| Literature DB >> 24228940 |
Klaas J Wardenaar1, Peter de Jonge.
Abstract
The launch of the 5th version of the Diagnostic and Statistical Manual of Mental Disorders (DSM-5) has sparked a debate about the current approach to psychiatric classification. The most basic and enduring problem of the DSM is that its classifications are heterogeneous clinical descriptions rather than valid diagnoses, which hampers scientific progress. Therefore, more homogeneous evidence-based diagnostic entities should be developed. To this end, data-driven techniques, such as latent class- and factor analyses, have already been widely applied. However, these techniques are insufficient to account for all relevant levels of heterogeneity, among real-life individuals. There is heterogeneity across persons (p:for example, subgroups), across symptoms (s:for example, symptom dimensions) and over time (t:for example, course-trajectories) and these cannot be regarded separately. Psychiatry should upgrade to techniques that can analyze multi-mode (p-by-s-by-t) data and can incorporate all of these levels at the same time to identify optimal homogeneous subgroups (for example, groups with similar profiles/connectivity of symptomatology and similar course). For these purposes, Multimode Principal Component Analysis and (Mixture)-Graphical Modeling may be promising techniques.Entities:
Mesh:
Year: 2013 PMID: 24228940 PMCID: PMC3846412 DOI: 10.1186/1741-7015-11-201
Source DB: PubMed Journal: BMC Med ISSN: 1741-7015 Impact factor: 8.775
Figure 1Cattell’s ‘data-cube’ (A), latent class analysis with three classes (red, green, blue) in the S-by-P slice (B), factor analysis with two factors within the S-by-P slice (C) growth mixtureanalysis with three classes (red, green, blue) within the P-by-T slice (D).