Biomedical Research Imaging Center (BRIC) and Department of Radiology, University of North Carolina at Chapel Hill, NC, 27599, USA.
Cedars-Sinai, Biomedical Imaging Research Institute, 8700 Beverly Blvd., Los Angeles, CA 90048, USA.
Sci Rep. 2017 Jan 25;7:41069. doi: 10.1038/srep41069.
Feature selection methods usually select the most compact and relevant set of features based on their contribution to a linear regression model. Thus, these features might not be the best for a non-linear classifier. This is especially crucial for the tasks, in which the performance is heavily dependent on the feature selection techniques, like the diagnosis of neurodegenerative diseases. Parkinson's disease (PD) is one of the most common neurodegenerative disorders, which progresses slowly while affects the quality of life dramatically. In this paper, we use the data acquired from multi-modal neuroimaging data to diagnose PD by investigating the brain regions, known to be affected at the early stages. We propose a joint kernel-based feature selection and classification framework. Unlike conventional feature selection techniques that select features based on their performance in the original input feature space, we select features that best benefit the classification scheme in the kernel space. We further propose kernel functions, specifically designed for our non-negative feature types. We use MRI and SPECT data of 538 subjects from the PPMI database, and obtain a diagnosis accuracy of 97.5%, which outperforms all baseline and state-of-the-art methods.
特征选择方法通常根据其对线性回归模型的贡献来选择最紧凑和最相关的特征集。因此,这些特征对于非线性分类器来说可能不是最好的。对于那些性能严重依赖于特征选择技术的任务来说,这一点尤为重要,例如神经退行性疾病的诊断。帕金森病(PD)是最常见的神经退行性疾病之一,它的进展缓慢,但对生活质量有很大影响。在本文中,我们使用从多模态神经影像学数据中获得的数据,通过研究已知在早期受影响的大脑区域来诊断 PD。我们提出了一种基于核的联合特征选择和分类框架。与传统的特征选择技术不同,传统的特征选择技术是根据原始输入特征空间中的性能选择特征,我们选择的特征是在核空间中最有利于分类方案的特征。我们进一步提出了专门为我们的非负特征类型设计的核函数。我们使用来自 PPMI 数据库的 538 名受试者的 MRI 和 SPECT 数据,获得了 97.5%的诊断准确率,优于所有基线和最新方法。