Choi Hongyoon, Jin Kyong Hwan
Cheonan Public Health Center, Chungnam, Republic of Korea.
Biomedical Imaging Group, École Polytechnique Fédérale de Lausanne (EPFL), Lausanne, Switzerland; Department of Bio and Brain Engineering, Korea Advanced Institute of Science and Technology, Daejeon, Republic of Korea.
Behav Brain Res. 2018 May 15;344:103-109. doi: 10.1016/j.bbr.2018.02.017. Epub 2018 Feb 14.
For effective treatment of Alzheimer's disease (AD), it is important to identify subjects who are most likely to exhibit rapid cognitive decline. We aimed to develop an automatic image interpretation system based on a deep convolutional neural network (CNN) which can accurately predict future cognitive decline in mild cognitive impairment (MCI) patients using flurodeoxyglucose and florbetapir positron emission tomography (PET). PET images of 139 patients with AD, 171 patients with MCI and 182 normal subjects obtained from Alzheimer's Disease Neuroimaging Initiative database were used. Deep CNN was trained using 3-dimensional PET volumes of AD and normal controls as inputs. Manually defined image feature extraction such as quantification using predefined region-of-interests was unnecessary for our approach. Furthermore, it used minimally processed images without spatial normalization which has been commonly used in conventional quantitative analyses. Cognitive outcome of MCI subjects was predicted using this network. The prediction accuracy of the conversion of mild cognitive impairment to AD was compared with the conventional feature-based quantification approach. Accuracy of prediction (84.2%) for conversion to AD in MCI patients outperformed conventional feature-based quantification approaches. ROC analyses revealed that performance of CNN-based approach was significantly higher than that of the conventional quantification methods (p < 0.05). Output scores of the network were strongly correlated with the longitudinal change in cognitive measurements (p < 0.05). These results show the feasibility of deep learning as a practical tool for developing predictive neuroimaging biomarker.
为有效治疗阿尔茨海默病(AD),识别最有可能出现快速认知衰退的受试者至关重要。我们旨在开发一种基于深度卷积神经网络(CNN)的自动图像解释系统,该系统能够使用氟脱氧葡萄糖和氟代硼替吡(florbetapir)正电子发射断层扫描(PET)准确预测轻度认知障碍(MCI)患者未来的认知衰退。使用了从阿尔茨海默病神经影像倡议数据库中获取的139例AD患者、171例MCI患者和182例正常受试者的PET图像。以AD患者和正常对照的三维PET体积作为输入来训练深度CNN。我们的方法无需手动定义图像特征提取,如使用预定义感兴趣区域进行量化。此外,它使用的是未经空间归一化的最少处理图像,而空间归一化在传统定量分析中常用。使用该网络预测MCI受试者的认知结果。将轻度认知障碍转化为AD的预测准确性与传统的基于特征的量化方法进行比较。MCI患者转化为AD的预测准确性(84.2%)优于传统的基于特征的量化方法。ROC分析显示,基于CNN的方法的性能显著高于传统量化方法(p < 0.05)。网络的输出分数与认知测量的纵向变化密切相关(p < 0.05)。这些结果表明深度学习作为开发预测性神经影像生物标志物的实用工具的可行性。