Department of Information and Communication Engineering, Chosun University, 309 Pilmun-Daero, Dong-Gu, Gwangju 61452, Republic of Korea.
J Healthc Eng. 2017;2017:9060124. doi: 10.1155/2017/9060124. Epub 2017 Jun 21.
. Error-free diagnosis of Alzheimer's disease (AD) from healthy control (HC) patients at an early stage of the disease is a major concern, because information about the condition's severity and developmental risks present allows AD sufferer to take precautionary measures before irreversible brain damage occurs. Recently, there has been great interest in computer-aided diagnosis in magnetic resonance image (MRI) classification. However, distinguishing between Alzheimer's brain data and healthy brain data in older adults (age > 60) is challenging because of their highly similar brain patterns and image intensities. Recently, cutting-edge feature extraction technologies have found extensive application in numerous fields, including medical image analysis. Here, we propose a dual-tree complex wavelet transform (DTCWT) for extracting features from an image. The dimensionality of feature vector is reduced by using principal component analysis (PCA). The reduced feature vector is sent to feed-forward neural network (FNN) to distinguish AD and HC from the input MR images. These proposed and implemented pipelines, which demonstrate improvements in classification output when compared to that of recent studies, resulted in high and reproducible accuracy rates of 90.06 ± 0.01% with a sensitivity of 92.00 ± 0.04%, a specificity of 87.78 ± 0.04%, and a precision of 89.6 ± 0.03% with 10-fold cross-validation.
在疾病早期,对阿尔茨海默病(AD)患者和健康对照(HC)进行无错误诊断是一个主要关注点,因为有关病情严重程度和发展风险的信息可以让 AD 患者在不可逆转的脑损伤发生之前采取预防措施。最近,计算机辅助磁共振成像(MRI)分类在医学领域得到了广泛关注。然而,由于老年人(年龄>60 岁)的大脑模式和图像强度高度相似,区分 AD 患者和健康人群的大脑数据具有挑战性。最近,前沿的特征提取技术在包括医学图像分析在内的众多领域得到了广泛应用。在这里,我们提出了一种用于从图像中提取特征的双树复小波变换(DTCWT)。通过主成分分析(PCA)降低特征向量的维度。将降维后的特征向量输入前馈神经网络(FNN),以区分输入的 MRI 图像中的 AD 和 HC。与最近的研究相比,这些提出和实施的管道在分类输出方面有了显著的提高,在 10 倍交叉验证中,准确率为 90.06±0.01%,灵敏度为 92.00±0.04%,特异性为 87.78±0.04%,精确度为 89.6±0.03%。