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Python code for the manuscript "Using normative modeling and machine learning for detecting mild traumatic brain injury from magnetoencephalography data" by Itälinna, Kaltiainen, Forss, Liljeström and Parkkonen.
This research was supported by European Research Council grant #658578, Neurocenter Finland (Functional Brain Imaging Biobank pilot project) and European Commission Regional Development Fund REACT-EU (#309487).
magnetoencephalography, MEG, machine learning, traumatic brain injury, normative modeling
magnetoencephalography, MEG, machine learning, traumatic brain injury, normative modeling
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