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使用切片逆回归对功能磁共振成像数据进行监督式非线性降维。

Supervised nonlinear dimension reduction of functional magnetic resonance imaging data using Sliced Inverse Regression.

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2015 Aug;2015:2641-4. doi: 10.1109/EMBC.2015.7318934.

DOI:10.1109/EMBC.2015.7318934
PMID:26736834
Abstract

Dimension reduction is essential for identifying a small set of discriminative features that are predictive of behavior or cognition from high-dimensional functional magnetic resonance imaging (fMRI) data. However, conventional linear dimension reduction techniques cannot reduce the dimension effectively if the relationship between imaging data and behavioral parameters are nonlinear. In the paper, we proposed a novel supervised dimension reduction technique, named PC-SIR (Principal Component - Sliced Inverse Regression), for analyzing high-dimensional fMRI data. The PC-SIR method is an important extension of the renowned SIR method, which can achieve the effective dimension reduction (e.d.r.) directions even the relationship between class labels and predictors is nonlinear but is unable to handle high-dimensional data. By using PCA prior to SIR to orthogonalize and reduce the predictors, PC-SIR can overcome the limitation of SIR and thus can be used for fMRI data. Simulation showed that PC-SIR can result in a more accurate identification of brain activation as well as better prediction than support vector regression (SVR) and partial least square regression (PLSR). Then, we applied PC-SIR on real fMRI data recorded in a pain stimulation experiment to identify pain-related brain regions and predict the pain perception. Results on 32 subjects showed that PC-SIR can lead to significantly higher prediction accuracy than SVR and PLSR. Therefore, PC-SIR could be a promising dimension reduction technique for multivariate pattern analysis of fMRI.

摘要

降维对于从高维功能磁共振成像(fMRI)数据中识别一小部分能够预测行为或认知的判别性特征至关重要。然而,如果成像数据与行为参数之间的关系是非线性的,传统的线性降维技术就无法有效地降低维度。在本文中,我们提出了一种新颖的监督降维技术,称为PC-SIR(主成分 - 切片逆回归),用于分析高维fMRI数据。PC-SIR方法是著名的SIR方法的重要扩展,即使类标签与预测变量之间的关系是非线性的,它也能实现有效降维(e.d.r.)方向,但无法处理高维数据。通过在SIR之前使用主成分分析(PCA)来对预测变量进行正交化和降维,PC-SIR可以克服SIR的局限性,从而可用于fMRI数据。模拟表明,与支持向量回归(SVR)和偏最小二乘回归(PLSR)相比,PC-SIR能够更准确地识别大脑激活并实现更好的预测。然后,我们将PC-SIR应用于疼痛刺激实验中记录的真实fMRI数据,以识别与疼痛相关的脑区并预测疼痛感知。对32名受试者的结果表明,PC-SIR能够产生比SVR和PLSR显著更高的预测准确率。因此,PC-SIR可能是一种用于fMRI多变量模式分析的有前途的降维技术。

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A Sliced Inverse Regression (SIR) Decoding the Forelimb Movement from Neuronal Spikes in the Rat Motor Cortex.一种用于从大鼠运动皮层神经元尖峰解码前肢运动的切片逆回归(SIR)方法。
Front Neurosci. 2016 Dec 9;10:556. doi: 10.3389/fnins.2016.00556. eCollection 2016.
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Decoding Subjective Intensity of Nociceptive Pain from Pre-stimulus and Post-stimulus Brain Activities.
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