Automated Quality Assessment of Blind Sweep Obstetric Ultrasound for Improved Diagnosis

arXiv cs.CV / 3/30/2026

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Key Points

  • The study evaluates how deviations from the intended Blind Sweep Obstetric Ultrasound (BSOU) acquisition protocol affect the reliability of AI predictions in three downstream tasks: sweep-tag, fetal presentation, and placenta-location classification.
  • It simulates realistic acquisition perturbations such as reversed sweep direction, probe inversion, and incomplete sweeps to measure model robustness under quality variability.
  • The researchers introduce automated quality-assessment models that detect these protocol deviations before AI interpretation proceeds.
  • A simulated deployment “feedback loop” shows that re-acquiring sweeps flagged by the quality models can improve downstream task performance, supporting a practical pathway toward reliable low-resource prenatal imaging workflows.

Abstract

Blind Sweep Obstetric Ultrasound (BSOU) enables scalable fetal imaging in low-resource settings by allowing minimally trained operators to acquire standardized sweep videos for automated Artificial Intelligence(AI) interpretation. However, the reliability of such AI systems depends critically on the quality of the acquired sweeps, and little is known about how deviations from the intended protocol affect downstream predictions. In this work, we present a systematic evaluation of BSOU quality and its impact on three key AI tasks: sweep-tag classification, fetal presentation classification, and placenta-location classification. We simulate plausible acquisition deviations, including reversed sweep direction, probe inversion, and incomplete sweeps, to quantify model robustness, and we develop automated quality-assessment models capable of detecting these perturbations. To approximate real-world deployment, we simulate a feedback loop in which flagged sweeps are re-acquired, showing that such correction improves downstream task performance. Our findings highlight the sensitivity of BSOU-based AI models to acquisition variability and demonstrate that automated quality assessment can play a central role in building reliable, scalable AI-assisted prenatal ultrasound workflows, particularly in low-resource environments.