Ecclesia Pentecostalis

Multi tool use
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Haec pagina nondum stipula est. Oportet intra sex menses corrigatur. Etiam in minimis apud Vicipaediam paginis necesse est contineantur:
Titulus in primo exordio typis crassioribus repetitus Comprehensio (200 vel plurium litterarum) quae rem apte describat Nexus extra-Vicipaedianus (sive et fons bibliographicus) qui et titulum et rem ipsam satis corroboret Nexus interni caerulei ex hac pagina et in hanc paginam ducentes; categoriae caeruleae (quibus absentibus formula {{Dubcat}} ponatur); pagina annexa apud Wikidata (aut formula {{Nexus absunt}}) Cetera hac encyclopaedia digna, velut descriptio (explicationes, historica, exempla); imago necnon titulus suffixus; ceteri nexus externi siqui utiles sint; bibliographia.
- → Interpretationes vernaculae
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Ecclesia Pentecostalis sive Pentecostalismus Christianus motus est qui emphasin in Sancti Spiritus acceptione ponit. Eius origo saeculo XX ineunte facta est, cum Pentecostalismus a Protestantico ramo se separaret. Post rapidi incrementi saeculum hic motus secundum aestimationem quandam 200 milliones fidelium comprehendit.
Maxima Pentecostalis denominatio Concilia Dei est.
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- Pentecoste
- Renovatio Charismatica Catholica
- Congregatio Christiana in Brasilia
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