# Brain Network Prediction of Outcomes for Family Caregiver Depression

**Authors:** Belise Swartwood, Felipe Jain, Benjamin Wade

PMC · DOI: 10.1093/geroni/igaf122.3890 · 2025-12-31

## TL;DR

This study explores how brain connectivity patterns can predict which family caregivers of dementia patients are most likely to benefit from depression treatment.

## Contribution

The study introduces brain network connectivity as a potential biomarker for predicting treatment response in caregivers with depression.

## Key findings

- Baseline brain connectivity patterns predicted depressive symptom improvement with high accuracy (R²=0.71).
- Key networks like the default mode and somatosensory networks were significantly associated with treatment outcomes.
- Findings suggest brain connectivity could help personalize depression treatment for caregivers.

## Abstract

Alzheimer’s disease and related dementias affect over seven million Americans. Family members who provide care and assistance to their relatives often experience psychological burden and emotional distress, including elevated rates of depression. Caregiver response to depression treatment is highly variable, resulting in delays and inefficacious interventions for many, but there are no validated biomarkers to guide therapy. Overall brain function and depression treatment response is thought to be determined in part by the strength of large-scale brain connectivity networks. Resting-state functional magnetic resonance imaging (fMRI) can estimate these connectivity strengths. In a pilot study, we examined whether baseline connectivity could predict depressive symptom improvement following Mentalizing Imagery Therapy (MIT) or control conditions in family caregivers of people living with dementia (N = 43). Participants underwent resting-state fMRI and completed a depression measure before and after treatment. Independent Component Analysis extracted 45 functional connectivity components per participant. Least Absolute Shrinkage and Selection Operator (LASSO) regression with 10-fold cross-validation identified features associated with changes in QIDS scores. SHAP values were obtained to determine feature strength. Permutation testing (1,000 iterations) assessed statistical significance. Connectivity patterns within several networks—including the dorsal and ventral default mode networks, a somatosensory network, and central executive network—were significantly associated with symptom change in combination with baseline depression and treatment group (R2=0.71; p < 0.05). These findings suggest that pre-treatment brain network connectivity may serve as a biomarker for identifying caregivers most likely to benefit from intervention. Such neurobiologically informed predictions might help personalize depression treatment for family caregivers.

## Linked entities

- **Diseases:** Alzheimer’s disease (MONDO:0004975), depression (MONDO:0002050)

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Source: https://tomesphere.com/paper/PMC12762984