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Personalized Network Modeling in Psychopathology: The Importance of Contemporaneous and Temporal Connections.


ABSTRACT: Recent literature has introduced (a) the network perspective to psychology and (b) collection of time series data to capture symptom fluctuations and other time varying factors in daily life. Combining these trends allows for the estimation of intraindividual network structures. We argue that these networks can be directly applied in clinical research and practice as hypothesis generating structures. Two networks can be computed: a temporal network, in which one investigates if symptoms (or other relevant variables) predict one another over time, and a contemporaneous network, in which one investigates if symptoms predict one another in the same window of measurement. The contemporaneous network is a partial correlation network, which is emerging in the analysis of cross-sectional data but is not yet utilized in the analysis of time series data. We explain the importance of partial correlation networks and exemplify the network structures on time series data of a psychiatric patient.

SUBMITTER: Epskamp S 

PROVIDER: S-EPMC5952299 | biostudies-literature | 2018 May

REPOSITORIES: biostudies-literature

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Personalized Network Modeling in Psychopathology: The Importance of Contemporaneous and Temporal Connections.

Epskamp Sacha S   van Borkulo Claudia D CD   van der Veen Date C DC   Servaas Michelle N MN   Isvoranu Adela-Maria AM   Riese Harriëtte H   Cramer Angélique O J AOJ  

Clinical psychological science : a journal of the Association for Psychological Science 20180119 3


Recent literature has introduced (a) the network perspective to psychology and (b) collection of time series data to capture symptom fluctuations and other time varying factors in daily life. Combining these trends allows for the estimation of intraindividual network structures. We argue that these networks can be directly applied in clinical research and practice as hypothesis generating structures. Two networks can be computed: a <i>temporal network</i>, in which one investigates if symptoms (  ...[more]

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