Department of Electrical Engineering, Pakistan Institute of Engineering and Applied Sciences, P. O. 45650, Islamabad, Pakistan.
Department of Cogno-Mechatronics Engineering, Pusan National University, 30 Jangjeon-dong, Geumjeong-gu, Busan 609-735, Republic of Korea.
Neuroimage. 2018 Aug 1;176:321-353. doi: 10.1016/j.neuroimage.2018.04.042. Epub 2018 Apr 24.
The robust characterization of real-time brain activity carries potential for many applications. However, the contamination of measured signals by various instrumental, environmental, and physiological sources of noise introduces a substantial amount of signal variance and, consequently, challenges real-time estimation of contributions from underlying neuronal sources. Functional near infra-red spectroscopy (fNIRS) is an emerging imaging modality whose real-time potential is yet to be fully explored. The objectives of the current study are to (i) validate a time-dependent linear model of hemodynamic responses in fNIRS, and (ii) test the robustness of this approach against measurement noise (instrumental and physiological) and mis-specification of the hemodynamic response basis functions (amplitude, latency, and duration). We propose a linear hemodynamic model with time-varying parameters, which are estimated (adapted and tracked) using a dynamic recursive least square algorithm. Owing to the linear nature of the activation model, the problem of achieving robust convergence to an accurate estimation of the model parameters is recast as a problem of parameter error stability around the origin. We show that robust convergence of the proposed method is guaranteed in the presence of an acceptable degree of model misspecification and we derive an upper bound on noise under which reliable parameters can still be inferred. We also derived a lower bound on signal-to-noise-ratio over which the reliable parameters can still be inferred from a channel/voxel. Whilst here applied to fNIRS, the proposed methodology is applicable to other hemodynamic-based imaging technologies such as functional magnetic resonance imaging.
实时脑活动的稳健特征分析具有许多应用的潜力。然而,测量信号受到各种仪器、环境和生理噪声源的污染,会引入大量的信号变化,因此对潜在神经元源的实时估计构成了挑战。功能近红外光谱(fNIRS)是一种新兴的成像模式,其实时潜力尚未得到充分探索。本研究的目的是:(i)验证 fNIRS 中血流动力学响应的时变线性模型,(ii)测试该方法对测量噪声(仪器和生理)以及血流动力学响应基函数(幅度、潜伏期和持续时间)的不规范的稳健性。我们提出了一种具有时变参数的线性血流动力学模型,该模型使用动态递归最小二乘算法进行估计(自适应和跟踪)。由于激活模型的线性性质,实现对模型参数的准确估计的稳健收敛问题被重新表述为原点附近参数误差稳定性的问题。我们表明,在可接受的模型失配程度下,所提出的方法能够保证稳健收敛,并且我们推导出了一个噪声上限,在这个噪声上限下,仍然可以可靠地推断出参数。我们还推导出了一个信噪比下限,在这个信噪比下限下,仍然可以从一个通道/体素中可靠地推断出参数。虽然这里应用于 fNIRS,但所提出的方法适用于其他基于血流动力学的成像技术,如功能磁共振成像。