TY - UNPB
T1 - Fetal-Net: Enhancing Maternal-Fetal Ultrasound Interpretation through Multi-Scale Convolutional Neural Networks and Transformers
AU - Islam, Umar
AU - Ali, Yasser A.
AU - Al-Razgan, Muna
AU - Ullah, Hanif
AU - Almaiah, Mohmmed Amin
AU - Tariq, Zeeshan
PY - 2025/3/20
Y1 - 2025/3/20
N2 - Ultrasound imaging plays an important role in fetal growth and maternal-fetal health evaluation, but due to the complicated anatomy of the fetus and image quality fluctuation, its interpretation is quite challenging. Although deep learning include Convolution Neural Networks (CNNs) have been promising, they have largely been limited to one task or the other, such as the segmentation or detection of fetal structures, thus lacking an integrated solution that accounts for the intricate interplay between anatomical structures. To overcome these limitations, Fetal-Net-a new deep learning architecture that integrates Multi-Scale-CNNs and transformer layers-was developed. The model was trained on a large, expertly annotated set of more than 12,000 ultrasound images across different anatomical planes for effective identification of fetal structures and anomaly detection. Fetal-Net, with excellent precision (96.5%), accuracy (97.5%), and recall (97.8%) showed robustness factor against various imaging settings, making it a potent means of augmenting prenatal care through refined ultrasound image interpretation.
AB - Ultrasound imaging plays an important role in fetal growth and maternal-fetal health evaluation, but due to the complicated anatomy of the fetus and image quality fluctuation, its interpretation is quite challenging. Although deep learning include Convolution Neural Networks (CNNs) have been promising, they have largely been limited to one task or the other, such as the segmentation or detection of fetal structures, thus lacking an integrated solution that accounts for the intricate interplay between anatomical structures. To overcome these limitations, Fetal-Net-a new deep learning architecture that integrates Multi-Scale-CNNs and transformer layers-was developed. The model was trained on a large, expertly annotated set of more than 12,000 ultrasound images across different anatomical planes for effective identification of fetal structures and anomaly detection. Fetal-Net, with excellent precision (96.5%), accuracy (97.5%), and recall (97.8%) showed robustness factor against various imaging settings, making it a potent means of augmenting prenatal care through refined ultrasound image interpretation.
KW - Fetus
KW - CNN
KW - DCNN
KW - RF
KW - Medical Imaging
KW - Transformers
KW - Prenatal Care
UR - https://pure.ulster.ac.uk/en/publications/67540001-8b61-448c-a0e2-653917509425
U2 - 10.21203/rs.3.rs-6184392/v1
DO - 10.21203/rs.3.rs-6184392/v1
M3 - Preprint
SP - 1
EP - 22
BT - Fetal-Net: Enhancing Maternal-Fetal Ultrasound Interpretation through Multi-Scale Convolutional Neural Networks and Transformers
ER -