Sadegh-Zadeh, Seyed-Ali, Soleimani Mamalo, Alireza, Saadat, Shayan, Sayyadi Gargari, Sahar, Barati, Mohammad Amin, Mehranfar, Sahar and Naderi, Zahra (2025) Multi-Task Machine Learning for Prenatal Risk Stratification: Integrating Biomarkers, Maternal Age, and Ultrasound Measurements to Predict the Risk of Down Syndrome, Trisomy 18, Trisomy 13, and Neural Tube Defects. Frontiers in Biomedical Signal Processing, 1 (1). pp. 24-36.
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Abstract or description
This study developed a machine learning model for early risk stratification of Down syndrome by integrating maternal serum biomarkers and ultrasound measurements. A retrospective multicentre dataset was used, including maternal age, AFP, HCG, INHIBIN-A, and ultrasound parameters (NT, CRL). After imputing missing data and engineering features (e.g., Age_NT_interaction), a Gradient Boosting Machine (GBM) was trained and evaluated using AUROC, precision, recall, and F1-score. The model achieved high performance (AUROC: 0.9921; precision: 1.00; F1-score: 0.91; accuracy: 0.97). SHAP analysis identified key interactions—particularly Age_NT, Age_HCG, and Age_PAPP-A—as major contributors. High maternal age combined with elevated HCG or low PAPP-A was linked to increased risk, aligning with clinical knowledge. The model offers a highly accurate and interpretable approach for Down syndrome risk prediction, supporting personalized, data-driven prenatal care. Prospective validation and clinical integration are recommended.
| Item Type: | Article |
|---|---|
| Uncontrolled Keywords: | down syndrome; machine learning; prenatal screening; SHAP analysis; maternal biomarkers; |
| Faculty: | School of Digital, Technologies and Arts > Computer Science, AI and Robotics |
| Depositing User: | Ali SADEGH ZADEH |
| Date Deposited: | 09 Feb 2026 15:44 |
| Last Modified: | 09 Feb 2026 15:44 |
| URI: | https://eprints.staffs.ac.uk/id/eprint/9536 |
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