The popularity of network analysis in psychopathology research has increased exponentially in recent years. Yet, little research has examined the replicability of cross-sectional psychopathology network models, and those that have used single items for symptoms rather than multi-item scales. The present study therefore examined the replicability and generalizability of regularized partial correlation networks of internalizing symptoms within and across five samples (total N = 2,573) using the Inventory for Depression and Anxiety Symptoms, a factor analytically-derived measure of individual internalizing symptoms. As different metrics may yield different conclusions about the replicability of network parameters, we examined both global and specific metrics of similarity between networks. Correlations within and between nonclinical samples suggested considerable global similarities in network structure (rss = .53-.87) and centrality strength (rss = .37-.86), but weaker similarities in network structure (rss = .36-.66) and centrality (rss = .04-.54) between clinical and nonclinical samples. Global strength (i.e., connectivity) did not significantly differ across all five networks and few edges (0-5.5%) significantly differed between networks. Specific metrics of similarity indicated that, on average, approximately 80% of edges were consistently estimated within and between all five samples.The most central symptom (i.e., dysphoria) was consistent within and across samples, but there were few other matches in centrality rank-order. In sum, there were considerable similarities in network structure, the presence and sign of individual edges, and the most central symptom within and across internalizing symptom networks estimated from nonclinical samples, but global metrics suggested network structure and symptom centrality had weak to moderate generalizability from nonclinical to clinical samples. the overall structure, global strength, or individual edges of the networks for the split-halves.Edge weights (rss = .87 and .78), node predictabilities (rss = .93 and .94), and centrality strength (rss = .85 and .86) were consistently strongly correlated between split-halves.Specific Metrics. We examined whether estimated edges replicated across split-halves for each sample, and found that a median of 84.8-89.9% of nonzero edges in the sparser splithalf network replicated (i.e., were nonzero and had the same sign) in the denser split-half network. Examination of consistencies in absent edges revealed that 58.0-69.2% of the absent edges in the denser split-half network replicated in the sparser split-half network. When examining matches in centrality rank-order, dysphoria was identified as the most central symptom in all split-halves. Across all eleven symptoms, however, exact matches in centrality strength rank-order between split-halves were much less frequent (36.4% and 45.5%).
Cross-Sample ComparisonsGlobal Metrics. Global characteristics of the five networks are summarized in Table 3.Consistent with prior research showing...