Developing and testing an algorithm for automatic segmentation of the fetal face from three-dimensional ultrasound images

Author:

Clark A. E.12ORCID,Biffi B.2,Sivera R.2,Dall'Asta A.123,Fessey L.2,Wong T.-L.1,Paramasivam G.12,Dunaway D.45,Schievano S.45,Lees C. C.16ORCID

Affiliation:

1. Queen Charlotte's and Chelsea Hospital, Imperial Healthcare NHS Trust, London, UK

2. Imperial College London, London, UK

3. Department of Medicine and Surgery, Obstetrics and Gynaecology Unit, University of Parma, Italy

4. University College London GOS Institute of Child Health, London, UK

5. Great Ormond Street Hospital for Children, London, UK

6. Institute of Reproductive and Developmental Biology, Department of Metabolism, Digestion and Reproduction, Imperial College London, London, UK

Abstract

Fetal craniofacial abnormalities are challenging to detect and diagnose on prenatal ultrasound (US). Image segmentation and computer analysis of three-dimensional US volumes of the fetal face may provide an objective measure to quantify fetal facial features and identify abnormalities. We have developed and tested an atlas-based partially automated facial segmentation algorithm; however, the volumes require additional manual segmentation (MS), which is time and labour intensive and may preclude this method from clinical adoption. These manually refined segmentations can then be used as a reference (atlas) by the partially automated segmentation algorithm to improve algorithmic performance with the aim of eliminating the need for manual refinement and developing a fully automated system. This study assesses the inter- and intra-operator variability of MS and tests an optimized version of our automatic segmentation (AS) algorithm. The manual refinements of 15 fetal faces performed by three operators and repeated by one operator were assessed by Dice score, average symmetrical surface distance and volume difference. The performance of the partially automatic algorithm with difference size atlases was evaluated by Dice score and computational time. Assessment of the manual refinements showed low inter- and intra-operator variability demonstrating its suitability for optimizing the AS algorithm. The algorithm showed improved performance following an increase in the atlas size in turn reducing the need for manual refinement.

Funder

Engineering and Physical Science Research Council

National Institute for Health Research (NIHR) Biomedical Research Centre

European Research Council

Publisher

The Royal Society

Subject

Multidisciplinary

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1. Automated Craniofacial Biometry with 3D T2w Fetal MRI;2024-08-14

2. FETR: A Weakly Self-Supervised Approach for Fetal Ultrasound Anatomical Detection;2024 IEEE International Symposium on Medical Measurements and Applications (MeMeA);2024-06-26

3. Cerebral Palsy: Obstetrics and Neonatal Acute Problem;Donald School Journal of Ultrasound in Obstetrics and Gynecology;2024-03-28

4. Craniofacial phenotyping with fetal MRI: a feasibility study of 3D visualisation, segmentation, surface-rendered and physical models;BMC Medical Imaging;2024-03-01

5. Fetal face shape analysis from prenatal 3D ultrasound images;Scientific Reports;2024-02-22

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