IEEE Trans Neural Netw Learn Syst. 2022 Aug;33(8):3357-3371. doi: 10.1109/TNNLS.2021.3052652. Epub 2022 Aug 3.
Parkinson's disease (PD) is known as an irreversible neurodegenerative disease that mainly affects the patient's motor system. Early classification and regression of PD are essential to slow down this degenerative process from its onset. In this article, a novel adaptive unsupervised feature selection approach is proposed by exploiting manifold learning from longitudinal multimodal data. Classification and clinical score prediction are performed jointly to facilitate early PD diagnosis. Specifically, the proposed approach performs united embedding and sparse regression, which can determine the similarity matrices and discriminative features adaptively. Meanwhile, we constrain the similarity matrix among subjects and exploit the l norm to conduct sparse adaptive control for obtaining the intrinsic information of the multimodal data structure. An effective iterative optimization algorithm is proposed to solve this problem. We perform abundant experiments on the Parkinson's Progression Markers Initiative (PPMI) data set to verify the validity of the proposed approach. The results show that our approach boosts the performance on the classification and clinical score regression of longitudinal data and surpasses the state-of-the-art approaches.
帕金森病(PD)是一种不可逆的神经退行性疾病,主要影响患者的运动系统。早期对 PD 进行分类和回归对于从发病开始减缓这个退行过程至关重要。本文提出了一种新的自适应无监督特征选择方法,通过利用从纵向多模态数据中获得的流形学习来实现。分类和临床评分预测是联合进行的,以促进早期 PD 的诊断。具体来说,该方法执行联合嵌入和稀疏回归,可以自适应地确定相似性矩阵和判别特征。同时,我们约束主体之间的相似性矩阵,并利用 l 范数进行稀疏自适应控制,以获得多模态数据结构的内在信息。提出了一种有效的迭代优化算法来解决这个问题。我们在帕金森进展标志物倡议(PPMI)数据集上进行了大量实验,以验证所提出方法的有效性。结果表明,我们的方法提高了纵向数据的分类和临床评分回归的性能,并超过了现有的方法。