self-efficacy was greater for females than for males
at both school levels, and mean scores were higher at high school in
comparison with middle school. Safe behavior intention was greater for
females than males overall, but scores were lower for high school
students in comparison with middle school students (F=289.1, P<.001).
Table 3. Prediction
of Immediate Postintervention Knowledge Scores...
Table 4. Prediction
of Immediate Postintervention Sexual Self-Efficacy Scores...
Table 5. Prediction
of Immediate Postintervention Safe Behavior Intention Scores...
COMPARISON OF QUESTIONNAIRE SCORES FROM BEFORE INTERVENTION TO AFTER
INTERVENTION
Table
3 (knowledge), Table 4 (self-efficacy), and Table 5 (behavior intention)
present preintervention to postintervention changes in questionnaire
responses, including the effect of the interventions compared with each
other and with controls using ANOVA. Beginning with knowledge as the
dependent variable (Table 3), all covariates were significant except
life risk, and significant main effects were found for ethnicity and,
most important, for the intervention. There was no significant
difference for knowledge change based on sex history among any of the 4
age and gender groups. In each of the 4 age and gender groups, the
pretest score for knowledge outstripped all other covariates at striking
F magnitudes (from 224-399). Age was significant, even after controlling
for differences between middle and high school students, indicating that
older students did less well on knowledge. In relation to ethnicity,
white non-Hispanics had slightly higher mean knowledge scores and
Hispanics had somewhat lower mean scores than either the African
American or "other" groups.
For
the intervention effect, there were significant differences between the
control and the 2 intervention groups among all 4 of the age and gender
groups. Means for the intervention students (both health educator and
peer educator) were significantly higher after intervention, while the
control group maintained their preintervention mean scores for the
middle school students and rose only about 1 to 1.5 points in mean score
at the high school level. There were notable (high school females only)
2-way interactions for ethnic group x sex history (F=3.7, P<.01) and sex
history x intervention (F=4.3, P<.01). Thus, there was a substantial
effect of the intervention beyond the covariates and independent of the
other factors. For the 4 age and gender groups the model explained
substantial variance, ranging from 41% to 55% (R2).
For
self-efficacy regarding sexual matters, there was statistical
significance for both the covariates and main effects across the 4
groups of students (Table 4). Similar to the knowledge scores, the
covariates of age, SEA, class climate score, and the self-efficacy
pretest score were significant. In each of the comparisons, the F for
the pretest score (ranging from 182-554) was of much greater magnitude
than for the other covariates. While there were no mean differences in
self-efficacy by sex history, gender proved to be important, with
females reporting higher posttest self-efficacy scores at both age
levels. There were also significant differences by ethnicity for middle
and high school females (but not males). Hispanic students tended to
have mean scores that were somewhat lower for middle school students
(36-36.8) in comparison with white non-Hispanic middle school students
(37.6-42.6), and for high school females. Hispanic and "other" students
had lower scores in comparison with African American and white
non-Hispanic students. There were no mean differences for the ethnic
groups among high school males. Statistically significant differences
were not found between intervention and control but trends suggested an
intervention effect; that is, the means for the control subjects were
lower than for the health educator or peer educator intervention groups.
The 4 models predicted from 24% to 46% of variance in self-efficacy,
with most of the variance attributed to the covariates.
Finally, safe behavior intention was tested for the same set of
covariates, as well as the ethnicity, sex history, and intervention
factors (Table 5). Again, the covariates and main effects were
significant, but there was a different pattern to the relationship with
behavior intention than for knowledge or self-efficacy. While the
pretest score for intention was the covariate with the greatest
significance (F range, 277-447 across the 4 age and gender groups), the
general life risk (F range, 6.3-54) emerged as being inversely related
to safe behavior intention. In this analysis, there were no ethnic
differences in safe behavior intention but sex history status was
statistically significantly different in 3 of the 4 groups (F range,
10.6-25.1). Thus, students who indicated that they had already
experienced sexual intercourse also reported less intention to behave in
safe ways. While not statistically significant for high school males,
the mean scores suggested the same relationship (51.2 vs 41.8). Overall,
middle school students were more likely to intend to engage in safe
behaviors than were high school students. Intervention students
demonstrated greater safe behavior intention at posttest than controls
for high school males (F=4.5, P<.01) and high school females (F=4.0,
P<.05). The models explained variance in behavior intention ranging from
0.45 to0.55 (R2).
LEVEL
OF ATTENDANCE AT RAPP SESSIONS (DOSE OF INTERVENTION)
Table 6.
Relationship Between Student-Reported Attendance and Posttest Scores...
Data
regarding the correlations between the student's self-report of RAPP
participation and knowledge, self-efficacy, and safe behavior intention
scores are presented in Table 6. The magnitude of knowledge score
increases from pretest to posttest correlated positively with reports of
RAPP participation; that is, as self-report of attendance increased,
total knowledge scores increased with correlations ranging from modest
(0.14) to strong (0.50), and were most significant at high school level.
For sex self-efficacy, there was less of a relationship with attendance
report(r=0.00-0.28) with only 1 of the correlations (health educator,
high school females) reaching significance. Overall, correlations for
females (range, 0.08-0.28) were greater than for males (range,
0.00-0.06). There was no correlation between safe behavior intention and
participation reports with the exception of a modest correlation for
high school males (0.19).
Table of Contents
COMMENT
This
early examination of the effects of RAPP reveals first that the
population was comparable to other urban settings, particularly with
regard to the high risk attributable to male gender[38,39,40] and age.
Against this generalizable sociodemographic backdrop we found that a
large-scale, school-based, explicit sexual risk reduction intervention
can be implemented and have a successful effect on important outcomes.
Limitations of this research must, however, be considered when
interpreting the results. To begin, all longitudinal school-based
studies are biased by inherent subject attrition resulting from both
graduation and school dropout. The higher SEA score found among the high
school subjects is consistent with previous reports that urban students
who stay in school are more likely to be members of families with
greater income.[41,42] While the SEA ranking we used may not precisely
measure each subject's true SES, we believe it is more valid than other
self-reported SES data among adolescents, which usually rely on youth to
report family income and parental education or occupation (as discussed
earlier in the "Participants and Methods" section).
Our
finding that the high school classes were more conducive to learning
than were the middle school classes is probably rooted in certain
classroom characteristics related to the age groups. High school
classroom enrollments tended to be smaller than in middle school and
there may again be some contribution of a dropout-induced bias toward
more motivated students at the higher-grade levels. Older students were,
perhaps, more able to pay attention and participate in sexuality-focused
sessions than were younger students. The learning environment clearly
warrants measurement in school-based research and must be factored into
interpretation of intervention effectiveness.
The
higher levels of self-efficacy we found among females is consistent with
the recognition that many of our cultural and educational messages
around sexual safety are often directed toward girls and young women as
opposed to boys and young men.[43] Intention to behave in safer ways
concerning sex was also a female attribute in this study, a
theoretically consistent extension of the self-efficacy findings. The
inability of the older students to translate their greater knowledge and
self-efficacy into safer behavioral intention points out the urgent need
to focus prevention interventions on the younger population. It may,
however, also suggest that for adolescents the link between
self-efficacy and behavior intention is not as tight as theory might
otherwise propose.
As we
examined differences between intervention and control groups, the ANOVA
models included important covariates that might explain findings that
would have been incorrectly attributed solely to intervention effect in
a less sophisticated analysis. Knowledge gains observed in RAPP (which
were greater than those reported in other school-based programs[35])
were likely due to interactive teaching techniques, the use of gender
and ethnically diverse educator pairs, the careful inclusion of this
program within the regular school environment, and the length of the
intervention (10-12 sessions). It is notable that the peer educator
condition produced results comparable to the health educator condition
(Table 3). The RAPP study confirms that, at least in certain content
areas and over short follow-up, extensively prepared high school
students can be effective teachers for their peers.
The
modest effect of RAPP on self-efficacy may reflect the possibility that
assessment immediately following the intervention is too early to detect
a difference in this construct. If a knowledge, self-efficacy, and
behavior intention link does exist (as proposed by the theory of
reasoned action), knowledge change will temporally precede observable
efficacy change. Intervention effect on safe behavior intention was
positive among the high school subjects, especially the females, but not
for the middle school students. In the case of middle school females,
this lack of intervention effect could be an artifact of measurement.
That is, these students scored quite high at baseline in all 3 study
conditions (mean score, 55; maximum, 63) and this "ceiling effect"
limited the ability of our analyses to detect a difference. These
results might evidence a pressure felt by 13-year-old girls to provide
(at pretest) what they perceive to be socially acceptable responses to
questions about safe sex behavior intention. The high school students,
on the other hand, did show greater increases in safe behavior intention
after the test in the intervention groups than in control groups.
Perhaps their developmental attainment was better suited to the effect
of the intervention. Our future analyses will document the longer-term
status of these variables as well as the most important outcome, that of
behavior and its relationship to behavior intention. Our findings
regarding intervention dose and its positive correlation with outcome
measures (especially knowledge) not only reinforces the conclusion that
it was RAPP curriculum exposure that affected posttest scores, but also
points out the importance of factoring attendance into analyses of
school-based interventions.
It
should not be forgotten that for the 3 constructs and for all age and
gender groups our models explained significant variance, with R2 ranging
from 0.41 to 0.58 for knowledge and behavior intention and somewhat less
for self-efficacy (0.24-0.46) (Tables 3 through 5). As stated earlier,
it is the burden of the past (pretest scores) that casts a long shadow
over predictions of intervention-induced change in knowledge,
self-efficacy, and behavior intention. This finding not only mandates
the testing of interventions among subjects younger than middle school
age, but also illustrates the need for researchers and clinicians to be
methodologically sensitive to removing the variance attributable to
pretest scores when interpreting intervention study data. Finally,
despite substantial predictive power of our model, the influences on
pretest scores go beyond age and personal experience to include
parental, family, cultural, and community forces. More comprehensive and
multidimensional interventions that reinforce school-based activities
with other sites and contexts for prevention strategies must be
considered.
From
the Department of Pediatrics (Drs Siegel and Roghmann and Ms Enaharo)
and the School of Nursing (Dr Aten), University of Rochester, Rochester
General Hospital, Rochester, NY.
Accepted for publication May 14, 1998.
This
research was supported by grant R01-MH 49037 from the National
Institutes of Mental Health, Rockville, Md.
We
thank Barbara Thompson for her tireless preparation of the manuscript.
We also thank the staff of the Rochester AIDS Prevention Project for
Youth; the health educators, Margaret Cain, BA; Raul Corujo-Molina;
Desiree Voorhies, RN, MSEd; and Lennard Wedderburn, CSW; and research
assistant Terri Vaughn, CSW, for their dedication, commitment, and hard
work on behalf of the project. Special thanks to the staff and students
of the participating schools.
Corresponding author: David M. Siegel, MD, MPH, Department of
Pediatrics, Rochester General Hospital, 1425 Portland Ave, Rochester, NY
14621 (e-mail: david.siegel@viahealth.org).
References
1.
Alan Guttmacher Institute. Sex and America's Teenagers. New York, NY:
Alan Guttmacher Institute; 1994.
2.
Harvey SM, Spigner C. Factors associated with sexual behavior among
adolescents: a multivariate analysis. Adolescence. 1995;30:253-264.
3.
Rotheram-Borus MJ, Koopman C, Haignere C. Reducing HIV sexual risk
behaviors among runaway adolescents. JAMA. 1991;226:1237-1241.
4.
Epner JEG, ed. Policy Compendium on Reproductive Health Issues Affecting
Adolescents. Chicago, Ill: American Medical Association; 1996.
5.
Forrest JD, Singh S. The sexual reproductive behavior of American women,
1982-1988. Fam Plann Perspect. 1990;22:206-214.
6.
Bayne Smith MA. Teen-incentives program: evaluation of a health
promotion model for adolescent pregnancy prevention. J Health Educ.
1994;25:24-29.
7.
Bell T, Hein K. The adolescent and sexually transmitted diseases. In:
Holmes K, ed. Sexually Transmitted Diseases. New York, NY: McGraw-Hill
International Book Co; 1984:73-84.
8.
Cates W. The epidemiology and control of sexually transmitted diseases
in adolescents. In Schydlower M, Shafer M, eds. Adolescent Medicine:
State of the Art Reviews. Philadelphia,: Pa; Hanley & Belfus Inc;
1990:409-428.
9.
Centers for Disease Control and Prevention, National Center for HIV, STD
and TB Prevention. Sexually Transmitted Disease Surveillance, 1997.
Atlanta, Ga: Centers for Disease Control and Prevention; 1997.
10.
Schacter J. Why we need a program for the control of Chlamydia
trachomatis. N Engl J Med. 1989;320:802-804.
11.
Moscicki A, Paletsky J, Gonzales J, Schoolnik GK. Human papilloma virus
infection in sexually active adolescent females: prevalence and risk
factors. Pediatr Res. 1990;28:507-513.
12.
Centers for Disease Control. Annual Report. Atlanta, Ga: Centers for
Disease Control; 1991.
13.
Sonnenstein FL, Pleck JH, Ku LC. Sexual activity, condom use and AIDS
awareness among adolescent males. Fam Plann Perspect. 1989;21:152-158.
14.
Romer D, Black M. Ricardo I, et al. Social influences on the sexual
behavior of youth at risk for HIV exposure. Am J Public Health.
1994;84:977-985.
15.
Levy SR, Handler AS, Weeks K, et al. Correlates of HIV risk among young
adolescents in a large metropolitan midwestern epicenter. J Sch Health.
1995;65:28-32.
16.
Centers for Disease Control and Prevention. HIV/AIDS Surveillance
Report. Vol 9. Atlanta, Ga: Centers for Disease Control and Prevention;
1997.
17.
Hein K. "Getting real" about HIV in adolescents. Am J Public Health.
1993;83:492-494.
18.
Boyer CB, Kegeles SM. AIDS risk and prevention among adolescents. Soc
Sci Med. 1991;33:11-23.
19.
Kirby D. No Easy Answers: Research Findings on Programs to Reduce Teen
Pregnancy. Washington, DC: The National Campaign to Prevent Teen
Pregnancy; 1997
20.
Klein NA, Goodson P, Serrins DS, Edmundson E, Evans A. Evaulation of sex
education curricula: measuring up to the SIECUS guidelines. J Sch
Health. 1994;64:328-333.
21.
Kirby D, Short L, Collins J, et al. School-based programs to reduce
sexual risk behaviors: a review of effectiveness. Public Health Rep.
1994;109:339-360.
22.
Kirby D. School-based programs to reduce sexual risk-taking behaviors. J
Sch Health. 1992;62:280-287.
23.
Sunwoo J. Brennan A, Escobedo J, et al. School-based AIDS education for
adolescents. J Adolesc Health. 1995;16:309-315.
24.
Kirby D, Korpi M. Adivi C, Weissman J. An impact evaluation of Project
SNAPP: an AIDS and pregnancy prevention middle school program. AIDS Educ
Prev. 1997;9(suppl A):44-61.
25.
Walter H, Vaughan R. AIDS risk reduction among a multiethnic sample of
urban high school students. JAMA. 1993;270:725-730.
26.
Bandura A. Social Foundations of Thought and Action: A Social Cognitive
Theory. Englewood, NJ: Prentice-Hall; 1986.
27.
Ajzen I, Fishbein M. Understanding Attitudes and Predicting Social
Behavior. Englewood, NJ: Prentice-Hall International Inc; 1980.
28.
Terry DJ, O'Leory JE. The theory of planned behavior: the effects of
perceived behavioural control and self-efficacy. Br J Soc Psychol.
1995;34:199-220.
29.
Kirby D, Barth R, Leland N, Fetro JV. Reducing the risk: impact of a new
curriculum on sexual risk taking. Fam Plann Perspect. 1991;23:253-263.
30.
Whitley BE, Schofield JW. A meta-analysis of research on adolescent
contraceptive use. Popul Environ. 1986;8:173-203.
31.
Main DS, Iverson DC, McGloin J, et al. Preventing HIV infection among
adolescents: evaluation of a school-based education program. Prev Med.
1994;23:409-417.
32.
Brown LK, Barone VJ, Fritz GK, et al. AIDS education: the Rhode Island
experience. Health Educ Q. 1991;18:195-206.
33.
Kim N, Stanton B, Li X, et al. Effectiveness of the 40 adolescent
AIDS-risk reduction interventions: a quantitative review. J Adolesc
Health. 1997;20:204-215.
34.
Weeks K, Levy SR, Zhu C, et al. Impact of a school-based AIDS prevention
program on young adolescents' self-efficacy skills. Health Educ Res.
1995;10:329-344.
35.
Newman C, DuRant RH, Ashworth CS, Gaillard G. An evaluation of a
school-based AIDS/HIV education program for young adolescents. AIDS Educ
Prev. 1993;5:327-339.
36.
Miller BC, Paikoff RL. Comparing adolescent pregnancy programs: methods
and results. In: Miller BC, Card JJ, Paikoff RL, Peterson JL, eds.
Preventing Adolescent Pregnancy. Newbury Park, NJ: Sage Publications;
1992:265-284.
37.
Misovich SJ, Fisher WA, Fisher JD. Understanding and promoting AIDS
preventive behaviors: measures of AIDS risk reduction information,
motivation, behavioral skills, and behavior. In: Davis CM, Yarbor WH,
Bauserman R, Scheer G, Davis SL, eds. Sexuality Related Measures: A
Compendium. Newbury Park, NJ: Sage Publications; 1998.
38.
Warren CW, Kann L, Small ML, Santelli JS, Collins JL, Kolbe LJ. Age of
initiating selected health-risk behaviors among high school students in
the United States. J Adolesc Health. 1997;21:225-231.
39.
Siegel DM, Aten MJ, Roghmann KJ. Self-reported honesty among middle and
high school students responding to a sexual behavior questionnaire. J
Adolesc Health. In press.
40.
Aten MJ, Siegel DM, Roghmann KJ. Use of health services by urban youth:
a school-based survey to assess differences by grade level, gender, and
risk behavior. J Adolesc Health. 1996;19:258-266.
41.
National Research Council. Losing Generations: Adolescents in High Risk
Settings. Washington, DC: National Academy Press; 1993:42-43.
42.
US Department of Education, National Center for Education Statistics.
Dropout Rates in the United States., Washington, DC: US Dept of
Education; 1997. NCES publication 97-473.
43.
Hayes CD, ed. Risking the Future: Adolescent Sexuality, Pregnancy, and
Childbearing. Washington, DC: National Academy Press; 1987:241.
|