An Explainable Ensemble Learning Framework with Feature Optimization for Accurate Maternal Health Risk Prediction.

dc.contributor.authorMohammad Mamun
dc.contributor.authorMohammed Ibrahim Hussain
dc.contributor.authorMd. Shafiul Alam Chowdhury
dc.date.accessioned2026-04-29T06:16:41Z
dc.date.available2026-07-07T10:45:52Z
dc.date.issued2025-09-29
dc.description.abstractMaternal health, a critical indicator of societal well-being, encompasses women's health during pregnancy, childbirth, and postpartum. Early identification of Maternal Health Risks (MHR) is essential for preventing complications and ensuring safe outcomes for mothers and infants. With the rapid advancement of computational technologies, Machine Learning (ML) has emerged as a powerful tool in predictive healthcare, enabling accurate risk assessment and timely interventions. In this research, we propose a robust and intelligent MHR prediction framework leveraging multiple supervised ML algorithms, including Extreme Gradient Boosting (XGB), Random Forest (RF), Decision Tree (DT), Light Gradient Boosting (LGBM), and Adaptive Boosting (AD). We incorporate two feature optimization (FO) techniques: Principal Component Analysis (PCA) and Linear Discriminant Analysis (LDA) to enhance model performance and reduce feature dimensionality. Beyond individual model assessments, we explore ensemble learning strategies through majority voting and stacking techniques, integrating the predictive capabilities of all base learners. Our experimental results, validated through 10-fold cross-validation, demonstrate that the Stacking Ensemble (SE) with LDA-optimized features achieves the highest accuracy of 95.49%, outperforming all individual models and other ensemble variants. To ensure transparency and trust in model decisions, we further apply Explainable Artificial Intelligence (XAI) techniques, SHAP and LIME, which provide intuitive visualizations and insights into the influence of key features on predictions. This study highlights the potential of ensemble ML in maternal health risk classification. It introduces a novel, interpretable, and data-driven approach that integrates optimization, evaluation, and explainability in a unified framework, offering significant implications for clinical adoption and digital healthcare innovation.
dc.identifier.citationMamun, Mohammad, et al. "An explainable ensemble learning framework with feature optimization for accurate maternal health risk prediction." 2025 International conference on quantum photonics, artificial intelligence, and networking (QPAIN). IEEE, 2025.
dc.identifier.otherhttp://dspace.uttarauniversity.edu.bd:8080/server/api/core/items/1947f292-e0e9-46c6-9bd9-0314aed71d82
dc.identifier.urihttp://dspace.uttarauniversity.edu.bd:4000/handle/123456789/1421
dc.language.isoen_US
dc.publisher2025 IEEE International Conference on Quantum Photonics, Artificial Intelligence, and Networking, QPAIN 2025
dc.sourceUttara University Institutional Repository
dc.subjectMaternal Health Risk Prediction
dc.subjectExplainable Artificial Intelligence (XAI)
dc.subjectFeature Optimization
dc.subjectHealthcare Analytics
dc.titleAn Explainable Ensemble Learning Framework with Feature Optimization for Accurate Maternal Health Risk Prediction.
dc.typeArticle

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