Literature DB >> 28805173

Latent traits of impulsivity and compulsivity: toward dimensional psychiatry.

S R Chamberlain1, J Stochl1, S A Redden2, J E Grant2.   

Abstract

BACKGROUND: The concepts of impulsivity and compulsivity are commonly used in psychiatry. Little is known about whether different manifest measures of impulsivity and compulsivity (behavior, personality, and cognition) map onto underlying latent traits; and if so, their inter-relationship.
METHODS: A total of 576 adults were recruited using media advertisements. Psychopathological, personality, and cognitive measures of impulsivity and compulsivity were completed. Confirmatory factor analysis was used to identify the optimal model.
RESULTS: The data were best explained by a two-factor model, corresponding to latent traits of impulsivity and compulsivity, respectively, which were positively correlated with each other. This model was statistically superior to the alternative models of their being one underlying factor ('disinhibition') or two anticorrelated factors. Higher scores on the impulsive and compulsive latent factors were each significantly associated with worse quality of life (both p < 0.0001).
CONCLUSIONS: This study supports the existence of latent functionally impairing dimensional forms of impulsivity and compulsivity, which are positively correlated. Future work should examine the neurobiological and neurochemical underpinnings of these latent traits; and explore whether they can be used as candidate treatment targets. The findings have implications for diagnostic classification systems, suggesting that combining categorical and dimensional approaches may be valuable and clinically relevant.

Entities:  

Keywords:  Addiction; cognition; compulsive; habit; impulsive

Mesh:

Year:  2017        PMID: 28805173      PMCID: PMC5699644          DOI: 10.1017/S0033291717002185

Source DB:  PubMed          Journal:  Psychol Med        ISSN: 0033-2917            Impact factor:   7.723


Introduction

There is a growing realization that the careful elucidation and measurement of intermediate biological characteristics is central to refining and improving existing psychiatric classification and treatment. As highlighted in the NIMH Research Domain Criteria (RDoC) strategic plan, it is necessary to identify intermediate markers, cutting across related psychiatric disorders, and continuous with relevant markers of variability in the general population (Cuthbert & Insel, 2013). The concepts of impulsivity and compulsivity are highly relevant clinically, but also represent fruitful heuristics in the search for intermediate markers of psychiatric disease. Impulsivity refers to behaviors or actions that are inappropriate, premature, unduly thought out, risky, and that lead to untoward outcomes (Evenden, 1999). Compulsivity refers to a tendency toward repetitive, habitual actions, repeated despite adverse consequences (Robbins et al. 2012). It has been suggested that impulsivity and compulsivity might constitute opposite ends of a spectrum (Stein et al. 1993). However, impulsive and compulsive symptoms can co-occur within the same individual, hence the suggestion that they may be driven by common neurobiological processes (such as lack of top–down executive control, or ‘disinhibition’) (Chamberlain et al. 2005). Impulsivity–compulsivity constitutes one of several candidate dimensional models in psychiatry. Other key examples include internalizing (depression, generalized anxiety) v. externalizing (e.g. substance use, antisocial personality) symptoms (Khan et al. 2005); and depression v. mania (the ‘mood spectrum’) (McElroy et al. 1996). These different frames of references can be viewed as being partly related. At the level of symptoms, impulsive behaviors are explicitly listed in the diagnostic criteria for attention-deficit hyperactivity disorder (ADHD), and several other conditions formally listed as ‘Impulse Control Disorders’ in the Diagnostic and Statistical Manual Version 5 (DSM-5) (American Psychiatric Association, 2013). Symptoms reaching formal diagnostic criteria for ADHD are evident in up to 7% of children and 2.5% of adults (Simon et al. 2009). Compulsivity is well represented in obsessive–compulsive disorder (OCD; intrusive thoughts and/or repetitive rituals) and in obsessive–compulsive personality disorder (OCPD; e.g. rigid, perfectionistic approach to life with reluctance to delegate) (American Psychiatric Association, 2013). Formal OCD affects 1–3% of the population, and OCPD up to 8% (Grant et al. 2014; Diedrich & Voderholzer, 2015). Obsessive–compulsive traits exist in milder forms and can be quantified using questionnaires designed for this purpose (Sanavio, 1988). Compulsivity is also a core behavioral feature in gambling disorder or substance use disorders – conditions now listed together in the DSM-5 category of ‘Substance Related and Addictive Disorders’. These disorders are also common (prevalence of 8.5% for alcohol use disorder and up to 3.1% for gambling disorder) (Grant et al. 2004; Ferguson et al. 2011). Impulsivity and compulsivity can be conceptualized not only in terms of overt psychopathology, such as described above, but also in terms of personality- and laboratory-based neurocognitive measures. There is an extensive literature on the development and validation of questionnaire-based measures of personality related to impulsivity (e.g. the Barratt Impulsiveness Questionnaire), and compulsivity (e.g. the Padua Obsessive–Compulsive Inventory) (Barratt, 1965; Sanavio, 1988). These measures are well suited for use at the level of the general population, but are also sensitive to more extreme levels of impulsivity and compulsivity as manifested in ADHD and OCD, respectively (Malloy-Diniz et al. 2007; van den Heuvel et al. 2008). From a cognitive perspective, facets of impulsivity can be captured using tests of premature motor response (stop-signal tasks), and gambling paradigms examining tendency for making risky decisions (Grant & Chamberlain, 2014). Similarly, aspects of compulsivity can be fractionated using tests of flexible responding, especially set-shifting (Robbins et al. 2012), and measures of rigidity on other tests. Inroads have been made in eliciting the neural and neurochemical substrates underlying normal performance on these tasks across species (Robbins, 2005; Dalley et al. 2011; Bari & Robbins, 2013; Fineberg et al. 2014). Dysfunction of these fronto-striatal systems is central to neurobiological models and treatment of impulsive and compulsive conditions (Denys et al. 2004; Biederman & Faraone, 2005; Del Campo et al. 2011; Seixas et al. 2012). The concepts of impulsivity and compulsivity have contributed to the latest nosological classification systems in psychiatry, and are critical concepts when considering treatments for mental disorders. Yet, it is not yet known whether latent phenotypes of impulsivity and compulsivity exist; if so, whether they are related; and if so, how. Therefore, we quantified whether impulsive and compulsive data were optimally explained by there being one underlying latent factor, two underlying unrelated latent factors, or two underlying related latent factors. It was hypothesized that impulsive and compulsive variables would load onto two largely separable, but positively correlated latent traits.

Materials and methods

Participants

Participants, aged 18–29 years, were recruited using media advertisements in two US cities. Adverts asked subjects to participate in a research study exploring impulsive/compulsive behaviors. Subjects were excluded if they were unable to give informed consent, were unable understand/undertake the study procedures, or were seeking treatment for any mental disorders. All study procedures were carried out in accordance with the Declaration of Helsinki. The Institutional Review Boards of the Universities of Minnesota and Chicago approved the study and the consent statement. Participants were compensated with a $50 gift card for a local department store for taking part.

Clinical assessments

Assessments were conducted in a quiet testing room with a trained rater, and included objective clinical interview, completion of questionnaires, and neuropsychological assessment using a touch-screen computer. An overview of the measures is provided in Table 1 below. We focused on measures of impulsivity and compulsivity, categorized as such a priori on the basis of current psychiatric models and nosology.
Table 1.

Overview of outcome measures collected as part of the study

Measurement categoryInstrument usedDescriptionReferences
Demographic
Age
Gender
Education
Quality of lifeQuality of Life Inventory (QOLI)Quality of life t-score, based on responses to 32 items, encompassing well-being and life satisfactionFrisch et al. (1992)
Impulsivity
Psychopathology
 Attention-deficit hyperactivity disorder (ADHD) symptomsWorld ADHD Rating Scale (ASRS v1.1), Part AGives total score, which indicates risk of underlying ADHD diagnosisKessler et al. (2005)
 SuicidalityMini International Neuropsychiatric Inventory (MINI)Generates total score related to history of self-endangerment, suicidal thoughts, and suicide attempt(s). Score held to reflect current suicide riskSheehan et al. (1998)
Personality
 Antisocial personality disorderMINIBinary measure as to whether criteria met for antisocial personality disorder, based on structured clinical interviewSheehan et al. (1998)
 Motor, non-planning, and attentional impulsivityBarratt Impulsiveness Questionnaire (BIS-11)Yields three total sub-scores based on previous factor analysisBarratt (1965), Patton et al. (1995)
 Impulsiveness, venturesomeness, and extraversionEysenck Personality InventoryYields three total sub-scores based on previous factor analysisEysenck & Eysenck (1978), Eysenck & Eysenck (1977)
Cognition
 Response inhibitionCANTAB Stop-Signal Task (SST)Estimates time taken for individual's brain to suppress a pre-potent response (stop-signal reaction time)Aron et al. (2007), Logan et al. (1984)
 Quality of decision-makingCANTAB Cambridge Gamble Task (CGT)Measures tendency of individual to make impulsive decisions contrary to logicRogers et al. (1999)
Compulsivity
Psychopathology
 Gambling disorderMinnesota Impulse Disorders Inventory (MIDI) moduleBinary presence/absence of gambling disorder, based on structured clinical interviewGrant et al. (2004b)
 Gambling frequencyStructured interviewPerson asked how many times they gamble in a typical week
 Gambling severityPathological-Gambling Yale-Brown Obsessive-Compulsive Scale (PG-YBOCS)Total score, based on thoughts and behaviors related to problem/pathological gamblingPallanti et al. (2005)
 Alcohol use disorder (AUD)MINIBinary measure as to presence or absence of AUD (dependence/abuse), based on structured clinical interviewSheehan et al. (1998)
 Alcohol frequencyStructured interviewPerson asked how many times they consume one or more alcoholic beverages per week
 Substance use disorder (SUD)MINIBinary measure as to presence or absence of SUD (dependence/abuse, any substance besides alcohol), based on structured clinical interviewSheehan et al. (1998)
 Marihuana consumptionIn-person interviewPerson asked how many times they consume cannabis per week
 Nicotine consumptionIn-person interviewPerson asked how much they smoke; responses converted to ‘packs per day’ equivalent
 Problematic use of the InternetYoung's Diagnostic QuestionnaireGives total score as to how many criteria met for problematic Internet use (max 8)Young (2009)
 Eating disorderMINIBinary as to presence/absence of any eating disorder, based on structured clinical interviewSheehan et al. (1998)
Personality
 Obsessive–compulsive (OC) symptomsPadua Obsessive–Compulsive Inventory RevisedThirty-nine-item questionnaire, which yields five scores for different OC factorsBurns et al. (1996), Sanavio, (1988)
 Obsessive–compulsive personality disorder scoreDSM-IV symptom tick-listTotal score as to how many of eight symptom criteria metAmerican Psychiatric Association (2000)
Cognition
 Extra-dimensional set-shiftingCANTAB Intra-Dimensional/Extra-Dimensional Set-Shift Task (IED)Errors made during the crucial extra-dimensional shift stage of the testPantelis et al. (1999)
 Reversal learningCANTAB IEDTotal number of errors made for all reversal learning stages of the testPantelis et al. (1999)
 Risk adjustmentCANTAB CGTMeasures the extent to which participants modulate their behavior depending on risk level (flexible decision-making)Rogers et al. (1999)
Overview of outcome measures collected as part of the study Psychopathological measures of impulsivity comprised ADHD symptom scores, occurrence of antisocial personality disorder (ASPD), and suicidal tendencies. Impulsive symptoms are listed explicitly in the diagnostic criteria for ADHD and ASPD, whereas many studies have reported strong – even heritable – associations between impulsivity and suicide-related behaviors (Chistiakov et al. 2012). For personality-related measures of impulsivity, we included the Barratt Impulsivity and Eysenck personality questionnaires, which are widely used and accepted for such purposes (Gomez & Corr, 2014; Stanford et al. 2016). For cognitive measures of impulsivity, we focused on the inhibition of pre-potent motor responses on the Stop-Signal Test (SST), and the tendency to make irrational decisions to the detriment of longer term performance on the Cambridge Gamble Test (CGT). Decisional and motor impulsivity are widely recognized as distinct cognitive manifestations of impulsivity (Dalley et al. 2011; MacKillop et al. 2016). See online Supplementary file for more detailed description of the cognitive tasks. Compulsive measures of psychopathology included those reflecting gambling, substance use, compulsive use of the Internet, and eating disorders. Compulsivity is central to understanding the neurobiology of gambling and substance use disorders, in that they are characterized by maladaptive repetitive engagement in habitual behaviors that are reinforcing (implicating dysfunctional reward circuitry) (Grant & Chamberlain, 2016). Symptoms of dependence and withdrawal are extremely common in substance and gambling disorders, serving to perpetuate narrowing of the behavioral repertoire (Wareham & Potenza, 2010). While not yet regarded as a formal psychiatric disorder, problematic Internet use is relatively commonplace. Its working diagnostic criteria incorporate compulsive use (based on parallels with substance use disorders) (Young, 2009). Based on an extensive review of available literature, compulsive use has been highlighted as a core symptom of Internet addiction (Kuss et al. 2014). Compulsivity has emerged as a key construct in understanding eating disorders – pathological overeating (Degortes et al. 2014; Moore et al. 2017), as well as in anorexia nervosa (Tenconi et al. 2010; Degortes et al. 2014; Treasure et al. 2015). For compulsive personality, obsessive–compulsive symptom traits on the Padua Inventory revised (Burns et al. 1996; Sanavio, 1988), and OCPD traits (based on number of DSM criteria met), were quantified. We used Padua Inventory rather than the OCD Yale-Brown Obsessive Compulsive Disorder Scale (YBOCS) because the Padua Inventory is designed to explore obsessive–compulsive traits and symptoms at the population level; using the YBOCS in a normative population would likely have yielded very limited variation in scores, with most participants scoring zero. For compulsive cognition, we measured reversal learning and extra-dimensional set-shifting on the Intra-Dimensional/Extra-Dimensional Set-Shift Task (IED); along with risk adjustment on the Cambridge Gamble Task (CGT). Reversal learning and extra-dimensional set-shifting are two key, separable components of behavioral flexibility germane to understanding compulsivity (Clarke et al. 2005; Clarke et al. 2007; Chamberlain & Menzies, 2009; Dalley et al. 2011). It was hypothesized that difficulty adjusting behavior as a function of risk on the CGT would constitute a measure of decision-making sensitive to rigid response styles. See online Supplementary file for more detailed description of the cognitive tasks.

Data analysis

All statistical analyses were undertaken using R software, MPlus, and IBM SPSS (v22.0) (Muthén & Muthén, 2016; R Core Team, 2016). Impulsive and compulsive measures of interest were analyzed using confirmatory factor analysis (CFA) to compare three models: one in which impulsive and compulsive measures were underpinned by a single underlying latent factor; one in which covariances among impulsive and compulsive measures were explained by two underlying unrelated latent factors; and one in which covariances were explained by two underlying related latent factors. Our aim was to test the relationship between these latent factors, rather than to explore the possible existence of other additional latent factors. As such, and in view of the extensive literature supporting the existence of these two latent types of measurement (impulsivity and compulsivity) (Robbins et al. 2012; Guo et al. 2017), CFA rather than exploratory factor analysis was appropriate. We included behavioral, personality, and cognitive measures on the same conceptual plane to maintain simplicity of the examined models but also because the distinction between these categories of measure is far from clear. DSM-5 places personality disorders and disorders formally regarded as being on ‘axis-I’ on the same conceptual plane, in recognition of overlap between them. Many measures can be argued to be in one category or another depending on vantage point. To assure comparability, the model fit was evaluated using Akaike Information Criterion (AIC) and Bayesian Information Criterion (BIC) (Akaike, 1974; Schwarz, 1978).

Results

The sample comprised 576 individuals [mean age (s.d.) = 22.3 (3.6) years; 65.5% male]. The average quality of life, Barratt impulsiveness scores, Padua obsessive–compulsive scores, and cognitive scores were similar to those reported in previous normative datasets (for further discussion and distribution of individual measures see online Supplementary file). Correlations between individual measures of interest are summarized in Fig. 1.
Fig. 1.

Heat map showing correlations between variables of interest. Left: positive correlations are shown in blue, and negative in red; larger dots are indicative of stronger correlations. Right: correlation coefficients (rounded to one decimal place in the interests of clarity). gamfreq, gambling frequency per week; alcfreq, alcohol frequency per week; marfreq, marihuana frequency per week; AUD, alcohol use disorder; SUD, substance use disorder; EIQI, Eysenck Inventory Impulsiveness; EIQV, Eysenck Inventory Venturesomeness; EIQE, Eysenck Inventory Extraversion; BISAI, Barratt Attentional Impulsiveness; BISMI, Barratt Motor Impulsiveness; BISNI, Barratt Non-Planning Impulsiveness; antisoc, antisocial personality disorder; suic, suicidality on the Mini International Neuropsychiatric Inventory; PADUACW, Padua Inventory Contamination and Washing subscale; PADUADG, Padua Inventory Dressing/Grooming subscale; PADUAC, Padua Inventory Checking subscale; PADUAT, Padua Inventory Thoughts of Harm to Self-others subscale; PADUAI, Padua Inventory Impulses to Harm Self/Others subscale; nOCPD, number of obsessive-compulsive personality disorder criteria met; ADHD, total score on attention-deficit hyperactivity disorder screen; Internet, total score on Young's Internet Addiction Test; MIDIPG, gambling disorder; SSRT, stop-signal reaction time on Stop-Signal Test; qualdec, quality of decision-making on the Cambridge Gamble Test; riskadj, risk adjustment on the Cambrige Gamble Test; eat_dis, eating disorder; pgybocs, Pathological Gambling Yale Brown Obsessive–Compulsive Disorder Scale; ederr, extra-dimensional errors on the set-shifting task.

Heat map showing correlations between variables of interest. Left: positive correlations are shown in blue, and negative in red; larger dots are indicative of stronger correlations. Right: correlation coefficients (rounded to one decimal place in the interests of clarity). gamfreq, gambling frequency per week; alcfreq, alcohol frequency per week; marfreq, marihuana frequency per week; AUD, alcohol use disorder; SUD, substance use disorder; EIQI, Eysenck Inventory Impulsiveness; EIQV, Eysenck Inventory Venturesomeness; EIQE, Eysenck Inventory Extraversion; BISAI, Barratt Attentional Impulsiveness; BISMI, Barratt Motor Impulsiveness; BISNI, Barratt Non-Planning Impulsiveness; antisoc, antisocial personality disorder; suic, suicidality on the Mini International Neuropsychiatric Inventory; PADUACW, Padua Inventory Contamination and Washing subscale; PADUADG, Padua Inventory Dressing/Grooming subscale; PADUAC, Padua Inventory Checking subscale; PADUAT, Padua Inventory Thoughts of Harm to Self-others subscale; PADUAI, Padua Inventory Impulses to Harm Self/Others subscale; nOCPD, number of obsessive-compulsive personality disorder criteria met; ADHD, total score on attention-deficit hyperactivity disorder screen; Internet, total score on Young's Internet Addiction Test; MIDIPG, gambling disorder; SSRT, stop-signal reaction time on Stop-Signal Test; qualdec, quality of decision-making on the Cambridge Gamble Test; riskadj, risk adjustment on the Cambrige Gamble Test; eat_dis, eating disorder; pgybocs, Pathological Gambling Yale Brown Obsessive–Compulsive Disorder Scale; ederr, extra-dimensional errors on the set-shifting task.

Confirmatory factor analysis

Fit indices for the different confirmatory factor models are summarized in Table 2; it can be seen that the model with two correlated latent factors had the best fit (lowest information criteria scores). This model was re-estimated using weighted least squares to assess its absolute fit, which yielded parameters as follows: global fit index 0.977, root mean square error of approximation 0.064, and comparative fit index 0.86. These values are considered to indicate reasonably good fit, in view of conventional criteria, taking into consideration the sample size (Hu & Bentler, 2009). Comparing the hypothesized models using weight of evidence, the two-factor correlated model was the best fit (>99.9% probability).
Table 2.

Maximum likelihood-based fit indices

ModelAICBICaBIC
One-factor53 97854 30154 066
Two-factor uncorrelated53 21253 53553 300
Two-factor correlated53 18653 51353 275

Lower scores indicate better model fit, and a reduction of 10 or more units from one model to another is generally held to indicate a superior model (Raftery, 1995).

Maximum likelihood-based fit indices Lower scores indicate better model fit, and a reduction of 10 or more units from one model to another is generally held to indicate a superior model (Raftery, 1995). The loadings of manifest measures onto the optimal two-factor model are shown in Fig. 2. Variable loadings were in the expected direction, such that higher impulsivity factor scores were associated with higher personality measures of impulsivity, higher impulsive symptomatology (ASPD, ADHD, suicidality), and worse quality of decision-making on the gambling task; and higher compulsivity factor scores were associated with higher personality measures of compulsivity (Padua Inventory), higher compulsive symptomatology (gambling, problematic Internet use, OCPD, substance use disorders), more extra-dimensional set-shifting errors on the set-shifting task, and less risk adjustment on the gambling task.
Fig. 2.

Two-factor correlated model, showing factor loadings. Variables with non-statistically significant loading (p > 0.05) are shown in strike-through. Abbreviations – see footer to Fig. 1.

Two-factor correlated model, showing factor loadings. Variables with non-statistically significant loading (p > 0.05) are shown in strike-through. Abbreviations – see footer to Fig. 1. Higher scores on the impulsivity and compulsivity factors, respectively, were significantly correlated with worse quality of life on the Quality of Life Inventory (r = 0.27, p < 0.00001; and r = 0.30, p < 0.000001).

Discussion

Mental disorders characterized by impulsive or compulsive symptoms constitute a huge burden for patients, family members, and society at large. Psychiatry is seeking methods of refining the definition of mental disorders, and of better understanding their etiology and neurobiological substrates. One way of tackling this challenge (Cuthbert & Insel, 2013), is to use a multi-tiered approach examining not just categorical mental disorders but also dimensional psychopathology, personality, and neurocognitive functioning (Chamberlain & Menzies, 2009). Here, we examined such multi-tiered measures in a sample of young adults who were not treatment seeking. We found that impulsive and compulsive manifest measures were underpinned by distinct latent traits of impulsivity and compulsivity, which were positively correlated with each other. Furthermore, higher scores on each of these latent traits were significantly correlated with worse quality of life, thereby confirming their clinical relevance. The two correlated factor model was a better fit to the data than alternative conceptual models in which impulsive and compulsive manifest measures were mediated by a single latent factor of ‘disinhibition’; and the alternative conceptualizations that impulsive and compulsive latent traits were in opposition to each other (negatively correlated) or independent of each other. We focused on impulsivity and compulsivity, which we view as being complementary to other suggested frameworks for understanding mental disorders, such as the idea of externalizing v. internalizing symptoms; or the existence of a bipolar mood spectrum. Impulsivity and compulsivity are related to these other models but are not the same thing (Eisenberg et al. 2009). Ultimately, psychiatry may benefit from a more cohesive model that integrates multiple of these ideas (Lara & Akiskal, 2006). Manifest measures loading most strongly and significantly on the latent trait of impulsivity (see Fig. 2) were (in descending order of statistical significance): impulsiveness on the Eysenck Inventory, impulsiveness on the Barratt questionnaire, dimensional ADHD symptoms, presence of ASPD, suicide risk, longer stop-signal reaction times, and extraversion on the Eysenck Inventory. As a caveat, it should be noted that some of these loadings, while statistically significant, were relatively small in magnitude. These findings are consistent with studies in clinical populations, which have reported positive associations between such personality-based measures of impulsivity, and ADHD (Malloy-Diniz et al. 2007); and between such personality-based measures and ASPD (Swann et al. 2009). There is also evidence that Barratt impulsiveness was associated with suicidality in the context of depressive symptoms (Swann et al. 2008). Stop-signal reaction time impairment has been observed in meta-analysis of available cognitive studies comparing ADHD groups to healthy volunteers (Lijffijt et al. 2005; Chamberlain et al. 2011). In non-treatment-seeking adults with ASPD, stop-signal deficits were observed v. healthy controls (Heritage & Benning, 2013; Chamberlain et al. 2016). In contrast to research regarding impulsivity, the exploration of compulsivity has received relatively little research attention (Robbins et al. 2012). Manifest measures of compulsivity that loaded significantly onto the latent factor of compulsivity were as follows (in descending order of statistical significance): obsessive–compulsive symptoms on the Padua Inventory, problematic Internet use, problem gambling symptoms, presence of an eating disorder, less risk adjustment on the CGT, OCPD traits, more extra-dimensional set-shift errors on the Set-Shift Task (IED), and presence of substance/alcohol use disorder. Again, some of these variables had relatively low loading onto the latent construct, albeit they were significant. Compulsivity has been defined, hypothetically, as an intermediate phenotype or trait characterized by persistence of habitual/repetitive actions despite untoward consequences (Robbins et al. 2012). Our data are supportive of the view that compulsivity can be conceptualized as such a trait, and demonstrate that it is largely separable from impulsivity. Relatively impaired set-shifting has been identified in patients with OCD (Veale et al. 1996; Watkins et al. 2005; Chamberlain et al. 2007), and in those with eating disorders (Kanakam & Treasure, 2013; Aloi et al. 2015; Perpina et al. 2016), compared with healthy controls. Set-shifting errors, and reduction of behavioral adjustment as a function of risk, are both indicative of inflexible or habitual response styles. One interpretative model is that these response patterns may be due to a tendency toward habitual behaviors at the expense of goal-directed behaviors (Gillan & Robbins, 2014). In a large-scale Internet-based study, deficits in goal-directed control were strongly associated with compulsive behaviors and intrusive thoughts, but were also associated to a lesser degree with impulsivity on the Barratt questionnaire (Gillan et al. 2017). Problematic Internet use is not yet considered a mental disorder in DSM-5, but has been highlighted as a concept in need of further study (in this and other narrower guises, such as ‘Internet Gaming Disorder’) (Grant & Chamberlain, 2016). Studies report high rates of mental disorders including OCD in people with pathological Internet use (Carli et al. 2013; Durkee et al. 2016). In an Internet-based survey, some types of obsessive–compulsive symptoms (impulses to harm self/others and checking compulsions) were the most important variables across impulsivecompulsive measures in terms of classifying participants as having moderate–severe Internet addiction (Ioannidis et al. 2016). Research into OCPD is scant, but data indicate disproportionately worse set-shifting impairment in OCD patients with this comorbidity (Fineberg et al. 2007; Fineberg et al. 2015). Our finding that substance use disorders loaded significantly and positively onto the latent compulsivity factor is unsurprising. Criteria for substance use disorders includes features such as narrowing of the behavioral repertoire, persistently engaging in use despite negative consequences, and unsuccessful attempts to cut back, which fit the concept of compulsivity closely. To our knowledge, no previous studies have explored the latent structure of impulsivity and compulsivity measures within one setting, using such a broad range of measures. However, there is an extensive body of literature, mostly focusing on psychopathology, suggesting the existence of an underlying ‘internalizing’ dimension (predisposition to anxiety/depressive disorders) and an ‘externalizing’ dimension (predisposition to, e.g. substance use, antisocial personality, ADHD) (Caspi et al. 2014). OCD symptoms have not been consistently included in studies exploring the structure of psychopathology (Caspi et al. 2014). In a large sample of adolescents (IMAGEN consortium), the best-fit model for selected psychopathological measures comprised two factors (compulsivity and externalizing behaviors) (Montigny et al. 2013). The compulsivity factor showed strong associations with OCD and eating disorders, whereas the externalizing behaviors factor showed strong associations with substance misuse, conduct disorder, and (to a lesser degree) ADHD symptoms. In another paper by the same research consortium (IMAGEN), psychopathological measures were first entered into initial CFA (Castellanos-Ryan et al. 2016). The relationships between resulting factors and other measures, such as cognitive functioning were then explored. The authors opted for a bi-factor model incorporating three factors. It was found that a general psychopathology factor correlated with worse response inhibition and greater temporal discounting; an externalizing factor correlated with high risk taking on a gambling task; and that an internalizing factor correlated with attentional bias toward negatively valenced verbal stimuli. This study measured impulsivity with a go/no-go task (rather than a stop-signal task), and did not quantify attentional set-shifting. The current study has several limitations, which merit consideration. Our sample did not exclude people with mental disorders. This can be viewed as being beneficial to exploring latent traits of impulsivity and compulsivity since it would have yielded a broader set of data for the purposes of measuring covariance, and is also parsimonious with the RDoc concept. Our sample showed average impulsive and compulsive personality questionnaire scores, and cognitive performance, akin to that reported in previous normative populations. However, the findings may not generalize to other populations, such as patients in clinical settings. We treated personality, symptoms, and cognition as being on the same conceptual plane, with a view to maintaining model simplicity and avoiding unnecessary assumptions. We used confirmatory rather than exploratory factor analysis because the concepts of impulsivity and compulsivity are well established in the literature (Hollander & Cohen, 1996; Robbins et al. 2012) and our research question pertained to the relationship between them, rather than the separate issue of whether more latent factors exist. For pragmatic reasons, we did not include all possible measures of relevance to impulsivity and compulsivity. For example, we did not assess reflection–impulsivity, or tasks of ‘incremental’ habit learning (Gillan & Robbins, 2014; Hauser et al. 2016). It would be valuable to include such parameters in future work. Lastly, some recent studies of personality and psychopathology have explored bi-factor models. In bi-factor models, a general factor or ‘p’ (analogous to the historical ‘g’ factor in intelligence quotient research) is included, on the assumption that a proportion of covariance across all measures may measure a common trait (Caspi et al. 2014). The findings from the two correlated factor model suggest against using a bi-factor structure for the current data, because the proportion of shared variance between the impulsivity and compulsivity factors was only ~7%. Furthermore, bi-factor models may be intrinsically biased toward yielding superior model fit parameters over non bi-factor models, as a consequence of unmodeled complexity (Murray & Johnson, 2013). In post hoc analysis, furthermore, we found that the ω coefficient was inferior when a bi-factor model fit was applied to the data (ω < 0.7 for the general factor), v. the two correlated factor model (ωimpulsivity = 0.74; ωcompulsivity = 0.79) (Reise, 2012). The biological and clinical plausibility and interpretation of ‘g’ or ‘p’ factor may be problematic (Vanheule et al. 2008) – for example, ‘p’ could represent response style rather than containing substantial meaning. In summary, this study used a range of psychopathological, personality, and cognitive measures to demonstrate the existence of two separable but positively correlated latent traits of impulsivity and compulsivity, in a sample of young adults recruited from the background population. Higher scores on each latent trait was significantly correlated with worse quality of life, and was associated with greater risk of having one or more relatives with a behavioral or substance addiction, supporting the clinical relevance of these traits. We do not suggest that all manifest measures of impulsivity and compulsivity are ‘two things’; there is evidence, for example, that different measures of impulsivity can be fractionated (Meda et al. 2009; MacKillop et al. 2016). However, the current findings do support the notion that latent forms of impulsivity and compulsivity exist in a dimensional or continuous sense that they are largely separable from each other, and that higher impulsivity tends to associate with higher compulsivity (rather than the opposite). Treatments targeting impulsivity and compulsivity at the conceptual level, or in terms of specific manifest forms (such as neurocognitive impairment), would be potentially valuable. Future work should identify neural and neurochemical underpinnings of these latent dimensions with a view to informing nosological and neurobiological models; and should also attempt to integrate multiple candidate dimensions besides impulsivity and compulsivity.
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Authors:  Miguel Seixas; Margaret Weiss; Ulrich Müller
Journal:  J Psychopharmacol       Date:  2011-09-24       Impact factor: 4.153

Review 4.  Impulsive action and impulsive choice across substance and behavioral addictions: cause or consequence?

Authors:  Jon E Grant; Samuel R Chamberlain
Journal:  Addict Behav       Date:  2014-05-10       Impact factor: 3.913

Review 5.  The roles of dopamine and noradrenaline in the pathophysiology and treatment of attention-deficit/hyperactivity disorder.

Authors:  Natalia Del Campo; Samuel R Chamberlain; Barbara J Sahakian; Trevor W Robbins
Journal:  Biol Psychiatry       Date:  2011-05-06       Impact factor: 13.382

Review 6.  Toward an integrative model of the spectrum of mood, behavioral and personality disorders based on fear and anger traits: II. Implications for neurobiology, genetics and psychopharmacological treatment.

Authors:  Diogo R Lara; Hagop S Akiskal
Journal:  J Affect Disord       Date:  2006-05-19       Impact factor: 4.839

Review 7.  Attention-deficit hyperactivity disorder.

Authors:  Joseph Biederman; Stephen V Faraone
Journal:  Lancet       Date:  2005 Jul 16-22       Impact factor: 79.321

8.  Impulsivity: differential relationship to depression and mania in bipolar disorder.

Authors:  Alan C Swann; Joel L Steinberg; Marijn Lijffijt; F Gerard Moeller
Journal:  J Affect Disord       Date:  2007-09-05       Impact factor: 4.839

9.  Problematic internet use (PIU): Associations with the impulsive-compulsive spectrum. An application of machine learning in psychiatry.

Authors:  Konstantinos Ioannidis; Samuel R Chamberlain; Matthias S Treder; Franz Kiraly; Eric W Leppink; Sarah A Redden; Dan J Stein; Christine Lochner; Jon E Grant
Journal:  J Psychiatr Res       Date:  2016-08-15       Impact factor: 4.791

Review 10.  Does obsessive-compulsive personality disorder belong within the obsessive-compulsive spectrum?

Authors:  Naomi A Fineberg; Punita Sharma; Thanusha Sivakumaran; Barbara Sahakian; Sam R Chamberlain; Sam Chamberlain
Journal:  CNS Spectr       Date:  2007-06       Impact factor: 3.790

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  31 in total

1.  Initial validation of a transdiagnostic compulsivity questionnaire: the Cambridge-Chicago Compulsivity Trait Scale.

Authors:  Samuel R Chamberlain; Jon E Grant
Journal:  CNS Spectr       Date:  2018-05-07       Impact factor: 3.790

Review 2.  A Systematic Meta-Review of Impulsivity and Compulsivity in Addictive Behaviors.

Authors:  Rico S C Lee; Sylco Hoppenbrouwers; Ingmar Franken
Journal:  Neuropsychol Rev       Date:  2019-03-30       Impact factor: 7.444

3.  Selective role for the COMT polymorphism in a trans-diagnostic compulsivity phenotype.

Authors:  Samuel R Chamberlain; Jon E Grant
Journal:  Psychol Med       Date:  2018-08-24       Impact factor: 7.723

4.  Reward-related attentional capture and cognitive inflexibility interact to determine greater severity of compulsivity-related problems.

Authors:  Lucy Albertella; Mike E Le Pelley; Samuel R Chamberlain; Fred Westbrook; Rico S C Lee; Leonardo F Fontenelle; Jon E Grant; Rebecca A Segrave; Eugene McTavish; Murat Yücel
Journal:  J Behav Ther Exp Psychiatry       Date:  2020-05-01

5.  Body dysmorphic disorder and its relationship to sexuality, impulsivity, and addiction.

Authors:  Jon E Grant; Katherine Lust; Samuel R Chamberlain
Journal:  Psychiatry Res       Date:  2019-01-11       Impact factor: 3.222

6.  Transdiagnostic variations in impulsivity and compulsivity in obsessive-compulsive disorder and gambling disorder correlate with effective connectivity in cortical-striatal-thalamic-cortical circuits.

Authors:  Linden Parkes; Jeggan Tiego; Kevin Aquino; Leah Braganza; Samuel R Chamberlain; Leonardo F Fontenelle; Ben J Harrison; Valentina Lorenzetti; Bryan Paton; Adeel Razi; Alex Fornito; Murat Yücel
Journal:  Neuroimage       Date:  2019-08-02       Impact factor: 6.556

Review 7.  Trans-diagnostic measurement of impulsivity and compulsivity: A review of self-report tools.

Authors:  Roxanne W Hook; Jon E Grant; Konstantinos Ioannidis; Jeggan Tiego; Murat Yücel; Paul Wilkinson; Samuel R Chamberlain
Journal:  Neurosci Biobehav Rev       Date:  2020-10-25       Impact factor: 8.989

8.  Self-reported and neurocognitive impulsivity in obsessive-compulsive disorder.

Authors:  Ilana Frydman; Paulo Mattos; Ricardo de Oliveira-Souza; Murat Yücel; Samuel R Chamberlain; Jorge Moll; Leonardo F Fontenelle
Journal:  Compr Psychiatry       Date:  2019-12-16       Impact factor: 3.735

9.  The Influence of Trait Compulsivity and Impulsivity on Addictive and Compulsive Behaviors During COVID-19.

Authors:  Lucy Albertella; Kristian Rotaru; Erynn Christensen; Amelia Lowe; Mary-Ellen Brierley; Karyn Richardson; Samuel R Chamberlain; Rico S C Lee; Edouard Kayayan; Jon E Grant; Sam Schluter-Hughes; Campbell Ince; Leonardo F Fontenelle; Rebecca Segrave; Murat Yücel
Journal:  Front Psychiatry       Date:  2021-02-23       Impact factor: 4.157

Review 10.  ICD-11 Personality Disorders: Utility and Implications of the New Model.

Authors:  Roger T Mulder
Journal:  Front Psychiatry       Date:  2021-05-10       Impact factor: 4.157

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