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Output Catalog

ASAP is committed to accelerating the pace of discovery and informing a path to a cure for Parkinson’s disease through collaboration, research-enabling resources, and data sharing. We’ve created this catalog to showcase the research outputs and tools developed by ASAP-funded programs.

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Image distortion data from “An open-source MRI compatible frame for multimodal presurgical mapping in macaque and capuchin monkeys”

Image distortion data from Liang et al. 2024 10.1016/j.jneumeth.2024.110133.

Program: Collaborative Research Network
Team:
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EMG data from “An open-source MRI compatible frame for multimodal presurgical mapping in macaque and capuchin monkeys”

EMG data from Liang et al. 2024 10.1016/j.jneumeth.2024.110133.

Program: Collaborative Research Network
Team:
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Reach-related Single Unit Activity in the Parkinsonian Macaque

This dataset contains recordings of single-unit activity from multiple brain areas in monkeys performing a choice reaction time reaching task.

Program: Collaborative Research Network
Team:
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SoCal Kinesia and Incentivization for Parkinson’s Disease (SKIP): Active Escape

The Active Escape Task from the Socal Kinesia and Incentivization for Parkinson's Disease (SKIP) dataset. This task includes shock threats and controllability variations to explore incentive effects on movement.

Program: Collaborative Research Network
Team:
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SoCal Kinesia and Incentivization for Parkinson’s Disease (SKIP): Approach-Avoid

The Approach-Avoid Task from the Socal Kinesia and Incentivization for Parkinson's Disease (SKIP) dataset. Participants reach towards or away from emotional images based on valence, creating congruent and incongruent emotion-action conditions.

Program: Collaborative Research Network
Team:
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SoCal Kinesia and Incentivization for Parkinson’s Disease (SKIP): Ultra-High Field Functional Connectivity

Human Ultra-High Field Functional Connectivity data from the Socal Kinesia and Incentivization for Parkinson's Disease (SKIP) dataset.

Program: Collaborative Research Network
Team:
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SoCal Kinesia and Incentivization for Parkinson’s Disease (SKIP): Incentivized Reaching

Incentivized Reaching from The Socal Kinesia and Incentivization for Parkinson's Disease (SKIP) dataset, which focuses on human movement and the modulatory impact of incentivization, specifically in the context of Parkinson's disease.

Program: Collaborative Research Network
Team:
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Data for outlier-waveform-detection of internal globus pallidus (GPi) activity

This repository contains data based on neuronal recordings from two monkeys (G and I, in the pre- and post-MPTP states) that serve as input to the code provided at https://github.com/turner-lab-pitt/outlier-waveform-detection.

Program: Collaborative Research Network
Team:
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FSCV dopamine, spike, and LFP data used for validating chronic electrode implanted in aseptic semi-sealed chamber

FSCV dopamine, spike, and LFP data used for validating chronic electrode implanted in aseptic semi-sealed chamber in Choi et al. 2025 JNeurosciMethods.

Program: Collaborative Research Network
Team:
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MatLab Code and Source Data for Analyzing Reach-related Single Unit Activity in the Internal Segment of the Globus Pallidus in Parkinsonian Macaque

Source data stored in a non-proprietary format, all MATLAB code, along with histology data prepared for the publication of our study on movement-related activity in the internal globus pallidus of parkinsonian macaques (Kase et al. 2025).

Program: Collaborative Research Network
Team:
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Aligning Science Across Parkinson's
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