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Rating: 8 stars

Tags

werewolf

Seen 1 time

Seen on: 01/01/2011 (rewatch)

View on: IMDb | TMDb

An American Werewolf in London (1981)

Directed by John Landis

Horror | Comedy | Romance

Most recently watched by jenerator, jenerator, sleestakk

Overview

American tourists David and Jack are savaged by an unidentified vicious animal whilst hiking on the Yorkshire Moors. Retiring to the home of a beautiful nurse to recuperate, David soon experiences disturbing changes to his mind and body.

Rated R | Length 97 minutes

Actors

David Schofield | Alan Ford | Griffin Dunne | John Landis | Frank Oz | Sydney Bromley | David Naughton | Jenny Agutter | John Woodvine | Lila Kaye | Joe Belcher | Brian Glover | Rik Mayall | Sean Baker | Paddy Ryan | Anne-Marie Davies | Albert Moses | Jim Henson | Dave Goelz | Christine Hargreaves | John Salthouse | Lucien Morgan | Linzi Drew | John Owens | Don McKillop | Gordon Sterne | Michael Carter | Paul Kember | Elizabeth Bradley | George Oliver | Frank Singuineau | George Hilsdon | John Altman | Paula Jacobs | Geoffrey Burridge | Peter Ellis | Keith Hodiak | John Cannon | Mark Fisher | Cynthia Powell | Brenda Cavendish | Denis Fraser | Mary Tempest | Michele Brisigotti | Colin Fernandes | Claudine Bowyer | Johanna Crayden | Nina Carter | Christopher Scoular | Will Leighton | Rufus Deakin | Lesley Ward | Bob Babenia | Dave Cooper | Roger Rowland | Gerry Lewis | Denise Stephens | Susan Spencer | Ken Sicklen | Simon van Collem

Viewing Notes

First movie watched of 2011: An American Werewolf in London (1981). Wanted it to be a revisit and on blu-ray. This was perfect. Love this movie and watching it now takes me back to those days seeing it during its first run on HBO.

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