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Sources for the video "Lucy and the Ten Percent Myth"

Here are the sources for my video "Lucy and the Ten Percent Myth", which can be seen here.

The Fair Use Clause:  Copyright Act of 1976, 17 U.S.C. § 107.

Evolutionary argument against this myth:
Rosenberg, K.R., "The Evolution of Modern Childbirth" in American Journal of Physical Anthropology 35, 1992, p. 89–124

Energy consumption argument against this myth:
Swaminathan, Nikhil (29 April 2008). "Why Does the Brain Need So Much Power?". Scientific American. Scientific American, a Division of Nature America, Inc. Retrieved 19 November 2010.

Twenty Percent energy usage:
Carpenter's Human Neuroanatomy by Malcolm B. Carpenter, Oliver Smith Strong, and Raymond Carl Truex; Ch. 1

Evidence for 100% use of the brain:
Radford, Benjamin (8 February 2000). "The Ten-Percent Myth".
"Do People Only Use 10 Percent Of Their Brains". Scientific American. 7 February 2008.

Clips taken from the following movies and episodes:
Lucy (2014)
Scott Pilgrim vs. The World (2010)
The Flight of the Navigator (1986)
Limitless (2011)
Doctor Who 50th Anniversary Special (2013)

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