Hunting for necrosis in the shadows of intravascular ultrasound
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Nassir Navab | Peter B. Noël | Ajoy Kumar Ray | Andrew F. Laine | Athanasios Karamalis | Abouzar Eslami | Debdoot Sheet | Jyotirmoy Chatterjee | Amin Katouzian | Stephane G. Carlier | Masataka Nakano | Renu Virmani | A. Laine | Nassir Navab | R. Virmani | M. Nakano | P. Noël | A. Ray | S. Carlier | J. Chatterjee | A. Katouzian | A. Eslami | A. Karamalis | D. Sheet
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