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Effectiveness and clinical impact of using deep learning for first-trimester fetal ultrasound image quality auditing

  • Xiaoyan Cao
  • , Binghan Li
  • , Yongsong Zhou
  • , Yan Cao
  • , Xin Yang
  • , Xindi Hu
  • , Chaoyu Chen
  • , Shaokao Zhu
  • , Hengli Lin
  • , Tao Wang
  • , Yuling Yan
  • , Tao Tan
  • , Lin Wang
  • , Dong Ni
  • Shenzhen Futian District Maternity & Child Healthcare Hospital
  • Shenzhen University
  • Shenzhen RayShape Medical Technology Co., Ltd.
  • Macao Polytechnic University

研究成果: Article同行評審

3 引文 斯高帕斯(Scopus)

摘要

Background: Regular auditing of ultrasound images is required to maintain quality; however, manual auditing is time-consuming and can be inconsistent. We therefore aimed to develop and validate an artificial intelligence-based image quality audit (AI-IQA) system to audit images from the four key planes used in first-trimester scanning. Methods: The AI-IQA system was developed based on the YOLOv7 structure detection network and a multi-branch image quality regression network using a large multicenter internal dataset. Clinical validation was performed using 567 cases scanned by four radiologists with different experience levels, of which 349 were performed without AI-IQA feedback (clinical test set 1) and 218 were performed after 2–3 rounds of AI-IQA feedback (clinical test set 2). The proportion of standard images obtained and detailed expert audit results were compared to verify whether AI-IQA could objectively and accurately provide feedback on deficiencies in nonstandard images to assist radiologists at different experience levels in improving image quality. Results: In the internal test set, the AI-IQA system achieved high average accuracy precision, recall and F1-score in auditing the overall plane quality (0.881, 0.833, 0.842 and 0.837, respectively) and structure quality (0.906, 0.861, 0.857 and 0.859, respectively). In clinical test sets 1 and 2, AI-IQA results showed strong consistency with expert assessment results, with the average Cohen’s Kappa coefficient exceeding 0.8 for all four planes. In addition, following AI-IQA feedback, the proportion of standard images obtained by junior and mid-level radiologists increased by 7.7% and 5.1%, respectively. AI-IQA takes only 0.05 s to assess each image, while experts require more than 20 s (p < 0.001). Conclusions: The proposed AI-IQA system proved to be a highly accurate and efficient method of automatically auditing first-trimester scanning image quality, providing precise and rapid key plane quality control. This tool can also assist radiologists with different levels of experience to improve the image quality.

原文English
文章編號375
期刊BMC Pregnancy and Childbirth
25
發行號1
DOIs
出版狀態Published - 12月 2025
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