Just a very expensive breathing training? Risk of respiratory artefacts in functional connectivity-based real-time fMRI neurofeedback
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Peter Kirsch | Martin Fungisai Gerchen | Stephanie N. L. Schmidt | Franziska Weiss | Vera Zamoscik | Patrick Halli | P. Kirsch | S. Schmidt | P. Halli | V. Zamoscik | M. Gerchen | F. Weiss
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