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High-probability grants
According to our matching algorithm, shruti dave is the likely recipient of the following grants.
Years |
Recipients |
Code |
Title / Keywords |
Matching score |
2021 |
Dave, Shruti |
F32Activity Code Description: To provide postdoctoral research training to individuals to broaden their scientific background and extend their potential for research in specified health-related areas. |
Optimizing Noninvasive Modulation of Prediction and Episodic Memory Networks Via Cerebellar Stimulation @ Northwestern University At Chicago
PROJECT SUMMARY/ABSTRACT The lateral cerebellum (Crus I/II) interacts with two dissociable large-scale brain networks ? the executive control (ECN) and default mode networks (DMN), which support distinct cognitive functions (e.g., prediction versus episodic memory, respectively). The proposed research aims to identify noninvasive brain stimulation parameters that cause this area of the cerebellum to interact more heavily with either network, thereby biasing lateral cerebellar participation in network-specific cognitive functions critical to adult humans. Because the ECN and DMN have been shown to generate different endogenous rhythms of brain activity, the approach of the proposed project is to vary the rhythms at which repetitive transcranial magnetic stimulation (rTMS) is delivered. We hypothesize that matching rhythmic stimulation to network-specific endogenous activity will bias the lateral cerebellum to interact with the network having the corresponding intrinsic frequency. Resting-state fMRI and EEG will be used to assess network-level consequences of manipulating stimulation rhythm. We further aim to determine how stimulation-modulated brain activity influences network-related cognitive function. We hypothesize that changes in the ECN will correspond to changes in prediction-related behavior and brain activity, whereas changes in the DMN will correspond to changes in episodic memory behavior and brain activity. This research and training plan will thus merge noninvasive stimulation methods with resting-state and task-based fMRI and EEG measures of brain and cognitive function. The proposed studies will provide an experimental test of network-specific neuromodulation via a shared cerebellar hub, which could motivate procedures to enhance specific cognitive functions through noninvasive brain stimulation.
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