Promises and pitfalls of deep neural networks in neuroimaging-based psychiatric research

Exp Neurol. 2021 May:339:113608. doi: 10.1016/j.expneurol.2021.113608. Epub 2021 Jan 26.

Abstract

By promising more accurate diagnostics and individual treatment recommendations, deep neural networks and in particular convolutional neural networks have advanced to a powerful tool in medical imaging. Here, we first give an introduction into methodological key concepts and resulting methodological promises including representation and transfer learning, as well as modelling domain-specific priors. After reviewing recent applications within neuroimaging-based psychiatric research, such as the diagnosis of psychiatric diseases, delineation of disease subtypes, normative modeling, and the development of neuroimaging biomarkers, we discuss current challenges. This includes for example the difficulty of training models on small, heterogeneous and biased data sets, the lack of validity of clinical labels, algorithmic bias, and the influence of confounding variables.

Keywords: Convolutional Neural Networks; Deep learning; MRI; Neuroimaging; Psychiatry.

Publication types

  • Research Support, Non-U.S. Gov't
  • Review

MeSH terms

  • Biomedical Research / methods*
  • Biomedical Research / trends
  • Deep Learning* / trends
  • Humans
  • Mental Disorders / diagnostic imaging*
  • Mental Disorders / psychology
  • Mental Disorders / therapy
  • Neural Networks, Computer*
  • Neuroimaging / methods*
  • Neuroimaging / trends
  • Psychiatry / methods*
  • Psychiatry / trends