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Effectiveness and predictors of group cognitive behaviour therapy outcome for generalised anxiety disorder in an out-patient hospital setting

Published online by Cambridge University Press:  31 January 2024

B. L. Malivoire
Affiliation:
Anxiety Treatment and Research Clinic, St Joseph’s Healthcare Hamilton, Hamilton, Ontario, Canada
K. E. Stewart
Affiliation:
Anxiety Treatment and Research Clinic, St Joseph’s Healthcare Hamilton, Hamilton, Ontario, Canada
D. Cameron
Affiliation:
Anxiety Treatment and Research Clinic, St Joseph’s Healthcare Hamilton, Hamilton, Ontario, Canada
K. Rowa*
Affiliation:
Anxiety Treatment and Research Clinic, St Joseph’s Healthcare Hamilton, Hamilton, Ontario, Canada Department of Psychiatry and Behavioural Neurosciences, McMaster University, Hamilton, Ontario, Canada
R. E. McCabe
Affiliation:
Anxiety Treatment and Research Clinic, St Joseph’s Healthcare Hamilton, Hamilton, Ontario, Canada Department of Psychiatry and Behavioural Neurosciences, McMaster University, Hamilton, Ontario, Canada
*
Corresponding author: Karen Rowa; Email: krowa@stjoes.ca
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Abstract

Background:

Cognitive behavioural therapy (CBT) is an empirically supported treatment for generalized anxiety disorder (GAD). Little is known about the effectiveness of CBT for GAD in real-world treatment settings.

Aim:

This study investigated the effectiveness of group CBT and predictors of treatment response in an out-patient hospital clinic.

Method:

Participants (n = 386) with GAD participated in 12 sessions of group CBT at an out-patient clinic. Of those who provided at least partial data (n = 326), 84.5% completed treatment. Most questionnaires were completed at pre- and post-treatment; worry severity was assessed weekly.

Results:

Group CBT led to improvements in chronic worry (d = –0.91, n = 118), depressive symptoms (d = –1.22, n = 172), GAD symptom severity (d = –0.65, n = 171), intolerance of uncertainty (IU; d = –0.46, n = 174) and level of functional impairment (d = –0.35, n = 169). Greater pre-treatment GAD symptom severity (d = –0.17, n = 293), chronic worry (d = –0.20, n = 185), functional impairment (d = –0.12, n = 292), and number of comorbid diagnoses (d = –0.13, n = 299) predicted greater improvement in past week worry over treatment. Biological sex, age, depression symptom severity, number of treatment sessions attended, and IU did not predict change in past week worry over time.

Discussion:

These findings provide support for the effectiveness of group CBT for GAD and suggest the outcomes are robust and are either not impacted or are slightly positively impacted by several demographic and clinical factors.

Type
Main
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
© The Author(s), 2024. Published by Cambridge University Press on behalf of British Association for Behavioural and Cognitive Psychotherapies

Introduction

Generalized anxiety disorder (GAD) is a psychiatric disorder characterized by excessive and uncontrollable worry about a variety of topics, more days than not, over the past 6 months or longer (American Psychiatric Association, 2022). Individuals with GAD also experience associated symptoms such as irritability, muscle tension, restlessness, fatigue, and sleep and concentration difficulties (American Psychiatric Association, 2022). Cognitive behavioural therapy (CBT) is considered the gold standard treatment for GAD (Otte, Reference Otte2011); however, the majority of research supporting the efficacy of CBT comes from randomized control trials (RCTs). Given that CBT is one of the most recommended and widely used treatments for GAD, it is imperative to continue to examine outcomes of treatment in routine care settings.

Efficacy of CBT for GAD

CBT is considered the gold standard treatment for GAD because of its robust empirical support (Otte, Reference Otte2011). Based on systematic reviews and meta-analyses that have compared CBT for GAD with non-specific therapy, waitlist, and placebo conditions, CBT leads to greater reductions in anxiety symptoms with moderate to large effect sizes (Hedges’ g = 0.39–1.01; Carpenter et al., Reference Carpenter, Andrews, Witcraft, Powers, Smits and Hofmann2018; Hunot et al., Reference Hunot, Churchill, Teixeira and de Lima2007; van Dis et al., Reference van Dis, Van Veen, Hagenaars, Batelaan, Bockting, Van Den Heuvel, Cuijpers and Engelhard2020) and greater improvements in chronic worry with a large effect size (ES = –1.15; Covin et al., Reference Covin, Ouimet, Seeds and Dozois2008). Furthermore, there is evidence that these gains are maintained at 6- or 12-month follow-up (Covin et al., Reference Covin, Ouimet, Seeds and Dozois2008; Hunot et al., Reference Hunot, Churchill, Teixeira and de Lima2007; van Dis et al., Reference van Dis, Van Veen, Hagenaars, Batelaan, Bockting, Van Den Heuvel, Cuijpers and Engelhard2020). Consistently, cognitive therapy was also found to lead to large reductions in chronic worry compared with non-therapy controls (i.e. waitlist or no intervention; d = 1.81) and moderate reductions in the Penn State Worry Questionnaire (PSWQ) compared with other active treatments (d = 0.63; Hanrahan et al., Reference Hanrahan, Field, Jones and Davey2013). Collectively, there is evidence supporting the efficacy of CBT for GAD with moderate to large effect sizes. However, there are comparatively fewer studies that have investigated the effectiveness of CBT for GAD, that is, whether CBT for GAD is effective in real-world treatment settings.

Treatment effectiveness versus efficacy

Researchers and clinicians have expressed concern about the generalizability of RCTs and treatment studies conducted in academic settings to routine practice settings that are less controlled (Butler et al., Reference Butler, O’Day, Swee, Horenstein and Heimberg2021; Kazdin, Reference Kazdin2008; Nelson and Steele, Reference Nelson and Steele2007). In RCTs, a number of inclusion/exclusion criteria are commonly used, including absence of co–morbid diagnoses, symptom severity thresholds, and preclusion of psychiatric medication. Given that community treatment seekers are often diagnostically complex and heterogeneous in their presentation, the samples in RCTs are not representative of treatment seekers in the community and consequently the findings may not extend to real-world settings (Shadish et al., Reference Shadish, Navarro, Matt and Phillips2000; Tolin et al., Reference Tolin, McKay, Forman, Klonsky and Thombs2015; Westen et al., Reference Westen, Novotny and Thompson-Brenner2004). Similarly, the types of participants in academic studies who consent to enter a randomized research study may not be representative of treatment seekers in the community (Tolin et al., Reference Tolin, McKay, Forman, Klonsky and Thombs2015). Another concern is that clinical trial therapists are required to strictly adhere to the therapy protocol and often receive more intensive training compared with community therapists (Becker and Stirman, Reference Becker and Stirman2011; Weisz et al., Reference Weisz, Jensen-Doss and Hawley2006;). Lower treatment fidelity in community settings could impact treatment outcomes. As such, it is important to investigate whether the results from RCTs generalize to real-world treatment settings (Tolin et al., Reference Tolin, McKay, Forman, Klonsky and Thombs2015).

Effectiveness of CBT for anxiety disorders

To assess the external validity of empirically supported treatments, Tolin et al. (Reference Tolin, McKay, Forman, Klonsky and Thombs2015) suggested that effectiveness studies are needed that do not involve randomization, that are conducted outside of academic settings with community clinicians, and that include participants with co–morbidities. In general, there is evidence from meta-analyses supporting that CBT for anxiety disorders is effective in routine care settings (Cohen’s d = 0.9–2.6; Hans and Hiller, Reference Hans and Hiller2013; Stewart and Chambless, Reference Stewart and Chambless2009; van Ingen et al., Reference van Ingen, Freiheit and Vye2009). However, only one meta-analysis excluded studies with randomization (Hans and Hiller, Reference Hans and Hiller2013), and none included studies investigating the effectiveness of CBT for GAD specifically. In the few studies that have investigated the effectiveness of CBT for GAD in frontline settings, there is promising support that individual CBT leads to moderate to large improvements in chronic worry severity, GAD symptom severity, and depression symptom severity (e.g. Hirsch et al., Reference Hirsch, Beale, Grey and Liness2019; Kehle, Reference Kehle2008). Only one study to our knowledge has investigated the effectiveness of group CBT for GAD in an out-patient hospital clinic, wherein group CBT led to significant improvements in chronic worry and intolerance of uncertainty (IU) (effect sizes not provided; Torbit and Laposa, Reference Torbit and Laposa2016). IU is defined as a ‘dispositional incapacity to endure the aversive response triggered by the perceived absence of salient key, or sufficient information, and sustained by the associated perception of uncertainty’ (Carleton, Reference Carleton2016; p. 31), and is proposed to be a key maintaining factor in chronic worry (Buhr and Dugas, Reference Buhr and Dugas2006; Dugas et al., Reference Dugas, Buhr, Ladouceur, Heimberg, Turk and Mennin2004; Freeston et al.,Reference Freeston, Rhéaume, Letarte, Dugas and Ladouceur1994). Although the limited research on the effectiveness of CBT for GAD in routine care is promising, more research is needed, especially for group treatment, given it is a commonly used cost-effective format in routine practice settings.

Predictors of CBT outcome for GAD

In addition, to improve treatment outcomes, it is necessary to understand which patients are most and least likely to benefit from CBT. In this study, we investigated predictors of treatment outcome, which inform how pre-treatment characteristics interact with treatment outcome (Kraemer et al., Reference Kraemer, Wilson, Fairburn and Agras2002). Research on predictors of CBT outcomes is important, as it may inform future research on why treatment is less effective for a particular group of patients and identify areas for further research to refine treatment. This is particularly important for individuals with GAD, as although CBT is generally effective, only 46% of individuals at post-treatment and 57% at 12-month follow-up meet standardized recovery criteria (i.e. a score of 47 or less on the PSWQ) in RCTs (Hanrahan et al., Reference Hanrahan, Field, Jones and Davey2013). As a result, there is a need to elucidate factors that predict poorer treatment outcome.

To date, there is limited research investigating for whom CBT for GAD is most and least effective. One factor that would be expected to affect how favourably people will respond to treatment is the severity or duration of their illness. In a study that investigated duration of GAD symptoms as a moderator of outcome for CBT and its components, those who had suffered from GAD longer were found to have better outcomes for CBT components specifically (i.e. cognitive therapy and self-control desensitization; Newman and Fisher, Reference Newman and Fisher2013). Consistently, higher clinician-rated symptom severity has been found to predict better outcomes in CBT or its components (Newman and Fisher, Reference Newman and Fisher2010). Given that IU is associated with worry severity (e.g. Buhr and Dugas, Reference Buhr and Dugas2006), it is also possible that IU would influence treatment outcome. As IU is proposed to be a key mechanism underlying GAD and chronic worry, it is plausible that individuals who are highly intolerant of uncertainty would benefit most from CBT treatment.

Another factor that would be expected to influence treatment outcome and that is related to symptom severity is diagnostic co–morbidity. Similar to symptom severity, there is evidence that greater co–morbidity is associated with larger gains in CBT or its components (Newman et al., Reference Newman, Przeworski, Fisher and Borkovec2010; Wetherell et al., Reference Wetherell, Hopko, Diefenbach, Averill, Beck, Craske and Stanley2005). Thus, there is preliminary support that the more severe one’s GAD symptoms are and the more co–morbid diagnoses they have, the more they will benefit from CBT treatment. However, it is necessary to investigate whether these findings extend to routine care settings.

Other factors that may influence treatment response include the individual’s age and sex. Research on the efficacy of CBT for GAD across age generally suggests treatment is less effective for older adults compared with younger adults (Covin et al., Reference Covin, Ouimet, Seeds and Dozois2008; Hanrahan et al., Reference Hanrahan, Field, Jones and Davey2013; Kishita and Laidlaw, Reference Kishita and Laidlaw2017). It has been speculated that older adults may benefit less from treatment due to factors such as cognitive decline and differences in the clinical expression of GAD symptoms (Covin et al., Reference Covin, Ouimet, Seeds and Dozois2008; Mohlman, Reference Mohlman2008; Wolitzky-Taylor et al., Reference Wolitzky-Taylor, Castriotta, Lenze, Stanley and Craske2010; Hall et al., Reference Hall, Kellett, Berrios, Bains and Scott2016), especially when offered in group format. On the other hand, there are no studies to our knowledge that have investigated sex differences in CBT outcomes for GAD. However, there are differences across sex in somatic complaints, age of onset, co–morbid diagnoses, and level of disability (see Jalnapurkar et al., Reference Jalnapurkar, Allen and Pigott2018 for a review) that could influence treatment effectiveness. Furthermore, there is evidence that females with GAD do not respond as well to selective serotonin re–uptake inhibitor (SSRIs) medication treatment compared with males (Simon et al., Reference Simon, Zalta, Worthington Iii, Hoge, Christian, Stevens and Pollack2006), which supports the possibility of sex differences in treatment response. Thus, research is needed investigating whether sex influences CBT outcomes, as this could have important treatment implications.

Study objectives and hypotheses

The present study had two primary objectives. The first objective was to build on the dearth of research studies on the real-world effectiveness of group CBT for GAD by investigating its effectiveness in an out-patient hospital clinic. Based on the efficacy research on CBT for GAD (e.g. Carpenter et al., Reference Carpenter, Andrews, Witcraft, Powers, Smits and Hofmann2018; Covin et al., Reference Covin, Ouimet, Seeds and Dozois2008; Hanrahan et al., Reference Hanrahan, Field, Jones and Davey2013; van Dis et al., Reference van Dis, Van Veen, Hagenaars, Batelaan, Bockting, Van Den Heuvel, Cuijpers and Engelhard2020), it was predicted that group CBT would lead to moderate to large reductions in GAD symptom severity, chronic worry, intolerance of uncertainty, and depression symptom severity. Given the positive relationship between GAD symptoms and global functional impairment (McKnight et al., Reference McKnight, Monfort, Kashdan, Blalock and Calton2016), it was also expected that group CBT would lead to improvements in functional impairment. The second objective was to investigate whether demographic and pre-treatment clinical characteristics of individuals with GAD predict treatment outcome. Specifically, we analysed participant sex, age, baseline symptom severity (chronic worry, GAD symptoms, depression symptoms), level of impairment, co–morbidity, and intolerance of uncertainty as predictors. Based on past research, we predicted that age would negatively predict treatment outcome such that worse treatment outcomes would be associated with older age. We also predicted that greater symptom severity, co–morbidity, IU, and related factors including level of impairment and depression, would be associated with better treatment outcomes. Given the lack of research investigating the impact of sex on treatment outcome, no a priori hypothesis was made.

Method

Participants

Participants in the current study were patients seeking treatment for GAD at an out-patient hospital clinic that specializes in treatment for anxiety disorders in an urban city in Ontario, Canada. Of those referred to the group (n = 386), participants who provided at least two ratings on the PSWQ-PW were included in the analyses (n = 326, 84.5%)Footnote 1 ; these were further categorized into completers (n = 276; 84.7%), defined as participants who completed at least one of the final three treatment sessions, and drop-outs (n = 50; 15.3%) (see Fig. 1). Due to missing data, actual n analysed for each outcome varied from 185 to 326. The mean age of the sample was 39.48 years, and 77.6% of the sample identified as female. For full demographic and clinical characteristics, see Table 1. Participants with other psychiatric co–morbidities were able to take part in the group treatment (see Table 1 for co–morbidity information). Participants were referred to the group by an assessor or a prior treating clinician (e.g. a clinician from a prior CBT group they attended) if GAD was the patient’s principal (i.e. most distressing/impairing) concern. The mean Generalized Anxiety Disorder Questionnaire-7 score (12.89) at pre-treatment was above the suggested cut-off score for clinically significant GAD symptoms (10; Spitzer et al., Reference Spitzer, Kroenke, Williams and Löwe2006). Treatment completers (n = 276) were defined as participants who completed at least one of the final three treatment sessions. Of those who completed treatment, 267 (97%) attended at least eight sessions and only 3% attended less than eight sessions. The average number of attended sessions of those who completed was 10.40 (SD = 1.49). Drop-out rate for this sample was 15.3% (n = 50).

Figure 1. Study procedure and participant flow diagram. GAD group n includes all people who consented to treatment. Insufficient data: participants who had two or fewer PSWQ time points. Analysis sample: sample with enough data for analysis. Completers: participants who had attended at least one of the three final sessions. Drop-out: participants did not attend any of the final three sessions.

Table 1. Demographics and clinical characteristics at pre-treatment

Data for some demographic variables were only available for a subset of the full sample (participants may have chosen not to complete demographic forms); sample sizes for available data are provided for each variable. DASS, Depression, Anxiety and Stress Scales-21-item version; IIRS, Illness Intrusiveness Rating Scale; IUS, Intolerance of Uncertainty Scale-12-item version; PSWQ, Penn State Worry Questionnaire (PW, past week version).

Measures

Diagnostic measures

Most diagnostic assessments were conducted using the Diagnostic Assessment and Research Tool (DART; McCabe et al., Reference McCabe, Milosevic, Rowa, Shnaider, Pawluk and Antony2017), which is a semi-structured diagnostic tool used to assess for DSM-5 mental disorders. The DART has excellent construct, convergent, and discriminant validity with relevant self-report symptom measures (Schneider et al., Reference Schneider, Pawluk, Milosevic, Shnaider, Rowa, Antony and McCabe2022). One assessment was conducted using the MINI International Neuropsychiatric Interview 7.0 (MINI; Sheehan, Reference Sheehan2015) and one was conducted using the Structured Clinical Interview for DSM-5 (First et al., Reference First, Williams, Karg and Spitzer2016), both of which are reliable and valid instruments for assessing DSM-5 psychopathology (First et al., Reference First, Williams, Karg and Spitzer2016; Sheehan, Reference Sheehan2015).

Symptom measures

Penn State Worry Questionnaire-Past Week (PSWQ-PW)

The PSWQ-PW (Stöber and Bittencourt, Reference Stöber and Bittencourt1998) assesses experiences of pathological worry over the past week. The PSWQ–PW has strong reliability and good convergent validity with other measures of weekly worry (Puccinelli et al., Reference Puccinelli, Cameron, Ouellette, McCabe and Rowa2022; Stöber and Bittencourt, Reference Stöber and Bittencourt1998). The PSWQ-PW has been demonstrated to be able to capture changes in weekly worry over the course of treatment (Puccinelli et al., Reference Puccinelli, Cameron, Ouellette, McCabe and Rowa2022; Stöber and Bittencourt, Reference Stöber and Bittencourt1998). In the current study, Cronbach’s alpha was .90. Of note, the PSWQ trait version (PSWQ-T; Meyer et al., Reference Meyer, Miller, Metzger and Borkovec1990) was used as a predictor of treatment outcome, to assess the number of participants who scored at or above the established cut-off of 65 (Fresco et al., Reference Fresco, Mennin, Heimberg and Turk2003), and to calculate a reliable change index (Jacobson and Traux, Reference Jacobson and Truax1991). The PSWQ-T version has good to excellent internal consistency (Dear et al., Reference Dear, Titov, Sunderland, McMillan, Anderson, Lorian and Robinson2011; Molina and Borkovec, Reference Molina, Borkovec, Davey and Tallis1994) and has demonstrated both content and construct validity (Stöber and Bittencourt, Reference Stöber and Bittencourt1998).

Generalized Anxiety Disorder-7 (GAD-7)

The GAD–7 is a brief, 7-item questionnaire of GAD symptoms (Spitzer et al., Reference Spitzer, Kroenke, Williams and Löwe2006). The measure has good reliability as well as good criterion and construct validity (Spitzer et al., Reference Spitzer, Kroenke, Williams and Löwe2006). A cut-score of 10 identifies people with GAD with a sensitivity of 89% and a specificity of 82% (Spitzer et al., Reference Spitzer, Kroenke, Williams and Löwe2006). In the current study, Cronbach’s alpha was .88.

Depression, Anxiety Stress Scale (DASS-21)

The DASS-21 is a 21-item self-report measure of symptoms of depression, anxiety, and stress (Lovibond and Lovibond, Reference Lovibond and Lovibond1995). The Depression subscale was used in the present study, containing 7 items. The scale has good psychometric properties (Antony et al., Reference Antony, Bieling, Cox, Enns and Swinson1998). In the current study, Cronbach’s alpha for the depression subscale was .89.

Illness Intrusiveness Rating Scale (IIRS)

The IIRS is a 13-item measure of the degree to which illness (or the treatment of an illness) interferes with quality of life in different domains (Devins et al., Reference Devins, Binik, Hutchinson, Hollomby, Barre and Guttmann1983). It has been shown to be reliable (internal consistency and test–retest) and has construct, criterion and discriminant validity (Devins, Reference Devins2010). In addition, it has been shown to be sensitive to change during treatment (Devins, Reference Devins2010). In the current study, Cronbach’s alpha was .76 for the relationship subscale, .70 for the intimacy subscale, .73 for the instrumental subscale, and .86 for the total subscale. The mean IIRS score in the current study (55.42) is consistent with norms for anxiety disorder populations (55.30; Devins, Reference Devins2010) and people with GAD (54.60; Gros et al., Reference Gros, Antony, McCabe and Swinson2009).

Intolerance of Uncertainty Scale (IUS-12)

The IUS–12 is a 12-item measure of intolerance of uncertainty (Carleton et al., Reference Carleton, Norton and Asmundson2007). The IUS-12 has good internal consistency and test–retest reliability over 12 weeks, as well as good construct validity (Carleton et al., Reference Carleton, Norton and Asmundson2007; Wilson et al., Reference Wilson, Stapinski, Dueber, Rapee, Burton and Abbott2020). The IUS-12 is sensitive to changes in IU during treatment in people with GAD (Wilson et al., Reference Wilson, Stapinski, Dueber, Rapee, Burton and Abbott2020). A cut-off score of 28 has been demonstrated to discriminate individuals with GAD from those without (the average score in the current sample was 42.01). In the current study, Cronbach’s alpha was .91.

Procedure

The current data were collected as part of an ongoing program evaluation examining outcomes of out-patient CBT treatment for GAD. The procedures and measures used in this study were approved by the local institutional review board (ref. no. 07-2955) and incorporated standard practices in the clinic. Participants who were referred to the clinic completed a diagnostic assessment (see measures above) and a demographic questionnaire.Footnote 2 Assessments were completed by trained clinicians who were either registered clinical psychologists or who were being supervised by clinical psychologists (e.g. psychotherapists, social workers, graduate students).

Following the assessment, participants were referred for group CBT for GAD. At the time of the initial diagnostic assessment, the majority (78%) of the analysed sample had a primary diagnosis of GAD. The other most common primary diagnoses at the time of initial assessment in this sample were major depressive disorder (5%) and panic disorder (2%). However, all individuals who entered group CBT for GAD were deemed as having clinically significant GAD symptoms. Individuals could be referred by a treating clinician to the GAD group following treatment for another disorder, if the clinician deemed that GAD was the primary concern at that time.

The treatment was based upon the work of Borkovec and Costello (Reference Borkovec and Costello1993), Dugas et al. (Reference Dugas, Buhr, Ladouceur, Heimberg, Turk and Mennin2004), Gyoerkoe and Wiegartz (Reference Gyoerkoe and Wiegartz2006), Heimberg et al. (Reference Heimberg, Turk and Mennin2004), and Waters and Craske (Reference Waters, Craske, Antony, Ledley and Heimberg2005). Patients received 12 weeks of group psychotherapy, consisting of 2-hour sessions. Treatment sessions would typically begin with homework review, followed by practice of new skills. The following components were included in treatment: (1) psychoeducation about GAD (sessions 1–2), (2) cognitive restructuring (sessions 3–4), (3) problem solving (sessions 5–6), (4) behavioural experiments for intolerance of uncertainty (sessions 7–8), (5) progressive muscle relaxation (session 9), (6) attentional distraction and scheduled worry time (session 10), and (7) relapse prevention (sessions 11–12). The treatment was delivered by registered clinical psychologists, other professionals (e.g. social workers, psychotherapists, nurses), or graduate students (who were supervised by registered clinical psychologists). Typically, two to three group therapists were involved per group.

At the beginning and end of the 12-week treatment, patients were asked to complete a questionnaire package that included all the measures. At each weekly treatment session, participants were asked to complete the PSWQ-PW sent by a secure email link. Questionnaire completion was encouraged but was not monitored.

Data analysis

A series of paired-samples t-tests were used to evaluate treatment efficacy for treatment completers for chronic worry (PSWQ-T), GAD symptoms (GAD-7), depression symptoms (DASS-21 Depression subscale), intolerance of uncertainty (IUS-12), and functional impairment (IIRS total score), at pre- and post-treatment. Reliable change indices (RCI; Jacobson and Traux, Reference Jacobson and Truax1991) were calculated for PSWQ-T as a primary outcome measure, with a test–retest r = .92 (Meyer et al., Reference Meyer, Miller, Metzger and Borkovec1990).

Hierarchical linear modelling (HLM; Raudenbush and Bryk, Reference Raudenbush and Bryk2002) was used to evaluate effectiveness of the treatment, as well as the impact of pre-treatment variables on the trajectory of change in past week worry over the course of group treatment for GAD. HLM is appropriate for use with datasets that have a multi-level structure and is also able to account for missing data using restricted maximum likelihood as the estimation method (Raudenbush and Bryk, Reference Raudenbush and Bryk2002). Missing data for the primary outcome, PSWQ-PW, ranged from 13.2% (at treatment week 1) to 35.9% (at treatment week 10). Missing data were not imputed for Level-2 predictors. Effect size is calculated for all HLM analyses as Cohen’s d (small = 0.20, medium = 0.50, and large = 0.80; Cohen, Reference Cohen2013). The analysis included participants who dropped out from treatment (n = 50, or 15.3% of the sample). There was no significant difference on baseline demographics (age, sex), symptom measures (PSWQ-T, DASS, IIRS, GAD-7, IUS), or number of co–morbid diagnoses, between those who completed and those who dropped out of treatment.

The primary outcome variable for all analyses was the PSWQ-PW, and Time (coded weekly over 11 weeks of treatment as 0 to 10) was included at Level-1. Level-2 predictor variables included age, biological sex (sex assigned at birth), DASS Depression subscale, GAD–7, IIRS total score, IUS total score, PSWQ-PW, and total number of co–morbid diagnoses, all collected at pre-treatment. Examples of the models are shown below, with (1) representing Level-1; (2) and (3) representing Level-2 at the intercepts and slope for a single respective variable score; and (4) showing the mixed model. Continuous Level-2 variables were centred around the grand mean.

(1) $$PSWQ - P{W_{ti}} = {\rm{ }}{\pi _{0i}} + {\rm{ }}{\pi _{1i}} * \left( {TIM{E_{ti}}} \right){\rm{ }} + {\rm{ }}{e_{ti}}\quad\quad\quad\quad$$
(2) $$\ {\pi _{0i}} = {\rm{ }}{\beta _{00}} + {\rm{ }}{\beta _{01}} * \left( {VA{R_i}} \right){\rm{ }} + {\rm{ }}{r_{0i}}$$
(3) $$\ {\pi _{1i}} = {\beta _{10}} + {\beta _{11}} * \left( {VA{R_i}} \right) + {r_{1i}}$$
(4) $$\eqalign{PSWQ - P{W_{ti}} = {\beta _{00}} & + {\beta _{01}} * VA{R_i} + {\beta _{10}} * TIM{E_{ti}} + {\beta _{11}} * VA{R_i} * TIM{E_{ti}} \cr & + {r_{0i}} + {r_{1i}} * TIM{E_{ti}} + {e_{ti}}}$$

Results

Treatment outcomes

Trait worry (d = –0.91, 95% CI [0.80, –1.03], RCI = 3.15), GAD symptoms (d = –0.65, 95% CI [–0.54, –0.76]), depression (d = –1.22, 95% CI [–1.12, –1.34]), and intolerance of uncertainty (d = –0.46, 95% CI [–0.35, –0.57]), all significantly reduced from pre- to post-treatment, while functioning significantly improved with a small effect size (d = –0.35, 95% CI [–0.24, –0.47]). Analyses are presented in Table 2.

Table 2. Results of hierarchical linear modelling of treatment outcomes

Predictors of treatment outcome

A correlation matrix of predictors of treatment outcome is presented in Table 3. Detailed results of primary outcome analyses are presented in the Supplementary material (Table S1). Baseline GAD-7 total score (b = –0.06, SE = 0.02, t = –2.85, d.f. = 291, p = .005, d = –0.17, 95% CI [–0.06, –0.29)]), IIRS total score (b = –0.01, SE = 0.01, t = –2.06, d.f. = 290, p = .040, d = –0.12, 95% CI [–0.01, –0.24]), worry severity at the start of treatment (b = –0.03, SE = 0.01, t = –2.73, d.f. = 183, p = .007, d = –0.20, 95% CI [–0.08, –0.37]), and total number of diagnoses (b = –0.21, SE = 0.10, t = –2.19, d.f. = 297, p = 0.03, d = –0.13, 95% CI [–0.01, –0.24]) all significantly impacted change in past week worry over the course of group treatment for GAD. These results indicate that greater levels of pre-treatment trait worry and anxiety, as well as greater illness-related impairment and more co–morbid diagnoses each predict slightly greater improvement in chronic worry (see Fig. 2). Neither age nor biological sex were significant predictors of treatment outcome. Furthermore, DASS-21 Depression, and IUS-12 total score did not significantly predict trajectory of change in PSWQ-PW (p > .05), indicating that baseline depression and intolerance of uncertainty do not impact improvement in worry over time.

Table 3. Correlation matrix of predictors of treatment at baseline

*p < .05, **p < .01.

Figure 2. Results of hierarchical linear modelling for significant (p < .05) analyses predicting change in PSWQ-PW over time.

In a post-hoc analysis, total number of sessions attended was investigated as a predictor of treatment outcome.Footnote 3 The total number of treatment sessions attended, however, did not predict change in PSWQ-PW (b = 0.01, SE = 0.42, t = .033, d.f. = 324, p = .740, d = –0.02, 95% CI [.13, –0.10)]).

Post-hoc completer analysis

To further shed light on treatment effectiveness, clinical cut-offs on the GAD-7 (10; Spitzer et al., Reference Spitzer, Kroenke, Williams and Löwe2006) and the PSWQ-T (65; Fresco et al., Reference Fresco, Mennin, Heimberg and Turk2003) were used to assess the number of participants who met these cut-offs at pre- and post-treatment. Scoring at or above these cutoffs is suggestive of GAD. At pre-treatment, 72% of the sample who completed the GAD-7 scored above the cut-off for GAD, while only 39% of those who completed the GAD-7 were above the threshold at post-treatment. Stated differently, 61% scored below the diagnostic threshold for GAD symptoms at post-treatment. Footnote 4 For the PSWQ-T, 66% of people were above the cut-off of 65 at pre-treatment. At post-treatment, only 26% of those who completed the measure were above the cut-off, meaning 74% were below the threshold. Footnote 5

Discussion

Although CBT has been found to lead to improvements in chronic worry and GAD symptoms with moderate to large effect sizes in RCTs (e.g. Carpenter et al., Reference Carpenter, Andrews, Witcraft, Powers, Smits and Hofmann2018; Covin et al., Reference Covin, Ouimet, Seeds and Dozois2008; van Dis et al., Reference van Dis, Van Veen, Hagenaars, Batelaan, Bockting, Van Den Heuvel, Cuijpers and Engelhard2020), there have been few studies that have investigated the effectiveness of CBT in community settings. Furthermore, little is known about who will respond more or less favourably to treatment. This study sought to address these gaps by investigating the effectiveness of group CBT for GAD in an out-patient hospital clinic. Consistent with recommendations for effectiveness studies, participants were not randomized to treatment, treatment was provided by community clinicians, and participants were not excluded based on co–morbidities or medication use (Tolin et al., Reference Tolin, McKay, Forman, Klonsky and Thombs2015).

In line with our predictions, CBT was found to lead to medium to large reductions in GAD symptom severity (d = –0.65) and chronic worry severity (d = –0.91) from pre- to post-treatment. This is consistent with research conducted in more controlled research trials and suggests that the promising results from RCTs extend to community settings. Furthermore, the reliable change index of 3.51 for the PSWQ-T is indicative of reliable change. By the end of treatment, 61% of participants who completed the GAD-7 at post-treatment were now below the threshold for GAD symptoms (Spitzer et al., Reference Spitzer, Kroenke, Williams and Löwe2006), compared with only 28% of the sample at the beginning of treatment. Furthermore, 74% of those who completed the PSWQ-T at post-treatment fell below a cut-off score of 65 on the PSWQ-T (Fresco et al., Reference Fresco, Mennin, Heimberg and Turk2003), compared with only 34% at the beginning of treatment.

In addition to GAD symptoms, IU was found to significantly decrease from pre- to post-treatment (d = –0.46), which is consistent with another study that investigated the effectiveness of group CBT for GAD in an out-patient hospital setting (Torbit and Laposa, Reference Torbit and Laposa2016). The significant reduction in IU is encouraging as IU is proposed to be one of the key factors that exacerbates and maintains chronic worry (Buhr and Dugas, Reference Buhr and Dugas2006; Dugas et al., Reference Dugas, Buhr, Ladouceur, Heimberg, Turk and Mennin2004). Furthermore, the treatment protocol used in this community hospital setting included many CBT skills and was not an IU-centred CBT protocol (see Robichaud et al., Reference Robichaud, Koerner and Dugas2019). In the present study treatment, only two out of the 12 sessions focused on the concept of IU and challenging the need for certainty through exposures, which is less than the IU-centred protocol (Robichaud et al., Reference Robichaud, Koerner and Dugas2019). As such, it is possible that a couple of sessions focusing on reducing IU is sufficient to see meaningful improvements in this area.

We also found significant improvements in depression symptoms (d = –1.22) and functional impairment (d = –0.35) from pre- to post-treatment. These findings are promising as they suggest that CBT for GAD can lead to improvements in both GAD and depressive symptoms, and better quality of life (although improvements in functioning were small). In this sample, approximately 32% of patients met diagnostic criteria for a co-morbid depressive disorder and consequently it is encouraging that patients could see large improvements in their depressive symptoms following GAD treatment.

Although group CBT was found to lead to improvements in anxiety and depressive symptoms, IU, and quality of life pre- to post-treatment, 39% of participants did not meet the cut-off suggestive of recovery on the GAD-7. Consequently, it is important to investigate why treatment is less effective for some individuals. We investigated whether baseline demographic and clinical factors predicted treatment outcome. Consistent with our predictions and past research (e.g. Newman and Fisher Reference Newman and Fisher2010; Wetherell et al., Reference Wetherell, Hopko, Diefenbach, Averill, Beck, Craske and Stanley2005), greater GAD (d = –0.17) and chronic worry severity (d = –0.20), and greater number of co–morbid diagnoses (d = –0.13) were associated with greater improvements in chronic worry over the course of treatment. Furthermore, greater levels of symptom interference (i.e. poorer quality of life as measured by the IIRS) at the start of treatment was also associated with greater improvements in chronic worry over the course of treatment with a small effect size (d = –0.12). Collectively, these findings provide preliminary evidence that individuals with GAD with more severe symptoms and complex presentations are more likely to recover following treatment. As such, it is possible that treatment may not need to be adapted for more severe clinical presentations. This may be due to a variety of factors. First, there may be more ‘room to grow’ for patients who are experiencing the most severe symptoms and more restricted functioning. These patients are likely to have more distorted thinking or maladaptive behaviours, such as avoidance, contributing to worry and anxiety, and thus small shifts in thinking or changes in behaviour could have profound effects on their well-being. It is of course possible this effect could be partially explained by regression to the mean, whereby extreme scores will naturally regress towards the mean over time, irrespective of intervention (Davis, Reference Davis1976). However, this is not to discount the effect of GAD treatment for those individuals who have more mild or moderate symptoms, as they may still benefit greatly from treatment. It is important to consider that some degree of worry and IU, for example, is normative, and there may be only so much improvement we would expect to see in these individuals.

It is worth noting that all effect sizes for significant predictors were small (d = 0.12 to 0.20). This suggests that GAD symptoms, functional impairment, and number of co–morbid diagnoses may have limited influence on treatment outcomes. These findings suggest that variability in treatment response is likely to be influenced by other factors, and further investigation of treatment predictors and interactions between predictors of treatment for GAD is needed.

Despite the differences in GAD presentations across sex and the lifespan (see Jalnapurkar et al., Reference Jalnapurkar, Allen and Pigott2018 and Wolitzky-Taylor et al., Reference Wolitzky-Taylor, Castriotta, Lenze, Stanley and Craske2010 for reviews), participants’ age and biological sex did not significantly predict trajectory of change in chronic worry. This is consistent with meta-analyses showing that few studies find demographics, such as age and sex, moderate treatment outcomes for anxiety disorders (e.g. Schneider et al., Reference Schneider, Arch and Wolitzky-Taylor2015). These findings are encouraging as they suggest that group CBT provided in community hospital settings is similarly effective for people of different ages and biological sex and that these factors do not affect individuals’ ability to benefit from treatment.

Lastly, participants’ severity of depression and IU were not found to predict trajectory of change in chronic worry. Although unexpected, these findings are promising for the treatment of GAD in community hospital settings. GAD and depression commonly co-occur and these findings suggest that regardless of the severity of depression symptoms, individuals can benefit from group CBT for GAD. Furthermore, IU maintains worry and changes in IU account for a significant amount of change in chronic worry in CBT for GAD (Bomyea et al., Reference Bomyea, Ramsawh, Ball, Taylor, Paulus, Lang and Stein2015). Thus, given the role of IU in maintaining worry, it is encouraging that individuals benefit equally from treatment regardless of the extent to which they cannot tolerate uncertainty at baseline. These findings suggest that CBT for GAD probably does not need to be modified for individuals with GAD based on their level of depressive symptoms or IU.

Although this study has a number of strengths, including the large sample of community treatment-seekers with a diagnosis of GAD, the findings need to be considered in the context of the study limitations. Importantly, the sample consisted mostly of individuals who identified as white (93.9%) and female (77.6%). Thus, the demographics of the sample limit our ability to understand the effectiveness of group CBT in an out-patient hospital clinic for diverse groups. In addition, we were only able to investigate biological sex and not gender as a predictor of outcome due to lack of variability in gender in our sample. Consequently, future studies should evaluate the effectiveness of group CBT for GAD in more ethnically diverse samples and use targeted recruitment methods to recruit participants of varying genders due to important differences between sex and gender (i.e. biological versus societal influences). Additional demographics could also be investigated as predictors of treatment, including educational level and relationship status. Furthermore, although the DART has been shown to have excellent construct, convergent and discriminant validity with validated self-report measures of clinical symptoms (Schneider et al., Reference Schneider, Pawluk, Milosevic, Shnaider, Rowa, Antony and McCabe2022), it has not been validated against a gold-standard diagnostic interview leaving some questions about diagnostic accuracy. Furthermore, given this is a naturalistic treatment setting, not every individual had a principal diagnosis of GAD at the initial assessment (22% of participants had another primary diagnosis) and consequently may have completed a different treatment group prior to CBT for GAD. However, this is also a strength, as we aimed to understand how this treatment performed in a real-world clinical practice setting, where individuals may receive other treatments prior to group CBT for GAD. Lastly, there were missing data as a result of the study taking place in a naturalistic setting rather than a highly controlled clinical trial; nevertheless, the sample size was adequate for all analyses.

This study supported that group CBT for GAD leads to significant improvements in GAD symptom severity, chronic worry, depressive symptoms, IU and level of functional impairment in an out-patient hospital clinic. Furthermore, the findings support that treatment response is fairly robust and is not affected by participants’ biological sex, age, depressive symptoms, or IU. Importantly, these findings support that treatment adaptations are unnecessary for individuals whose primary concern is GAD, even if they have more severe symptoms, depressive symptoms, and co–morbidity. However, these findings may not extend to other clinical settings and samples with different patient profiles. Future research should replicate these findings in more diverse samples and across different community treatment sites. Furthermore, it will be important to continue to investigate other predictors of treatment to enhance our understanding of factors that impact treatment response for GAD such as gender identity, current stressors, and family symptom accommodation.

Supplementary material

The supplementary material for this article can be found at https://doi.org/10.1017/S1352465823000632

Data availability statement

Transfer of data outside the housing institution is currently not supported by the institution’s ethics policy.

Acknowledgements

The authors thank Ashleigh Elcock for administrative support.

Author contributions

Bailee Malivoire: Conceptualization (lead), Investigation (lead), Writing – original draft (lead); Kathleen Stewart: Conceptualization (supporting), Writing – original draft (supporting), Writing – review & editing (supporting); Duncan Cameron: Formal analysis (lead), Methodology (supporting), Writing – review & editing (equal); Karen Rowa: Conceptualization (equal), Investigation (equal), Methodology (equal), Supervision (lead), Writing – review & editing (equal); Randi McCabe: Resources (lead), Supervision (equal), Writing – review & editing (equal).

Financial support

This research did not receive any specific grant from funding agencies in the public, commercial, or not-for-profit sectors.

Competing interests

The authors declare none.

Ethical standards

The authors assert that all procedures contributing to this work comply with the ethical standards of the Helsinki Declaration of 1975, and its most recent revision. The procedures and measures used in this study were approved by the local institutional review board (ref. no. 07-2955) and incorporated standard practices in the clinic. As part of the consent procedure, participants were informed that their data may be used for presentations, reports, or articles but that their identifying information would never be included.

Footnotes

1 There was no significant difference between those with and without enough data for analysis on baseline demographics (age and sex), symptoms (PSWQ-T, DASS, IIRS, GAD7, IUS), and number of co-morbid diagnoses.

2 Given that there could be a delay between initial assessment and the start of treatment, age at the time of treatment was verified prior to data analysis using medical charts.

3 We thank the anonymous reviewer for their suggestion to include this post-hoc analysis.

4 Patients that completed the GAD-7 at post-treatment = 171.

5 Patients that completed the PSWQ-T at post-treatment = 118.

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Figure 0

Figure 1. Study procedure and participant flow diagram. GAD group n includes all people who consented to treatment. Insufficient data: participants who had two or fewer PSWQ time points. Analysis sample: sample with enough data for analysis. Completers: participants who had attended at least one of the three final sessions. Drop-out: participants did not attend any of the final three sessions.

Figure 1

Table 1. Demographics and clinical characteristics at pre-treatment

Figure 2

Table 2. Results of hierarchical linear modelling of treatment outcomes

Figure 3

Table 3. Correlation matrix of predictors of treatment at baseline

Figure 4

Figure 2. Results of hierarchical linear modelling for significant (p < .05) analyses predicting change in PSWQ-PW over time.

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