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Individualized functional brain mapping machine learning prediction of symptom-change resulting from selective kappa-opioid antagonism in an anhedonic sample from a Fast-Fail trial.

Publication ,  Journal Article
Sacchet, MD; Valenti, JL; Keshava, P; Walsh, SW; Smoski, MJ; Krystal, AD; Pizzagalli, DA
Published in: J Mood Anxiety Disord
September 2025

BACKGROUND: Anhedonia remains a difficult-to-treat symptom and has been associated with poor clinical course transdiagnostically. Here, we applied machine learning models to individualized neural patches derived from fMRI data during the Monetary Incentive Delay Task in anhedonic participants (N = 67) recruited for a clinical trial examining K-opioid receptor (KOR) antagonism in the treatment of anhedonia. METHODS: Nine ensemble models were estimated using cortical, subcortical, and combined cortical subcortical features from individualized functional topographies to predict changes in symptoms of overall psychopathology (anhedonia, depression, anxiety). Analyses were performed on the KOR (N = 33) and placebo (N = 34) group. RESULTS: Initial models showed that only subcortical data predicting depression and anxiety symptom change had a significant Spearman correlation between veridical and predicted data (rho = 0.480 and rho = 0.415 respectively). Next, leave-one-out-cross-validation (LOOCV) showed that the best-performing models comprised only the subcortical individualized systems data, which correlated with clinical change for depression and anxiety scores for the KOR group with significantly higher accuracy (rho = 0.634 and rho = 0.562, respectively) compared to the placebo group (rho = 0.294 and rho = 0.034, respectively). Further, 25 subcortical neural features were identified based on correlation and ensemble determined importance in driving prediction. Final models for both depression and anxiety showed an overall higher representation of the dorsal attention network. Cortical and combined cortical-subcortical feature data showed no significant improvement in prediction of clinical change between the two groups. CONCLUSION: Using an ensemble of machine learning approaches, we identified individual differences in subcortical individualized systems data that predicted clinical change that was specific to KOR antagonism.

Duke Scholars

Published In

J Mood Anxiety Disord

DOI

EISSN

2950-0044

Publication Date

September 2025

Volume

11

Start / End Page

100126

Location

United States
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Sacchet, M. D., Valenti, J. L., Keshava, P., Walsh, S. W., Smoski, M. J., Krystal, A. D., & Pizzagalli, D. A. (2025). Individualized functional brain mapping machine learning prediction of symptom-change resulting from selective kappa-opioid antagonism in an anhedonic sample from a Fast-Fail trial. J Mood Anxiety Disord, 11, 100126. https://doi.org/10.1016/j.xjmad.2025.100126
Sacchet, Matthew D., Joseph L. Valenti, Poorvi Keshava, Shane W. Walsh, Moria J. Smoski, Andrew D. Krystal, and Diego A. Pizzagalli. “Individualized functional brain mapping machine learning prediction of symptom-change resulting from selective kappa-opioid antagonism in an anhedonic sample from a Fast-Fail trial.J Mood Anxiety Disord 11 (September 2025): 100126. https://doi.org/10.1016/j.xjmad.2025.100126.
Sacchet, Matthew D., et al. “Individualized functional brain mapping machine learning prediction of symptom-change resulting from selective kappa-opioid antagonism in an anhedonic sample from a Fast-Fail trial.J Mood Anxiety Disord, vol. 11, Sept. 2025, p. 100126. Pubmed, doi:10.1016/j.xjmad.2025.100126.
Sacchet MD, Valenti JL, Keshava P, Walsh SW, Smoski MJ, Krystal AD, Pizzagalli DA. Individualized functional brain mapping machine learning prediction of symptom-change resulting from selective kappa-opioid antagonism in an anhedonic sample from a Fast-Fail trial. J Mood Anxiety Disord. 2025 Sep;11:100126.

Published In

J Mood Anxiety Disord

DOI

EISSN

2950-0044

Publication Date

September 2025

Volume

11

Start / End Page

100126

Location

United States