Impact of prospective motion correction, distortion correction methods and large vein bias on the spatial accuracy of cortical laminar fMRI at 9.4 Tesla
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Klaus Scheffler | Myung-Ho In | Rolf Pohmann | Jonathan R. Polimeni | Jonas Bause | Johannes Stelzer | Philipp Ehses | Ali Aghaeifar | Pablo Kraemer-Fernandez | Eric Lacosse | J. Polimeni | K. Scheffler | P. Ehses | R. Pohmann | J. Bause | J. Stelzer | M. In | Pablo Kraemer-Fernandez | A. Aghaeifar | E. Lacosse | Johannes Stelzer | Eric Lacosse
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