Faghihpirayesh Razieh, Imbiriba Tales, Yarossi Mathew, Tunik Eugene, Brooks Dana, Erdoğmuş Deniz
ECE, Northeastern University, Boston, Massachusetts.
PTRMS, Northeastern University, Boston, Massachusetts.
Int Conf Pervasive Technol Relat Assist Environ. 2020 Jun;2020. doi: 10.1145/3389189.3389202.
One important application of transcranial magnetic stimulation (TMS) is to map cortical motor topography by spatially sampling the motor cortex, and recording motor evoked potentials (MEP) with surface electromyography. Standard approaches to TMS mapping involve repetitive stimulations at different loci spaced on a (typically 1 cm) grid on the scalp. These mappings strategies are time consuming and responsive sites are typically sparse. Furthermore, the long time scale prevents measurement of transient cortical changes, and is poorly tolerated in clinical populations. An alternative approach involves using the TMS mapper expertise to exploit the map's sparsity through the use of feedback of MEPs to decide which loci to stimulate. In this investigation, we propose a novel active learning method to automatically infer optimal future stimulus loci in place of user expertise. Specifically, we propose an active Gaussian Process (GP) strategy with loci selection criteria such as entropy and mutual information (MI). The proposed method twists the usual entropy- and MI-based selection criteria by modeling the estimated MEP field, i.e., the GP mean, as a Gaussian random variable itself. By doing so, we include MEP amplitudes in the loci selection criteria which would be otherwise completely independent of the MEP values. Experimental results using real data shows that the proposed strategy can greatly outperform competing methods when the MEP variations are mostly conned in a sub-region of the space.
经颅磁刺激(TMS)的一个重要应用是通过对运动皮层进行空间采样,并使用表面肌电图记录运动诱发电位(MEP)来绘制皮层运动地形图。TMS映射的标准方法包括在头皮上以(通常为1厘米)网格间隔的不同位点进行重复刺激。这些映射策略耗时且响应位点通常很稀疏。此外,长时间尺度妨碍了对短暂皮层变化的测量,并且在临床人群中耐受性较差。另一种方法是利用TMS映射器的专业知识,通过使用MEP的反馈来决定刺激哪些位点,从而利用映射的稀疏性。在本研究中,我们提出了一种新颖的主动学习方法,以自动推断最佳的未来刺激位点,取代用户的专业知识。具体而言,我们提出了一种具有位点选择标准(如熵和互信息(MI))的主动高斯过程(GP)策略。所提出的方法通过将估计的MEP场(即GP均值)建模为高斯随机变量本身,扭转了通常基于熵和MI的选择标准。通过这样做,我们在位点选择标准中纳入了MEP幅度,否则这些标准将与MEP值完全无关。使用真实数据的实验结果表明,当MEP变化主要局限于空间的一个子区域时,所提出的策略能够大大优于竞争方法。