论文标题
学会从嘈杂的注释中分割胎儿脑组织
Learning to segment fetal brain tissue from noisy annotations
论文作者
论文摘要
自动胎儿脑组织分割可以在此关键阶段增强对大脑发育的定量评估。深度学习方法代表了医学图像分割中的艺术状态,并且在大脑分割方面也取得了令人印象深刻的结果。但是,对执行此任务的有效培训需要大量的训练图像来代表瞬态胎儿脑结构的快速发展。另一方面,大量3D图像的手动多标签分割非常过分。为了应对这一挑战,我们使用基于可变形的注册和概率ATLAS融合的自动多ATLAS分割策略进行了272次培训图像,涵盖了19-39周的妊娠周,并在这些细分中手动纠正了大错误。由于此过程产生了一个带有嘈杂分段的大型培训数据集,因此我们开发了一种新颖的标签平滑过程和损失功能,以训练具有平滑噪声分割的深度学习模型。我们提出的方法正确解释了组织边界的不确定性。我们评估了23个单独的胎儿手动分段测试图像的方法。结果表明,对于年轻胎儿和年龄较大的胎儿的瞬态结构,我们的方法的平均骰子相似性系数分别为0.893和0.916。我们的方法产生的结果比包括NNU-NET(NNU-NET)的几种最接近的方法更准确,这些方法获得了最接近我们方法的结果。我们训练有素的模型可以作为提高MRI胎儿脑分析的准确性和可重复性的宝贵工具。
Automatic fetal brain tissue segmentation can enhance the quantitative assessment of brain development at this critical stage. Deep learning methods represent the state of the art in medical image segmentation and have also achieved impressive results in brain segmentation. However, effective training of a deep learning model to perform this task requires a large number of training images to represent the rapid development of the transient fetal brain structures. On the other hand, manual multi-label segmentation of a large number of 3D images is prohibitive. To address this challenge, we segmented 272 training images, covering 19-39 gestational weeks, using an automatic multi-atlas segmentation strategy based on deformable registration and probabilistic atlas fusion, and manually corrected large errors in those segmentations. Since this process generated a large training dataset with noisy segmentations, we developed a novel label smoothing procedure and a loss function to train a deep learning model with smoothed noisy segmentations. Our proposed methods properly account for the uncertainty in tissue boundaries. We evaluated our method on 23 manually-segmented test images of a separate set of fetuses. Results show that our method achieves an average Dice similarity coefficient of 0.893 and 0.916 for the transient structures of younger and older fetuses, respectively. Our method generated results that were significantly more accurate than several state-of-the-art methods including nnU-Net that achieved the closest results to our method. Our trained model can serve as a valuable tool to enhance the accuracy and reproducibility of fetal brain analysis in MRI.