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@abdalmajeedrashid: مولاي الخامنئي عندما يستذكر الشهداء دموعك غالية مولاي💔#روحي_لك_الفداء_ياسيدي_ومولاي🥺💔 🇮🇷🇮🇶🫡
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Monday 23 June 2025 09:56:34 GMT
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مرتضى السراي💕 :
2026-03-01 03:28:49
1
رحيم العايدي :
🥰🥰🥰
2025-08-19 14:23:01
0
سجاد طباخ :
😇🥺🥺🥺🥺😭😭😭😭
2026-03-03 19:01:00
0
ابـو جـعفـر الـمـالكـي :
😭😭😭😭😭😭
2026-03-01 05:43:56
0
جعفر السعيدي :
🥺🥺🥺
2026-03-06 08:47:00
0
صوفي الحنين :
🥰🥰🥰
2025-06-23 13:43:20
0
محمد نجم عبد :
😭😭😭
2026-04-07 20:23:35
0
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