Yamada Shigeki, Ito Hirotaka, Matsumasa Hironori, Ii Satoshi, Otani Tomohiro, Tanikawa Motoki, Iseki Chifumi, Watanabe Yoshiyuki, Wada Shigeo, Oshima Marie, Mase Mitsuhito
Department of Neurosurgery, Nagoya City University Graduate School of Medical Science, Nagoya, Japan.
Interfaculty Initiative in Information Studies/Institute of Industrial Science, The University of Tokyo, Tokyo, Japan.
Front Aging Neurosci. 2024 Mar 15;16:1362637. doi: 10.3389/fnagi.2024.1362637. eCollection 2024.
Disproportionately enlarged subarachnoid-space hydrocephalus (DESH) is a key feature for Hakim disease (idiopathic normal pressure hydrocephalus: iNPH), but subjectively evaluated. To develop automatic quantitative assessment of DESH with automatic segmentation using combined deep learning models.
This study included 180 participants (42 Hakim patients, 138 healthy volunteers; 78 males, 102 females). Overall, 159 three-dimensional (3D) T1-weighted and 180 T2-weighted MRIs were included. As a semantic segmentation, 3D MRIs were automatically segmented in the total ventricles, total subarachnoid space (SAS), high-convexity SAS, and Sylvian fissure and basal cistern on the 3D U-Net model. As an image classification, DESH, ventricular dilatation (VD), tightened sulci in the high convexities (THC), and Sylvian fissure dilatation (SFD) were automatically assessed on the multimodal convolutional neural network (CNN) model. For both deep learning models, 110 T1- and 130 T2-weighted MRIs were used for training, 30 T1- and 30 T2-weighted MRIs for internal validation, and the remaining 19 T1- and 20 T2-weighted MRIs for external validation. Dice score was calculated as (overlapping area) × 2/total area.
Automatic region extraction from 3D T1- and T2-weighted MRI was accurate for the total ventricles (mean Dice scores: 0.85 and 0.83), Sylvian fissure and basal cistern (0.70 and 0.69), and high-convexity SAS (0.68 and 0.60), respectively. Automatic determination of DESH, VD, THC, and SFD from the segmented regions on the multimodal CNN model was sufficiently reliable; all of the mean softmax probability scores were exceeded by 0.95. All of the areas under the receiver-operating characteristic curves of the DESH, Venthi, and Sylhi indexes calculated by the segmented regions for detecting DESH were exceeded by 0.97.
Using 3D U-Net and a multimodal CNN, DESH was automatically detected with automatically segmented regions from 3D MRIs. Our developed diagnostic support tool can improve the precision of Hakim disease (iNPH) diagnosis.
蛛网膜下腔不成比例扩大性脑积水(DESH)是哈基姆病(特发性正常压力脑积水:iNPH)的关键特征,但目前是主观评估。目的是利用深度学习模型组合进行自动分割,从而实现对DESH的自动定量评估。
本研究纳入了180名参与者(42名哈基姆病患者,138名健康志愿者;男性78名,女性102名)。总共纳入了159例三维(3D)T1加权和180例T2加权磁共振成像(MRI)。作为语义分割,在3D U-Net模型上对3D MRI在总脑室、总蛛网膜下腔(SAS)、高凸部SAS以及外侧裂和基底池进行自动分割。作为图像分类,在多模态卷积神经网络(CNN)模型上对DESH、脑室扩张(VD)、高凸部脑沟变窄(THC)和外侧裂扩张(SFD)进行自动评估。对于这两种深度学习模型,110例T1加权和130例T2加权MRI用于训练,30例T1加权和30例T2加权MRI用于内部验证,其余19例T1加权和20例T2加权MRI用于外部验证。Dice分数计算为(重叠面积)×2/总面积。
从3D T1加权和T2加权MRI自动提取区域对于总脑室(平均Dice分数:0.85和0.83)、外侧裂和基底池(0.70和0.69)以及高凸部SAS(0.68和0.60)是准确的。在多模态CNN模型上从分割区域自动确定DESH、VD、THC和SFD具有足够的可靠性;所有平均softmax概率分数均超过0.95。通过分割区域计算的用于检测DESH的DESH、Venthi和Sylhi指数的受试者工作特征曲线下面积均超过0.97。
使用3D U-Net和多模态CNN,可从3D MRI的自动分割区域中自动检测DESH。我们开发的诊断支持工具可提高哈基姆病(iNPH)诊断的准确性。