Radiomics and machine learning to predict aggressive type 2 endoleaks after endovascular aneurysm repair: a proof of concept
Stavros Charalambous(University of Crete), Dimitrios Tsetis(University of Crete), Apostolos H. Karantanas(University of Crete), Nikolaos Kontopodis(University of Crete), Michail E. Klontzas(University of Crete), Kostas Perisinakis(University of Crete), John Damilakis(University of Crete), Christos V. Ioannou(University of Crete), Thomas G. Maris(University of Crete)
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