https://www.selleckchem.com/products/sgc-0946.html A673 tumor cells had significantly reduced number and viability levels when treated with AgCl-NPs, with reductions of 65.05% and 99.17%, respectively, whereas with Ag/AgCl-NP treatment, reductions of 65.53% and 92.51% were observed, respectively. When treated with silver-based nanoparticles, A673 cells also showed a significant increase in ROS production and loss of mitochondrial membrane potential, which culminated in an increase in the percentage of apoptosis among the population. Lysosomal damage was also observed when A673 cells were treated with the highest concentration of AgCl-NPs. In conclusion, the results showed that both AgCl-NPs and Ag/AgCl-NPs had some antitumor activity with minimal effects against healthy cells, which demonstrated the possibility of their use in cancer therapy. The objective of the study is to identify phase coupling patterns that are shared across subjects via a machine learning approach that utilises source space MEG phase coupling data from a Working Memory (WM) task. Indeed, phase coupling of neural oscillations is putatively a key factor for communication between distant brain areas and it is therefore crucial in performing cognitive tasks, including WM. Previous studies investigating phase coupling during cognitive tasks have often focused on a few a priori selected brain areas or a specific frequency band and the need for data-driven approaches has been recognised. Machine learning techniques have emerged as valuable tools for the analysis of neuroimaging data since they catch fine-grained differences in the multivariate signal distribution. Here, we expect that these techniques applied to MEG phase couplings can reveal WM related processes that are shared across individuals. We analysed WM data collected as part of the Human Connectome Project. The MEG dask relevant phase coupling patterns.We address damping of a Goldstone spin-rotation mode emerging in a quantum Hall ferromag