Yang Dalin, Huang Ruisen, Yoo So-Hyeon, Shin Myung-Jun, Yoon Jin A, Shin Yong-Il, Hong Keum-Shik
School of Mechanical Engineering, Pusan National University, Busan, South Korea.
Department of Rehabilitation Medicine, Pusan National University School of Medicine and Biomedical Research Institute, Pusan National University Hospital, Busan, South Korea.
Front Aging Neurosci. 2020 May 21;12:141. doi: 10.3389/fnagi.2020.00141. eCollection 2020.
Mild cognitive impairment (MCI) is the clinical precursor of Alzheimer's disease (AD), which is considered the most common neurodegenerative disease in the elderly. Some MCI patients tend to remain stable over time and do not evolve to AD. It is essential to diagnose MCI in its early stages and provide timely treatment to the patient. In this study, we propose a neuroimaging approach to identify MCI using a deep learning method and functional near-infrared spectroscopy (fNIRS). For this purpose, fifteen MCI subjects and nine healthy controls (HCs) were asked to perform three mental tasks: -back, Stroop, and verbal fluency (VF) tasks. Besides examining the oxygenated hemoglobin changes (ΔHbO) in the region of interest, ΔHbO maps at 13 specific time points (i.e., 5, 10, 15, 20, 25, 30, 35, 40, 45, 50, 55, 60, and 65 s) during the tasks and seven temporal feature maps (i.e., two types of mean, three types of slope, kurtosis, and skewness) in the prefrontal cortex were investigated. A four-layer convolutional neural network (CNN) was applied to identify the subjects into either MCI or HC, individually, after training the CNN model with ΔHbO maps and temporal feature maps above. Finally, we used the 5-fold cross-validation approach to evaluate the performance of the CNN. The results of temporal feature maps exhibited high classification accuracies: The average accuracies for the -back task, Stroop task, and VFT, respectively, were 89.46, 87.80, and 90.37%. Notably, the highest accuracy of 98.61% was achieved from the ΔHbO slope map during 20-60 s interval of -back tasks. Our results indicate that the fNIRS imaging approach based on temporal feature maps is a promising diagnostic method for early detection of MCI and can be used as a tool for clinical doctors to identify MCI from their patients.
轻度认知障碍(MCI)是阿尔茨海默病(AD)的临床前驱症状,AD被认为是老年人中最常见的神经退行性疾病。一些MCI患者随着时间推移倾向于保持稳定,不会发展为AD。在早期阶段诊断MCI并为患者提供及时治疗至关重要。在本研究中,我们提出了一种神经影像学方法,使用深度学习方法和功能近红外光谱(fNIRS)来识别MCI。为此,15名MCI受试者和9名健康对照(HC)被要求执行三项心理任务:倒背任务、斯特鲁普任务和言语流畅性(VF)任务。除了检查感兴趣区域的氧合血红蛋白变化(ΔHbO)外,还研究了任务期间13个特定时间点(即5、10、15、20、25、30、35、40、45、50、55、60和65秒)的ΔHbO图以及前额叶皮质中的七个时间特征图(即两种类型的均值、三种类型的斜率、峰度和偏度)。在用上述ΔHbO图和时间特征图训练卷积神经网络(CNN)模型后,应用四层CNN将受试者分别识别为MCI或HC。最后,我们使用5折交叉验证方法评估CNN的性能。时间特征图的结果显示出较高的分类准确率:倒背任务、斯特鲁普任务和VF任务的平均准确率分别为89.46%、87.80%和90.37%。值得注意的是,在倒背任务的20 - 60秒间隔期间,ΔHbO斜率图的最高准确率达到了98.61%。我们的结果表明,基于时间特征图的fNIRS成像方法是早期检测MCI的一种有前景的诊断方法,可作为临床医生从患者中识别MCI的工具。