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movie poster

Rating: 6 stars

Tags

NWI

Seen 1 time

Seen on: 10/20/2011

View on: IMDb | TMDb

Blood River (2009)

Directed by Adam Mason

Horror

Most recently watched by sensoria, noahphex

Overview

A psychological thriller following a successful young married couple on their way to visit family. After a blowout on a desolate stretch of highway in Nevada, they head to the next town only to discover it long abandoned. Here they meet a mysterious stranger who seems to know decidedly more than he is sharing.

Length 104 minutes

Actors

Ian Duncan | Andrew Howard | Tess Panzer | Sarah Essex | Dillon Borowski | Athene Noelle

Viewing Notes

I had no idea what this movie was about and watched it cold. I’m not sure knowing more about it would have improved the experience or not. To be sure, it’s not your run-of-the-mill horror story.

My biggest complaint is the amount of time it spends on developing the story. I’ve got no problem with a drawn out story, but there just isn’t enough to hang the entire movie on.

I also have issues with the female lead’s portrayal, especially with what amounts to her condemnation. Maybe I’m just not knowledgeable enough when it comes to biblical sin.

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