The possible role of machine learning in detection of increased cardiovascular risk patients – KSC MR Study (design)
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J. Paralič | M. Kmec | J. Majerník | J. Fedačko | D. Pella | L. Dimunová | P. Butka | M. Mareková | P. Jarčuška | M. Rabajdová | F. Babič | Š. Tóth | G. Valočík | Lukáš Plachý | D. Pella | J. Gonsorcík | F. Sabol | M. Jankajová | J. Luczy | S. Timková | A. Putrya | Zuzana Pella | Andrea Kirschová | M. Hunavy | Bibiana Kafkova | Ivan Doci | M. Dvorožňáková | Z. Paralicová | Jakub Janosik | Ján Paralič | Z. Paraličová | L. Plachý | M. Huňavý | J. Fedacko
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