使用U-Net深度学习模型在胎儿脑MR成像上自动定位小窝和Vermis。

IF 3.1 3区 医学 Q2 CLINICAL NEUROLOGY American Journal of Neuroradiology Pub Date : 2023-10-01 Epub Date: 2023-08-31 DOI:10.3174/ajnr.A7978
Farzan Vahedifard, Xuchu Liu, Jubril O Adepoju, Shiqiao Zhao, H Asher Ai, Kranthi K Marathu, Mark Supanich, Sharon E Byrd, Jie Deng
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引用次数: 0

摘要

背景和目的:胎儿的MRI可以增强对围产期发育障碍的识别,从而提高超声的准确性。手动MRI测量需要训练、时间和内部变异性问题。儿科神经放射科医生也供不应求。我们的目的是开发一种深度学习模型和管道,用于在胎儿脑MR成像中自动识别脑桥和小脑蠕虫上的解剖标志,并为测量脑桥和大脑蠕虫提供合适的图像。材料和方法:我们回顾性地使用了55名孕妇,他们接受了HASTE方案的胎儿脑MR成像。儿科神经放射科医生选择他们在矢状面单次T2加权图像上进行标志性注释,临床可靠的方法被用作测量脑桥和蠕虫的标准。开发了一个基于U-Net的深度学习模型,以自动识别胎儿大脑解剖标志,包括脑桥的2个前后标志和蠕虫的2个前后标志和2个上下标志。使用随机划分和排序的胎龄划分数据集进行四次交叉验证,以测试模型的准确性。为每个测试用例生成模型预测的置信度分数。结果:总体而言,85%的测试结果显示置信度≥90%,平均误差为 结论:这种深度学习促进的管道实际上缩短了放射科医生选择高质量胎儿大脑图像和进行解剖测量的时间。
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Automatic Localization of the Pons and Vermis on Fetal Brain MR Imaging Using a U-Net Deep Learning Model.

Background and purpose: An MRI of the fetus can enhance the identification of perinatal developmental disorders, which improves the accuracy of ultrasound. Manual MRI measurements require training, time, and intra-variability concerns. Pediatric neuroradiologists are also in short supply. Our purpose was developing a deep learning model and pipeline for automatically identifying anatomic landmarks on the pons and vermis in fetal brain MR imaging and suggesting suitable images for measuring the pons and vermis.

Materials and methods: We retrospectively used 55 pregnant patients who underwent fetal brain MR imaging with a HASTE protocol. Pediatric neuroradiologists selected them for landmark annotation on sagittal single-shot T2-weighted images, and the clinically reliable method was used as the criterion standard for the measurement of the pons and vermis. A U-Net-based deep learning model was developed to automatically identify fetal brain anatomic landmarks, including the 2 anterior-posterior landmarks of the pons and 2 anterior-posterior and 2 superior-inferior landmarks of the vermis. Four-fold cross-validation was performed to test the accuracy of the model using randomly divided and sorted gestational age-divided data sets. A confidence score of model prediction was generated for each testing case.

Results: Overall, 85% of the testing results showed a ≥90% confidence, with a mean error of <2.22 mm, providing overall better estimation results with fewer errors and higher confidence scores. The anterior and posterior pons and anterior vermis showed better estimation (which means fewer errors in landmark localization) and accuracy and a higher confidence level than other landmarks. We also developed a graphic user interface for clinical use.

Conclusions: This deep learning-facilitated pipeline practically shortens the time spent on selecting good-quality fetal brain images and performing anatomic measurements for radiologists.

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来源期刊
CiteScore
7.10
自引率
5.70%
发文量
506
审稿时长
2 months
期刊介绍: The mission of AJNR is to further knowledge in all aspects of neuroimaging, head and neck imaging, and spine imaging for neuroradiologists, radiologists, trainees, scientists, and associated professionals through print and/or electronic publication of quality peer-reviewed articles that lead to the highest standards in patient care, research, and education and to promote discussion of these and other issues through its electronic activities.
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