@rockerfoo13: i want to sound like a Sade song

rocker
rocker
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Region: US
Thursday 09 October 2025 23:58:45 GMT
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jmoore0624
Jas :
I need your lip combo so baddddd 😩 what is it? It’s such a cute color!!!
2026-01-22 02:05:54
13
perez.valerie_
Valerie 🖤🪐🧑🏻‍🦲 :
What’s the Lip combo queen ?!? 😩
2026-01-21 21:59:20
6
erenjaeqar
Pigeon jaegar :
You give fuerza regida music video
2025-10-10 00:22:58
3
marc41569
Marc :
Great song that’s about it
2026-03-11 01:31:20
0
thereishope42
Hope core_ 42 :
2026-01-23 18:18:32
0
henrychapo
Henry :
Sade is the truth
2026-03-06 07:57:28
0
jasoneastman17
Jason :
Gorgeous! Great cheek bones too 😍
2026-03-18 08:38:27
0
urylopezyt
Ury🦅 :
You deserve this…🌷
2026-01-22 08:02:42
0
mistahh_jayy
Tito :
W song Sade is such an amazing singer
2025-10-10 00:39:04
0
ap0logy.g1rl
:p :
what contacts?? omg so gorggg
2025-10-14 10:27:08
0
xyz319954
xyz :
So Beautiful…… 🌹🥰
2025-11-14 08:45:40
0
imyourbabe82
imyourbabe82 :
Pretty 🥰
2026-01-21 17:58:32
0
pablitopsk587
pablito 😝 :
dammm❤️
2026-01-21 11:06:03
0
brooftheice
thebroskiofice :
This needs to be my S25 Samsung live wallpaper on my lock screen.
2025-10-10 20:24:16
0
polloezy
polloezy :
FAHHH
2025-10-10 00:39:03
0
herrera4396
Efrain Herrera439 :
❤❤❤
2026-01-22 15:26:50
0
7sixers6
7sixers6 :
😘😘😘
2026-01-21 18:47:37
0
johnfredyzabala
John Fredy Zabala :
🤣
2026-01-21 17:18:58
0
geogonzalez253
Geo Gonzalez253 :
😍😍🔥
2026-01-21 16:33:09
0
swanmuse00
.𖥔 ݁ ˖🦢˚. ᵎᵎ :
😳😳😳
2026-01-05 21:05:19
0
valenjoe3070
valenjoe :
🌹🌹😍
2026-01-21 14:10:31
0
pikachufire23
LifeisFireworks :
🥰🥰🥰
2026-01-01 20:30:55
0
sptmd12
sptmd12 :
👀👀👀
2025-11-23 16:51:09
0
antoniomoncayo123
antoniomoncayo123 :
🥰🥰🥰
2025-11-13 21:35:47
0
transforming_marie
❤️‍🔥 M A R I E ❤️‍🔥 :
🥰🥰🥰
2026-01-24 13:32:34
0
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