Abstract
A number of recent studies using factor analytic methods find that the structure of psychopathology reflects broad internalizing and externalizing dimensions, with the internalizing dimension being further divided into fear and distress disorders. While these variable-centered studies have provided important insights into the structure of psychopathology, they provide limited information about the classification of individual cases. The present study examines patterns of lifetime internalizing and externalizing psychopathology in participants from the Oregon Adolescent Depression Project using latent class analysis, which classifies individuals rather than variables. A four class solution best fit the data. The largest class (62.5%) included individuals with relatively little psychopathology; one class (16.4%) was largely characterized by internalizing disorders; one class (16.9%) was largely characterized by externalizing disorders; and the final class (4.2%) was characterized by both internalizing and externalizing disorders. The validity of the classes was further examined using data on psychiatric morbidity, temperament, and family aggregation of psychopathology. Classes differed on indices of positive, negative, and disinhibited temperament in ways that were consistent with theoretical predictions. Patterns of familial aggregation of psychopathology demonstrated relative specificity of transmission of different disorders. Overall, the findings support conclusions from studies of dimensional models of internalizing and externalizing disorders, and extend them to person-centered approaches to classification.
Keywords: psychopathology, structure, personality, latent class analysis
Several studies on the structure of internalizing and externalizing psychopathology conducted over the last decade have largely relied on variable–centered methodologies such as factor analysis for investigating structural associations among various forms of psychopathology [1–6]. In many of these studies, the authors concluded that the best fitting model was a higher-order internalizing factor with two facets, reflecting distress and fear disorders, and a single externalizing factor [1–3, 5]. Exceptions to this general pattern, however, have been reported. In one instance, the best-fitting model included distress, fear, and externalizing factors, but not a higher-order internalizing factor [6], while another study found that the best fitting model included single factors for internalizing and externalizing disorders [4]. Similar findings have also been reported in studies of children and adolescents [7, 8], suggesting continuity in structure across development. In each of the studies that reported higher-order internalizing and externalizing factors, moderate associations between factors were noted, suggesting significant covariation among internalizing disorders, among externalizing disorders, and across internalizing and externalizing disorders.
Variable–centered studies, including those that use factor analytic methodologies, describe how disorders are organized with respect to one another. Findings from such studies are often cited by those who argue for a diagnostic system that emphasizes dimensions underlying psychopathology. The current instantiation of psychiatric diagnosis, however, parallels medical diagnosis whereby the identification of collections of symptoms that reflect an individual-specific etiology and course of illness are emphasized. Because diagnostic concepts are intended to classify the individual person, methods used to derive disorder classifications should ideally parallel this goal. One person–centered approach could be to categorize individuals based on internalizing and externalizing dimension severity. In practice, however, this approach would be problematic as it is presently unclear how many categories would be necessary to describe the individual or what levels of severity would warrant categorization. An alternative approach would be to use classification methods that are designed to identify relatively homogenous sub-samples from a heterogeneous larger population. One such person-oriented approach is latent class analysis (LCA). Results of these analyses provide more individual-specific profiles that may elucidate disease related processes by empirically identifying relatively homogenous subpopulations from the observed samples based on observed variables. There have been relatively few attempts to use LCA to inform the structure of psychopathology. Kessler et al. [9] examined a LCA of 19 disorders in the NCS-R and found that a seven class solution best fit the data. A more recent re-analysis of these and the original NCS data [10], using more recently developed fit indices, found that a five class solution best fit the data. In this solution, there was one class with few disorders, pathological classes with largely distress, fear, and externalizing disorders, and a multimorbid disorder class with both internalizing and externalizing. Thus, these results strongly paralleled the results found in factor analytic studies.
In addition to choosing a methodological approach that is theoretically consistent with the goals of classification, it is also important to consider the validity of the classification system. With few exceptions [e.g., 11, 12, 13], the validity of dimensional and latent class models of psychopathology derived from factor-analytic studies remains largely untested. Previous work has demonstrated that, relative to healthy controls, individuals with specific internalizing disorders report higher levels of negative emotionality [14–17] and individuals with externalizing disorders report higher levels of disinhibition [18–20]. Findings for positive emotionality, particularly with respect to the internalizing domain of psychopathology, are more equivocal. Relative to healthy controls, individuals with depressive disorders have lower levels of positive emotionality [14, 16, 17, 21]; however, individuals with some anxiety disorders (particularly social phobia) and those with schizophrenia also report lower levels of positive emotionality [15, 22]. Watson and Naragon-Gainey (2010) have recently argued for the relative, but not absolute, specificity of positive emotionality to depression compared to social phobia and schizophrenia.
Evidence for validity of models of psychopathology may also be informed by data on familial history of disorders. Some family studies find evidence for independent transmission of different types of internalizing disorders [23, 24], while others find evidence for shared transmission [25, 26]. Family studies of externalizing disorders are similarly characterized by conflicting data, with some studies supporting independent transmission of disorders [27–29] and others supporting shared transmission [30, 31]. Fewer studies have examined familial aggregation of disorders across the internalizing-externalizing dimensions. Those that have examined this issue have also produced equivocal results, with some finding independent [32], and others finding common [31], transmission of internalizing and externalizing disorders.
The present study examines the structure of psychopathology using LCA. This method clusters individuals based on probability profiles of observed variables. In the present research, these observed variables consist of specific DSM–defined internalizing and externalizing disorders. Our expectations for the number and description of classes are informed by evidence from factor analytic studies. We anticipate the emergence of two classes that broadly reflect internalizing disorders and externalizing domains and a third class of individuals with little psychopathology. While factor analytic studies often converge on distress and fear disorders as lower order facets of the internalizing dimensions, the higher order internalizing factor is usually almost perfectly correlated with a lower-order latent factor defined by distress disorders [1–3, 5, 6], and is thus redundant. Consequently, we do not anticipate the emergence of individual classes corresponding to distress and fear disorders. Further, as factor analytic studies identify moderate associations between internalizing and externalizing disorders, we also anticipate the emergence of a fourth class with high rates of disorders from both broadband dimensions.
Following the identification of the class solution that best fits the data, we then compare classes on rates of specific disorders, demographic features, psychiatric morbidity, temperament, and family history of depressive, anxiety, and substance use disorders. Based on the literature on the epidemiology of internalizing disorders, we anticipate that classes characterized by internalizing disorders will be comprised largely of women [33]. Likewise, based on the epidemiology of externalizing disorders, we anticipate that classes characterized by externalizing disorders will be comprised largely of men [34]. Based on data on relationships between temperament and psychopathology, we anticipate that, when compared with the class defined by low levels of psychopathology, the following will be observed: (a) classes characterized by internalizing and externalizing disorders will demonstrate higher levels of negative emotionality; (b) classes characterized by internalizing disorders will demonstrate lower levels of positive emotionality; and (c) classes characterized by externalizing disorders will demonstrate higher levels of disinhibition [18, 35, 36]. Lastly, we anticipate modest specificity of familial aggregation [25, 30, 31], with classes characterized by internalizing disorders having stronger associations with family history of internalizing disorders and classes characterized by externalizing disorders having stronger associations with family history of externalizing disorders.
Methods
Participants
The present study uses data from the Oregon Adolescent Depression Project (OADP) [37], a longitudinal study of a large cohort of high school students who were assessed twice during adolescence, a third time when the average age was 24, and a fourth time when the average age was 30. Participants were randomly selected from nine high schools in western Oregon. A total of 1,709 adolescents (ages 14–18; mean age 16.6, SD = 1.2) completed the initial (T1) assessments between 1987 and 1989. The participation rate at T1 was 61%. All youth provided informed consent before completing research procedures. Approximately one year later, 1,507 of the adolescents (88%) returned for a second evaluation (T2). Differences between the sample and the larger population from which it was selected, and between participants and those who declined to participate or dropped out of the study before T2, were small [37]. However, individuals with a history of disruptive behavior disorder at T1 were more likely to drop-out of the study (16.8% vs. 6.0%, χ2[1, N =1,709] =31.22, p < .001).
For the third assessment, all adolescents with a history of a depressive disorder by T2 (n = 360) or a history of non-mood disorders (n = 284), and a random sample of adolescents with no history of psychopathology by T2 (n = 457), were invited to participate in a third (T3) evaluation. All non-white T2 participants were retained in the T3 sample to maximize ethnic diversity. Of the 1,101 T2 participants selected for a T3 interview, 941 (85%) completed the age 24 evaluation. The T2 diagnostic groups did not differ on the rate of participation at T3. At age 30, all T3 participants were asked to complete another interview assessment (mean age = 30.45, SD = .70, range = 28–34). Of the 941 who participated in the T3 assessment, 816 (87%) completed the T4 assessment. Differences were few and small between those who participated in T3 but not T4 and who participated in T3 and T4 [38]. The reference sample for the current study includes participants who completed the T4 follow-up.
Measures
Proband diagnostic measures
At T1 and T2, probands were interviewed with a version of the Schedule for Affective Disorders and Schizophrenia for School-Age Children [K-SADS; 39], which combined features of the Epidemiologic and Present Episode versions, and included additional items to derive Diagnostic and Statistical Manual of Mental Disorders, 3rd edition revised (DSM-III-R) [40] diagnoses. Follow-up assessments at T2 and T3 were jointly administered with the Longitudinal Interval Follow-Up Evaluation [LIFE; 41]. The K-SADS/LIFE procedure provided information regarding the onset and course of disorders since the previous interview. The T4 interview consisted of a joint administration of the LIFE and the Structured Clinical Interview for DSM–IV [SCID; 42] to probe for new or continuing episodes since T3. Diagnoses were based on DSM-III-R criteria for T1 and T2 and Diagnostic and Statistical Manual of Mental Disorders, 4th edition (DSM-IV) [43] criteria for T3 and T4. Lifetime diagnoses were used as the indicators of psychopathology in this paper, such that the individual was considered to have the diagnosis if it was identified as a past or current disorder at any of the assessments.
A subset of interviews from each wave was rated from audio or videotapes by a second interviewer for reliability purposes: T1 = 263, T2 = 162, T3 = 190, and T4 = 124 interviews. Diagnostic agreement among raters was indexed by kappa. To avoid potential inflation, deflation, and/or unreliability of the kappa statistic, reliability was calculated only for categories diagnosed 10 or more times by both raters combined. Fleiss (1981) provides guidelines for the interpretation of kappa, whereby values ≥ 0.75 denote excellent agreement beyond chance, those between 0.75 and 0.40 are indicative of good to fair agreement, and coefficients < 0.40 reflect poor agreement. Across the four assessment waves, inter-rater diagnostic reliability was good to excellent for disorders that occurred with sufficient frequency. The reliability of one disorder, major depressive disorder (MDD), could be determined for each of the 4 waves (M kappa = .84; range: .81 – .86). Alcohol abuse/dependence (AUD) and cannabis abuse/dependence (CUD) were diagnosed with sufficient frequency among raters during 3 of the 4 waves, and the mean kappas were, respectively, .77 (range: .74 to .82) and .79 (range: .72 to .83). Hard drug abuse/dependence (DRG) was diagnosed with sufficient frequency among raters during 2 of the 4 waves, with the mean kappa for this disorder being .76 (range: .69 to .83). Kappa coefficients for dysthymia (.56), post-traumatic stress disorder (PTSD; .73), specific phobias (.66), panic disorder (.81), separation anxiety disorder (.83), attention-deficit/hyperactivity disorder (ADHD; .89) and oppositional defiant disorder (ODD; .77) could only be determined for 1 of the 4 assessment waves. Generalized anxiety disorder (GAD), social phobia, obsessive-compulsive disorder (OCD), and conduct disorder (CD) were not diagnosed with sufficient frequency during any assessment wave to allow an evaluation of diagnostic reliability.
At T3, adult antisocial behavior (AAB) was assessed using the Personality Disorder Examination (PDE) (Loranger, 1988) and at T4, AAB was assessed using the International Personality Disorder Examination (IPDE; Loranger et al., 1994). The IPDE is the updated version of the PDE and they share a number of features, including established interrater reliability, temporal stability, and minimal state effects (Loranger et al., 1991). The IPDE has an extensive scoring manual, which defines the scope and meaning of each item. The antisocial personality disorder module included prompts to assess symptoms of AAB that were present beginning at age 15 and AAB diagnoses did not require the presence of CD before age 18. Based on audiotaped interviews, the interrater reliability (indexed by kappa) for AAB assessed at T3 and T4 had a mean kappa of .61 (range: .49 –.74). AAB and CD were treated independently in the present paper.
First-degree family members of OADP participants were interviewed using the Structured Clinical Interview for DSM-IV, non-patient version [SCID-NP; 42] at the time of the T3 assessment. All family member participants provided written informed consent before completing research procedures. Of the 816 original probands who participated in the T4 assessment, information about at least one family member was available for 732 (89.7%). Data are available on a total of 2414 family members averaging 3.29 (SD = 1.15) family members per original proband. Interviews were conducted without knowledge of the offspring’s diagnoses. The interrater reliability of lifetime diagnoses (based on 184 randomly selected interviews) was excellent for depression (including both MDD and DYS; κ = .94), any anxiety disorder (κ = .90), AUD (κ = .86), and substance use disorders (SUD; inclusive of alcohol, cannabis, hard drug abuse/dependence) (κ = .89).
Family history data were collected from the original OADP participants and at least one other family member using a modified version of the Family Informant Schedule and Criteria (FISC; Mannuzza & Fyer, 1990), supplemented with items necessary to derive DSM-IV diagnoses. The interrater reliability of lifetime diagnoses (based on 242 randomly selected interviews) were good-excellent for MDD (κ = .90), any anxiety disorder (κ = .77), AUD (κ = . 90), and cannabis/hard drug abuse/dependence (κ = .82).
As multiple data sources were available for most parents, we derived lifetime best-estimate DSM-IV diagnoses from all available information [44]. Two diagnosticians, from a team of four senior clinicians, independently derived best-estimate diagnoses without knowledge of offspring diagnoses. Disagreements were resolved by consensus. Interrater reliability of the independently derived best-estimate diagnoses prior to the resolution of discrepancies was excellent for MDD (κ = .91), any anxiety disorder (κ = .94), AUD (κ = .97), and SUD (κ = .96).
Participant interviews at T3 and T4 were conducted by telephone, which generally yields comparable results to face-to-face interviews [45, 46]. Most interviewers had advanced degrees in a mental health field and several years of clinical experience.
Psychiatric morbidity and psychological constructs
As part of the diagnostic assessment, interviewers provided ratings based on the DSM Global Assessment of Functioning (GAF) scale and probed for the number of suicide attempts over the interval of time assessed by each interview. The total number of lifetime suicide attempts through T4 was examined in this paper. At T4, probands reported on their highest level of education completed (i.e., number of years of school completed), and number of weeks unemployed in past year (based on a six-point scale).
Proband temperament
Probands were asked to complete the General Temperament Survey [GTS; 47] for a sub-study approximately 2½ years before the T4 assessment. The GTS is a 90-item measure that assesses positive, negative, and disinhibited temperament, which include content related to extraversion, neuroticism, and (inversely) conscientiousness [48]. Data were available for 716 (87.7%) of probands.
Data analysis
Latent class analyses (LCA) were conducted using Mplus 6 [49]. Models were estimated for 2 through 10 classes. Lifetime diagnoses through T4 of dysthymia, MDD, social phobia, specific phobia, separation anxiety disorder, OCD, PTSD, GAD, panic disorder, ADHD, CD, ODD, AAB, AUD, cannabis use disorder, and hard drug disorders were entered as indicators of latent classes. Model fit was evaluated based on the Bayesian information criterion (BIC), with lower BIC indicating better fit, and the bootstrap likelihood ratio test (BLRT). The BLRT examines whether there is significant improvement in model fit when estimating k classes relative to the k − 1 class. Recent simulation work suggests that the BLRT is the most sensitive index for identifying the correct number of classes in models similar in number of indicators and sample sizes to those estimated here [50].
After identifying the best fitting solution, we extracted the most likely class membership for each participant and compared classes on demographic characteristics, disorders within each class, psychiatric morbidity, temperament, and familial aggregation of disorders. Post-hoc comparisons on demographic characteristics and disorders within each class were estimated using chi-square tests. Comparisons on psychiatric morbidity and temperament were estimated using analysis of variance, using appropriate distributional assumptions for specific outcomes (e.g., number of lifetime suicide attempts were estimated using Poisson distributions). Lastly, associations between class membership and familial aggregation of depressive, anxiety, and substance use disorders were estimated individually using survival analysis. Models were estimated with MPlus using the TYPE=COMPLEX option to accommodate the inclusion of multiple family members for probands.
Results
Identification of Best Fitting Class Solution
LCA were performed by estimating models for 2 through 10 classes. However, models are only presented for 2 through 5 classes because inadmissible solutions were found for models of 6 through 10 classes. The minimum BIC was found for the 3 class solution (Table 1), suggesting that this is the preferred solution. However, the BLRT found that the 4 class solution provided a significant improvement relative to the 3 class solution. Additionally, the BLRT found that the 5 class solution did not provide a better fit than the 4 class solution. Thus, based on the simulation work suggesting that the BLRT outperforms the BIC in identifying the optimal solution [50], we relied on the 4 class solution.
Table 1.
Classes | LL | BIC | AIC | Parameters | BLRT |
---|---|---|---|---|---|
2 | −3341.10 | 6903.44 | 6748.19 | 33 | 479.54*** |
3 | −3259.30 | 6853.82 | 6618.60 | 50 | 163.60*** |
4 | −3227.41 | 6904.02 | 6588.83 | 67 | 63.77*** |
5 | −3209.90 | 6982.98 | 6587.80 | 84 | 35.03 |
p < .001. LL = Log-likelihood value; BIC = Bayesian Information Criteria; AIC = Akaike Information Criteria; BLRT = bootstrap likelihood ratio test.
Class 1 accounted for 62.5% of the sample and demonstrated the lowest overall rates of psychopathology (Figure 1), although there were high rates of MDD (40.3%) and AUD (21.4%) in this class. Compared to other identified classes, individuals in this class had milder histories of MDD, with a lower proportion of cases having moderate/severe and recurrent episodes, and milder histories of AUD, with most cases having lifetime diagnoses of alcohol abuse rather than dependence (Table 2). Only 16.5% of cases had both lifetime internalizing and externalizing disorders.
Table 2.
Class 1 (62.5%) | Class 2 (16.9%) | Class 3 (16.4%) | Class 4 (4.2%) | F/χ2 | |
---|---|---|---|---|---|
Female Sex1 | 288 (56.5)a | 111 (80.4)b | 52 (38.8)c | 29 (85.3)b | 59.78*** |
Number of Disorders2 | .83 (.03)a | 2.92 (.07)b | 3.54 (.10)c | 6.08 (.25)d | 1571.30*** |
Number of Times in Treatment2 | .42 (.04)a | 1.17 (.11)b | 1.68 (.18)c | 3.12 (.48)d | 292.13*** |
Number of Lifetime Suicide Attempts2 | .36 (.20)a | 1.24 (.72)a,b | .68 (.22)a,b | 3.00 (1.26)b | 11.61** |
T4 GAF3 | 82.29 (9.12)a | 75.12 (11.77)b | 73.44 (12.47)b | 68.12 (15.60)c | 47.35*** |
Unemployment3 | .38 (.15)a | .43 (.18)b | .42 (.16)b | .51 (.22)c | 7.99*** |
Yrs. Of Education3 | 14.73 (1.86)a | 14.19 (1.92)b | 13.86 (1.95)b,c | 13.29 (1.83)c | 12.30*** |
MDD Characteristics | |||||
Moderate/Severe1 | 165 (71.4)a | 110 (80.3)b | 69 (87.3)b,c | 30 (93.4)c | 9.62*** |
Recurrence1 | 110 (47.6)a | 83 (60.6)b | 52 (65.8)b | 25 (78.1)b | 17.21** |
Alcohol Dependence1 | 48 (43.2)a | 25 (55.6)a | 86 (72.3)b | 26 (86.7)b | 29.82*** |
p < .001;
p < .01.
Denotes that table entries include N(%) and χ2-statistic is computed;
Denotes that table entries include M (SE) and F-statistic is computed using a count distribution; and
Denotes that table entries include M (SD) and F-statistic is computed. Statistics for MDD Characteristics are based only on cases with a lifetime diagnosis of MDD. Statistics for Alcohol Dependence are based only on cases with a lifetime Alcohol Use Disorder Diagnosis. Differing superscripts reflect significant differences at p < .05.
Class 2 accounted for 16.9% of the sample and demonstrated elevated rates of dysthymia (19.2%), MDD (100.0%), separation anxiety (15.4%), PTSD (18.7%), panic disorder (18.0%), and AUD(34.2%). Taken together, this class largely reflects elevated rates of internalizing disorders (albeit with a number of cases of AUD). Approximately half of the individuals in this class (49.3%) had both lifetime internalizing and externalizing disorders.
Class 3 accounted for 16.4% of the sample and demonstrated elevated rates of MDD (58.8%), CD (27.6%), AAB (13.0%), and alcohol (84.2%), cannabis (82.0%), and hard drug use disorders (53.7%). Taken together, this class largely reflects elevated rates of externalizing disorders (albeit with a number of cases of MDD). More than half of the individuals in this class (62.7%) had both lifetime internalizing and externalizing disorders.
Lastly, Class 4 accounted for 4.2% of the sample and demonstrated elevated rates of dysthymia (18.0%), MDD (96.2%), social phobia (30.0%) and specific phobia (26.7%), separation anxiety (20.6%), OCD (15.0%), PTSD (43.2%), GAD (15.7%), panic disorder (45.2%), ODD (14.7%), and alcohol (85.4%), cannabis (76.2%), and hard drug use disorders (61.1%). All individuals in this class (100%) had both lifetime internalizing and externalizing disorders. Interestingly, the most prevalent externalizing disorders were substance use disorders and ODD, but rates of conduct disorder and AAB were extremely low.
Class Comparisons: Demographics, Psychiatric Morbidity, and Psychosocial Functioning
Chi-square analyses found no significant differences between classes on race (defined as Caucasian vs. non-Caucasian; Table 2). However, gender differences were evident, such that the percentage of women significantly increased from the highly externalizing class to the class with lower rates of psychopathology to the highly internalizing class to the comorbid class.
We next examined psychiatric morbidity, as indexed by the number of lifetime disorders, number of times in psychiatric treatment, and the number of lifetime suicide attempts (Table 2). The number of lifetime disorders and number of times in psychiatric treatment increased from the class with little psychopathology, to the predominantly internalizing class, to the predominantly externalizing class, to the comorbid class. Higher numbers of lifetime suicide attempts were found in the comorbid class than the class with little psychopathology; however, the number of lifetime suicide attempts in the predominantly internalizing and externalizing classes did not differ from each other or from the other classes.
Psychosocial functioning was indexed by the GAF, educational attainment, and recent unemployment (Table 2). The class with lower rates of psychopathology was functioning best, with significantly higher GAF scores and educational attainment and significantly lower unemployment than the three other classes. Individuals in the predominantly internalizing and externalizing classes did not differ from each other on these indices. Individuals in the comorbid class were performing most poorly, with lower GAF scores and higher levels of unemployment than individuals in the predominantly internalizing and externalizing classes. No significant differences were observed between individuals within the comorbid and predominantly externalizing classes on educational attainment.
Class Comparisons: Temperament
Completion of the GTS was not associated with class membership, χ2 (3) = 2.28, p = .55. Individuals in the predominantly internalizing class had lower levels of Positive Temperament than individuals in the class with lower rates of psychopathology and the predominantly externalizing class, but did not differ from those in the comorbid class. Individuals in the comorbid class had lower levels of Positive Temperament than individuals in the class with lower rates of psychopathology, but did not differ from individuals in the predominantly externalizing class. Individuals in the predominantly internalizing and comorbid classes had higher levels of Negative Temperament than individuals in the predominantly externalizing class, who, in turn, had higher levels of Negative Temperament than individuals in the class with lower rates of psychopathology. Individuals in the predominantly externalizing and comorbid classes had higher levels of Disinhibited Temperament than individuals in the class with lower rates of psychopathology and individuals in the predominantly internalizing class.
Class Comparisons: Family History of Psychopathology
Table 4 displays hazard ratios (and 95% confidence intervals) for using class membership to predict depressive, anxiety and substance use disorders in first-degree relatives. Compared to the class with lower rates of psychopathology, the predominantly internalizing, predominantly externalizing, and comorbid classes were all more likely to have family members with depressive disorders. The rate of depressive disorders was also significantly greater among relatives of individuals in the comorbid class than relatives of probands in the externalizing class, while the rate in relatives of members of the internalizing class was intermediate and did not differ from the other two classes. Compared to the classes with lower rates of psychopathology and predominantly externalizing disorders, the relatives of members of the predominantly internalizing and comorbid classes had significantly higher rates of anxiety disorders. Finally, relatives of individuals in the predominantly internalizing, predominantly externalizing, and comorbid classes had higher rates of substance use disorders than relatives of probands in the class with little psychopathology. Moreover, relatives of individuals in the comorbid class also had a higher rate of substance use disorders than the relatives of members of the predominantly internalizing and externalizing classes.
Table 4.
1. Lower | 2. Internal | 3. External | 4. Comorb | 2 v. 1 | 3 v. 1 | 4 v. 1 | 3 v. 2 | 4 v. 2 | 4 v.3 | |
---|---|---|---|---|---|---|---|---|---|---|
n (%) | n (%) | n (%) | n (%) | HR (95% CI) | HR (95% CI) | HR (95% CI) | HR (95% CI) | HR (95% CI) | HR (95% CI) | |
Familial | 379 (24.8) | 157 (39.0) | 122 (31.3) | 41 (42.3) | 1.66 (1.37, 1.96)*** | 1.33 (1.09, 1.58)** | 1.94 (1.41, 2.55)*** | .80 (.64, 1.01) | 1.17 (.83, 1.64) | 1.46 (1.03, 2.06)* |
Depression Familial | 166 (10.6) | 65 (16.1) | 41 (10.5) | 19 (20.0) | 1.51 (1.10, 2.07)* | .98 (.67, 1.42) | 1.89 (1.16, 3.07)* | .65 (.42, . 99)* | 1.25 (.74, 2.11) | 1.93 (1.10, 3.40)* |
Anxiety Familial SUD | 460 (30.1) | 154 (38.2) | 171 (43.8) | 55 (57.9) | 1.32 (1.09, 1.60)** | 1.58 (1.31, 1.90)*** | 2.21 (1.69, 2.88)*** | 1.19 (.96, 1.49) | 1.67 (1.24, 2.24)** | 1.40 (1.04, 1.87)* |
p < .05;
p < .01;
p < .001. Lower = Class 1; Internal = Class 2; External = Class 3; Comorb = Class 4. SUD = Substance Use Disorder. Differing superscripts reflect significant differences at p < .05.
Discussion
Previous literature on the structure of psychopathology has largely relied on variable–centered methods such as factor analysis. Models derived from these methods describe the organization of psychopathology across individuals; however, disorder classification is intended to provide information about individual cases. To accomplish this latter goal, alternative methods such as LCA are required. The present study used LCA to identify classes of psychopathology, with the validity of the resultant classes indicated by dissimilar associations between class membership and psychiatric morbidity, psychological functioning, temperament, and family history of psychopathology.
Our analyses suggested that a four class solution best fit the data. The classes provided groupings of individuals with lower probabilities of psychopathology, higher probabilities of internalizing disorders, higher probabilities of externalizing disorders, and higher probabilities of both internalizing and externalizing disorders, respectively. These classes are consistent with the pattern of combinations that can be derived from the internalizing and externalizing dimensions reported in factor analytic studies. Additionally, the present results are largely consistent with those reported from the NCS and the NCS-R samples [10]. The main difference between results presented in these studies and those of the present study is that we did not find distinct classes based on the fear and distress disorders from the internalizing domain.
Inspection of each class revealed some notable patterns. In the class with relatively low levels of psychopathology, there were substantial rates of MDD and alcohol use disorders although these tended to be relatively mild conditions. In general, individuals in this class had lower rates of recurrence and lower episode severity than individuals with MDD in the remaining three classes. Similarly, the alcohol use disorders generally took the form of abuse rather than dependence; indeed, the rate of alcohol dependence was lower in this class than all other classes. As MDD and alcohol use disorders are ubiquitous across all classes, this suggests that there may be considerable heterogeneity in these syndromes. On the whole, this class had the lowest levels of psychiatric morbidity and highest psychosocial functioning, and lowest familial aggregation of psychopathology.
In the class with internalizing disorders, all individuals met criteria for MDD and there were increased rates of most other internalizing disorders as well as alcohol and hard drug use disorders relative to the class with lower levels of psychopathology. It is possible that the individuals in this class relied on alcohol and/or drugs to self-medicate. This class may therefore represent individuals with secondary substance abuse problems related to their internalizing disorders. Alternatively, typologies of alcoholism often identify a group with predominantly internalizing problems [e.g., Cloninger’s type 1 vs type 2 alcoholism; 51]. Individuals in this class were more likely to be women, have higher levels of psychiatric morbidity, and have lower psychosocial functioning than individuals in the class with relatively low levels of psychopathology. This class also had higher levels of negative and lower levels of positive temperament and elevated rates of depressive and anxiety disorders in their relatives compared to the class with low levels of psychopathology.
Within the class with externalizing disorders, most individuals met criteria for alcohol, cannabis, and hard drug use disorders and MDD, while a large minority also met criteria for CD. These results are consistent with previous data that demonstrated a prospective association between CD and depression [52]. This sequence has been described as a failure model [53] in which youth with CD fail to succeed in multiple domains of functioning due to their externalizing behaviors, with repeated failures eventually resulting in depression. Individuals in this class were more likely to be men, had more psychiatric disorders, and initiated treatment on more occasions than individuals in the class with relatively low levels of psychopathology. These classes, however, were, similar on suicide attempts and level of psychosocial functioning. This class also had higher levels of negative and disinhibited temperament and elevated rates of SUDs in their relatives compared to the class with low levels of psychopathology.
In the class with both internalizing and externalizing disorders, many if not most individuals met criteria for MDD, panic disorder, PTSD, and alcohol, cannabis, and hard drug use disorders. Although this was the smallest class based on prevalence, this class appeared to account for much of the observed comorbidity between internalizing and externalizing disorders in the entire sample. Similarly, all individuals in this class had both lifetime internalizing and externalizing disorders. Interestingly, the class with both internalizing and externalizing disorders had higher rates of ODD, but lower higher rates of CD and AAB than the externalizing class. This is consistent with data indicating that while CD and antisocial personality disorder fall squarely on the externalizing spectrum (Krueger, Markon, Patrick, Benning, & Kramer, 2007), ODD predicts the later development of both internalizing and externalizing disorders [54–57]. The class with both internalizing and externalizing disorders consisted predominantly of women and had the highest degree of psychiatric morbidity and impairment. Members of this class also had higher levels of negative and disinhibited temperament, and lower levels of positive temperament than the class with low levels of psychopathology. Finally, this class was characterized by the highest rates of depressive, anxiety and substance use disorders in relatives.
These data suggest that the primary dimensions of internalizing and externalizing disorders identified in factor analytic studies are largely replicated using person-oriented methods. However, our findings did not fully replicate the distinction between distress and fear disorders within the internalizing domain, perhaps because previous research has indicated that these lower-order factors have near-perfect correlations with a higher-order internalizing latent factor.
Several investigations have concluded that there are replicable patterns of associations between temperament dimensions and specific disorders or disorder classes. Specifically these studies report that most forms of psychopathology are characterized by high levels of negative emotionality, depressive disorders are characterized by low levels of positive emotionality, and externalizing disorders are characterized by high levels of disinhibited temperament [16–22, 36, 58, 59]. Our findings largely mirrored these results, support the continuity between temperament and psychopathology, and demonstrate coherence between factor analytic and person-oriented approaches.
Finally, this research also examined the familial aggregation of depressive, anxiety, and substance use disorders, and whether aggregation among family members was largely related to disorders within the same domain [25, 30, 31]. The data suggest relative specificity of the family transmission of internalizing and externalizing disorders. The rates of depressive disorders in relatives incrementally increase across the externalizing, internalizing, and comorbid classes. Similarly, the aggregation of familial SUD increases as one compares rates among the internalizing, externalizing, and comorbid classes, further suggesting some specificity of familial aggregation.
In summary, the present study complements the work on dimensional models of psychopathology by identifying person-oriented clusters of psychopathology. The results provide converging support for the broad dimensions of internalizing and externalizing disorders, but raise the possibility that the distinction between fear and distress disorders may be less salient than some of the factor analytic studies suggest. In addition to addressing the structure of psychopathology, we also examined the validity of the distinctions between classes using demographic, clinical, temperament, and family history data. These data supported the validity of our cluster solution by confirming most of the hypothesized differences between clusters. Lastly, our data on associations between class membership and familial psychopathology generally supports transmission within clusters.
Strengths of this study include careful diagnostic assessments on four occasions across 15 years and the inclusion of a large number of psychiatric disorders. We also examined a variety of external variables from multiple domains to validate the latent classes. However, the study also has a number of limitations. First, like other community-based studies of the structure of psychopathology, we omitted other important, but less common, disorders (e.g., bipolar, psychotic, and eating disorders); thus, it is unclear how to incorporate these other disorders into this framework. Second, not all participants had complete data on temperament or family history. However, no associations between missingness of temperament or family history data and class membership were found, suggesting minimal bias. Third, while the four class solution was identified as the preferred model, the precision in assigning class membership was reasonable (entropy = .74) but less than optimal. Simulations suggest that significance tests for associations between class membership and external variables may, therefore, be less reliable than desired (Clark & Muthén, under review). However, most statistical tests were highly significant. In addition, we repeated the analyses using a second method that weighted observations based on the posterior probability of class assignment and adjusted the analyses for imprecision of class assignment (Clark & Muthén, under review). These analyses produced identical results. Fourth, we reported findings from the LCA models that were not adjusted for the complex sampling procedures. We did this to accommodate the BLRT as a model selection tool, which is not available when using sampling weights. However, patterns of BIC were similar for the analyses relying on the BIC for analyses utilizing the sampling weights. [60]. These analyses produced identical results. Lastly, the current paper focused exclusively on LCA models, and did not examine confirmatory factor analysis (CFA) and factor mixture models (FMM). Comparisons between these modeling approaches are beyond the scope of this paper. Future work on the organization of psychopathology will likely benefit from further simulation studies to identify the most appropriate statistical indices for comparing model validity and fit between CFA, LCA, and FMM [61] methods.
Table 3.
Healthy | Internalizing | Externalizing | Comorbid | F | |
---|---|---|---|---|---|
(62.5%) | (16.9%) | (16.4%) | (4.2%) | ||
Negative Temp. | 7.76 (6.12)a | 14.30 (7.86)b | 10.88 (6.96)c | 14.87 (8.14)b | 39.47*** |
Positive Temp. | 20.22 (4.95)a | 17.57 (6.61)b | 19.26 (5.69)a,c | 17.34 (7.56)b,c | 9.32*** |
Disinhibited Temp. | 7.61 (4.85)a | 8.38 (4.47)a | 12.10 (5.46)b | 11.81 (6.40)b | 29.44*** |
p < .001; Temp. = Temperament. Healthy = Class 1; Internalizing = Class 2; Externalizing = Class 3; Comorbid = Class 4. Differing superscripts reflect significant differences at p < .05.
Acknowledgments
This work was supported by National Institute of Mental Health Grants R01MH66023 (Dr. Klein), R01 MH40501, R01 MH50522, R01 MH52858, and R01 DA012951 (Dr. Lewinsohn). Portions of these data were presented at the Twenty Fourth Annual Meeting of the Society for Research in Psychopathology, Seattle, WA; October, 2010.
Footnotes
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Contributor Information
Thomas M. Olino, University of Pittsburgh School of Medicine
Daniel N. Klein, Stony Brook University
Richard F. Farmer, Oregon Research Institute
John R. Seeley, Oregon Research Institute
Peter M. Lewinsohn, Oregon Research Institute
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