In order to understand brain mechanisms and functionalities, neural probes with electrode arrays are incorporated into mice and Local Field Potentials (LFP) are recorded indicating the activities of groups of neurons. Next, the brain activity can be analyzed in terms of Current Source Density (CSD), which are computed via the LFP. In this paper, we propose the analysis of the somatosensory cortex signals of a mouse applying Blind Source Separation (BSS) schemes. In contrast to the standard CSD, we show that signal separation using BSS schemes can be useful to identify groups of neurons of different layers of the somatosensory cortex that are associated. Another contribution of this work is to propose the use of the PARAFAC model on the analysis of somatosensory cortex signals, whose results are consistent with results obtained via Spatiotemporal Independent Component Analysis (stICA).