The Science and Information (SAI) Organization
  • Home
  • About Us
  • Journals
  • Conferences
  • Contact Us

Publication Links

  • IJACSA
  • Author Guidelines
  • Publication Policies

IJACSA

  • About the Journal
  • Call for Papers
  • Editorial Board
  • Author Guidelines
  • Submit your Paper
  • Current Issue
  • Archives
  • Indexing
  • Fees/ APC
  • Reviewers
  • Apply as a Reviewer

IJARAI

  • About the Journal
  • Archives
  • Indexing & Archiving

Special Issues

  • Home
  • Archives
  • Proposals
  • GIDP 2026
  • ICONS_BA 2025

Computer Vision Conference (CVC)

  • Home
  • Call for Papers
  • Submit your Paper/Poster
  • Register
  • Venue
  • Contact

Computing Conference

  • Home
  • Call for Papers
  • Submit your Paper/Poster
  • Register
  • Venue
  • Contact

Intelligent Systems Conference (IntelliSys)

  • Home
  • Call for Papers
  • Submit your Paper/Poster
  • Register
  • Venue
  • Contact

Future Technologies Conference (FTC)

  • Home
  • Call for Papers
  • Submit your Paper/Poster
  • Register
  • Venue
  • Contact
  • Home
  • Call for Papers
  • Editorial Board
  • Guidelines
  • Submit
  • Current Issue
  • Archives
  • Indexing
  • Fees
  • Reviewers
  • RSS Feed

DOI: 10.14569/IJACSA.2025.0161037
PDF

EYE-GDM: Clinically Validated, Explainable Ensemble Learning for Gestational Diabetes

Author 1: Shatha Alghamdi
Author 2: Rashid Mehmood
Author 3: Fahad Alqurashi
Author 4: Turki Alghamdi
Author 5: Sarah Ghazali
Author 6: Asmaa AlAhmadi

International Journal of Advanced Computer Science and Applications(IJACSA), Volume 16 Issue 10, 2025.

  • Abstract and Keywords
  • How to Cite this Article
  • {} BibTeX Source

Abstract: As artificial intelligence (AI) advances in healthcare, its use in maternal health shows promise but faces challenges of trust due to the black-box nature of many models. Gestational diabetes mellitus (GDM), a transient yet high-risk condition, demands accurate and interpretable prediction tools. However, existing GDM prediction studies often rely on opaque models or post-hoc explanation techniques applied after training, which limits transparency and reduces their clinical applicability. This highlights an urgent need for models that unify high predictive performance with interpretability by design. This study introduces EYE-GDM, a case-specific application of our Enhanced Interpretability Ensemble (EYE) framework, designed to predict GDM risk with clinically meaningful explanations. The pipeline evaluates multiple algorithms and selects Decision Tree (DT), k-Nearest Neighbors (k-NN), and Gradient Boosting (GB) as the best-performing base learners. These are integrated with SHAP and a logistic regression (LR) meta-model to construct EYE-GDM, embedding interpretability by weighting learner outputs with LR coefficients. This yields global (population-level) and local (patient-level) explanations consistent with medical knowledge. Tested on a dataset of 3,525 pregnancies, EYE-GDM achieved strong performance (accuracy = 0.9789, AUC-ROC = 0.9981) and provided insights into risk patterns, thresholds, and feature interactions relevant to GDM. By embedding explainability within the ensemble construction, EYE-GDM achieves transparent and clinically aligned reasoning without compromising predictive performance. Thus, EYE-GDM demonstrates how explainable AI (XAI) can translate from technical innovation to practical value in maternal care, supporting earlier risk identification and more informed clinical decisions.

Keywords: Explainable Artificial Intelligence (XAI); interpretable machine learning (IML); Gestational diabetes mellitus (GDM); maternal health; healthcare AI; GDM risk prediction; transparency; trust

Shatha Alghamdi, Rashid Mehmood, Fahad Alqurashi, Turki Alghamdi, Sarah Ghazali and Asmaa AlAhmadi. “EYE-GDM: Clinically Validated, Explainable Ensemble Learning for Gestational Diabetes”. International Journal of Advanced Computer Science and Applications (IJACSA) 16.10 (2025). http://dx.doi.org/10.14569/IJACSA.2025.0161037

@article{Alghamdi2025,
title = {EYE-GDM: Clinically Validated, Explainable Ensemble Learning for Gestational Diabetes},
journal = {International Journal of Advanced Computer Science and Applications},
doi = {10.14569/IJACSA.2025.0161037},
url = {http://dx.doi.org/10.14569/IJACSA.2025.0161037},
year = {2025},
publisher = {The Science and Information Organization},
volume = {16},
number = {10},
author = {Shatha Alghamdi and Rashid Mehmood and Fahad Alqurashi and Turki Alghamdi and Sarah Ghazali and Asmaa AlAhmadi}
}



Copyright Statement: This is an open access article licensed under a Creative Commons Attribution 4.0 International License, which permits unrestricted use, distribution, and reproduction in any medium, even commercially as long as the original work is properly cited.

IJACSA

Upcoming Conferences

Computer Vision Conference (CVC) 2026

21-22 May 2026

  • Amsterdam, The Netherlands

Computing Conference 2026

9-10 July 2026

  • London, United Kingdom

Artificial Intelligence Conference 2026

3-4 September 2026

  • Amsterdam, The Netherlands

Future Technologies Conference (FTC) 2026

15-16 October 2026

  • Berlin, Germany
The Science and Information (SAI) Organization
BACK TO TOP

Computer Science Journal

  • About the Journal
  • Call for Papers
  • Submit Paper
  • Indexing

Our Conferences

  • Computer Vision Conference
  • Computing Conference
  • Intelligent Systems Conference
  • Future Technologies Conference

Help & Support

  • Contact Us
  • About Us
  • Terms and Conditions
  • Privacy Policy

The Science and Information (SAI) Organization Limited is a company registered in England and Wales under Company Number 8933205.