Bonomini Viola, Zucchelli Lucia, Re Rebecca, Ieva Francesca, Spinelli Lorenzo, Contini Davide, Paganoni Anna, Torricelli Alessandro
MOX - Department of Mathematics, Politecnico di Milano, Milan, Italy ; first two authors contributed equally to this work.
Dipartimento di Fisica, Politecnico di Milano, Milan, Italy ; first two authors contributed equally to this work.
Biomed Opt Express. 2015 Jan 28;6(2):615-30. doi: 10.1364/BOE.6.000615. eCollection 2015 Feb 1.
We propose a new algorithm, based on a linear regression model, to statistically estimate the hemodynamic activations in fNIRS data sets. The main concern guiding the algorithm development was the minimization of assumptions and approximations made on the data set for the application of statistical tests. Further, we propose a K-means method to cluster fNIRS data (i.e. channels) as activated or not activated. The methods were validated both on simulated and in vivo fNIRS data. A time domain (TD) fNIRS technique was preferred because of its high performances in discriminating cortical activation and superficial physiological changes. However, the proposed method is also applicable to continuous wave or frequency domain fNIRS data sets.
我们提出了一种基于线性回归模型的新算法,用于对功能近红外光谱(fNIRS)数据集的血流动力学激活进行统计估计。指导该算法开发的主要关注点是尽量减少在应用统计检验时对数据集所做的假设和近似。此外,我们提出了一种K均值方法,将fNIRS数据(即通道)聚类为激活或未激活状态。这些方法在模拟和活体fNIRS数据上均得到了验证。由于时域(TD)fNIRS技术在区分皮层激活和浅表生理变化方面具有高性能,因此更受青睐。不过,所提出的方法也适用于连续波或频域fNIRS数据集。