Brain tissue segmentation has demonstrated great utility in quantifying MRI data through Voxel-Based Morphometry and highlighting subtle structural changes associated with various conditions within the brain. However, manual segmentation is highly labor-intensive, and automated approaches have struggled due to properties inherent to MRI acquisition, leaving a great need for an effective segmentation tool. Despite the recent success of deep convolutional neural networks (CNNs) for brain tissue segmentation, many such solutions do not generalize well to new datasets, which is critical for a reliable solution. Transformers have demonstrated success in natural image segmentation and have recently been applied to 3D medical image segmentation tasks due to their ability to capture long-distance relationships in the input where the local receptive fields of CNNs struggle. This study introduces a novel CNN-Transformer hybrid architecture designed for brain tissue segmentation. We validate our model's performance across four multi-site T1w MRI datasets, covering different vendors, field strengths, scan parameters, time points, and neuropsychiatric conditions. In all situations, our model achieved the greatest generality and reliability. Out method is inherently robust and can serve as a valuable tool for brain-related T1w MRI studies. The code for the TABS network is available at: https://github.com/raovish6/TABS.
翻译:通过Voxel-Based Morphrophy 测量和突出与大脑内各种条件相关的微妙结构变化,在通过Voxel-Borphysicat 量化MRI数据方面证明,许多这类解决方案在量化MRI数据方面大有用处。然而,人工分解是劳动密集型的,自动化方法由于MRI获取的内在特性而困难重重,因此非常需要一个有效的分解工具。尽管最近大脑组织分解的深层进化神经神经网络(CNN)取得了成功,但许多这类解决方案并没有很好地概括到对可靠解决方案至关重要的新数据集。 变异器在自然图像分解中表现出成功,最近也应用到3D医学图像分解任务,因为3D医学分解任务能够捕捉到本地CNNCNNs可接受领域在输入中的长距离关系。这项研究引入了一个新的CNN-Tradent混合结构,用于脑组织分解。我们验证了我们模型在四个多站T1w MRI数据集中的性能,涵盖不同的供应商、实地实力、扫描参数、时间点和神经心理学条件。在所有情况中,我们的模型都取得了最大的一般性和可靠性和可靠性。