Articles producció científicaEnginyeria Informàtica i Matemàtiques

M-TabNet: A Transformer-Based Multi-Encoder for Early Neonatal Birth Weight Prediction Using Multimodal Data

  • Dades identificatives

    Identificador:  imarina:9469722
    Autors:  Mursil, Muhammad; Rashwan, Hatem A; Santos-Calderon, Luis; Cavalle-Busquets, Pere; Murphy, Michelle M; Puig, Domenec
    Resum:
    Birth weight (BW) is a key indicator of neonatal health, and low birth weight (LBW) is linked to increased mortality and morbidity. Early prediction of BW facilitates timely prevention of impaired foetal growth. However, available techniques such as ultrasonography have limitations, including less accuracy when applied before 20 weeks of gestation and operator-dependent variability. Existing BW prediction models often neglect nutritional and genetic influences, and focus mainly on physiological and lifestyle factors. This study presents an attention-based transformer model with a multi-encoder architecture for early ($< 12$ weeks) BW prediction. Our model effectively integrates diverse maternal data, including physiological, lifestyle, nutritional, and genetic data, addressing limitations seen in previous attention-based models such as TabNet. The model achieves a Mean Absolute Error (MAE) of 122 grams and an $R{2}$ value of 0.94, showing its high predictive accuracy and interoperability with our in-house private dataset. Independent validation confirms generalizability (MAE: 105 grams, $R{2}$: 0.95) with the IEEE children dataset. To enhance clinical utility, predicted BW is classified into low and normal categories, achieving a sensitivity of 97.55% and a specificity of 94.48%, facilitating early risk stratification. Model interpretability is reinforced through feature importance and SHAP analysis, highlighting significant influences of maternal age, tobacco exposure, and vitamin B12 status, with genetic factors playing a secondary role. Our results emphasize the potential of advanced deep learning models to improve early BW prediction, offering a robust, interpretable, and personalized tool to identify pregnancies at risk and optimize neonatal outcomes.
  • Altres:

    Enllaç font original: https://ieeexplore.ieee.org/document/11183655
    Referència de l'ítem segons les normes APA: Mursil, Muhammad; Rashwan, Hatem A; Santos-Calderon, Luis; Cavalle-Busquets, Pere; Murphy, Michelle M; Puig, Domenec (2026). M-TabNet: A Transformer-Based Multi-Encoder for Early Neonatal Birth Weight Prediction Using Multimodal Data. Ieee Journal Of Biomedical And Health Informatics, 30(2), 1642-1651. DOI: 10.1109/JBHI.2025.3614285
    Referència a l'article segons font original: Ieee Journal Of Biomedical And Health Informatics. 30 (2): 1642-1651
    DOI de l'article: 10.1109/JBHI.2025.3614285
    Any de publicació de la revista: 2026-02-01
    Entitat: Universitat Rovira i Virgili
    Versió de l'article dipositat: info:eu-repo/semantics/acceptedVersion
    Data d'alta del registre: 2026-03-02
    Autor/s de la URV: Abdellatif Fatahallah Ibrahim Mahmoud, Hatem / Murphy, Michelle / Puig Valls, Domènec Savi
    Departament: Enginyeria Informàtica i Matemàtiques
    URL Document de llicència: https://repositori.urv.cat/ca/proteccio-de-dades/
    Tipus de publicació: Journal Publications
    Autor segons l'article: Mursil, Muhammad; Rashwan, Hatem A; Santos-Calderon, Luis; Cavalle-Busquets, Pere; Murphy, Michelle M; Puig, Domenec
    Accès a la llicència d'ús: https://creativecommons.org/licenses/by/3.0/es/
    Àrees temàtiques: Biotechnology, Ciência da computação, Computer science applications, Computer science, information systems, Computer science, interdisciplinary applications, Educação física, Electrical and electronic engineering, Engenharias iv, General medicine, Health informatics, Health information management, Mathematical & computational biology, Medical informatics
    Adreça de correu electrònic de l'autor: domenec.puig@urv.cat, michelle.murphy@urv.cat, hatem.abdellatif@urv.cat
  • Paraules clau:

    Accuracy
    Analytical models
    Birth weight prediction
    Data models
    Deep learning
    Genetics
    Hospitals
    Maternal factors
    Multi-encoder network
    Neonatal health
    Physiology
    Predictive models
    Radio frequency
    Transformers
    Ultrasonic imaging
    Biotechnology
    Computer Science Applications
    Computer Science
    Information Systems
    Interdisciplinary Applications
    Electrical and Electronic Engineering
    Health Informatics
    Health Information Management
    Mathematical & Computational Biology
    Medical Informatics
    Ciência da computação
    Educação física
    Engenharias iv
    General medicine
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