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Fetal biometry and amniotic fluid volume assessment end-to-end automation using Deep Learning

Author

Listed:
  • Saad Slimani

    (Deepecho
    Hassan II University)

  • Salaheddine Hounka

    (Telecommunications Systems Services and Networks lab (STRS Lab), INPT)

  • Abdelhak Mahmoudi

    (Deepecho
    Mohammed V University in Rabat)

  • Taha Rehah

    (Deepecho)

  • Dalal Laoudiyi

    (Hassan II University)

  • Hanane Saadi

    (Mohammed VI University Hospital)

  • Amal Bouziyane

    (Université Mohammed VI des Sciences de la Santé, Hôpital Universitaire Cheikh Khalifa)

  • Amine Lamrissi

    (Hassan II University)

  • Mohamed Jalal

    (Hassan II University)

  • Said Bouhya

    (Hassan II University)

  • Mustapha Akiki

    (Abou Madi Radiology Clinic)

  • Youssef Bouyakhf

    (Deepecho)

  • Bouabid Badaoui

    (Mohammed V University in Rabat
    Mohammed VI Polytechnic University (UM6P))

  • Amina Radgui

    (Telecommunications Systems Services and Networks lab (STRS Lab), INPT)

  • Musa Mhlanga

    (Epigenomics & Single Cell Biophysics)

  • El Houssine Bouyakhf

    (Deepecho)

Abstract

Fetal biometry and amniotic fluid volume assessments are two essential yet repetitive tasks in fetal ultrasound screening scans, aiding in the detection of potentially life-threatening conditions. However, these assessment methods can occasionally yield unreliable results. Advances in deep learning have opened up new avenues for automated measurements in fetal ultrasound, demonstrating human-level performance in various fetal ultrasound tasks. Nevertheless, the majority of these studies are retrospective in silico studies, with a limited number including African patients in their datasets. In this study we developed and prospectively assessed the performance of deep learning models for end-to-end automation of fetal biometry and amniotic fluid volume measurements. These models were trained using a newly constructed database of 172,293 de-identified Moroccan fetal ultrasound images, supplemented with publicly available datasets. the models were then tested on prospectively acquired video clips from 172 pregnant people forming a consecutive series gathered at four healthcare centers in Morocco. Our results demonstrate that the 95% limits of agreement between the models and practitioners for the studied measurements were narrower than the reported intra- and inter-observer variability among expert human sonographers for all the parameters under study. This means that these models could be deployed in clinical conditions, to alleviate time-consuming, repetitive tasks, and make fetal ultrasound more accessible in limited-resource environments.

Suggested Citation

  • Saad Slimani & Salaheddine Hounka & Abdelhak Mahmoudi & Taha Rehah & Dalal Laoudiyi & Hanane Saadi & Amal Bouziyane & Amine Lamrissi & Mohamed Jalal & Said Bouhya & Mustapha Akiki & Youssef Bouyakhf &, 2023. "Fetal biometry and amniotic fluid volume assessment end-to-end automation using Deep Learning," Nature Communications, Nature, vol. 14(1), pages 1-14, December.
  • Handle: RePEc:nat:natcom:v:14:y:2023:i:1:d:10.1038_s41467-023-42438-5
    DOI: 10.1038/s41467-023-42438-5
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