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Abstract Neuroscience has long been an essential driver of progress in artificial intelligence (AI). We propose that to accelerate progress in AI, we must invest in fundamental research in NeuroAI. A core component of this is the embodied Turing test, which challenges AI animal models to interact with the sensorimotor world at skill levels akin to their living counterparts. The embodied Turing test shifts the focus from those capabilities like game playing and language that are especially well-developed or uniquely human to those capabilities – inherited from over 500 million years of evolution – that are shared with all animals. Building models that can pass the embodied Turing test will provide a roadmap for the next generation of AI.more » « less
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Chen, Shuonan; Loper, Jackson; Chen, Xiaoyin; Vaughan, Alex; Zador, Anthony M.; Paninski, Liam (, PLOS Computational Biology)Robinson, Emma Claire (Ed.)Modern spatial transcriptomics methods can target thousands of different types of RNA transcripts in a single slice of tissue. Many biological applications demand a high spatial density of transcripts relative to the imaging resolution, leading to partial mixing of transcript rolonies in many voxels; unfortunately, current analysis methods do not perform robustly in this highly-mixed setting. Here we develop a new analysis approach, BARcode DEmixing through Non-negative Spatial Regression (BarDensr): we start with a generative model of the physical process that leads to the observed image data and then apply sparse convex optimization methods to estimate the underlying (demixed) rolony densities. We apply BarDensr to simulated and real data and find that it achieves state of the art signal recovery, particularly in densely-labeled regions or data with low spatial resolution. Finally, BarDensr is fast and parallelizable. We provide open-source code as well as an implementation for the ‘NeuroCAAS’ cloud platform.more » « less
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Biderman, Dan; Whiteway, Matthew R; Hurwitz, Cole; Greenspan, Nicholas; Lee, Robert S; Vishnubhotla, Ankit; Warren, Richard; Pedraja, Federico; Noone, Dillon; Schartner, Michael M; et al (, Nature Methods)
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Abbott, Larry F.; Angelaki, Dora E.; Carandini, Matteo; Churchland, Anne K.; Dan, Yang; Dayan, Peter; Deneve, Sophie; Fiete, Ila; Ganguli, Surya; Harris, Kenneth D.; et al (, Neuron)
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