Smart-Aging Research Center, Institute of Development, Aging, and Cancer, Tohoku University, Sendai, Japan.
Department of Aging Research and Geriatric Medicine, Institute of Development, Aging, and Cancer, Tohoku University, Sendai, Japan.
Hum Brain Mapp. 2022 Sep;43(13):3998-4012. doi: 10.1002/hbm.25899. Epub 2022 May 7.
White matter lesions (WML) commonly occur in older brains and are quantifiable on MRI, often used as a biomarker in Aging research. Although algorithms are regularly proposed that identify these lesions from T2-fluid-attenuated inversion recovery (FLAIR) sequences, none so far can estimate lesions directly from T1-weighted images with acceptable accuracy. Since 3D T1 is a polyvalent and higher-resolution sequence, it could be beneficial to obtain the distribution of WML directly from it. However a serious difficulty, both for algorithms and human, can be found in the ambiguities of brain signal intensity in T1 images. This manuscript shows that a cross-domain ConvNet (Convolutional Neural Network) approach can help solve this problem. Still, this is non-trivial, as it would appear to require a large and varied dataset (for robustness) labelled at the same high resolution (for spatial accuracy). Instead, our model was taught from two-dimensional FLAIR images with a loss function designed to handle the super-resolution need. And crucially, we leveraged a very large training set for this task, the recently assembled, multi-sites Japan Prospective Studies Collaboration for Aging and Dementia (JPSC-AD) cohort. We describe the two-step procedure that we followed to handle such a large number of imperfectly labeled samples. A large-scale accuracy evaluation conducted against FreeSurfer 7, and a further visual expert rating revealed that WML segmentation from our ConvNet was consistently better. Finally, we made a directly usable software program based on that trained ConvNet model, available at https://github.com/bthyreau/deep-T1-WMH.
脑白质病变(WML)常见于老年大脑中,可以通过 MRI 进行量化,通常作为衰老研究中的生物标志物。虽然经常提出从 T2 液体衰减反转恢复(FLAIR)序列识别这些病变的算法,但到目前为止,还没有一种算法可以从 T1 加权图像直接估计病变,且准确性可以接受。由于 3D T1 是一种多功能和高分辨率的序列,因此直接从 T1 图像中获得 WML 的分布可能会很有益。然而,无论是对于算法还是人类来说,都存在一个严重的困难,即在 T1 图像中脑信号强度存在模糊性。本文表明,跨域 ConvNet(卷积神经网络)方法可以帮助解决这个问题。然而,这并不简单,因为它似乎需要一个庞大而多样的数据集(用于稳健性),并对其进行高分辨率标注(用于空间准确性)。相反,我们的模型是从二维 FLAIR 图像中学习的,使用的损失函数旨在处理超分辨率需求。至关重要的是,我们利用了一个非常庞大的训练集来完成这项任务,该数据集来自最近组建的、多地点的日本衰老与痴呆前瞻性研究合作(JPSC-AD)队列。我们描述了我们为处理如此多不完美标注样本而遵循的两步程序。对 FreeSurfer 7 进行了大规模准确性评估,并进一步进行了视觉专家评分,结果表明,我们的 ConvNet 对 WML 的分割始终更好。最后,我们根据训练好的 ConvNet 模型制作了一个可直接使用的软件程序,可在 https://github.com/bthyreau/deep-T1-WMH 上获取。