Network Neuroscience (Jan 2022)

Computational approaches to treatment response prediction in major depression using brain activity and behavioral data: A systematic review

  • Povilas Karvelis,
  • Colleen E. Charlton,
  • Shona G. Allohverdi,
  • Peter Bedford,
  • Daniel J. Hauke,
  • Andreea O. Diaconescu

DOI
https://doi.org/10.1162/netn_a_00233
Journal volume & issue
Vol. 6, no. 4
pp. 1066 – 1103

Abstract

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AbstractMajor depressive disorder is a heterogeneous diagnostic category with multiple available treatments. With the goal of optimizing treatment selection, researchers are developing computational models that attempt to predict treatment response based on various pretreatment measures. In this paper, we review studies that use brain activity data to predict treatment response. Our aim is to highlight and clarify important methodological differences between various studies that relate to the incorporation of domain knowledge, specifically within two approaches delineated as data-driven and theory-driven. We argue that theory-driven generative modeling, which explicitly models information processing in the brain and thus can capture disease mechanisms, is a promising emerging approach that is only beginning to be utilized in treatment response prediction. The predictors extracted via such models could improve interpretability, which is critical for clinical decision-making. We also identify several methodological limitations across the reviewed studies and provide suggestions for addressing them. Namely, we consider problems with dichotomizing treatment outcomes, the importance of investigating more than one treatment in a given study for differential treatment response predictions, the need for a patient-centered approach for defining treatment outcomes, and finally, the use of internal and external validation methods for improving model generalizability.