Modeling the dynamics of disease states in depression

  • Major depressive disorder (MDD) is a common and costly disorder associated with considerable morbidity, disability, and risk for suicide. The disorder is clinically and etiologically heterogeneous. Despite intense research efforts, the response rates of antidepressant treatments are relatively low and the etiology and progression of MDD remain poorly understood. Here we use computational modeling to advance our understanding of MDD. First, we propose a systematic and comprehensive definition of disease states, which is based on a type of mathematical model called a finite-state machine. Second, we propose a dynamical systems model for the progression, or dynamics, of MDD. The model is abstract and combines several major factors (mechanisms) that influence the dynamics of MDD. We study under what conditions the model can account for the occurrence and recurrence of depressive episodes and how we can model the effects of antidepressant treatments and cognitive behavioral therapy within the same dynamical systems model through changing a small subset of parameters. Our computational modeling suggests several predictions about MDD. Patients who suffer from depression can be divided into two sub-populations: a high-risk sub-population that has a high risk of developing chronic depression and a low-risk sub-population, in which patients develop depression stochastically with low probability. The success of antidepressant treatment is stochastic, leading to widely different times-to-remission in otherwise identical patients. While the specific details of our model might be subjected to criticism and revisions, our approach shows the potential power of computationally modeling depression and the need for different type of quantitative data for understanding depression.

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Metadaten
Author:Selver DemicGND, Sen ChengORCiDGND
URN:urn:nbn:de:hbz:294-73120
DOI:https://doi.org/10.1371/journal.pone.0110358
Parent Title (English):PLoS ONE
Publisher:Public Library of Science
Place of publication:San Francisco
Document Type:Article
Language:English
Date of Publication (online):2020/07/10
Date of first Publication:2014/10/17
Publishing Institution:Ruhr-Universität Bochum, Universitätsbibliothek
Volume:9
Issue:10, e110358
First Page:e110358-1
Last Page:e110358-14
Institutes/Facilities:Mercator Forschergruppe "Strukturen des Gedächtnisses"
Research Department of Neuroscience
Sonderforschungsbereich 874, Integration und Repräsentation sensorischer Prozesse
Sonderforschungsbereich 1280, F01 - Fokusgruppe Lerndynamik
Institut für Neuroinformatik, Research Group Computational Neuroscience
Sonderforschungsbereich 1280, A14 - Modellierung der Kontext-Abhängigkeit des Akquisitions- und Extinktionslernens
open_access (DINI-Set):open_access
Licence (English):License LogoCreative Commons - CC BY 4.0 - Attribution 4.0 International