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Rating: 7 stars

Tags

Japan

Seen 1 time

Seen on: 03/31/2009

View on: IMDb | TMDb

Meatball Machine (2006)

Directed by Yudai Yamaguchi, Jun'ichi Yamamoto

Science Fiction | Horror

Most recently watched by sleestakk

Overview

Capable of making bio-mechanical weapons out of human flesh, alien parasites grotesquely invade the Earth, turning their hosts into maniacal killers who seek and destroy each other to the bloody death! And yes, it s also a human love story, even though the budding romantics are infested with slimy, tumor-like globules.

Rated NR | Length 90 minutes

Actors

Tarô Suwa | Toru Tezuka | Issey Takahashi | Ayano Yamamoto | Shôichirô Masumoto | Aoba Kawai | Takashi Naha | Kenichi Kawasaki | Shuya Yoshimoto

Viewing Notes

This Japanese ultra-gore, sci-fi flick borrows from Organ and lends to Tokyo Gore Police. Not bad not terrific totally watchable and yet completely silly. I only wished they used more realistic blood in these films.

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