Rieu ZunHyan, Kim JeeYoung, Kim Regina Ey, Lee Minho, Lee Min Kyoung, Oh Se Won, Wang Sheng-Min, Kim Nak-Young, Kang Dong Woo, Lim Hyun Kook, Kim Donghyeon
Research Institute, NEUROPHET Inc., Seoul 06247, Korea.
Department of Radiology, Eunpyeong St. Mary's Hospital, College of Medicine, The Catholic University of Korea, Seoul 06247, Korea.
Brain Sci. 2021 May 28;11(6):720. doi: 10.3390/brainsci11060720.
White-matter hyperintensity (WMH) is a primary biomarker for small-vessel cerebrovascular disease, Alzheimer's disease (AD), and others. The association of WMH with brain structural changes has also recently been reported. Although fluid-attenuated inversion recovery (FLAIR) magnetic resonance imaging (MRI) provide valuable information about WMH, FLAIR does not provide other normal tissue information. The multi-modal analysis of FLAIR and T1-weighted (T1w) MRI is thus desirable for WMH-related brain aging studies. In clinical settings, however, FLAIR is often the only available modality. In this study, we thus propose a semi-supervised learning method for full brain segmentation using FLAIR. The results of our proposed method were compared with the reference labels, which were obtained by FreeSurfer segmentation on T1w MRI. The relative volume difference between the two sets of results shows that our proposed method has high reliability. We further evaluated our proposed WMH segmentation by comparing the Dice similarity coefficients of the reference and the results of our proposed method. We believe our semi-supervised learning method has a great potential for use for other MRI sequences and will encourage others to perform brain tissue segmentation using MRI modalities other than T1w.
白质高信号(WMH)是小血管性脑血管疾病、阿尔茨海默病(AD)及其他疾病的主要生物标志物。近期也有关于WMH与脑结构变化关联的报道。尽管液体衰减反转恢复(FLAIR)磁共振成像(MRI)能提供有关WMH的有价值信息,但FLAIR无法提供其他正常组织信息。因此,对于与WMH相关的脑老化研究,FLAIR和T1加权(T1w)MRI的多模态分析是很有必要的。然而,在临床环境中,FLAIR往往是唯一可用的模态。在本研究中,我们因此提出一种使用FLAIR进行全脑分割的半监督学习方法。我们将所提方法的结果与通过T1w MRI上的FreeSurfer分割获得的参考标签进行了比较。两组结果之间的相对体积差异表明我们所提方法具有高可靠性。我们还通过比较参考结果与所提方法结果的Dice相似系数,进一步评估了所提的WMH分割方法。我们相信我们的半监督学习方法在用于其他MRI序列方面具有很大潜力,并将鼓励其他人使用除T1w之外的MRI模态进行脑组织分割。