Clinical Trial Details
— Status: Active, not recruiting
Administrative data
NCT number |
NCT04822987 |
Other study ID # |
125666 |
Secondary ID |
|
Status |
Active, not recruiting |
Phase |
|
First received |
|
Last updated |
|
Start date |
February 1, 2021 |
Est. completion date |
December 31, 2030 |
Study information
Verified date |
January 2024 |
Source |
The Hospital of Vestfold |
Contact |
n/a |
Is FDA regulated |
No |
Health authority |
|
Study type |
Observational [Patient Registry]
|
Clinical Trial Summary
Harmful alcohol use is a global risk factor for disease, injuries and death. Research on
treatment of Alcohol use disorders (AUDs) indicates that different treatment modalities are
equally effective, but also that a large group of patients do not change their drinking
pattern despite being in treatment. It is assumed that it is not random who benefits from
treatment. Thirty to forty percent of outcome variance in treatment is probably explained by
patient factors, and we need more knowledge on how different patient factors moderate
treatment effects.
Further, clinicians also need more knowledge about selecting patients to different therapies.
The present study will investigate how patient factors predict outcome in group treatment of
AUDs, and what predicts positive treatment outcomes over time. The study is designed as a
quasi-experimental, multi-centre, follow-up study. Patients will be included from Vestfold
Hospital Trust, Borgestadklinikken, Blue Cross Clinic, Behandlingssenteret Eina, Blue Cross
Clinic and A-senteret, Oslo, Church City Mission. The Project will provide more knowledge
about patients seeking treatment for AUDs, and specifically how patient factors predict
outcome in group treatment. These results will in turn lead to better selection of treatment
modalities, and patients will receive a more effective treatment earlier on.
Main aims: 1) How do patient factors predict outcome in group treatment of alcohol use
disorders (AUDs)? 2) Do positive treatment outcomes last over time? Specifically, do the
following factors: a) psychiatric comorbidity b) severity of alcohol use pre-treatment c)
personality disorders and d) cognitive impairments predict 1) completion of group treatment
and 2) positive outcome after 1 year. As an additional aim, we will investigate if the
Montreal Cognitive Assessment test (MoCa) is feasible as a brief screening instrument for
mild cognitive impairments for AUD patients.
Description:
HYPOTHESES, AIMS AND OBJECTIVES
The general objective of the study is to increase the knowledge of addiction treatment, and
how therapy can be made more effective, especially in the case of AUD. In particular, the
project will study how patient characteristics interact with treatment and influence therapy
outcome. The main research questions are:
1. How do patient factors moderate treatment outcome in group therapy with patients with
AUD? The following variables will be investigated: Severity of alcohol dependence,
symptom disorders, personality disorders, cognitive deficits and demographic variables.
2. Do positive treatment outcomes last over time? The participants will be followed up
after one and three years post-treatment to see if recovery persists.
3. Is Montreal Cognitive Assessment (MoCa) feasible as a brief screening instrument for
mild cognitive impairments in patients with AUD? At face value, this instrument contains
rather crude tasks, which seems to make it more sensitive to large cognitive deficits
than small. By comparing MoCa results to more extended neuropsychological testing we
will assess the correlations, sensitivity and specificity of impairment assessed with
MoCA.
The project has two main aims. The first primary aim is predictors of successful treatment
completion operationalized as percentage of participation in therapeutic activities. The
second primary aim is predictors for effect of group therapy one year after treatment
termination. Primary outcome variable is alcohol and substance use reduction, measured with
AUDIT and DUDIT. Secondary outcomes are symptom level measured with SCL-90 and quality of
life measured with WHOQOL-bref. In addition, register data concerning use of health services
after finishing treatment, and participation in working life, will be collected three years
after treatment completion.
PROJECT METHODOLOGY
The present study is designed as a quasi-experimental, multi-centre study on treatment in
ordinary clinical practice. The study will include at least 120 patients (approximately 40
participants pr. fall and spring-inclusion term). Four data collection sites are included in
the study:
1. Patients enrolled in treatment at the Department of Addiction treatment, Vestfold
Hospital Trust
2. Patients enrolled in residential treatment at the Borgestad Blue Cross Clinic
3. Patients enrolled in residential treatment at the Blue Cross Clinic, Treatment center
Eina
4. Patients enrolled in residential treatment at A-senteret, The Church City Mission
Participants in the study will be patients group treatment for a primary diagnosis of AUD.
Treatment is administered in a time-limited format at all sites. The therapy format may vary
to some degree, but is similar in overall structure and content. In this quasi-experimental
study research is carried out in an ordinary clinical situation, and study attempts to
investigate the complexity of clinical practice. As a result, the researchers do not have
control over all of the variables, but the results will be more ecologically valid with a
higher degree of generalizibility.
PROJECT ARRANGEMENTS, METHOD SELECTION AND ANALYSES
The study will use well-researched tools and methods, used in both research and ordinary
clincial practice. The following information will be entered in the registry:
Patient pre-therapy background: Earlier treatment episodes and diagnoses, demographic
variables (age, sex, education, marital status, economical situation) will be retrieved from
participants' journal.
Screening pre-treatment:
1. The Mini International Neuropsychiatric Interview (MINI). Short structured diagnostic
interview for Diagnostic and statistical manual of mental disorders IV
(DSM-IV)-diagnoses.
2. Severity indices of personality problems (SIPP-118). Self-report questionnaire focusing
on core components of mal-adaptive personality functioning. 118 questions scored on a 4
point
3. Montreal Cognitive assessment (MoCa). A 10 minute screening tool to assist clinicians in
detecting mild cognitive impairments. Yields a maximum score of 30. Cut-off under 26,
indicating cognitive impairment.
4. Wechsler Adult Intelligence Scale (WAIS-IV). Measures core aspects of intelligence
(estimate of General Ability Index). The following subtests will be administered:
Similarities, Information, Visual puzzles, Block design and Digit span.
5. Delis-Kaplan Executive Function System (D-KEFS). Measures executive functioning. (Color
Word Interference Test and tasks 2-4 from Trail Making Test).
Screening pre- and post-treatment, and after 1 and 3 years:
1. Alcohol disorders identification test (AUDIT). 10 item self-report questionnaire for
identifying harmful drinking and dependence. Responses are scored on a scale from 0 to
4.
2. Drug disorders identification test (DUDIT). 11 item self-report questionnaire for drug
problems. Responses are scored on a scale from 0 to 4.
3. Symptom check list 90-R (SCL-90-R). Self-report inventory, 90 questions. Scored on a 4
point scale. Measures severity of psychological distress. Will be administered
pre-treatment, post-treatment and after 1 and 3 years.
4. World health organization quality of life scale (WHOQOL-BREF). Measures quality of life
on four dimensions: Sensory abilities, autonomy in the past, present and future
activities and social participation. 26 items scored on a 1 to 5 Likert scale.
Screening post-treatment:
1) Treatment satisfaction: 10 questions about treatment satisfaction.
Register data:
In addition, after 3 years, register data from patient journals and from NAV will be
collected concerning working status, economical benefits and if the patient have undergone
more treatment.
ANALYSES
Both intention to treat and per protocol analyses will be carried out on all participants and
those who complete the treatment and data collection, until the last point of assessment.
Mixed methods analyses may be used to include patients with incomplete protocols.
The outcome measures will be subjected to regression analyses to test:
1. How much of the outcome can be explained by substance use before treatment (AUDIT,
DUDIT)?
2. How much are explained by psychological distress (SCL-90-R: GSI)
3. How much are explained by cognitive deficits?
4. How much are explained by demographic variables? (Age, sex, education level)
The study will seek to use hierarchical regression analyses transcending the single predictor
domains by entering those measures from each domain that correlates highest with outcome and
lowest with predictors from other domains. For the first analyses there are only one outcome
measure (participation in group treatment). For the second set of analyses (function after
one year) there are multiple outcome measures (drinking/substance abuse, symptom level,
function and quality of life). Thus, we will seek to construct a gross overall composite
outcome measure based on normative data from the tests used.
For non-continuous data (axis 1 diagnosis, gender and marital status) analyses of variance
will be computed with group-characteristics as independent variable and outcome as dependent.
It is reasonable to assume that patients with combinations of substance abuse profiles,
symptom level, cognitive impairments and demographic factors may constitute specific groups
(clusters) with different prognosis. Cluster analysis will be applied to unravel distinct
combinations of factors associated with good or poor prognosis. As an experiment, one
substance use measure, one symptom distress measure, one cognitive functioning measure and
one or two demographic markers will be included in the analysis. Cluster analysis is merely
an explorative method designed to uncover post-hoc empirical groups with combinations of
features, but may discern individual patterns that will not be evident in analyses of group
means.
STATISTICAL POWER
It is important that the planned number of participants is sufficiently large to answer the
research questions. It is a quasi-experimental design in the sense that division into
subgroups are determined by attributes of the participants not under complete control by the
researchers. Regarding statistical power, the the following examples are computed: If it is
expected that 35 % (n=42) of the participants have an axis 1 diagnosis of major depression
and that this group will have somewhat over half a standard deviation (.55) higher score on
AUDIT/DUDIT one year after completed treatment, this difference will be statistically
significant on the five percent alpha-level if there are 41 and 76 persons in the two groups
(depression vs. absence of depression), which will then be within the planned sample size.
Continuous data will be analyzed with correlations and hierarchical regressions. Small effect
sizes (Cohen's d: .30) will be statistically significant on the five percent level with 85
participants.