An Overview of Myocardial Infarction Registries and Results from the Hungarian Myocardial Infarction Registry
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Tamas Ferenci | Levente Kovács | Hamido Fujita | Rita Fleiner | Peter Piros | Peter J. Oefner | Péter Andréka | András Jánosi | P. Oefner | A. Jánosi | H. Fujita | L. Kovács | Peter Piros | Rita Fleiner | T. Ferenci | P. Andréka
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