School of Information Communication Engineering, Chosun University, 309 Pilmun-Daero, Dong-Gu, Gwangju 61452, Republic of Korea.
National Research Center for Dementia, Chosun University, 309 Pilmun-Daero, Dong-Gu, Gwangju 61452, Republic of Korea.
J Healthc Eng. 2019 Mar 3;2019:2492719. doi: 10.1155/2019/2492719. eCollection 2019.
Alzheimer's disease (AD) is a common neurodegenerative disease with an often seen prodromal mild cognitive impairment (MCI) phase, where memory loss is the main complaint progressively worsening with behavior issues and poor self-care. However, not all patients clinically diagnosed with MCI progress to the AD. Currently, several high-dimensional classification techniques have been developed to automatically distinguish among AD, MCI, and healthy control (HC) patients based on T1-weighted MRI. However, these method features are based on wavelets, contourlets, gray-level co-occurrence matrix, etc., rather than using clinical features which helps doctors to understand the pathological mechanism of the AD. In this study, a new approach is proposed using cortical thickness and subcortical volume for distinguishing binary and tertiary classification of the National Research Center for Dementia dataset (NRCD), which consists of 326 subjects. Five classification experiments are performed: binary classification, i.e., AD vs HC, HC vs mAD (MCI due to the AD), and mAD vs aAD (asymptomatic AD), and tertiary classification, i.e., AD vs HC vs mAD and AD vs HC vs aAD using cortical and subcortical features. Datasets were divided in a 70/30 ratio, and later, 70% were used for training and the remaining 30% were used to get an unbiased estimation performance of the suggested methods. For dimensionality reduction purpose, principal component analysis (PCA) was used. After that, the output of PCA was passed to various types of classifiers, namely, softmax, support vector machine (SVM), -nearest neighbors, and naïve Bayes (NB) to check the performance of the model. Experiments on the NRCD dataset demonstrated that the softmax classifier is best suited for the AD vs HC classification with an F1 score of 99.06, whereas for other groups, the SVM classifier is best suited for the HC vs mAD, mAD vs aAD, and AD vs HC vs mAD classifications with the F1 scores being 99.51, 97.5, and 99.99, respectively. In addition, for the AD vs HC vs aAD classification, NB performed well with an F1 score of 95.88. In addition, to check our proposed model efficiency, we have also used the OASIS dataset for comparing with 9 state-of-the-art methods.
阿尔茨海默病(AD)是一种常见的神经退行性疾病,通常有前驱轻度认知障碍(MCI)阶段,在这个阶段,记忆丧失是主要的抱怨,随着行为问题和自我护理能力差而逐渐恶化。然而,并非所有临床诊断为 MCI 的患者都会进展为 AD。目前,已经开发了几种高维分类技术,以便基于 T1 加权 MRI 自动区分 AD、MCI 和健康对照组(HC)患者。然而,这些方法的特征是基于小波、轮廓波、灰度共生矩阵等,而不是使用有助于医生了解 AD 病理机制的临床特征。在这项研究中,提出了一种新的方法,使用皮质厚度和皮质下体积来区分国家痴呆症研究中心(NRCD)数据集的二进制和三分类,该数据集由 326 名受试者组成。进行了五项分类实验:即 AD 与 HC、HC 与 mAD(AD 引起的 MCI)和 mAD 与 aAD(无症状 AD)的二进制分类,以及 AD 与 HC 与 mAD 和 AD 与 HC 与 aAD 的三分类,使用皮质和皮质下特征。数据集以 70/30 的比例进行划分,然后 70%用于训练,其余 30%用于获得建议方法无偏估计性能。为了降维目的,使用了主成分分析(PCA)。之后,将 PCA 的输出传递给各种类型的分类器,即 softmax、支持向量机(SVM)、-最近邻和朴素贝叶斯(NB),以检查模型的性能。在 NRCD 数据集上的实验表明,softmax 分类器最适合 AD 与 HC 的分类,F1 得分为 99.06,而对于其他组,SVM 分类器最适合 HC 与 mAD、mAD 与 aAD 和 AD 与 HC 与 mAD 的分类,F1 得分分别为 99.51、97.5 和 99.99。此外,对于 AD 与 HC 与 aAD 的分类,NB 的表现良好,F1 得分为 95.88。此外,为了检查我们提出的模型的效率,我们还使用了 OASIS 数据集与 9 种最先进的方法进行比较。