@ZhiwenNeuron

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postdoc at Steinmetz lab. Neuropixels, widefield imaging, connectivity, brain states, travelling waves
Have you wondered whether fast spatiotemporal brain dynamics like traveling waves are local, confined to just one region, or whether they are shared across many regions simultaneously? The latest work from @ZhiwenNeuron in my lab has the answer! Thread -
https://www.biorxiv.org/content/10.1101/2023.12.07.570517
Posterior parietal cortex (PPC) in mice is an overloaded circuit. It has been ascribed a multitude of functions, but often one function per paper, with location references of varying precision. To sort all of this out, the great Riichiro Hira used (a) precision functional mapping of cortical areas, (b) quantitative analysis, (c) an array of behavior rigs that he designed and built, and (d) the Diesel2p https://www.nature.com/articles/s41467-021-26736-4 to localize various PPC functions, and analyze the interactions among various neighboring areas within and adjacent to PPC. The result is this beautiful report: https://www.biorxiv.org/content/10.1101/2023.08.27.555017v1
Diesel2p mesoscope with dual independent scan engines for flexible capture of dynamics in distributed neural circuitry - Nature Communications

Imaging of neuronal activity across distant brain regions is challenging. Here, the authors introduce a two-photon microscope with two independently controlled scan engines, and demonstrate calcium imaging with subcellular resolution in brain regions up to 7 mm apart simultaneously.

Nature
Introducing Neuropixels Ultra, a new probe with >10x site density: an implantable voltage camera capturing complete planar images of neurons' electrical fields in vivo! ⬆️ spike sorting yield, ⬆️ detection of small fields, and ⬆️ cell type identification.🧵
https://www.biorxiv.org/content/10.1101/2023.08.23.554527

Neural manifold analysis of brain circuit dynamics in health and disease. Mitchell-Heggs, Prado et al, JCNS 2022.

https://link.springer.com/article/10.1007/s10827-022-00839-3

#neuroscience #neuralmanifolds #compneuro #neuralcircuits

Neural manifold analysis of brain circuit dynamics in health and disease - Journal of Computational Neuroscience

Recent developments in experimental neuroscience make it possible to simultaneously record the activity of thousands of neurons. However, the development of analysis approaches for such large-scale neural recordings have been slower than those applicable to single-cell experiments. One approach that has gained recent popularity is neural manifold learning. This approach takes advantage of the fact that often, even though neural datasets may be very high dimensional, the dynamics of neural activity tends to traverse a much lower-dimensional space. The topological structures formed by these low-dimensional neural subspaces are referred to as “neural manifolds”, and may potentially provide insight linking neural circuit dynamics with cognitive function and behavioral performance. In this paper we review a number of linear and non-linear approaches to neural manifold learning, including principal component analysis (PCA), multi-dimensional scaling (MDS), Isomap, locally linear embedding (LLE), Laplacian eigenmaps (LEM), t-SNE, and uniform manifold approximation and projection (UMAP). We outline these methods under a common mathematical nomenclature, and compare their advantages and disadvantages with respect to their use for neural data analysis. We apply them to a number of datasets from published literature, comparing the manifolds that result from their application to hippocampal place cells, motor cortical neurons during a reaching task, and prefrontal cortical neurons during a multi-behavior task. We find that in many circumstances linear algorithms produce similar results to non-linear methods, although in particular cases where the behavioral complexity is greater, non-linear methods tend to find lower-dimensional manifolds, at the possible expense of interpretability. We demonstrate that these methods are applicable to the study of neurological disorders through simulation of a mouse model of Alzheimer’s Disease, and speculate that neural manifold analysis may help us to understand the circuit-level consequences of molecular and cellular neuropathology.

SpringerLink
Trying this out.