@cristovaovieiraoliveira: A história do Lighthouse Family e como esta inglesa dupla fez sucesso no Brasil com a música Loving every minute #lighthousefamily #soft #house #jazz #90s #anos90 #musica

Cristóvão Vieira
Cristóvão Vieira
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Region: BR
Thursday 25 January 2024 16:05:15 GMT
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pedrohbpires
Pedro H B Pires :
Ah para cara Lighthouse Family, me arrepiou !
2024-01-25 17:33:42
80
feliciofernandes1
Felicio Fernandes :
Vibe tipo rádio Antena 1. 😁😎
2024-01-26 17:16:19
94
ape.467
Apê 467 ✨ :
Só conhecia as músicas, mas não conhecia a dupla 👏🏼👏🏼
2024-01-25 20:57:41
22
andrea.aquinod
Andréa Aquino :
Seu canal é muito top!! amo seus vídeos ❤️
2024-01-25 23:50:58
8
adilson.couto
Adilson :
não tem como ouvir uma rádio adulta sem a presença deles🥰🥰🥰
2024-01-25 16:16:13
52
andrefilho71
André S. Filho :
As músicas da dupla são gostosas de escutar, dá até para dançar só, dormir ao embalo da música da dupla...
2024-01-25 16:47:38
16
almeidaperegrino240
O peregrino :
O VOCALIST LEMBRA MUITO O BOCHECHA NO INICIO DA CARREIRA , PARECE ATE IRMÃO 😎
2024-01-26 04:45:47
6
angel_azevedo80
Angélica Aschenbrenn :
aiii, como eu amaaaavaaaaa
2024-01-26 21:22:35
2
cjason06
cjason06 :
Bacana demais. Banda que era espetacular. Vídeo simplesmente um show, como sempre
2024-01-25 21:26:00
6
djjosesantos0
DJ JOSE SANTOS :
Em portugal liderou muito tempo.
2024-02-03 04:57:46
1
mr.madman17
Mr Madman :
Faz do Savage Garden 👍!
2024-01-25 17:09:52
5
valery29a
Val :
adoro ❤️
2024-01-27 18:33:48
1
vivireiss900
Vivi :
Adoro! 😍👏👏👏👏👏
2024-02-24 14:20:02
1
gina.monteiro.gin
Gina monteiro Gina :
amo eles com certeza high linda de torre de babel internacional
2024-02-15 08:15:15
1
elainesouza2036
elainesouza2036 :
Nuncaaaaa saiu da minha playlist sempre ouço da Antena 1🥰🥰🥰
2024-01-25 20:10:02
6
mar78_ferreiro
Mar Ferreiro :
Incomparável ❤️
2024-02-07 01:05:04
1
lucyrodrigues405
lucyrodrigues405 :
top demais
2024-01-30 03:29:38
1
mar78_ferreiro
Mar Ferreiro :
Belos ❤
2024-02-07 01:05:11
1
oimaisumdiadevida
Carolina :
Amooooooo!!! 🥰❤️
2024-01-26 05:48:20
1
priscila_athaides
Priscila Zamboni :
o tik tok tá lendo a minha mente q eu acordei com essa musica na cabeça hj
2024-01-26 09:17:19
3
vilmafafavieira
vilfafa :
adoro
2024-01-26 15:40:55
1
anaritapereira66
ANA RITA PEREIRA :
Amava🥰
2024-02-24 22:25:45
1
patricialbfgkn
Patricialbfgkn :
cdd
2024-01-25 23:40:26
1
agnaldo49
Agnaldo49 :
show amo seus vídeos 👏👏👏👏💘💘
2024-01-27 02:06:40
2
leandroribeirosena
Leandro Ribeiro :
Amo 🥰
2024-01-26 14:19:21
1
To see more videos from user @cristovaovieiraoliveira, please go to the Tikwm homepage.

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