论文标题

针对ROI一致性,用于胎儿大脑MRI质量评估的半监督学习

Semi-Supervised Learning for Fetal Brain MRI Quality Assessment with ROI consistency

论文作者

Xu, Junshen, Lala, Sayeri, Gagoski, Borjan, Turk, Esra Abaci, Grant, P. Ellen, Golland, Polina, Adalsteinsson, Elfar

论文摘要

胎儿脑MRI可用于诊断脑异常,但受到胎儿运动的挑战。 T2加权胎儿脑MRI的当前方案对运动不健壮,因此图像体积会被跨和内部运动伪像降解。此外,胎儿MR图像质量评估的手动注释通常很耗时。因此,在这项工作中,提出了一种半监督的深度学习方法,该方法在大脑体积扫描过程中检测出用伪影的切片。我们的方法基于平均教师模型,在该模型中,我们不仅在整个图像上都在学生和教师模型之间执行一致性,而且还采取ROI一致性损失来指导网络专注于大脑区域。在胎儿脑MR数据集上评估所提出的方法,该数据集具有11,223个标记的图像和超过200,000张未标记的图像。结果表明,与监督学习相比,提出的方法可以将模型准确性提高约6 \%,并且胜过其他最先进的半监督学习方法。该提出的方法还对MR扫描仪进行了实施和评估,该方法证明了在线图像质量评估和胎儿MR扫描过程中图像的可行性。

Fetal brain MRI is useful for diagnosing brain abnormalities but is challenged by fetal motion. The current protocol for T2-weighted fetal brain MRI is not robust to motion so image volumes are degraded by inter- and intra- slice motion artifacts. Besides, manual annotation for fetal MR image quality assessment are usually time-consuming. Therefore, in this work, a semi-supervised deep learning method that detects slices with artifacts during the brain volume scan is proposed. Our method is based on the mean teacher model, where we not only enforce consistency between student and teacher models on the whole image, but also adopt an ROI consistency loss to guide the network to focus on the brain region. The proposed method is evaluated on a fetal brain MR dataset with 11,223 labeled images and more than 200,000 unlabeled images. Results show that compared with supervised learning, the proposed method can improve model accuracy by about 6\% and outperform other state-of-the-art semi-supervised learning methods. The proposed method is also implemented and evaluated on an MR scanner, which demonstrates the feasibility of online image quality assessment and image reacquisition during fetal MR scans.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源