Site specific prediction of atherosclerotic plaque progression using computational biomechanics and machine learning
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Dimitrios I. Fotiadis | Panagiota I. Tsompou | Antonis I. Sakellarios | Ioannis O. Andrikos | Vassiliki I. Kigka | Lampros K. Michalis | Savvas Kyriakidis | Panagiota Tsompou | Panagiotis Siogkas | Ioannis Andrikos | D. Fotiadis | A. Sakellarios | L. Michalis | P. Siogkas | S. Kyriakidis
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