论文标题
从MCI向阿尔茨海默氏病的过渡过渡中知识的先验知识的作用
A Role for Prior Knowledge in Statistical Classification of the Transition from MCI to Alzheimer's Disease
论文作者
论文摘要
从轻度认知障碍(MCI)到阿尔茨海默氏病(AD)的过渡引起了临床研究人员的极大兴趣。这种现象也是定量方法研究人员开发新方法进行分类方法的宝贵数据源。但是,机器学习(ML)分类方法的增长可能会错误地导致许多临床研究人员低估了逻辑回归(LR)的价值,从而比其他ML方法产生同等或优越的分类精度。此外,在具有许多可用于分类过渡的功能的应用中,临床研究人员通常不知道不同选择程序的相对价值。在本研究中,我们试图研究自动化和理论引导的特征选择技术的使用,以及在应用不同的分类技术来预测从阿尔茨海默氏病神经疾病的启发性的高度表征和研究的样本中,在应用不同的分类技术时,L-1规范。我们提出了一种替代性预选技术,该技术利用基于AD中大脑区域的临床知识来使用有效的特征选择。目前的发现表明,使用用户指导的预选与算法特征选择技术可以如何实现相似的性能。最后,我们将支持向量机(SVM)的性能与ADNI多模式数据的逻辑回归的性能进行了比较。目前的发现表明,尽管SVM和其他ML技术能够相对准确地分类,但通常可以通过LR来实现相似或更高的精度,从而减轻许多临床研究人员的SVM的必要性或价值。
The transition from mild cognitive impairment (MCI) to Alzheimer's disease (AD) is of great interest to clinical researchers. This phenomenon also serves as a valuable data source for quantitative methodological researchers developing new approaches for classification. However, the growth of machine learning (ML) approaches for classification may falsely lead many clinical researchers to underestimate the value of logistic regression (LR), yielding equivalent or superior classification accuracy over other ML methods. Further, in applications with many features that could be used for classifying the transition, clinical researchers are often unaware of the relative value of different selection procedures. In the present study, we sought to investigate the use of automated and theoretically-guided feature selection techniques, and as well as the L-1 norm when applying different classification techniques for predicting conversion from MCI to AD in a highly characterized and studied sample from the Alzheimer's Disease Neuroimaging Initiative (ADNI). We propose an alternative pre-selection technique that utilizes an efficient feature selection based on clinical knowledge of brain regions involved in AD. The present findings demonstrate how similar performance can be achieved using user-guided pre-selection versus algorithmic feature selection techniques. Finally, we compare the performance of a support vector machine (SVM) with that of logistic regression on multi-modal data from ADNI. The present findings show that although SVM and other ML techniques are capable of relatively accurate classification, similar or higher accuracy can often be achieved by LR, mitigating SVM's necessity or value for many clinical researchers.