Boosting Maternal Health: Explainable AI Bridges Trust Gap in Bangladesh
Analysis
Key Takeaways
- •Hybrid XAI framework (fuzzy-XGBoost) achieved 88.67% accuracy in maternal health risk assessment.
- •Clinician feedback highlighted the value of hybrid explanations, with over 70% preferring them.
- •Healthcare access was identified as the primary predictor by SHAP analysis.
“This work demonstrates that combining interpretable fuzzy rules with feature importance explanations enhances both utility and trust, providing practical insights for XAI deployment in maternal healthcare.”