Literature DB >> 28625186

How predictable are symptoms in psychopathological networks? A reanalysis of 18 published datasets.

J M B Haslbeck1, E I Fried1.   

Abstract

BACKGROUND: Network analyses on psychopathological data focus on the network structure and its derivatives such as node centrality. One conclusion one can draw from centrality measures is that the node with the highest centrality is likely to be the node that is determined most by its neighboring nodes. However, centrality is a relative measure: knowing that a node is highly central gives no information about the extent to which it is determined by its neighbors. Here we provide an absolute measure of determination (or controllability) of a node - its predictability. We introduce predictability, estimate the predictability of all nodes in 18 prior empirical network papers on psychopathology, and statistically relate it to centrality.
METHODS: We carried out a literature review and collected 25 datasets from 18 published papers in the field (several mood and anxiety disorders, substance abuse, psychosis, autism, and transdiagnostic data). We fit state-of-the-art network models to all datasets, and computed the predictability of all nodes.
RESULTS: Predictability was unrelated to sample size, moderately high in most symptom networks, and differed considerable both within and between datasets. Predictability was higher in community than clinical samples, highest for mood and anxiety disorders, and lowest for psychosis.
CONCLUSIONS: Predictability is an important additional characterization of symptom networks because it gives an absolute measure of the controllability of each node. It allows conclusions about how self-determined a symptom network is, and may help to inform intervention strategies. Limitations of predictability along with future directions are discussed.

Entities:  

Keywords:  Centrality; intervention; network models; predictability

Mesh:

Year:  2017        PMID: 28625186     DOI: 10.1017/S0033291717001258

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


  47 in total

1.  Toward a Complex Network of Risks for Psychosis: Combining Trauma, Cognitive Biases, Depression, and Psychotic-like Experiences on a Large Sample of Young Adults.

Authors:  Łukasz Gawęda; Renata Pionke; Jessica Hartmann; Barnaby Nelson; Andrzej Cechnicki; Dorota Frydecka
Journal:  Schizophr Bull       Date:  2021-03-16       Impact factor: 9.306

2.  Mapping a Syndemic of Psychosocial Risks During Pregnancy Using Network Analysis.

Authors:  Karmel W Choi; Jenni A Smit; Jessica N Coleman; Nzwakie Mosery; David R Bangsberg; Steven A Safren; Christina Psaros
Journal:  Int J Behav Med       Date:  2019-04

3.  Does centrality in a cross-sectional network suggest intervention targets for social anxiety disorder?

Authors:  Thomas L Rodebaugh; Natasha A Tonge; Marilyn L Piccirillo; Eiko Fried; Arielle Horenstein; Amanda S Morrison; Philippe Goldin; James J Gross; Michelle H Lim; Katya C Fernandez; Carlos Blanco; Franklin R Schneier; Ryan Bogdan; Renee J Thompson; Richard G Heimberg
Journal:  J Consult Clin Psychol       Date:  2018-10

4.  Nexus of despair: A network analysis of suicidal ideation among veterans.

Authors:  Jeffrey S Simons; Raluca M Simons; Kyle J Walters; Jessica A Keith; Carol O'Brien; Kate Andal; Scott F Stoltenberg
Journal:  Arch Suicide Res       Date:  2019-03-24

5.  Network Trees: A Method for Recursively Partitioning Covariance Structures.

Authors:  Payton J Jones; Patrick Mair; Thorsten Simon; Achim Zeileis
Journal:  Psychometrika       Date:  2020-11-04       Impact factor: 2.500

6.  The Network Structure of Schizotypal Personality Traits.

Authors:  Eduardo Fonseca-Pedrero; Javier Ortuño; Martin Debbané; Raymond C K Chan; David Cicero; Lisa C Zhang; Colleen Brenner; Emma Barkus; Richard J Linscott; Thomas Kwapil; Neus Barrantes-Vidal; Alex Cohen; Adrian Raine; Michael T Compton; Erin B Tone; Julie Suhr; Felix Inchausti; Julio Bobes; Axit Fumero; Stella Giakoumaki; Ioannis Tsaousis; Antonio Preti; Michael Chmielewski; Julien Laloyaux; Anwar Mechri; Mohamed Aymen Lahmar; Viviana Wuthrich; Frank Larøi; Johanna C Badcock; Assen Jablensky; Adela M Isvoranu; Sacha Epskamp; Eiko I Fried
Journal:  Schizophr Bull       Date:  2018-10-15       Impact factor: 9.306

7.  Clusters of Trauma Types as Measured by the Life Events Checklist for DSM-5.

Authors:  Ateka A Contractor; Nicole H Weiss; Prathiba Natesan; Jon D Elhai
Journal:  Int J Stress Manag       Date:  2020-06-01

8.  Network analyses reveal which symptoms improve (or not) following an Internet intervention (Deprexis) for depression.

Authors:  Michael C Mullarkey; Aliza T Stein; Rahel Pearson; Christopher G Beevers
Journal:  Depress Anxiety       Date:  2019-11-11       Impact factor: 6.505

9.  The replicability and generalizability of internalizing symptom networks across five samples.

Authors:  Carter J Funkhouser; Kelly A Correa; Stephanie M Gorka; Brady D Nelson; K Luan Phan; Stewart A Shankman
Journal:  J Abnorm Psychol       Date:  2019-12-12

10.  Sex differences in depressive symptoms and their networks in a treatment-seeking population - a cross-sectional study.

Authors:  Johannes Simon Vetter; Tobias Raphael Spiller; Flurin Cathomas; Donald Robinaugh; Annette Brühl; Heinz Boeker; Erich Seifritz; Birgit Kleim
Journal:  J Affect Disord       Date:  2020-09-01       Impact factor: 4.839

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