Eutropia (filia Constantii I)

Multi tool use
Eutropia (mortua anno 350 vel 351) filia imperatoris Romana fuit.
Familia |
Eutropia filia Constantii I et Flaviae Maximianae Theodorae, huius secundae uxoris fuit. Itaque et semisoror Constantini I imperatoris erat. Habuit tres fratres Flavium Hannibalianum, Flavium Iulium Dalmatium, Flavium Iulium Constantium et duas sorores Flaviam Iuliam Constantiam et Anastasiam.
Vita |
Virius Nepotianus, consul anni 336 eam uxorem duxit. Filius eorum Flavius Popilius Virius Nepotianus erat, qui anno 350 Augustus proclamatus a Magnentio usurpatore necatus est. Et Eutropia tum caesa est[1].
Notae |
↑ Der Neue Pauly, Stuttgardiae 1999, T. 4, c. 322
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