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NeoRHDN - Translations - Translation Information

Neon Genesis Evangelion Shito Ikusei
Wonderswan
Game Description
Based on the highly influential anime series, Neon Genesis Evangelion, the game stars Ryoji Kaji who is tasked with raising an angel into its final form.

In the game you can raise up your angel like a digital pet and explore NERV headquarters.
Talk to characters from the series such as Shinji, Asuka, Misato, and Rei; and view special events based on the anime as well as new original scenarios.

Once you've helped your angel reach maturity and leveled up its stats, you can battle it against other angels from the main menu. Battles play out like a card game and can be played in both single-player and multiplayer modes.

With 20+ angels to raise, tons of Tokyo-3 to explore, and multiple endings; Shito Ikusei is a new way to experience the world of Evangelion.
Translation Description
The translation references the official English subtitles from the Netflix release. An accompanying walkthrough has also been written.

The patch is available in both .xDelta and .IPS formats. View the readme file for detailed install instructions.

The source code & compiled tool written for this game, covering both text and image extraction/repacking can be found on Github.
GameNeon Genesis Evangelion Shito Ikusei
Released ByAnime Game Translations Team
LanguageEnglish
StatusFully Playable
PlatformWonderswan
LicenseN/A
Patching InformationNo Special Requirements
GenreSimulation
Published ByBandai
Game Date22 July 1999
Patch Version1.0
Release Date30 March 2021
ReadmeReadme File
Source
YoutubeN/A

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