Shang Ziyao, Turja Md Asadullah, Feczko Eric, Houghton Audrey, Rueter Amanda, Moore Lucille A, Snider Kathy, Hendrickson Timothy, Reiners Paul, Stoyell Sally, Kardan Omid, Rosenberg Monica, Elison Jed T, Fair Damien A, Styner Martin A
University of North Carolina, Chapel Hill, USA.
University of Minnesota, Minneapolis, USA.
Proc Mach Learn Res. 2022 Jul;172:1075-1084.
Longitudinal studies of infants' brains are essential for research and clinical detection of neurodevelopmental disorders. However, for infant brain MRI scans, effective deep learning-based segmentation frameworks exist only within small age intervals due to the large image intensity and contrast changes that take place in the early postnatal stages of development. However, using different segmentation frameworks or models at different age intervals within the same longitudinal data set would cause segmentation inconsistencies and age-specific biases. Thus, an age-agnostic segmentation model for infants' brains is needed. In this paper, we present "Infant-SynthSeg", an extension of the contrast-agnostic SynthSeg segmentation framework applicable to MRI data of infants at ages within the first year of life. Our work mainly focuses on extending learning strategies related to synthetic data generation and augmentation, with the aim of creating a method that employs training data capturing features unique to infants' brains during this early-stage development. Comparison across different learning strategy settings, as well as a more-traditional contrast-aware deep learning model (nnU-net) are presented. Our experiments show that our trained Infant-SynthSeg models show consistently high segmentation performance on MRI scans of infant brains throughout the first year of life. Furthermore, as the model is trained on ground truth labels at different ages, even labels that are not present at certain ages (such as cerebellar white matter at 1 month) can be appropriately segmented via Infant-SynthSeg across the whole age range. Finally, while Infant-SynthSeg shows consistent segmentation performance across the first year of life, it is outperformed by age-specific deep learning models trained for a specific narrow age range.
对婴儿大脑进行纵向研究对于神经发育障碍的研究和临床检测至关重要。然而,对于婴儿脑部MRI扫描,由于在出生后早期发育阶段图像强度和对比度变化很大,基于深度学习的有效分割框架仅存在于较小的年龄区间内。然而,在同一纵向数据集中的不同年龄区间使用不同的分割框架或模型会导致分割不一致和特定年龄偏差。因此,需要一种与年龄无关的婴儿脑部分割模型。在本文中,我们提出了“Infant-SynthSeg”,它是对比度无关的SynthSeg分割框架的扩展,适用于一岁以内婴儿的MRI数据。我们的工作主要集中在扩展与合成数据生成和增强相关的学习策略,目的是创建一种方法,该方法使用能捕捉婴儿大脑在这一早期发育阶段独特特征的训练数据。文中展示了不同学习策略设置之间的比较,以及一个更传统的对比度感知深度学习模型(nnU-net)。我们的实验表明,我们训练的Infant-SynthSeg模型在婴儿出生后第一年的脑部MRI扫描中始终表现出很高的分割性能。此外,由于该模型是在不同年龄的真实标签上进行训练的,即使是某些年龄不存在的标签(如1个月时的小脑白质),也可以通过Infant-SynthSeg在整个年龄范围内进行适当分割。最后,虽然Infant-SynthSeg在婴儿出生后的第一年表现出一致的分割性能,但它在针对特定狭窄年龄范围训练的特定年龄深度学习模型面前表现较差。