Prediction of Drug Absorption Using Multivariate Statistics
- Journal
- Journal of Medicinal Chemistry
In The Last Decade
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About Prediction of Drug Absorption Using Multivariate Statistics
This paper, published in 2000, received 1.4k indexed citations . Written by William J. Egan, Kenneth M. Merz and John J. Baldwin covering the research area of Analytical Chemistry, Computational Theory and Mathematics and Spectroscopy. It is primarily cited by scholars working on Organic Chemistry (612 citations), Computational Theory and Mathematics (595 citations) and Molecular Biology (567 citations). Published in Journal of Medicinal Chemistry.
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This paper is also available at doi.org/10.1021/jm000292e.