Multimodality fusion imaging to guide percutaneous sinus venosus atrial septal defect closure.

Eur Heart J

Department of Congenital Heart Diseases, Centre de Référence Cardiopathies Congénitales Complexes M3C, Hôpital Marie Lannelongue, Groupe Hospitalier Paris Saint Joseph, Université Paris-Sud, 133 avenue de la résistance, 92350 Le Plessis Robinson, France.

Published: December 2020


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