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Dynamic structure of motor cortical neuron co-activity carries behaviorally relevant information

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DataONE2022-12-06 更新2025-07-19 收录
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(This is the dataset used in Dynamic Structure Of Motor Cortical Neuron Co-Activity Carries Behaviorally Relevant Information, Abstract below) Skillful, voluntary movements are underpinned by computations performed by networks of interconnected neurons in the primary motor cortex (M1). Computations are reflected by patterns of co-activity between neurons. Using pairwise spike time statistics, co-activity can be summarized as a functional network (FN). Here, we show that the structure of FNs constructed from an instructed-delay reach task in non-human primates are behaviorally specific: low dimensional embedding and graph alignment scores show that FNs constructed from closer target reach directions are also closer in network space. Using short intervals across a trial we constructed temporal FNs and found that temporal FNs traverse a low-dimensional subspace in a reach-specific trajectory. Alignment scores show that FNs become separable and correspondingly decodable shortly after the in..., We thank Jacob Reimer, Zach Haga, and Dawn Paulsen for collecting the data used in this work. Data collection and reaching task We used previously published datasets from two macaques, Monkey Rs and Monkey Rj, performing an instructed center-out reaching task (Hatsopoulos et al., 2004; O’Leary & Hatsopoulos, 2006). Subjects were trained to hold a cursor on a center target presented on a video screen using a 2D arm exoskeleton  (KINARM, Kingston, Ontario). One of eight radially positioned peripheral targets was then presented and served as an Instruction cue during which time the subjects were required to keep holding the cursor on the center target. After a 1 second delay period, the peripheral target began blinking (Go cue) instructing the subjects to move the cursor to the peripheral target (Figure 1A). Trial start was 0.5 s before the instruction cue appeared, and trial termination was 0.5 s after the peripheral target was acquired. Trial inclusion depended upon target acquisitio..., This is the dataset used in: Dynamic Structure Of Motor Cortical Neuron Co-Activity Carries Behaviorally Relevant Informationhttps://doi.org/10.1101/2022.05.18.492501 Find associated software here: https://github.com/hatsopoulos-lab/macaque-dynamic_functional_networks.gitFind data structure and example functions (including how to construct Functional Networks) under:https://github.com/hatsopoulos-lab/macaque-dynamic_functional_networks/center-out/run_data_demo.ipynbThe files are in .pkl format.You can load it using: data = loadPickle(filepath)'data' is structured in the following way:data -> (list)|--- data[direction] -> (dict) corresponding to targets spatially located around a center target                keys:['DirectionIndex', 'DirectionDegrees', 'numTrials', 'instructionTimes', 'goTimes', 'startMv', 'endMv', 'numCh', 'binwin', 'StartTimes', 'trialData'])    |    --- ['trialData'] -> (list) list of trials within that direction        |        --- ['trialData'][trial] -> ...
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