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<?xml version="1.0" encoding="UTF-8"?>
<!DOCTYPE pkgmetadata SYSTEM "https://www.gentoo.org/dtd/metadata.dtd">
<pkgmetadata>
  <herd>sci-chemistry</herd>
  <longdescription>
		SHIFTX2 predicts both the backbone and side chain 1H, 13C and 15N chemical
		shifts for proteins using their structural (PDB) coordinates as input.
		SHIFTX2 combines ensemble machine learning methods with sequence
		alignment-based methods to calculate protein chemical shifts for
		backbone
		and side chain atoms. SHIFTX2 has been trained on a carefully selected
		set of
		197 proteins and tested on a separate set of 61 proteins. Both the
		training
		and testing sets consisted of high resolution X-ray structures (less
		2.1A)
		with carefully verified chemical shifts assignments. SHIFTX2 is able to
		attain
		correlation coefficients between experimentally observed and predicted
		backbone chemical shifts of 0.9800 (15N), 0.9959 (13CA), 0.9992 (13CB),
		0.9676 (13CO), 0.9714 (1HN), 0.9744 (1HA) and RMS errors of 1.1169, 0.4412,
		0.5163, 0.5330, 0.1711, and 0.1231 ppm, respectively. Comparisons to
		other
		chemical shift predictors using the same testing data set indicates that
		SHIFTX2 is substantially more accurate (up to 26% better by
		correlation
		coefficient with an RMS error that is up to 3.3X smaller) than any other
		program.

		Please cite the following: Beomsoo Han, Yifeng Liu, Simon Ginzinger, and
		David Wishart. (2011) SHIFTX2: significantly improved protein chemical
		shift
		prediction. Journal of Biomolecular NMR, Volume 50, Number 1, 43-57.
		doi: 10.1007/s10858-011-9478-4.
	</longdescription>
  <use>
    <flag name="debug">Enables debug output in the shiftx2 java part</flag>
  </use>
</pkgmetadata>