MEGAP
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  • Bridging the MEG Gap
  • Basic information
    • Core Features
    • Folder Structure
    • BIDS Format
  • Getting Started
    • Installation
    • Flat sensors
    • Extraneous Data
    • Head Position
      • Movement Check
    • Filter cHPI
    • Line noise
      • Zapline_Plus
      • Regression
    • Muscle Artifact
    • Bad Sensors
    • Squid Jumps
    • Environment Noise
    • Artifacts Removal
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Bridging the MEG Gap

NextCore Features

Last updated 7 months ago

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Traditional MEG pre-processing workflows often feel fragmented, time-consuming, and challenging to standardize, particularly when working with large datasets. MEGAP (MEG Automatic Pipeline) offers a seamless solution to these challenges. By automating tasks such as noise removal, artifact correction, and data standardization, MEGAP transforms raw MEG data into clean, consistent, and ready-to-use outputs. It addresses common limitations like manual parameter adjustments, incomplete artifact management, and outdated filtering techniques, providing researchers with an efficient and modern approach to MEG analysis.

With MEGAP, pre-processing becomes faster, more reliable, and easier to replicate—unlocking the true potential of your MEG data. Welcome to a new era of MEG pre-processing!