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Psychometrics of Impulsive Aggression Prepared by Eric Youngstrom, Ph.D. & Robert L. Findling, M.D. Method Source Data: The following analyses are based on secondary analyses of data collected under the auspices of a Center Grant from the Stanley Medical Research Institute (PI: Robert L. Findling, M.D., and Joseph R. Calabrese, M.D.). The data files used in this reanalysis were previously published (Youngstrom et al., 2004), and details about the recruitment strategy and participants are presented there. Measures: The data file included item scores on four relevant measures: The Parent General Behavior Inventory (P-GBI) (Youngstrom, Findling, Danielson, & Calabrese, 2001), the Young Mania Rating Scale (YMRS) , the Achenbach Child Behavior Checklist (CBCL), and the adolescent self-report of the General Behavior Inventory (A-GBI). The primary caregiver completed the P-GBI and CBCL at the initial evaluation for all youths ages 5 to 17 years (N = 642). The YMRS was completed by a highly trained rater based on direct interview of both the parent and the youth (ages 5 to 17). Adolescents ages 11 to 17 years completed the A-GBI (n = 324). Internal Consistency of Impulsive Aggression Items Latent class analyses of the ratings by three experts identified eight items as assessing impulsive aggression on the A-GBI and P-GBI. These included items #27, 42, 44, and 51 from the depression scale, and #14, 39, 53, and 54 from the hypomanic/biphasic scale. In the present data, correlations among these items reflected a single underlying dimension according to the three most accurate decision rules for determining the number of factors: the Scree test, the Minimum Average Partials method, and Glorfeld’s extension of Horn’s Parallel Analysis. The eight items on the P-GBI showed good internal consistency, with Cronbach’s alpha = .87. Alpha was .88 for the same items based on adolescent self report. Ten items (#20, 21, 37, 57, and 95 unanimously; and #16, 41, 87, 97, and 104 by two out of three judges) were identified as measuring impulsive aggression on the CBCL. Again, this set of items indicated a single factor according to all criteria examined, with alpha = .91. Items #5 (irritable mood) and #9 (disruptive/aggressive behavior) from the YMRS measured impulsive aggression, correlating r = .91 with each other. Confirmatory Factor Analysis Across Measures A confirmatory factor analysis tested whether a single factor of impulsive aggression drove the relationships between the IA items drawn from each of the four measures. Based on maximumlikelihood estimation, a single factor solution provided acceptable fit to the data: X2 (2 df) = 7.74, CFI = .97. Standardized loadings on the IA factor were .48 for the A-GBI, .51 for the YMRS, .79 for the CBCL, and .86 for the P-GBI. Related to Jensen et al., Consensus Report: Impulsive Aggression as a Symptom Across Diagnostic Categories in Child Psychiatry: Implications for Medication Studies. J Am Acad Child Adolesc Psychiatry 2007 IA Elevations Across Diagnoses To investigate the level of IA associated with different disorders, participants were grouped by primary Axis I diagnosis (as determined by KSADS interview and review by a physician). For these purposes, a bipolar spectrum diagnosis (bipolar I, bipolar II, cyclothymia, or bipolar Not Otherwise Specified) was considered “primary” regardless of comorbidity; then unipolar mood disorders were put in a separate category, followed by ADHD and disruptive behavior disorders (without comorbid mood disorder) and finally those youths not meeting criteria for any Axis I disorder. Oneway ANOVAs compared the average level of IA across these five groups (with bipolar I examined separately from the other bipolar spectrum diagnoses), across all four measures (thus N = 642 for the P-GBI, YMRS, and CBCL; and n = 324 for the AGBI). The Games-Howell procedure was used for post-hoc comparisons, because it is robust to violations of the assumption of homogeneity of variance (and the no diagnosis group had significantly lower variance than any of the clinical groups across all measures). The figure below summarizes the pattern of findings, presented in terms of raw scores on each scale. The bipolar I and other bipolar spectrum groups did not differ in IA, and both bipolar groups tended to show more IA than the unipolar or ADHD/disruptive behavior groups. All clinical groups showed significantly more IA than the “no diagnosis” group, p < .05 based on the Games-Howell tests. 14 12 10 8 6 4 2 0 PGBI Imp-Agg AGBI Imp-Agg Bipolar I Disruptive Beh D/Os YMRS Imp-Agg Other Bipolar Spectrum No Diagnosis (V71.09) CBCL Imp-Agg Unipolar Mood D/O Latent Class Analyses of IA Related to Jensen et al., Consensus Report: Impulsive Aggression as a Symptom Across Diagnostic Categories in Child Psychiatry: Implications for Medication Studies. J Am Acad Child Adolesc Psychiatry 2007 Latent Class Analysis was performed on the 8 items from the P-GBI using the full data set (N = 624), using Latent Gold version 3.0.1 software. Based on examination of multiple model fit criteria, three clusters were present in the data (L2 = 4089, df = 3,111,633, 7.5% classification errors, and lowest relative AIC and BIC values compared to 1 or 2 through 10 cluster models). The item score profiles were roughly parallel (as shown in the figure below), and the three groups represented low, medium, and high levels of impulsive aggression. 4 3.5 3 Low Medium High 2.5 2 1.5 1 PGBI27 PGBI42 PGBI44 PGBI51 PGBI14 PGBI39 PGBI53 PGBI54 As shown below, more than 95% of cases with diagnoses of bipolar I (according to strict DSMIV criteria) showed moderate or severe IA, as did more than 90% of all other bipolar spectrum cases. Two thirds of youths with unipolar depression and half of youths with ADHD or disruptive behavior disorders also showed moderate or high IA, whereas fewer than 10% of youths with no Axis I diagnosis showed even moderate levels of IA. The figure below details the breakdown of levels of IA within each of the diagnostic groupings, using the eight PGBI items as indicators. Related to Jensen et al., Consensus Report: Impulsive Aggression as a Symptom Across Diagnostic Categories in Child Psychiatry: Implications for Medication Studies. J Am Acad Child Adolesc Psychiatry 2007 100 90 80 70 60 50 40 30 20 10 0 Bipolar I Cyclothymes, BP II, BP NOS Unipolar Mood D/O Low Disruptive Beh D/Os Medium residual grab bag No Diagnosis (V71.09) High Latent class analyses were also performed on the 10 items from the CBCL. Based on the same decision rules, a three cluster solution provided the best fit for these data as well. The breakdown of IA levels across diagnostic groups is reported as Figure 2 in the main body of the manuscript. Impulsive Aggression and Treatment Discontinuation Another set of analyses examined the association between IA and treatment outcome, using data from an open-label stabilization lead-in phase of a maintenance study for pediatric cases with bipolar I (Findling et al., 2003***). These analyses were based on data from 130 youths enrolled in the first phase. All participants in the stabilization phase received open-label combination therapy with divalproex and lithium. Cox regression analyses tested whether any covariates predicted the length of time until stabilization, as well as whether or not the patient was able to continue onto the maintenance phase of the study. IA at the end of phase I was the only significant predictor of treatment length, with higher IA indicating a greater risk of dropping out from the study. When measured with the PGBI items, IA was associated with a regression weight of -.15, Wald = 52.13, p < .0005. Although residual mood symptoms also predicted greater risk of dropout, they were no longer significant after controlling for IA. People who discontinued the study for any reason also had substantially higher average levels of IA than people who were maintained in the study. For example, discontinuers had an average score of 5.5 on the PGBI IA scale, versus an average of 1.0 at end of phase for the persons able to continue to the maintenance phase; F (1, 124 df) = 8.75, p = .004. Related to Jensen et al., Consensus Report: Impulsive Aggression as a Symptom Across Diagnostic Categories in Child Psychiatry: Implications for Medication Studies. J Am Acad Child Adolesc Psychiatry 2007 References Youngstrom, E. A., Findling, R. L., Calabrese, J. R., Gracious, B. L., Demeter, C., DelPorto Bedoya, D., et al. (2004). Comparing the diagnostic accuracy of six potential screening instruments for bipolar disorder in youths aged 5 to 17 years. Journal of the American Academy of Child & Adolescent Psychiatry, 43, 847-858. Youngstrom, E. A., Findling, R. L., Danielson, C. K., & Calabrese, J. R. (2001). Discriminative validity of parent report of hypomanic and depressive symptoms on the General Behavior Inventory. Psychological Assessment, 13, 267-276. Related to Jensen et al., Consensus Report: Impulsive Aggression as a Symptom Across Diagnostic Categories in Child Psychiatry: Implications for Medication Studies. J Am Acad Child Adolesc Psychiatry 2007