Articolul precedent |
Articolul urmator |
1193 8 |
Ultima descărcare din IBN: 2022-02-10 18:44 |
SM ISO690:2012 MAGARIU, Galina, VERLAN, Tatiana. Variety of stroke prediction models, risk factors and underlying data sets. In: Conference of Mathematical Society of the Republic of Moldova, 28 iunie - 2 iulie 2017, Chişinău. Chişinău: Centrul Editorial-Poligrafic al USM, 2017, 4, pp. 523-528. ISBN 978-9975-71-915-5. |
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Conference of Mathematical Society of the Republic of Moldova 4, 2017 |
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Conferința "Conference of Mathematical Society of the Republic of Moldova" Chişinău, Moldova, 28 iunie - 2 iulie 2017 | |||||
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Pag. 523-528 | |||||
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This work is devoted to the analyses of variety of stroke prediction models, risk factors and underlying data sets taken into account. The aim is to define the most appropriate ones for stroke prediction model construction in the conditions of Moldova clinics and population. |
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Cuvinte-cheie stroke prediction models, underlying data set, NIHSS score, Bartel scale, risk factors |
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