4.6 Article

Clinical workflow of sonographers performing fetal anomaly ultrasound scans: deep-learning-based analysis

Journal

ULTRASOUND IN OBSTETRICS & GYNECOLOGY
Volume 60, Issue 6, Pages 759-765

Publisher

WILEY
DOI: 10.1002/uog.24975

Keywords

anatomy; artificial intelligence; automation; big data; clinical workflow; computer vision; data science; deep learning; image analysis; machine learning; neural network; obstetrics; pregnancy; screening; sonography; ultrasound

Funding

  1. European Research Council
  2. Senior Scientific Advisors of Intelligent Ultrasound Ltd.
  3. National Institute for Health Research (NIHR) Oxford Biomedical Research Centre, Oxford, UK
  4. [ERC-ADG-2015 694581]

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This study utilized deep-learning-based video analysis to investigate the clinical workflow of sonographers during second-trimester anomaly scans. The results revealed wide variation in the number and sequence of structures obtained during routine scans.
Objective Despite decades of obstetric scanning, the field of sonographer workflow remains largely unexplored. In the second trimester, sonographers use scan guidelines to guide their acquisition of standard planes and structures; however, the scan-acquisition order is not prescribed. Using deep-learning-based video analysis, the aim of this study was to develop a deeper understanding of the clinical workflow undertaken by sonographers during second-trimester anomaly scans.Methods We collected prospectively full-length video recordings of routine second-trimester anomaly scans. Important scan events in the videos were identified by detecting automatically image freeze and image/clip save. The video immediately preceding and following the important event was extracted and labeled as one of 11 commonly acquired anatomical structures. We developed and used a purposely trained and tested deep-learning annotation model to label automatically the large number of scan events. Thus, anomaly scans were partitioned as a sequence of anatomical planes or fetal structures obtained over time.Results A total of 496 anomaly scans performed by 14 sonographers were available for analysis. UK guidelines specify that an image or videoclip of five different anatomical regions must be stored and these were detected in the majority of scans: head/brain was detected in 97.2% of scans, coronal face view (nose/lips) in 86.1%, abdomen in 93.1%, spine in 95.0% and femur in 92.3%. Analyzing the clinical workflow, we observed that sonographers were most likely to begin their scan by capturing the head/brain (in 24.4% of scans), spine (in 23.2%) or thorax/heart (in 22.8%). The most commonly identified two-structure transitions were: placenta/amniotic fluid to maternal anatomy, occurring in 44.5% of scans; head/brain to coronal face (nose/lips) in 42.7%; abdomen to thorax/heart in 26.1%; and three-dimensional/four-dimensional face to sagittal face (profile) in 23.7%. Transitions between three or more consecutive structures in sequence were uncommon (up to 13% of scans). None of the captured anomaly scans shared an entirely identical sequence.Conclusions We present a novel evaluation of the anomaly scan acquisition process using a deep-learning-based analysis of ultrasound video. We note wide variation in the number and sequence of structures obtained during routine second-trimester anomaly scans. Overall, each anomaly scan was found to be unique in its scanning sequence, suggesting that sonographers take advantage of the fetal position and acquire the standard planes according to their visibility rather than following a strict acquisition order.

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