School of Medicine, Huaqiao University, Quanzhou, China.
Department of Gynecology and Obstetrics, The Second Affiliated Hospital of Fujian Medical University, Quanzhou, China.
J Perinat Med. 2024 Jul 22;52(7):769-777. doi: 10.1515/jpm-2024-0122. Print 2024 Sep 25.
Fetal cleft lip is a common congenital defect. Considering the delicacy and difficulty of observing fetal lips, we have utilized deep learning technology to develop a new model aimed at quickly and accurately assessing the development of fetal lips during prenatal examinations. This model can detect ultrasound images of the fetal lips and classify them, aiming to provide a more objective prediction for the development of fetal lips.
This study included 632 pregnant women in their mid-pregnancy stage, who underwent ultrasound examinations of the fetal lips, collecting both normal and abnormal fetal lip ultrasound images. To improve the accuracy of the detection and classification of fetal lips, we proposed and validated the Yolov5-ECA model.
The experimental results show that, compared with the currently popular 10 models, our model achieved the best results in the detection and classification of fetal lips. In terms of the detection of fetal lips, the mean average precision (mAP) at 0.5 and mAP at 0.5:0.95 were 0.920 and 0.630, respectively. In the classification of fetal lip ultrasound images, the accuracy reached 0.925.
The deep learning algorithm has accuracy consistent with manual evaluation in the detection and classification process of fetal lips. This automated recognition technology can provide a powerful tool for inexperienced young doctors, helping them to accurately conduct examinations and diagnoses of fetal lips.
胎儿唇裂是一种常见的先天性缺陷。考虑到观察胎儿嘴唇的精细性和难度,我们利用深度学习技术开发了一种新模型,旨在快速、准确地评估产前检查中胎儿嘴唇的发育情况。该模型可以检测胎儿嘴唇的超声图像并对其进行分类,旨在为胎儿嘴唇的发育提供更客观的预测。
本研究纳入了 632 名孕中期的孕妇,对其进行了胎儿嘴唇的超声检查,收集了正常和异常的胎儿唇超声图像。为了提高胎儿嘴唇检测和分类的准确性,我们提出并验证了 Yolov5-ECA 模型。
实验结果表明,与目前流行的 10 种模型相比,我们的模型在胎儿嘴唇的检测和分类方面取得了最佳结果。在检测胎儿嘴唇方面,在 0.5 和 0.5:0.95 处的平均精度(mAP)分别为 0.920 和 0.630。在胎儿唇超声图像分类方面,准确率达到 0.925。
深度学习算法在胎儿嘴唇的检测和分类过程中具有与手动评估一致的准确性。这种自动化识别技术可以为经验不足的年轻医生提供强大的工具,帮助他们准确地对胎儿嘴唇进行检查和诊断。