Browsing by Author "Chang, Andersen"
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- Some of the metrics are blocked by yourconsent settingsFunctional connectomics reveals general wiring rule in mouse visual cortex(2023-03-14)
;Ding, Zhuokun ;Fahey, Paul G. ;Papadopoulos, Stelios ;Wang, Eric ;Celii, Brendan ;Papadopoulos, Christos ;Kunin, Alexander B. ;Chang, Andersen ;Fu, Jiakun ;Ding, Zhiwei ;Patel, Saumil ;Ponder, Kayla ;Bae, J. Alexander ;Bodor, Agnes L. ;Brittain, Derrick ;Buchanan, JoAnn ;Bumbarger, Daniel J. ;Castro, Manuel A. ;Cobos, Erick ;Dorkenwald, Sven ;Elabbady, Leila ;Halageri, Akhilesh ;Jia, Zhen ;Jordan, Chris ;Kapner, Dan ;Kemnitz, Nico ;Kinn, Sam ;Lee, Kisuk ;Li, Kai ;Lu, Ran ;Macrina, Thomas ;Mahalingam, Gayathri ;Mitchell, Eric ;Mondal, Shanka Subhra ;Mu, Shang ;Nehoran, Barak ;Popovych, Sergiy ;Schneider-Mizell, Casey M. ;Silversmith, William ;Takeno, Marc ;Torres, Russel ;Turner, Nicholas L. ;Wong, William ;Wu, Jingpeng ;Yin, Wenjing ;Yu, Szi-Chieh ;Froudarakis, Emmanouil; ;Seung, H. Sebastian ;Collman, Forrest ;da Costa, Nuno Maçarico ;Reid, R. Clay ;Walker, Edgar Y. ;Pitkow, Xaq ;Reimer, JacobTolias, Andreas S.To understand how the neocortex underlies our ability to perceive, think, and act, it is important to study the relationship between circuit connectivity and function. Previous research has shown that excitatory neurons in layer 2/3 of the primary visual cortex of mice with similar response properties are more likely to form connections. However, technical challenges of combining synaptic connectivity and functional measurements have limited these studies to few, highly local connections. Utilizing the millimeter scale and nanometer resolution of the MICrONS dataset, we studied the connectivity-function relationship in excitatory neurons of the mouse visual cortex across interlaminar and interarea projections, assessing connection selectivity at the coarse axon trajectory and fine synaptic formation levels. A digital twin model of this mouse, that accurately predicted responses to arbitrary video stimuli, enabled a comprehensive characterization of the function of neurons. We found that neurons with highly correlated responses to natural videos tended to be connected with each other, not only within the same cortical area but also across multiple layers and visual areas, including feedforward and feedback connections, whereas we did not find that orientation preference predicted connectivity. The digital twin model separated each neuron's tuning into a feature component (what the neuron responds to) and a spatial component (where the neuron's receptive field is located). We show that the feature, but not the spatial component, predicted which neurons were connected at the fine synaptic scale. Together, our results demonstrate the "like-to-like" connectivity rule generalizes to multiple connection types, and the rich MICrONS dataset is suitable to further refine a mechanistic understanding of circuit structure and function. - Some of the metrics are blocked by yourconsent settingsTowards a Foundation Model of the Mouse Visual Cortex(2023-03-24)
;Wang, Eric Y. ;Fahey, Paul G ;Ponder, Kayla ;Ding, Zhuokun ;Chang, Andersen ;Muhammad, Taliah ;Patel, Saumil ;Ding, Zhiwei ;Tran, Dat ;Fu, Jiakun ;Papadopoulos, Stelios ;Franke, Katrin ;Ecker, Alexander S. ;Reimer, Jacob ;Pitkow, Xaq; Tolias, Andreas S.Understanding the brain's perception algorithm is a highly intricate problem, as the inherent complexity of sensory inputs and the brain's nonlinear processing make characterizing sensory representations difficult. Recent studies have shown that functional models capable of predicting large-scale neuronal activity in response to arbitrary sensory input can be powerful tools for characterizing neuronal representations by enabling unlimited in silico experiments. However, accurately modeling responses to dynamic and ecologically relevant inputs like videos remains challenging, particularly when generalizing to new stimulus domains outside the training distribution. Inspired by recent breakthroughs in artificial intelligence, where foundation models-trained on vast quantities of data-have demonstrated remarkable capabilities and generalization, we developed a "foundation model" of the mouse visual cortex: a deep neural network trained on large amounts of neuronal responses to ecological videos from multiple visual cortical areas and mice. The model accurately predicted neuronal responses not only to natural videos but also to various new stimulus domains, such as coherent moving dots and noise patterns, as verified in vivo , underscoring its generalization abilities. The foundation model could also be adapted to new mice with minimal natural movie training data. We applied the foundation model to the MICrONS dataset: a study of the brain that integrates structure with function at unprecedented scale, containing nanometer-scale morphology, connectivity with >500,000,000 synapses, and function of >70,000 neurons within a ∼ 1mm 3 volume spanning multiple areas of the mouse visual cortex. This accurate functional model of the MI-CrONS data opens the possibility for a systematic characterization of the relationship between circuit structure and function. By precisely capturing the response properties of the visual cortex and generalizing to new stimulus domains and mice, foundation models can pave the way for a deeper understanding of visual computation.