Pontifex (religio)

Multi tool use
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Haec est pagina discretiva alias paginas eiusdem fere nominis indicans.
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Pontifex (vocabulum fortasse a ponte et faciendo deductum) est magnus sacerdos in pluribus religionibus.
Pontifices Romae antiquae, quorum dux pontifex maximus appellabatur
Pontifex (Iudaismus), summus sacerdos Iudaeorum (Hebraice כהן גדול, Kohen gadol)
- In religione Christiana:
Episcopus vel Archiepiscopus, aliquando pontifex vel summus pontifex appellatus
Papa, episcopus Romae, pontifex, summus pontifex, pontifex maximus, pontifex generalis appellatus
Deus vel Christus, summus pontifex
- Pontifex dei Phthae maximus
Nexus interni
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