Ortiz Andres, Lozano F, Gorriz Juan M, Ramirez Javier, Martinez Murcia Francisco J
Department of Communications Engineering, University of Malaga, Malaga 29071. Spain.
Department of Psychiatry, Robinson Way, CB2 0SZ, University of Cambridge. United Kingdom.
Curr Alzheimer Res. 2018;15(1):67-79. doi: 10.2174/1567205014666170922101135.
Feature extraction in medical image processing still remains a challenge, especially in high-dimensionality datasets, where the expected number of available samples is considerably lower than the dimension of the feature space. This is a common problem in real-world data, and, specifically, in medical image pro- cessing as, while images are composed of hundreds of thousands voxels, only a reduced number of patients are available.
Extracting descriptive and discriminative features to represent each sample (image) by a small number of features, which is particularly important in classification task, due to the curse of dimensionality problem.
In this paper we solve this recognition problem by means of sparse representations of the data, which also provides an arena to multimodal image (PET and MRI) data classification by combining specialized classifiers. Thus, a novel method to effectively combine SVC classifiers is presented here, which uses the distance to the hyperplane computed for each class in each classifier allowing to select the most discriminative image modality in each case. The discriminative power of each modality also provides information about the illness evolution; while functional changes are clearly found in Alzheimer's diagnosed patients (AD) when compared to control subjects (CN), structural changes seem to be more relevant at the early stages of the illness, affecting Mild Cognitive Impairment (MCI) patients.
Classification experiments using 68 CN, 70 AD and 111 MCI images from the Alzheimer's Disease Neuroimaging Initiative database have been performed and assessed by cross-validation to show the effectiveness of the proposed method. Accuracy values of up to 92% and 84% for CN/AD and CN/MCI classification are achieved.
The method presented in this work shows that sparse representations of brain images are of importance for codifying and transferring relevant image features, as they may capture the salient features while maintaining lightweight data transactions. In fact, the method proposed in this work outperforms the classification results obtained using projection methods such as Principal Component Analysis for extracting representative features of the images.
医学图像处理中的特征提取仍然是一项挑战,尤其是在高维数据集中,其中可用样本的预期数量远低于特征空间的维度。这是现实世界数据中的一个常见问题,特别是在医学图像处理中,因为图像由数十万个体素组成,而可用患者数量却很少。
提取描述性和判别性特征,以通过少量特征来表示每个样本(图像),这在分类任务中尤为重要,因为存在维数灾难问题。
在本文中,我们通过数据的稀疏表示来解决此识别问题,这也为通过组合专用分类器进行多模态图像(PET和MRI)数据分类提供了一个平台。因此,本文提出了一种有效组合支持向量分类器的新方法,该方法使用为每个分类器中的每个类别计算的到超平面的距离,从而允许在每种情况下选择最具判别力的图像模态。每种模态的判别力还提供了有关疾病演变的信息;与对照受试者(CN)相比,在阿尔茨海默病诊断患者(AD)中明显发现功能变化,而结构变化在疾病早期似乎更相关,影响轻度认知障碍(MCI)患者。
使用来自阿尔茨海默病神经影像倡议数据库的68张CN、70张AD和111张MCI图像进行了分类实验,并通过交叉验证进行评估,以证明所提出方法的有效性。CN/AD和CN/MCI分类的准确率分别高达92%和84%。
本文提出的方法表明,脑图像的稀疏表示对于编码和传递相关图像特征很重要,因为它们可以在保持轻量级数据事务的同时捕获显著特征。事实上,本文提出的方法优于使用诸如主成分分析等投影方法获得的分类结果,这些方法用于提取图像的代表性特征。