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Refining our understanding of depressive states and state transitions in response to cognitive behavioural therapy using latent Markov modelling

Published online by Cambridge University Press:  29 June 2020

Ana Catarino*
Affiliation:
Digital Futures Lab, Ieso Digital Health, The Jeffrey's Building, Cowley Road, Cambridge, CB4 0DS, UK
Jonathan M. Fawcett
Affiliation:
Department of Psychology, Faculty of Science, Memorial University of Newfoundland, St John's, Canada
Michael P. Ewbank
Affiliation:
Digital Futures Lab, Ieso Digital Health, The Jeffrey's Building, Cowley Road, Cambridge, CB4 0DS, UK
Sarah Bateup
Affiliation:
Digital Futures Lab, Ieso Digital Health, The Jeffrey's Building, Cowley Road, Cambridge, CB4 0DS, UK
Ronan Cummins
Affiliation:
Digital Futures Lab, Ieso Digital Health, The Jeffrey's Building, Cowley Road, Cambridge, CB4 0DS, UK
Valentin Tablan
Affiliation:
Digital Futures Lab, Ieso Digital Health, The Jeffrey's Building, Cowley Road, Cambridge, CB4 0DS, UK
Andrew D. Blackwell
Affiliation:
Digital Futures Lab, Ieso Digital Health, The Jeffrey's Building, Cowley Road, Cambridge, CB4 0DS, UK
*
Author for correspondence: Ana Catarino, E-mail: a.catarino@iesohealth.com
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Abstract

Background

It is increasingly recognized that existing diagnostic approaches do not capture the underlying heterogeneity and complexity of psychiatric disorders such as depression. This study uses a data-driven approach to define fluid depressive states and explore how patients transition between these states in response to cognitive behavioural therapy (CBT).

Methods

Item-level Patient Health Questionnaire (PHQ-9) data were collected from 9891 patients with a diagnosis of depression, at each CBT treatment session. Latent Markov modelling was used on these data to define depressive states and explore transition probabilities between states. Clinical outcomes and patient demographics were compared between patients starting at different depressive states.

Results

A model with seven depressive states emerged as the best compromise between optimal fit and interpretability. States loading preferentially on cognitive/affective v. somatic symptoms of depression were identified. Analysis of transition probabilities revealed that patients in cognitive/affective states do not typically transition towards somatic states and vice-versa. Post-hoc analyses also showed that patients who start in a somatic depressive state are less likely to engage with or improve with therapy. These patients are also more likely to be female, suffer from a comorbid long-term physical condition and be taking psychotropic medication.

Conclusions

This study presents a novel approach for depression sub-typing, defining fluid depressive states and exploring transitions between states in response to CBT. Understanding how different symptom profiles respond to therapy will inform the development and delivery of stratified treatment protocols, improving clinical outcomes and cost-effectiveness of psychological therapies for patients with depression.

Information

Type
Original Article
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
Copyright
Copyright © The Author(s) 2020. Published by Cambridge University Press
Figure 0

Fig. 1. Patient health questionnaire (PHQ-9).

Figure 1

Fig. 2. Graphical summary of state symptom profiles for the 7-state model. States 1 and 2 represent states of minimal to mild overall severity; State 3 shows peak symptom intensity around feelings of depression, tiredness and low self-esteem (cognitive/affective state); State 5 shows peak symptom intensity around difficulties sleeping, feelings of tiredness, and changes in appetite (somatic state); State 4 shows a relatively even spread in symptom intensity across items (hybrid state); States 6 and 7 represent moderately severe and severe states, respectively.

Figure 2

Fig. 3. (a) Stacked area plots showing transitions between states over time for each starting state; patients leaving treatment were considered to remain at whatever state they last exhibited. (b) Transition probability graph showing the range of transition probabilities across time for each depressive state; transition probabilities below 0.05 for more than half of the time points are omitted; thicker arrows represent the most likely transitions between two given states. A full transition probability matrix is available in online Supplementary Materials.

Figure 3

Table 1. Engagement and clinical outcomes for each starting state

Figure 4

Table 2. Results of logistic regression analysis investigating the relationship between patient demographics and starting state [cognitive/affective (State 3) or somatic (State 5)]

Supplementary material: File

Catarino et al. Supplementary Materials

Catarino et al. Supplementary Materials

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