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Journal of Autism and Developmental Disorders (2019) 49:3231–3243
https://doi.org/10.1007/s10803-019-04047-
4
O R I G I N A L PA P E R
A Preliminary Study of Parent Activation, Parent‑Teacher Alliance,
Transition Planning Quality, and IEP and Postsecondary Goal
Attainment of Students with ASD
Lisa Ruble1 · John H. McGrew2 · Venus Wong3 · Medina Adams1 · Yue Yu
2
Published online: 13 May 2019
© Springer Science+Business Media, LLC, part of Springer Nature 2019
Abstract
The school, student and family factors underlying poor postsecondary outcomes of students with autism spectrum disorder
(ASD) are not well understood. The potential impact of school [e.g., transition planning quality (TPQ)], family (e.g., parent
activation), and student factors (e.g., adaptive functioning) and their interaction (e.g., parent-teacher alliance) on student out-
comes were examined. Student IQ and adaptive behavior, TPQ, and alliance correlated with IEP progress, with postsecondary
goal attainment generally and with student participation in training/education, specifically. However, only parent activation
and student externalizing behavior correlated with employment. Families and students, rather than school personnel, were
the primary persons in charge and in control of the implementation of postsecondary plans and required help across multiple
coaching sessions to implement plans fully.
Keywords ASD transition · COMPASS · Parent-teacher alliance · Transition planning quality · Parent activation
Federal education law requires public schools to provide
transition services as part of the Individualized Education
Program (IEP) for students with disabilities (Individuals
with Disabilities Education Act 2004). Transition services
are a results-oriented process for achieving measurable post-
secondary outcomes and include the services necessary to
help reach those outcomes. IEP goals, which are linked to
and support the post-secondary outcomes, should be based
on personalized strengths and interests of the student.
For students with autism spectrum disorder (ASD), the
promise of transition services is failing. Postsecondary out-
comes of students with ASD are worse than for students
with other disabilities (Certo et al. 2003; Taylor and Selt-
zer 2011). National surveys indicate youth with ASD have
lower rates of employment and report less self-determination
and satisfaction compared to youth with other disabilities
(Anderson et al. 2014; Wehman et al. 2014). Further, their
IEPs fail to integrate critical transition skills and are less
likely to have goals related to postsecondary outcomes of
employment, college, living independently, or gaining skills
to promote independence (Wehman et al. 2014).
For students who obtain employment or postsecond-
ary education, three broad areas have been associated with
successful transition planning: school, student, and parent-
related variables. School factors include interagency col-
laboration and program content, such as participation in
general education, and opportunities for the development
of targeted skills that relate to employment: vocational
skills training, self-care/independent living and social skills
training, support for transition, job placement services, and
college services (Chiang et al. 2013; Migliore et al. 2012;
Test et al. 2009). Student factors include gender, race, social
skills, intellectual ability, adaptive functioning, self-advo-
cacy and self-determination skills, and completion of high
school (Powers et al. 2008; Wehmeyer and Palmer 2003).
Specifically, students who are female, White, with higher
IQs, fewer autism symptoms, greater adaptive skills, and
increased agency are more likely to be employed. Parent and
family factors include household income, parental education,
family expectations, and parental involvement (Anderson
* Lisa Ruble
lisa.ruble@uky.edu
1 Department of Educational, School, and Counseling
Psychology, University of Kentucky, Lexington, KY 40506,
USA
2 Department of Psychology, Indiana-University-Purdue
University at Indianapolis, Indianapolis, USA
3 MIND Institute, University of California, Davis, USA
http://orcid.org/0000-0003-4419-240
6
http://crossmark.crossref.org/dialog/?doi=10.1007/s10803-019-04047-4&domain=pdf
3232 Journal of Autism and Developmental Disorders (2019) 49:3231–3243
1 3
et al. 2014; Hedges et al. 2014; Smith and Anderson 2014;
Snell-Rood et al. 2019; Southward and Kyzar 2017; Test
et al. 2009; Wehman et al. 2014). That is, students who
have parents with a bachelor’s degree or higher, with higher
income and expectations, and who are more involved with
school services are more likely to be employed (Chiang et al.
2013). Although some of the above variables are not amena-
ble to change (gender, IQ, race, income), numerous parent,
student, and school variables important to transition success
can be targeted for intervention (e.g., interagency collabora-
tion, student social skills, parent involvement).
This paper is a secondary analysis of data from an RCT
of a consultation intervention for transition-aged youth with
ASD. In prior reports, we described the Collaborative Model
for Promoting Competence and Success (COMPASS) as an
effective, manualized (Ruble et al. 2012a) student-centered
consultation intervention for promoting home-school col-
laboration and improving IEP goal attainment outcomes in
young children with ASD and more recently for transition-
age youth with ASD. COMPASS has been tested in two
randomized controlled trials (RCTs) of young children with
ASD, with large effect sizes (d = 1.5; 1.4; Ruble et al. 2010;
Ruble et al. 2013) and a third RCT for transition youth with
a very large effect size (d = 2.1; Ruble et al. 2018a).
Foundationally, COMPASS is a student-centered pro-
gram planning and implementation framework that incor-
porates the principles of evidence-based practice in psychol-
ogy (EBPP) to integrate the features of the evidence-based
practice, student/family characteristics, preferences, and
strengths, and teacher preferences, strengths, and resources
(McGrew et al. 2016) to inform and personalize the clini-
cal (educational) decision-making and intervention plan-
ning. COMPASS consists of an initial 3 h student-centered
planning session during which empirically and ecologically
informed autism appropriate personalized goals are iden-
tified and carefully delineated using psychometric equiva-
lence tested goal attainment scaling (PET-GAS; Ruble et al.
2012b), along with detailed teaching plans that incorporate
evidence-based practices (EBPs) best matched to achieve
them, as guided and structured within an EBPP framework.
This is followed by a series of four 60–90 min coaching
sessions that include evidence-based features of effective
coaching (performance feedback; progress monitoring, self-
reflection; Ruble et al. 2012a).
COMPASS for transition (COMPASS-T) begins with the
initial parent-teacher consultation session, but unlike COM-
PASS for young children, invites students with ASD to par-
ticipate in the initial consultation. Prior to the consultation,
all participants complete a COMPASS profile that includes
questions about the student’s self-management, adaptive,
communication, social, and learning/work behavior skills as
well as sensory preferences and avoidances. When able, stu-
dents with ASD are asked to complete a first-person version
of the COMPASS-T profile questionnaire. The combination
of perspectives shared during the discussion of the profile
support the identification of social, communication, and
work/learning IEP goals, the personal and environmental
challenges and supports related to attainment of the goals
and the personalized teaching plan for each goal. The ini-
tial consultation of COMPASS-T also focuses on post high
school goals such as (a) where they will be living, (b) how
they would spend their day, (c) how they will move about
in the community, (d) budgeting, (e) friendships, and (f)
leisure activities. Thus, goals and plans are also created for
the accomplishment of post-school goals. After this initial
consultation, the consultant meets with the teacher, the
student when possible, and the caregiver for four coaching
sessions throughout the school year (about every 4 weeks).
During the coaching sessions, the team review data on the
student’s progress toward the IEP and postsecondary goals
as well as the strategies to meet the goals. Issues related to
implementation of the plans to reach the goals are discussed
and problem-solved. See Ruble et al. (2019) for more detail
about the adaptation process applied to COMPASS-T.
The purpose of the current study is to increase our under-
standing of the impact on transition outcomes of two of the
three elements of the EBPP framework—student/parent and
school characteristics (McGrew et al. 2016). Currently, most
research has focused on identifying evidence-based transi-
tion practices that form the third EBPP element with little
consideration for the impact of the school and student/par-
ent variables on the educational outcomes. Moreover, extant
research with respect to parent factors, has tended to focus
on static and difficult to change demographic variables such
as educational level and income. Few studies have focused
on variables that are potentially malleable, such as parent
involvement and expectations. Thus, a better understand-
ing of modifiable parent factors may help pinpoint targeted
interventions that enhance parent informed variables and
thus student outcomes. In particular, we were interested in
understanding more about parent involvement when con-
ceptualized as activation. Activation usually refers to having
the information, beliefs, skills, knowledge, and motivation
to participate in managing one’s care (Hibbard et al. 2005).
However, for parents of children with disabilities, activation
can also refer to activities to support their children as par-
ents often are the core decisionassociation of activation and
satisfaction makers (Ruble et al. 2018b; Kucharczyk et al.
2015). The is important because parents who are satisfied
with their child’s education are more involved (Burke and
Hodapp 2014; Zuna 2007), and involvement, in turn, has
been associated with positive transition outcomes (Wehman
et al. 2014). Moreover, in a study of empowerment, a related
construct with activation (Boloor et al. 2019; Taylor et al.
2017), researchers demonstrated that more empowered
parents had more knowledge and were more successful in
3233Journal of Autism and Developmental Disorders (2019) 49:3231–3243
1 3
obtaining community-based services including employment
for their child with ASD (Taylor et al. 2017). Thus, parent
perceptions of their own activation or empowerment regard-
ing the management of their child’s needs is potentially pre-
dictive of outcomes for transition age youth.
With respect to student variables, several have been
shown to be related to transition outcomes. For example,
previous research indicates that for students with ASD, those
with comorbid intellectual disability and/or low adaptive
skills or problem behaviors experience worse postsecondary
outcomes (Chiang et al. 2013). Accordingly, in the current
study, we assessed the impact of these variables on transi-
tion outcomes.
For school-related variables, we were interested in transi-
tion planning quality and alliance between parents and teach-
ers. As Wehman and others (2014) have noted, good transi-
tion outcomes require good transition planning (Chiang et al.
2013; Schall et al. 2014; Wehman et al. 2014). However,
Cameto and colleagues (2004) found about one quarter of
parents of students with ASD felt that the transition plan-
ning was not very useful. Despite high levels of parental
participation during the transition process, more than 40%
of parents reported that IEP goals were determined mostly
by the school (Cameto et al. 2004), indicating that parents
might not be the core decision makers in the process. Even
worse, almost one-third parents did not receive information
about post-school services (Cameto et al. 2004).
However, one barrier to the quantitative study of the
association between planning quality and transition out-
comes has been the lack of valid measures. Existing data on
transition planning quality are largely limited to qualitative
studies of barriers related to transition planning and imple-
mentation (e.g., Snell-Rood et al. 2019). The elements of a
high quality transition plan includes many of the program
variables described earlier (e.g., goals related to transition
service needs; interagency collaboration), as well as encour-
agement of parent and student input into goal selection and
intervention planning, measurable goals that are updated
annually, and that are prioritized and based on the needs,
interests, and strengths of the student, and understanding of
resources (IDEA 2004). Accordingly, we developed a meas-
ure to quantify transition planning quality and explore asso-
ciations between transition planning quality and parent and
student variables. Because parents represent a critical con-
stituent and participant in transition planning, we included
their perspective as an informant.
In addition to a lack of information concerning the poten-
tial impact of transition planning quality on postsecondary
outcomes of students with autism, we have little descriptive
data on the plans themselves, including the postsecondary
goals and intervention plans, and responsible agents. Thus,
we collected follow-up information from students receiving
the COMPASS-T intervention, such as who was primarily
responsible for implementing the plans for achieving post-
secondary goals. For example, although there are best prac-
tice guidelines within federal law that mandate goals for
independent living, vocation, and education (IDEA 2004),
details such as who is responsible for ensuring the imple-
mentation of plans related to the postsecondary goals are
unknown. Finally, transition planning is intended to be an
ongoing process and not a one-time event. However, little is
known about the frequency or intensity of the support avail-
able and needed to implement plans to reach postsecondary
goals. For example, when successfully implementing IEP
plans, Ruble and colleagues (2010, 2013, 2018a) noted the
need for teacher coaching across the school year.
We also were interested in alliance between school and
parent because transition requires joint planning and efforts.
The character and quality of the collaboration between the
parent and the school is potentially predictive of transition
success. That is, in addition to the importance of parental
involvement during transition (Southward and Kyzar 2017;
Wehman et al. 2014), family-school collaboration is another
critical factor (Schall et al. 2014). One measure of collabo-
ration is alliance, referring to mutually supportive relation-
ships and agreement about goals and strategies. Alliance has
consistently been found to be one of the strongest predictors
of psychotherapy success (Norcross and Wampold 2011),
but its role in the context of parent-teacher partnership is
less understood. With respect to the educational field, quali-
tatively, focus group studies of critical stakeholders strongly
support the idea that differences in expectations of transi-
tion planning and outcomes between teachers and parents
can interfere with effective transition (Hedges et al. 2014;
Snell-Rood et al. 2019). Moreover, quantitatively, good alli-
ance has been related to satisfaction, and parent satisfaction
with the parent-school partnership in turn, has been associ-
ated with parental involvement in their child’s educational
program (Burke and Hodapp 2014; Zuna 2007). Increased
parental involvement facilitates student’s classroom engage-
ment (Hughes and Kwok 2007), achievement (Hughes and
Kwok 2007), social emotional and behavioral functioning
(Izzo et al. 1999), which are critical to successful learning.
However, to date, despite its potential importance, empirical
evidence of the impact of parent-teacher alliance on IEP and
postsecondary goal attainment is unknown.
Based on the above, we expected that student characteris-
tics associated with educational success (higher IQ and adap-
tive skill and fewer externalizing behaviors), parent involve-
ment (activation), transition planning quality (TPQ) and
parent-school collaboration (alliance) would all be related
to better overall IEP and postsecondary goal attainment, as
rated by both parents and teachers. In addition, we wanted to
explore how each of these variables differentially related to
type of postsecondary outcome (i.e., employment, training/
college, residential, budgeting, transportation, leisure, and
3234 Journal of Autism and Developmental Disorders (2019) 49:3231–3243
1 3
friendships). Also, we wanted to understand how well and
by whom the plans for achievement of postsecondary goals
for COMPASS-T group participants were executed. Accord-
ingly, we identified who was responsible for implementation
of postsecondary intervention plans as well as progress made
toward implementation of the plans over the school year. We
had four primary research questions: Do student IQ, adap-
tive and externalizing behaviors, parent activation, transi-
tion planning quality, and parent-teacher alliance correlate
with IEP and postsecondary goal attainment of students with
ASD in general and by domain of postsecondary outcomes
(residential, vocational, etc.)? For postsecondary goals, who
was responsible for implementation of the plans? How did
progress of implementation of plans to achieve postsecond-
ary goals change over time during the final year of school?
Method
Participants
Twenty special education teachers and 20 students with
ASD and their parents were recruited. All students received
special services under the educational category of autism
(IDEA 2004) and met the Diagnostic and Statistical Man-
ual (DSM) criteria for either DSM-IV-TR or 5 for Autistic
Disorder/Autism Spectrum Disorder (American Psychiatric
Association [APA] 2004; APA 2013) as confirmed by the
Autism Diagnostic Observation Schedule—second edition
(ADOS-2; Lord et al. 2012). Students’ ages ranged between
17 and 20 years, with a mean of 18.2 years (SD = 1.1). Forty
percent (n = 8) of the students were taught in general edu-
cation full time; 20% (n = 4) in general and special educa-
tion; and 40% in (n = 8) special education full time. Ninety
percent of the students were male, 70% were White, 15%
Black, 5% Asian, and 10% multi-racial. Autism severity was
assessed using the standard or high-functioning versions of
the Childhood Autism Rating Scale, Second Edition (CARS-
2; Schopler et al. 2010). Cognitive level was evaluated using
the Kaufman Brief Intelligence Test, Second Edition (KBIT-
2; Kaufman and Kaufman 2004). Adaptive behavior was
assessed with the teacher and parent rating forms of the
Vineland Adaptive Behavior Scales, Second Edition (VABS-
II; Sparrow et al. 2005). Lastly, the composite score from the
Behavior Assessment System for Children Second Edition
(BASC-2; Reynolds and Kamphaus 2004) for externalizing
and internalizing behaviors was assessed. See Table 1 for
sample descriptive statistics. No differences between the
control and COMPASS-T group for student characteristics
such as age, gender, adaptive skills, IQ, services received,
hours of services received, autism severity; teacher factors
of years of teaching, number of students taught, and family
factor of income was observed and reported in (Ruble et al.
2018a).
Thirty-five percent (n = 7) of the students with ASD
lived with both parents; 45% (n = 9) lived with their mother;
10% (n = 2) lived with their father; 5% (n = 1) lived with
another caretaker; and the living situation for 5% (n = 1)
was not reported. For parents or caregivers, the mean num-
ber of years of schooling for mothers was 14.7 years (range
12–19 years; 5 missing) and for fathers was 15.0 years
(range 12–19; 6 missing). Also, 35% of mothers and 30% of
fathers had a 4-year college degree or higher. Fifteen percent
of families had incomes less than $10,000; 10% between
$10,000 and $25,000; 35% between $25,000 and $49,999;
25% between $50,000 and $100,000; and 15% more than
$100,000.
All teachers were certified educators; 10% had a BA, 85%
had an MA, and 5% had a doctorate. The mean number of
years of experience teaching in special education was 12.3,
and the mean number of students with autism taught was
35. All but three of the teachers were female. The study was
IRB approved.
Sampling
The study took place in public schools located in one Mid-
western and one South Central state. After obtaining permis-
sion at the district level, the researchers contacted teachers
directly via email or phone. Teachers had to be the primary
teacher of record/case manager of the IEP for a student with
ASD meeting the eligibility criteria. Once a teacher agreed
to be in the study, one student with ASD was randomly
selected from each teacher’s class or caseload. Students were
eligible if they had a medical and educational diagnosis of
autism/ASD and were in their final year of school. Parents
had to be comfortable speaking English. Teachers were then
Table 1 Mean scores of child variables
CARS childhood autism rating scale, ST standard version, HF high
functioning version, Vineland vineland adaptive behavior scales, TR
teacher report, PR parent report, BASC behavior assessment scale for
children, Ext externalizing behavior, Int internalizing behavior
Variable M SD
Child age (years) 18.20 1.1
1
CARS (ST) 37.83 11.41
CARS (HF) 28.25 3.05
PR Vineland 66.44 14.62
TR Vineland 71.80 14.42
KBIT-2 IQ 75.65 27.0
8
PR BASC Ext 48.05 6.63
PR BASC Int 52.47 8.43
TR BASC Ext 51.20 6.83
TR BASC Int 52.40 8.62
3235Journal of Autism and Developmental Disorders (2019) 49:3231–3243
1 3
asked to share a letter with the student’s parent or caregiver
about the study. Parents were asked to contact the research-
ers directly or provide permission to their child’s teacher for
the teacher to forward contact information to the research-
ers. Following a baseline Time 1 assessment, teacher–child
dyads were randomized into groups by a research team mem-
ber not directly involved with the study; 11 were randomized
into the experimental condition by a researcher independent
of the intervention team. The control group teachers (n = 9)
received online training on three evidence-based practices
of their choosing from the National Technical Assistance
Center on Transition website (National Technical Assistance
Center on Transitin, n.d.). Of the parent/caregiver respond-
ents, 85% (n = 17) were mothers; 10% were fathers (n = 2),
and 5% was a great aunt who had guardianship (n = 1).
Educational Outcomes, Parent and School Variables
To assess correlates of progress on IEP and postsecondary
goal attainment, measures of postsecondary goal attainment,
domain of goal attainment, transition planning quality, par-
ent activation, and parent-teacher alliance were administered
and collected. Also, the COMPASS-T consultant obtained
data on who had primary responsibility for the implementa-
tion of postsecondary plans.
IEP Goal Progress—Parent and Teacher Ratings
Parents and teachers assessed IEP goal progress with a
Likert-type scale questionnaire. Parents and teachers were
asked to think of where the student was at the beginning of
the school year with the specific skill (goal) and rate how
much progress had been made to date using a five-point
scale (1 ‘none at all’ to 5 ‘a great deal’) for each of the
three monitored IEP goals. Because COMPASS-T prior-
itized the development of goals that represent the pivotal
areas of instruction for students with autism—social, com-
munication, and learning/work behavior skills, similar goal
domains were selected for the control group students for end
of the year progress. For the control group, the number of
goals ranged from two to three. For the COMPASS-T group,
the three goals identified during the consultation were evalu-
ated. Informants’ judgments of goal progress were internally
consistent across the three goals (alpha) for the parent meas-
ure (α = .81) and the teacher measure (α = .69). Given the
internal consistency (alpha) in attainment across goals, the
overall mean rating was used in analysis.
IEP Goal Progress‑Psychometrically Equivalence Tested
Goal Attainment Scaling (PET‑GAS)
PET-GAS was used to evaluate IEP progress by an inde-
pendent evaluator unaware of experimental condition.
PET-GAS uses an idiographic approach because each stu-
dent had different goals, baseline skill levels associated with
the goals, and teaching plans. PET-GAS incorporates several
procedures to ensure high quality, comparable, and objective
goal attainment assessment (Ruble et al. 2012b). Each goal
attainment scale used a five-point rating scale: − 2 = stu-
dent’s present levels of performance, − 1 = progress,
0 = expected level of outcome by the end of the school year,
+1 = somewhat more than expected, +2 = much more than
expected. Half-scores were allowed when raters observed
skill levels between two benchmarks. A score of zero repre-
sented improvement consistent with the actual description of
the written IEP objective. PET-GAS pre- and post-treatment
ratings were based on video demonstrations, work samples,
and/or data collected by the teacher. Two coders indepen-
dently coded 65% of the goals at baseline and three cod-
ers independently rated 35% at final evaluation. Interrater
agreement (two-way random) as measured using the sample
ICC for single measures was .94 at baseline and .86 at final
evaluation. The primary rater scores were used for analyses.
Postsecondary Goal Progress
Consultants, parents and teachers assessed postsecondary
goal progress using a Likert-type three-point scale to assess
how much progress the student made in each of the fol-
lowing goals: (a) taking classes or receiving other types of
training; (b) being employed or working; (c) living indepen-
dently or with support; (d) using public transportation or
obtaining a driver’s license; (e) making financial decisions
with or without support; (f) participating in recreational or
leisure skills; and (g) making friends. The internal consist-
ency (alpha) across goals for the parent measure was .91
and for the teacher measure was .78. Given the consistency
in progress across goals, the overall mean was used in the
initial data analysis. The parents and teachers completed the
scale at the end of the school year. For the COMPASS-T
group only, the consultant completed the scale during each
coaching session. The individual items were examined to
answer the third research question.
Transition Planning Quality (TPQ)
TPQ was assessed using a 30-item four-point Likert parent
report scale (1 ‘strongly disagree’ to 4 ‘strongly agree’).
The TPQ was developed for this study to capture the quality
of the transition planning process based on best-practices
for transitioning youth (IDEA 2004; Landmark et al. 2010),
Indicator 13 (IDEA 2004), and focus group results collected
from more than 40 stakeholders (e.g., policy makers, par-
ents, teachers; Snell-Rood et al. 2019). Example items are
“My child’s post-high school goals are based on my child’s
interests and strengths; My child’s school provides me with
3236 Journal of Autism and Developmental Disorders (2019) 49:3231–3243
1 3
sufficient information and opportunities to meet so that I
understand and am able to participate in my child’s transi-
tion; I am involved in the decision-making process for my
child’s education.” The internal consistency of the TPQ was
.98. The overall mean score was used for analysis.
Parent Activation
Parent activation was assessed with the 13-item Parent Acti-
vation Measure for Developmental Disabilities (PAM-DD;
Ruble et al. (2018b) with permission from Insignia). Activa-
tion refers to one’s ability to self-manage a chronic condi-
tion; in this case, we assessed parents and caregiver’s beliefs,
skills, knowledge, and motivation related to the management
of their child with ASD (Hibbard et al. 2005). The PAM-DD
assesses four states of activation: (a) belief of the importance
of managing ASD; (b) the confidence and knowledge nec-
essary to take action regarding the care of their child with
ASD; (c) taking action to maintain or improve their child’s
issues related to ASD; and (d) ability to persist in the face
of challenges in the care of their child with ASD. The PAM
is based on hierarchical developmental states. It is thought
that the first level of belief is followed by the second level
of confidence, which is then followed by action, and con-
cludes with persistence. Parents of children with ASD with
higher PAM-DD scores report greater ability to manage their
child’s issues and lower ratings of parent stress (Ruble et al.
2018b). Items on the PAM-DD are ordered using Guttman
scaling. The internal consistency (alpha) of the PAM-DD in
the current sample was .75. The ratings based on the Gutt-
man scoring provided by Insignia were used for analysis.
Parent and Teacher Alliance (PTA)
PTA was assessed with an adapted version of the Parenting
Alliance Inventory (PAI; Abidin and Brunner, 1995). The
original 20-item PAI assessed the degree to which a parent
believes that they have a helpful working relationship with
the child’s other parent. We adapted the PAI to focus on a
helpful working relationship with the child’s teacher. Rat-
ings were obtained using a five-point Likert-type scale (1
‘strongly disagree’ and 5 ‘strongly agree’). Example items
included “My child’s teacher treats me as a partner in the
development of my child’s education plan” and “My child’s
teacher and I communicate well about my child.” The inter-
nal consistency (alpha) of the PTA in the current sample was
.93. The overall mean score was used for analysis.
Data Analysis Plan
Using the combined sample, we calculated Pearson Cor-
relations controlling for group assignment to examine the
concurrent associations between the student variables,
parent-teacher alliance, transition planning quality, parent
activation and IEP and postsecondary goals and outcomes
using SPSS 24 (IBM Corp. Release 2017). Using a sub-
sample of COMPASS-T participants only, we used Fried-
man’s multiple comparison test to understand the progress
in implementation of transition plans over time. This was
conducted with the COMPASS-T group only because data
were not available from the control group.
Results
Table 1 lists the means and standard deviations for the
student variables. The overall adaptive behavior scale was
about two standard deviations below the mean as reported
by parents (M = 66.44; SD = 14.62) and in the low to
moderately low range as reported by teachers (M = 71.80;
SD = 14.42). Consistent with the adaptive behavior scores,
IQ was in the below average range, with an overall mean
of 75.65 (SD = 27.08). The mean composite T-score for
externalizing and internalizing behaviors based on par-
ent report was 48.05 (SD = 6.63) and 52.47 (SD = 8.43)
and for teacher report was 51.20 (SD = 6.83) and 52.40
(SD = 8.62) respectively, all within the average range.
Analysis Based on the Combined Sample
The first and second research questions examined vari-
ables associated with parent and teacher report of overall
postsecondary and IEP goal progress and by domain of
postsecondary outcomes (residential, vocational, etc.). We
report each separately.
Correlates of Postsecondary Progress
Table 2 shows the results. Teacher and parent report were
not correlated (r = .23, p > .05). With respect to parent
report, the significant correlates of postsecondary progress
rank ordered by size of correlation were parent report
of IEP progress (r = .73), IQ (r = .68), teacher alliance
(r = .56), student adaptive behavior (both teacher [r = .
57] and parent [r = .53] report), transition planning quality
(r = .48), parent activation (r = .44), internalizing behavior
(both parent [r = .42] and teacher [r = .37] report), and, at a
trend level (p < .10), parent report of externalizing behav-
ior (r = − .33), and PET-GAS (r = .33). With respect to
teacher report, the significant correlates were parent acti-
vation (r = .58), externalizing behavior (r = − .58), PET-
GAS (r = .47), parent alliance (r = .45), teacher report of
3237Journal of Autism and Developmental Disorders (2019) 49:3231–3243
1 3
IEP progress (r = .42) and adaptive behavior (both teacher
[r = .39] and parent [r = .43] report).
Correlates of IEP Progress
Parent and teacher report of IEP progress were correlated
(r = .55, p < .01). With respect to parent report of IEP pro-
gress, the significant correlates rank ordered by size of
correlation were parent report of alliance (r = .51), transi-
tion planning quality (r = .47), IQ (r = .41), and PET-GAS
(r = .31) at a trend level (p < .10).Teacher report of IEP
progress correlated with PET-GAS (r = .48) and alliance
(r = .34) at a trend level (p < .10).
For the question about correlates with specific postsec-
ondary outcomes (i.e., education/training, etc.), Table 3
provides the results. Continued education/training fol-
lowing school was significantly correlated with parent
activation, transition planning quality, and parent-teacher
alliance as reported by parents (r = .44, p < .10; r = .48,
p < .05; r = .56, p < .05) respectively, as well as with youth
adaptive behavior skills by parent and teacher report
(r = .53; p < .05; r = .57, p < .05, respectively). However,
attainment of employment goals was only correlated with
parent activation (r = .47, p < .05) and externalizing behav-
ior (r = − .56, p < .05). Living situation goals (r = .49,
p < .05; r = .44, p < .10) and making financial decisions
goals (r = .46, p < .10; r = .49, p < .05) were both corre-
lated with transition planning quality and parent-teacher
alliance. In addition, goals related to budgeting correlated
with youth IQ (r = .67, p < .01), parent report of eternal-
izing behavior (r = − .51, p < .05), and parent and teacher
report of adaptive skills (r = .59, p < .05; r = .61, p < .01, respectively). However, none of the student variables cor- related with living situation, and only parent-reported externalizing behavior correlated with goals related to transportation or driving (r = − .52, p < .05). Making friends was correlated with transition planning quality (r = .45, p < .05) and with IQ (r = .58, p < .01).
To answer the last two research questions of who was
responsible for implementation of the plans for achieving
postsecondary goals and how did progress of implementa-
tion of plans to achieve postsecondary goals change over
time, only data from the COMPASS-T group was available
and used for analysis. Descriptive analysis of the person(s)
charged with the implementation of the postsecondary goal
plans revealed that students and their parents were the per-
sons primarily responsible for the COMPASS-T-generated
transition plans (see Fig. 1). For plans related to work or
school, transportation, leisure, and friends, the student was
the most frequently identified implementer followed by par-
ents. Parents were the primary individual charged with over-
seeing plans for goals related to where the student would live
and finances or budgeting. Teachers were least frequently
identified as the implementer of any of the post-secondary
plans (i.e., for work/school, living, transportation, budgeting,
leisure, and friendships).
The fourth question explored how postsecondary goal
progress in implementing transition plans changes over time.
Figure 2 shows the mean scores for consultant-rated progress
assessed at each coaching session. Progress from baseline
in plan implementation was noted across all domains. How-
ever, a slight reduction was observed for plans related to
Table 2 Partial correlations
of parent and teacher report of
progress and parent report of
transition quality, activation,
alliance, and child variables
Based on one-tailed test; PR = parent report; TR = teacher report
^p < .l;
*p < .05; **p < .01; ***p < .001
PR postsecond-
ary progress
PR IEP progress TR postsecond-
ary progress
TR IEP progress
PR IEP progress .70***
TR postsecondary progress .23 .13
TR IEP progress .08 .55** .42*
PET-GAS .33^ .31^ .47* .48*
Transition planning quality .48* .47* .25 .02
Parent activation .44* .22 .58** .12
PR alliance .56** .51* .45* .14
TR alliance .18 .36^ .13 .34^
IQ .68*** .41* .03 − .14
PR externalizing behavior − .33^ − .19 − .19 .11
PR internalizing behavior .42* .31 .17 0.04
TR externalizing behavior − .07 − .13 − .58** − .18
TR internalizing behavior .37* .08 .02 .07
PR adaptive behavior .53* .29 .43* .19
TR adaptive behavior .57** .16 .39* − .11
3238 Journal of Autism and Developmental Disorders (2019) 49:3231–3243
1 3
Table 3 Partial correlations of parent variables and parent report of postsecondary outcomes by domain
Based on two-tailed test; italicized variables are considered malleable
^p < .l; *p < .05; **p < .01; ***p < .001
Taking classes
or receiving
other types of
training
Being
employed or
working
Living indepen-
dently or with
support
Using public
transportation
or obtaining a
driver’s license
Making financial
decisions with or
without support
Participating in
recreational or
leisure skills
Making friends
Transition plan-
ning quality
.48* .26 .49* .37 .46^ .23 .47*
Parent activation .44^ .47* .30 .17 .39 .36 .28
PR alliance .56* .30 .44^ .39 .49* .37 .37
TR alliance .18 .00 .21 .16 .34 .43^ .41^
IQ .71*** .33 .33 .35 .67** .27 .58**
PR externalizing
behavior
− .34 − .56* − .29 − .52* − .51* − .40^ − .21
PR internalizing
behavior
.44^ .24 .44^ .18 .21 .18 .31
TR externalizing
behavior
− .07 − .37^ − .16 − .20 − .39^ − .32 − .13
TR internalizing
behavior
.37 .21 .17 .04 − .12 .22 .1
0
PR adaptive
behavior
.53* .25 .05 .26 .59* .27 .44^
TR adaptive
behavior
.57* .14 .21 .30 .61** .14 .28
-2
0
2
4
6
8
10
Work/School Live Transporta�on Budge�ng Leisure Friends
Implementers of Post-Secondary Plans by Domain
Student Parent Teacher Other
Fig. 1 Progress toward postsecondary goals by domain based on three-point scale (1’no progress’; 2 ‘some progress’; 3 ‘plan fully imple-
mented’)
3239Journal of Autism and Developmental Disorders (2019) 49:3231–3243
1 3
work or school for the last two coaching sessions. Similarly,
there was a leveling of progress between coaching three and
four for living arrangements and for developing friendships.
Table 4 shows changes in adherence to implementa-
tion of plans for attainment of postsecondary goals over
the four coaching sessions for the COMPASS-T group
for each domain. Significant differences in mean ranks
were observed for all domains over time (χ2 = 7.8–13.68,
p < .05). Specifically, parent/student adherence increased
over time for each domain. However, similar to what was
found above for progress, there was a leveling off or slight
reduction in adherence noted for four of the six domains
(work, living situation, leisure, social) between coaching
sessions three and four.
Discussion
Reducing the disparities in outcomes for students with
ASD after high school is a priority for families, educators,
researchers, public schools, and federal agencies (Intera-
gency Autism Coordinating Committee 2012). This pre-
liminary analysis of a small sample suggests important cor-
relates of postsecondary goal achievement and sheds light
on new variables associated with good as well as poor out-
comes not previously reported. Prior research summarized
by Wehman et al. (2014) identified school-related predictors
of postsecondary success as career awareness, community
experiences, inclusion in general education, interagency col-
laboration, occupational courses, paid work experiences, in
addition to parent and student-related predictors of parental
involvement, self-advocacy and self-determination, self-
care/independent living, social skills, and student support
for the transition program.
1
1.5
2
2.5
3
Work/School Live Transporta�on Budge�ng Leisure Friends
Progress with Postsecondary Plans by Domain
Coach 1 Coach 2 Coach 3 Coach 4
Fig. 2 Frequency reporting of primary person responsible for the implementation of plans for achieving postsecondary goals
Table 4 Mean ranks and Chi square analysis of post-secondary pro-
gress over coaching sessions by domain
*p < .05; **p < .01; ***p < .001
Domain Coaching session Friedman’s
test Chi
square1 2 3 4
Work/day activity 1.73 2.59 2.95 2.73 9.65*
Live 1.86 2.59 2.77 2.77 12.75**
Transportation 1.81 2.14 2.68 3.27 13.68**
Financial/budgeting 1.94 2.39 2.61 3.06 7.8*
Leisure 1.69 2.06 3.06 3.19 13.70**
Social 1.50 2.10 3.20 3.20 10.36**
3240 Journal of Autism and Developmental Disorders (2019) 49:3231–3243
1 3
Identification of Malleable Factors Associated
with Positive Postsecondary Outcomes
In the current study, new parent- and school-related vari-
ables associated with positive postsecondary outcomes were
identified. Positive post school goal attainment outcomes
as reported by parents confirmed prior research and also
extended findings to new areas not yet reported (i.e., tran-
sition planning quality, parent-teacher alliance, and parent
activation). As reported by parents, higher transition plan-
ning quality and greater parent-teacher alliance were related
to greater progress toward IEP and postsecondary goals. The
importance of transition planning quality and parent-teacher
alliance is that these areas can be changed and are controlled
at least in part by school/teacher actions. Thus, quality of
transition planning and alliance may represent underlying
features necessary for positive student outcomes. Interven-
tions designed to improve transition planning quality and
parent-teacher alliance can help promote these two areas of
potential change and improvement. Further, the findings help
operationalize at least three of the five features of Kohler
et al. (2016) transition planning rubric: family engagement
(activation), program structure (transition planning qual-
ity), and interagency collaboration (alliance). Of additional
interest, teacher report of postsecondary outcomes also cor-
related with parent activation, highlighting the importance
of parents who are both involved and informed as well as
persistent.
Predictors of Postsecondary Progress by Domains
Analysis of progress toward individual postsecondary goal
domains revealed additional information. A general conclu-
sion was that the variables associated with postsecondary
progress varied by domain, a finding further buttressed by
the fact that different individuals were primarily responsi-
ble for implementing plans within each domain. For one of
the key postsecondary outcomes—employment, neither IQ
nor adaptive behavior nor any of the school variables cor-
related with progress on plans for employment, a finding that
was unexpected given previous research on the association
between autism severity, IQ, and employment. However,
parent activation and externalizing behavior were related
to employment. This suggests a critical role of the parent in
supporting the student in obtaining employment and also the
potential negative impact of externalizing behaviors for hir-
ing and maintaining employment. This is consistent with the
emerging literature that shows that behavioral problems are
associated with poorer employment outcomes (Ballaban-Gil
et al. 1996; Hendricks and Wehman 2009; Taylor and Seltzer
2011). But internalizing behaviors may also be important
because parent report of internalizing behavior correlated
at a trend level with taking classes or living independently.
The lack of correlations between post-school employment
and school variables also suggests a relatively weaker role of
the school in this area despite the strong emphasis on obtain-
ing employment in federal guidance for transition planning
(IDEA 2004). In contrast to the findings for employment,
greater independence in living situations and in making
financial decisions was more strongly related to school fac-
tors, specifically, having a high-quality transition plan, and
strong parent-teacher alliance. This suggests the importance
of the school working together with the parent in helping to
create the skills and conditions necessary to support inde-
pendence in these areas.
The findings also revealed some areas with little impact
by the school or parent. For example, none of the correla-
tions between school or parent variables and transportation
skills or recreation/making friends were significant. These
may be areas with relatively little emphasis in transition
planning implementation, despite their general inclusion as
goals. For example, Cameto and colleagues (2004) reported
that of all the transition plans they analyzed, more than half
(57%) contained goals targeting social skills development.
However, despite the efforts for goal setting and planning,
only 66% of students with autism had an IEP that specified
a course of study to meet those transition goals, highlighting
a lack of detailed documentation of the means to achieve
transition goals (Cameto et al. 2004).
Also of interest is the relatively strong impact of student
variables on post-secondary outcomes. Student variables
recorded the largest correlations with five of the seven post-
secondary domains: taking classes/training, making finan-
cial decisions and making friends (all positively related to
IQ), and being employed and ability to use transportation
(negatively related to externalizing behavior). These findings
serve to emphasize the potential limiting impact of relatively
immutable student variables (IQ) on transition outcomes
while also highlighting the importance of identifying and
intervening with malleable school or parent factors. Together
the findings above illuminate areas of postsecondary out-
comes that can be impacted by parent involvement through
school resources as well as those areas that appear to fall
more squarely on the parent and student, independent of
school.
Role of Parents and Students in Postsecondary Plans
The finding that parents and students with ASD are the most
frequently identified persons responsible for the implemen-
tation of plans related to postsecondary outcomes has not
been reported in the literature to our knowledge. This find-
ing is important because research indicates that compared
to peers, youth with ASD are less likely to participate in
their own transition planning (Wehman et al. 2014). Further,
they report lower self-determination, including the ability
3241Journal of Autism and Developmental Disorders (2019) 49:3231–3243
1 3
to feel confident in making their own decisions (Wehman
et al. 2014). In addition, they are less likely to have tran-
sition goals of postsecondary education, employment, or
living independently. When plans for postsecondary goals
fall mainly on parents and students to implement, the lack
of participation in planning as well as a lowered sense of
agency related to identifying goals, developing plans, and
implementing plans may help explain the disproportionate
negative postsecondary outcomes of students with ASD.
Underlying difficulties in ASD include executive function
impairments that may worsen with age (Rosenthal et al.
2013), problem solving skills (Pugliese and White 2014),
social communication skills (APA 2013), and initiation
skills Hume et al. (2009; 2014). To expect students with
ASD to implement plans for postsecondary goals without
adequate supports may help highlight the issues underly-
ing the poor outcomes. Of interest, there is now promising
research on interventions designed to improve parent and
student knowledge and skills for obtaining services (DaWalt
et al. 2018). In a pilot study, DaWalt et al. (2018) tested
an 8-week program called Transitioning Together using a
randomized waitlist control to reduce family distress and
improve adolescent social functioning. The results included
increased problem solving for parents and improved social
interactions for youth—key areas related to positive post-
secondary outcomes. In another study, Taylor et al. (2017)
tested a 12-week intervention called the Volunteer Advo-
cacy Project—Transitioning using a randomized controlled
design to teach parents to advocate for adult disability ser-
vices. Results indicated increased knowledge about the
adult service system, advocating for services, and feelings
of empowerment.
At the point of transition planning and exiting high
school, parents of students with ASD generally experience
a number of challenges, for instance, they are older, and
experience more physical and mental health issues (see
Greenberg et al. 1993; Ha et al. 2008). In addition, they often
experience financial hardship (Parish et al. 2015) because
the costs of long-term caring for a child with ASD are high.
These common life experiences may add to the family stress
during the transition period.
The finding that plans for postsecondary goals take time
to implement is also informative. In this study, students in
their final year of school and their parents required a school
year to make significant progress over time with implemen-
tation of postsecondary plans. These findings support the
need for ongoing coaching and support provided directly to
parents and students for plan development, implementation,
and problem solving. The data also indicate that a one-time
meeting to share information about community resources
on employment, living, etc. is not sufficient—a finding also
reported by stakeholders (Snell-Rood et al. 2019); families
and students require multiple sessions to implement plans
for postsecondary goal accomplishment.
Limitations and Future Directions
This is a small study that has several limitations. For exam-
ple, the TPQ and alliance measures were adapted or cre-
ated for the study and although they demonstrated adequate
reliability, require further testing to establish psychometric
validity. Similarly, the parent and teacher reports of progress
were single item measures and may not adequately capture
all aspects of progress. The small sample size also limits our
ability to generalize to other samples and may have reduced
our ability to detect significant associations between varia-
bles. However, although the sample size limits the reliability
of findings in the current study, the fact that we were able to
obtain significant findings highlights the potential size of the
underlying effects and suggests the need for further research.
Our findings suggest future directions and new areas of
research for intervention. Transition planning that integrates
both home and school goals, plans, and implementation
strategies is necessary. Interventions that target and support
families and students should be developed to promote the
accomplishment of postsecondary goals. These strategies
include approaches that improve home-school alliance and
transition planning quality.
Acknowledgments We are grateful to the teachers, families, and chil-
dren who generously donated their time and effort. We extend our
thanks to special education directors and principals for allowing their
teachers to participate.
Author Contributions LR and JHM conceived the study, participated in
its design and coordination, statistical anlaysis, and drafted the manu-
script. VW, YY, and MA participated in the coordination of the study
and draft of the manuscript. VW developed the TPQ.
Funding This work was supported by Grant Number 5R34MH104208
from the National Institute of Mental Health. The content is solely the
responsibility of the authors and does not necessarily represent the
official views of the National Institute of Mental Health or the National
Institutes of Health.
Compliance with Ethical Standards
Ethical Approval All procedures performed in this study were in
accordance with the ethical standards of the institutional research com-
mittee and with the 1964 Helsinki declaration and its later amendments.
Informed Consent Informed consent was obtained from all individual
participants included in the study.
3242 Journal of Autism and Developmental Disorders (2019) 49:3231–3243
1 3
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https://doi.org/10.1037/a0031299
https://doi.org/10.1037/a0031299
https://doi.org/10.1037/a0032003
https://doi.org/10.1037/a0032003
https://doi.org/10.1007/s10803-018-3623-9
https://doi.org/10.1007/s10803-016-2994-z
https://doi.org/10.1007/s10803-016-2994-z
https://doi.org/10.1007/s10803-010-1070-3
https://doi.org/10.1007/s10803-010-1070-3
https://doi.org/10.1177/1044207313518071
https://doi.org/10.1177/1044207313518071
Journal of Autism & Developmental Disorders is a copyright of Springer, 2019. All Rights
Reserved.
Abstract
Method
Participants
Sampling
Educational Outcomes, Parent and School Variables
IEP Goal Progress—Parent and Teacher Ratings
IEP Goal Progress-Psychometrically Equivalence Tested Goal Attainment Scaling (PET-GAS)
Postsecondary Goal Progress
Transition Planning Quality (TPQ)
Parent Activation
Parent and Teacher Alliance (PTA)
Data Analysis Plan
Results
Analysis Based on the Combined Sample
Correlates of Postsecondary Progress
Correlates of IEP Progress
Discussion
Identification of Malleable Factors Associated with Positive Postsecondary Outcomes
Predictors of Postsecondary Progress by Domains
Role of Parents and Students in Postsecondary Plans
Limitations and Future Directions
Acknowledgments
References
Running head: SUMMARY 1
SUMMARY 4
Article: A Preliminary Study of Parent Activation, Parent‐Teacher Alliance, Transition Planning Quality, and IEP and Postsecondary Goal Attainment of Students with ASD
Yoan Collado
In postsecondary school students with an autism spectrum disorder, the family, student, and school factors are not well understood. This article examines the student outcomes and their interaction with the student factors, the family factor, and the transition planning quality. Accumulatively, all these factors are the heavily impact the school and the staff in transition process. This article specifically focuses on student participation in education and training and postsecondary goal attainment. The primary focus is on adaptive behavior, student IQ, alliance correlated with the IEP, and transition planning quality. As part of the Individualized Education Program, the public schools are required to provide transition services to disabled students. For this purpose, the federal law has made the Individuals with Disabilities Education Act 2004 (McGrew, 2019).
The article talks about the fact that on how the schools fail to provide these transition services to students with the autism spectrum disorder. The outcomes of such postsecondary students are worse. The discussion of the article is aimed to increase the understanding of the failure of these transition services. Furthermore, it focuses on the parent and school characteristics that are two of the three EBPP framework elements. In this study, 20 students with autism spectrum disorder and 20 teachers participated. The parents of the students were also recruited for the study. The study took place in public schools, and the educational outcomes of the students were measured.
Based on a Likert-type questionnaire, the teachers and students assessed Individual Education Program goal. Based on the 30-item four-point Likert report scale, the transition Planning Quality was assessed. The results of the article illustrate that the poor outcomes and the goal achievement for not previously reported. The parents reported that greater parent-teacher alliance and higher transition planning quality were directly linked with the postsecondary goals and progress towards the individual Education Program. Furthermore, the areas like parent-teacher alliance and transition planning quality can be controlled by teachers’ or parents’ actions. The article puts forth a conclusion that the most responsible factor for postsecondary outcomes is the parents and students with an autism spectrum disorder. Parents and students are also responsible for the implementation of the plans relevant to education and training.
Furthermore, the study identifies that youth with autism disorder are less likely to participate in their transition planning. Such individuals are also reported to be less-determined, less-confident, and have lower decision-making ability. They have fewer goals for employment or living independently. The article supports the need for ongoing support and coaching for parents and students with an autism spectrum disorder. The support should be provided to them for problem-solving, plan development, and implementation.
References
McGrew, L. R. (2019). A Preliminary Study of Parent Activation, Parent‐Teacher Alliance, Transition Planning Quality, and IEP and Postsecondary GoalAttainment of Students with ASD. Journal of Autism and Developmental Disorders, 3231-3243.
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