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Sasa v0.16.1 Released

Just a bugfix release, mainly for the MIME parsing. Changelog:

* added support for 8bit transfer encoding, even if not supported by .NET <4.5
* support content types whose prologue is empty
* added support for arbitrarily nested multipart messages
* added alternative to Enum.HasFlag that invokes Sasa's faster enum code

As usual, online docs are available, or the a CHM file is available on Sourceforge.

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