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Brain morphometric features predict depression symptom phenotypes in late-life depression using a deep learning model.

Publication ,  Journal Article
Cao, B; Yang, E; Wang, L; Mo, Z; Steffens, DC; Zhang, H; Liu, M; Potter, GG
Published in: Front Neurosci
2023

OBJECTIVES: Our objective was to use deep learning models to identify underlying brain regions associated with depression symptom phenotypes in late-life depression (LLD). PARTICIPANTS: Diagnosed with LLD (N = 116) and enrolled in a prospective treatment study. DESIGN: Cross-sectional. MEASUREMENTS: Structural magnetic resonance imaging (sMRI) was used to predict five depression symptom phenotypes from the Hamilton and MADRS depression scales previously derived from factor analysis: (1) Anhedonia, (2) Suicidality, (3) Appetite, (4) Sleep Disturbance, and (5) Anxiety. Our deep learning model was deployed to predict each factor score via learning deep feature representations from 3D sMRI patches in 34 a priori regions-of-interests (ROIs). ROI-level prediction accuracy was used to identify the most discriminative brain regions associated with prediction of factor scores representing each of the five symptom phenotypes. RESULTS: Factor-level results found significant predictive models for Anxiety and Suicidality factors. ROI-level results suggest the most LLD-associated discriminative regions in predicting all five symptom factors were located in the anterior cingulate and orbital frontal cortex. CONCLUSIONS: We validated the effectiveness of using deep learning approaches on sMRI for predicting depression symptom phenotypes in LLD. We were able to identify deep embedded local morphological differences in symptom phenotypes in the brains of those with LLD, which is promising for symptom-targeted treatment of LLD. Future research with machine learning models integrating multimodal imaging and clinical data can provide additional discriminative information.

Duke Scholars

Published In

Front Neurosci

DOI

ISSN

1662-4548

Publication Date

2023

Volume

17

Start / End Page

1209906

Location

Switzerland

Related Subject Headings

  • 5202 Biological psychology
  • 3209 Neurosciences
  • 1702 Cognitive Sciences
  • 1701 Psychology
  • 1109 Neurosciences
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Cao, B., Yang, E., Wang, L., Mo, Z., Steffens, D. C., Zhang, H., … Potter, G. G. (2023). Brain morphometric features predict depression symptom phenotypes in late-life depression using a deep learning model. Front Neurosci, 17, 1209906. https://doi.org/10.3389/fnins.2023.1209906
Cao, Bing, Erkun Yang, Lihong Wang, Zhanhao Mo, David C. Steffens, Han Zhang, Mingxia Liu, and Guy G. Potter. “Brain morphometric features predict depression symptom phenotypes in late-life depression using a deep learning model.Front Neurosci 17 (2023): 1209906. https://doi.org/10.3389/fnins.2023.1209906.
Cao B, Yang E, Wang L, Mo Z, Steffens DC, Zhang H, et al. Brain morphometric features predict depression symptom phenotypes in late-life depression using a deep learning model. Front Neurosci. 2023;17:1209906.
Cao, Bing, et al. “Brain morphometric features predict depression symptom phenotypes in late-life depression using a deep learning model.Front Neurosci, vol. 17, 2023, p. 1209906. Pubmed, doi:10.3389/fnins.2023.1209906.
Cao B, Yang E, Wang L, Mo Z, Steffens DC, Zhang H, Liu M, Potter GG. Brain morphometric features predict depression symptom phenotypes in late-life depression using a deep learning model. Front Neurosci. 2023;17:1209906.

Published In

Front Neurosci

DOI

ISSN

1662-4548

Publication Date

2023

Volume

17

Start / End Page

1209906

Location

Switzerland

Related Subject Headings

  • 5202 Biological psychology
  • 3209 Neurosciences
  • 1702 Cognitive Sciences
  • 1701 Psychology
  • 1109 Neurosciences