Kung Te-Han, Chao Tzu-Cheng, Xie Yi-Ru, Pai Ming-Chyi, Kuo Yu-Min, Lee Gwo Giun Chris
MediaTek Inc., Hsinchu, Taiwan.
Department of Electrical Engineering, National Cheng Kung University, Tainan, Taiwan.
Front Neurosci. 2021 Feb 19;15:584641. doi: 10.3389/fnins.2021.584641. eCollection 2021.
An efficient method to identify whether mild cognitive impairment (MCI) has progressed to Alzheimer's disease (AD) will be beneficial to patient care. Previous studies have shown that magnetic resonance imaging (MRI) has enabled the assessment of AD progression based on imaging findings. The present work aimed to establish an algorithm based on three features, namely, volume, surface area, and surface curvature within the hippocampal subfields, to model variations, including atrophy and structural changes to the cortical surface. In this study, a new biomarker, the ratio of principal curvatures (RPC), was proposed to characterize the folding patterns of the cortical gyrus and sulcus. Along with volumes and surface areas, these morphological features associated with the hippocampal subfields were assessed in terms of their sensitivity to the changes in cognitive capacity by two different feature selection methods. Either the extracted features were statistically significantly different, or the features were selected through a random forest model. The identified subfields and their structural indices that are sensitive to the changes characteristic of the progression from MCI to AD were further assessed with a multilayer perceptron classifier to help facilitate the diagnosis. The accuracy of the classification based on the proposed method to distinguish whether a MCI patient enters the AD stage amounted to 79.95%, solely using the information from the features selected by a logical feature selection method.
一种识别轻度认知障碍(MCI)是否已进展为阿尔茨海默病(AD)的有效方法将有助于患者护理。先前的研究表明,磁共振成像(MRI)能够根据影像学发现评估AD的进展。目前的工作旨在基于海马亚区的体积、表面积和表面曲率这三个特征建立一种算法,以模拟包括皮质表面萎缩和结构变化在内的变异。在本研究中,提出了一种新的生物标志物,即主曲率比(RPC),以表征皮质脑回和脑沟的折叠模式。连同体积和表面积一起,通过两种不同的特征选择方法评估了这些与海马亚区相关的形态学特征对认知能力变化的敏感性。提取的特征要么具有统计学上的显著差异,要么通过随机森林模型进行选择。使用多层感知器分类器进一步评估已识别的对从MCI进展到AD的变化特征敏感的亚区及其结构指标,以帮助促进诊断。仅使用通过逻辑特征选择方法选择的特征信息,基于所提出的方法区分MCI患者是否进入AD阶段的分类准确率达到了79.95%。