Solving Inaccuracies in Anatomical Models for Electrocardiographic Inverse Problem Resolution by Maximizing Reconstruction Quality
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Andreu M. Climent | Miguel Rodrigo | Alejandro Liberos | Ismael Hernández-Romero | Felipe Atienza | Ángel Arenal | Javier Bermejo | Francisco Fernández-Avilés | Maria S. Guillem | I. Hernández-Romero | F. Fernández‐Avilés | A. Climent | F. Atienza | M. Guillem | J. Bermejo | Á. Arenal | M. Rodrigo | A. Liberos
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