Du Wentao, Yin Kuiying, Shi Jingping
Nanjing Research Institute of Electronic Technology, Nanjing 210019, China.
Department of Neurology, The Affiliated Brain Hospital of Nanjing Medical University, Nanjing 210029, China.
Brain Sci. 2023 Nov 4;13(11):1549. doi: 10.3390/brainsci13111549.
In various applications, such as disease diagnosis, surgical navigation, human brain atlas analysis, and other neuroimage processing scenarios, brain extraction is typically regarded as the initial stage in MRI image processing. Whole-brain semantic segmentation algorithms, such as U-Net, have demonstrated the ability to achieve relatively satisfactory results even with a limited number of training samples. In order to enhance the precision of brain semantic segmentation, various frameworks have been developed, including 3D U-Net, slice U-Net, and auto-context U-Net. However, the processing methods employed in these models are relatively complex when applied to 3D data models. In this article, we aim to reduce the complexity of the model while maintaining appropriate performance. As an initial step to enhance segmentation accuracy, the preprocessing extraction of full-scale information from magnetic resonance images is performed with a cluster tool. Subsequently, three multi-input hybrid U-Net model frameworks are tested and compared. Finally, we propose utilizing a fusion of two-dimensional segmentation outcomes from different planes to attain improved results. The performance of the proposed framework was tested using publicly accessible benchmark datasets, namely LPBA40, in which we obtained Dice overlap coefficients of 98.05%. Improvement was achieved via our algorithm against several previous studies.
在各种应用中,如疾病诊断、手术导航、人类脑图谱分析以及其他神经图像处理场景中,脑提取通常被视为MRI图像处理的初始阶段。全脑语义分割算法,如U-Net,即使在训练样本数量有限的情况下也已证明能够取得相对令人满意的结果。为了提高脑语义分割的精度,已经开发了各种框架,包括3D U-Net、切片U-Net和自动上下文U-Net。然而,这些模型中采用的处理方法应用于3D数据模型时相对复杂。在本文中,我们旨在降低模型的复杂性,同时保持适当的性能。作为提高分割精度的第一步,使用聚类工具对磁共振图像进行全尺度信息的预处理提取。随后,测试并比较了三种多输入混合U-Net模型框架。最后,我们建议利用来自不同平面的二维分割结果的融合来获得更好的结果。使用公开可用的基准数据集LPBA40对所提出框架的性能进行了测试,我们在其中获得了98.05%的Dice重叠系数。通过我们的算法,相对于之前的几项研究取得了改进。