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.
Original language | English |
---|---|
Pages (from-to) | 416-427 |
Number of pages | 12 |
Journal | Clinical Psychological Science |
Volume | 6 |
Issue number | 3 |
DOIs | |
Publication status | Published - 2018 |
Keywords
- CAUSALITY
- DEPRESSION
- PSYCHOTHERAPY
- longitudinal methods
- NETWORK ANALYSIS
- SYMPTOMS
- MOOD
- TIME-SERIES
- MOMENTARY ASSESSMENT
- MENTAL-DISORDERS
- GRAPHICAL MODELS
- DAILY-LIFE
- PERSPECTIVE
- CENTRALITY
Access to Document
10.1177/2167702617744325Licence: CC BY-NC
Personalized Network Modeling in PsychopathologyFinal publisher's version, 226 KBLicence: CC BY-NC
Handle.net
Fingerprint
Dive into the research topics of 'Personalized Network Modeling in Psychopathology: The Importance of Contemporaneous and Temporal Connections'. Together they form a unique fingerprint.
View full fingerprint
Cite this
- APA
- Author
- BIBTEX
- Harvard
- Standard
- RIS
- Vancouver
Epskamp, S., van Borkulo, C., van de Veen, D., Servaas, M., Isvoranu, A.-M., Riese, H., & Cramer, A. O. J. (2018). Personalized Network Modeling in Psychopathology: The Importance of Contemporaneous and Temporal Connections. Clinical Psychological Science, 6(3), 416-427. https://doi.org/10.1177/2167702617744325
Epskamp, Sacha ; van Borkulo, Claudia ; van de Veen, Date et al. / Personalized Network Modeling in Psychopathology : The Importance of Contemporaneous and Temporal Connections. In: Clinical Psychological Science. 2018 ; Vol. 6, No. 3. pp. 416-427.
@article{67138e4d3844434eb5934540e1d41202,
title = "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.",
keywords = "CAUSALITY, DEPRESSION, PSYCHOTHERAPY, longitudinal methods, NETWORK ANALYSIS, SYMPTOMS, MOOD, TIME-SERIES, MOMENTARY ASSESSMENT, MENTAL-DISORDERS, GRAPHICAL MODELS, DAILY-LIFE, PERSPECTIVE, CENTRALITY",
author = "Sacha Epskamp and {van Borkulo}, Claudia and {van de Veen}, Date and Michelle Servaas and Adela-Maria Isvoranu and Harriette Riese and Cramer, {Angelique O. J.}",
year = "2018",
doi = "10.1177/2167702617744325",
language = "English",
volume = "6",
pages = "416--427",
journal = "Clinical Psychological Science",
issn = "2167-7026",
publisher = "SAGE Publications Inc.",
number = "3",
}
Epskamp, S, van Borkulo, C, van de Veen, D, Servaas, M, Isvoranu, A-M, Riese, H & Cramer, AOJ 2018, 'Personalized Network Modeling in Psychopathology: The Importance of Contemporaneous and Temporal Connections', Clinical Psychological Science, vol. 6, no. 3, pp. 416-427. https://doi.org/10.1177/2167702617744325
Personalized Network Modeling in Psychopathology: The Importance of Contemporaneous and Temporal Connections. / Epskamp, Sacha; van Borkulo, Claudia; van de Veen, Date et al.
In: Clinical Psychological Science, Vol. 6, No. 3, 2018, p. 416-427.
Research output: Contribution to journal › Article › Academic › peer-review
TY - JOUR
T1 - Personalized Network Modeling in Psychopathology
T2 - The Importance of Contemporaneous and Temporal Connections
AU - Epskamp, Sacha
AU - van Borkulo, Claudia
AU - van de Veen, Date
AU - Servaas, Michelle
AU - Isvoranu, Adela-Maria
AU - Riese, Harriette
AU - Cramer, Angelique O. J.
PY - 2018
Y1 - 2018
N2 - 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.
AB - 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.
KW - CAUSALITY
KW - DEPRESSION
KW - PSYCHOTHERAPY
KW - longitudinal methods
KW - NETWORK ANALYSIS
KW - SYMPTOMS
KW - MOOD
KW - TIME-SERIES
KW - MOMENTARY ASSESSMENT
KW - MENTAL-DISORDERS
KW - GRAPHICAL MODELS
KW - DAILY-LIFE
KW - PERSPECTIVE
KW - CENTRALITY
U2 - 10.1177/2167702617744325
DO - 10.1177/2167702617744325
M3 - Article
C2 - 29805918
SN - 2167-7026
VL - 6
SP - 416
EP - 427
JO - Clinical Psychological Science
JF - Clinical Psychological Science
IS - 3
ER -
Epskamp S, van Borkulo C, van de Veen D, Servaas M, Isvoranu AM, Riese H et al. Personalized Network Modeling in Psychopathology: The Importance of Contemporaneous and Temporal Connections. Clinical Psychological Science. 2018;6(3):416-427. doi: 10.1177/2167702617744325