2022
DOI: 10.31234/osf.io/hnw69
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Temporal dynamics of depressive symptomatology: An idiographic time series analysis applying network models to patients with depressive disorders

Abstract: Background: As phenotypes of depressive disorders (DD) are highly heterogenous, a growing number of studies investigate person-specific associations of depressive symptoms in time series data. Most available methods for estimating applicable models rely on the assumption that the associations between variables stay constant over time, which can be unrealistic in clinical contexts. To circumvent this limitation, we used a recently developed technique to estimate time-varying vector autoregressive models. Method… Show more

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Cited by 8 publications
(6 citation statements)
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References 60 publications
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“…In the current study, we conducted a novel investigation of the dynamics of depressive symptoms within 105 participants over the course of 90 days using EMA data and a time-varying VAR approach and used five individuals as exemplars to illustrate this approach. In line with prior research, our results indicate that there is high heterogeneity across persons, such that the individual network composition is unique from person to person (de Vos et al, 2017; Kaiser & Laireiter, 2018; Siepe et al, 2022). Moreover, our results show that for most persons, individual depressive symptom networks can change dramatically in form across a 3-month period, as evidenced by some participants exhibiting significant variability within their symptom networks.…”
Section: Discussionsupporting
confidence: 91%
See 3 more Smart Citations
“…In the current study, we conducted a novel investigation of the dynamics of depressive symptoms within 105 participants over the course of 90 days using EMA data and a time-varying VAR approach and used five individuals as exemplars to illustrate this approach. In line with prior research, our results indicate that there is high heterogeneity across persons, such that the individual network composition is unique from person to person (de Vos et al, 2017; Kaiser & Laireiter, 2018; Siepe et al, 2022). Moreover, our results show that for most persons, individual depressive symptom networks can change dramatically in form across a 3-month period, as evidenced by some participants exhibiting significant variability within their symptom networks.…”
Section: Discussionsupporting
confidence: 91%
“…Their findings indicate that MDD symptoms can substantially vary both across and within persons over time, providing further evidence highlighting the importance of investigating MDD as a nonstationary, dynamic system. While Siepe et al (2022) uncovered important information about MDD symptom dynamics, they only assessed two depressive symptoms per day for 20 individuals. In addition, while they were able to examine variability across days, it is also important to examine variability within days given that symptoms can change over the course of hours (Ebrahimi et al, 2021;Fried et al, 2022;Lorenz et al, 2020;Wichers et al, 2016Wichers et al, , 2020.…”
Section: Rationalementioning
confidence: 99%
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“…Network models showed contemporaneous and temporal within-person relationships between anhedonia, anxiety, depression, and borderline personality symptoms at the group-level (e.g., Ebrahimi et al, 2024;Ebrahimi et al, 2021;Fatimah et al, 2023;Fisher et al, 2017;Starr & Davila, 2012) and idiographic-level (Fried et al, 2021;Nemesure et al, 2024;Siepe et al, 2022). There was some evidence that anhedonia is an influential symptom and is involved in vicious cycles at the group-level (Fried et al, 2021;Kraft et al, 2022;.…”
Section: Consummatory Anhedoniamentioning
confidence: 99%