Lux veritatis

Multi tool use

Ephesi Domus quae dicitur Virginis Mariae
Lux veritatis est encyclica epistula papae Pii XI. Haec encyclica, die 25 Decembris 1931 promulgata, Concilio Ephesino et proclamationi dogmae Virginis Mariae ut mater Dei millesimo quingentesimo anno iubilaei tempore dicata est.
Nexus externi |
Textus Encyclicae .mw-parser-output .existinglinksgray a,.mw-parser-output .existinglinksgray a:visited{color:gray}.mw-parser-output .existinglinksgray a.new{color:#ba0000}.mw-parser-output .existinglinksgray a.new:visited{color:#a55858}
(Anglice)
Textus Encyclicae
(Italiane)
.mw-parser-output .stipula{padding:3px;background:#F7F8FF;border:1px solid grey;margin:auto}.mw-parser-output .stipula td.cell1{background:transparent;color:white}

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Haec stipula ad religionem spectat. Amplifica, si potes!
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Epistulae Encyclicae Pii XI
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Ubi arcano Dei consilio |
Rerum omnium perturbationem |
Studiorum ducem |
Ecclesiam Dei admirabili |
Maximam gravissimamque |
Quas primas |
Rerum Ecclesiae |
Rite expiatis |
Iniquis afflictisque |
Mortalium animos |
Miserentissimus redemptor |
Rerum orientalium |
Mens nostra |
Divini illius magistri |
Ad salutem humani |
Casti connubii |
Quadragesimo anno |
Non abbiamo bisogno |
Nova impendet |
Lux veritatis |
Caritate Christi compulsi |
Acerba animi |
Dilectissima nobis |
Ad catholici sacerdotii |
Vigilanti cura |
Mit brennender Sorge |
Firmissimam Constantiam |
Divini redemptoris |
Ingravescentibus malis
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