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QSAR Models for the Prediction of Binding Affinities to Human Serum Albumin Using the Heuristic Method and a Support Vector Machine.
ChemInform
doi 10.1002/chin.200448209
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Date
November 30, 2004
Authors
C. X. Xue
R. S. Zhang
H. X. Liu
X. J. Yao
M. C. Liu
Z. D. Hu
B. T. Fan
Publisher
Wiley-Blackwell
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