Jieyun Bai's Paper "Maternal-Fetal Ultrasound Video Dataset for End-to-End Intrapartum Biometry and Multi-task Learning "

This marks the first-ever multi-center, multi-device, and multi-category labeled intrapartum ultrasound video dataset, designed to drive progress in AI-based maternal and fetal health solutions.
Jieyun Bai's Paper "Maternal-Fetal Ultrasound Video Dataset for End-to-End Intrapartum Biometry and Multi-task Learning "
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We are thrilled to share the public release of the Maternal-Fetal Ultrasound Video Dataset for End-to-End Intrapartum Biometry and Multi-task Learning (Published in Scientific Data, DOI: 10.1038/s41597-026-06900-5
)! This marks the first-ever multi-center, multi-device, and multi-category labeled intrapartum ultrasound video dataset, designed to drive progress in AI-based maternal and fetal health solutions.
đź“… Key Highlights:
774 ultrasound videos and 68,106 images collected across three leading institutions.
Annotations for standard plane classification, segmentation of pubic symphysis and fetal head, and ultrasound-derived biometric parameters (Angle of Progression, Head-Symphysis Distance).
Designed to enhance multi-task learning and support the development of fully automated intrapartum ultrasound parameter measurement.
This dataset represents a crucial leap forward in improving the accuracy and efficiency of labor monitoring systems and empowering automated decision-making in obstetrics.
đź’ˇ Why it Matters:
AI-driven clinical decision support for real-time intrapartum assessments.
Streamlines automated workflows for monitoring fetal head descent and labor progression.
Vital for advancing multi-task learning in medical imaging.

đź”— Access the Dataset: https://lnkd.in/gRR7PhFm
đź“„ Published Article: Maternal-Fetal Ultrasound Video Dataset

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Biomedical Engineering and Bioengineering
Technology and Engineering > Biological and Physical Engineering > Biomedical Engineering and Bioengineering

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