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S. Willmann, A. Terenji, J. Osterholz, J. Meister, P. Hering, and H.J. Schwarzmaier. Small-volume frequency-domain oximetry: phantom experiments and first in vivo results. J Biomed Opt. 618-28. 8(4). 2003.arrow-up-right

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S. Willmann, J. Lippert, and W. Schmitt. From physicochemistry to absorption and distribution: predictive mechanistic modelling and computational tools. Expert Opinion on Drug Metabolism and Toxicology. 1. 159-168. 2005.arrow-up-right

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S. Willmann, K. Hoehn, A. N. Edginton, M. Sevestre, J. Solodenko, W. Weiss, J. Lippert, and W. Schmitt. Development of a physiologically-based whole-body population model for assessing the influence of individual variability on the pharmacokinetics of drugs. Journal of Pharmacokinetics and Pharmacodynamics. 34(3). 401-431. 2007.arrow-up-right

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S. Willmann, A.N. Edginton, and J.B. Dressman. Development and validation of a physiology-based model for the prediction of oral absorption in monkeys. Pharmaceutical Research. 24(7). 1275-82. 2007.arrow-up-right

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S. Willmann, A.N. Edginton, M. Kleine-Besten, E. Jantratid, K. Thelen, and J.B. Dressman. Whole-Body Physiologically-Based Pharmacokinetic Population Modelling of Oral Drug Administration: Inter-Individual Variability of Cimetidine Absorption. Journal of Pharmacokinetics and Pharmacodynamics. 61. 891-9. 2009.arrow-up-right

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S. Willmann, A.N. Edginton, K. Coboeken, G. Ahr, and J. Lippert. Risk to the Breast-Fed Neonate From Codeine Treatment to the Mother: A Quantitative Mechanistic Modeling Study. Clinical Pharmacology and Therapeutics. advance online publication. 2009.arrow-up-right

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S. Willmann. The in silico Child. Can computer simulations replace clinical pharmacokinetic studies?. Original: Das In-silico-Child. Konnen Computer-Simulationen klinisch-pharmakokinetische Studien ersetzen?. Pharm Unserer Zeit. 62-7. 38(1). 2009.arrow-up-right

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S. Willmann, K. Thelen, C. Becker, J. B. Dressman, and J. Lippert. Mechanism-based prediction of particle size-dependent dissolution and absorption: cilostazol pharmacokinetics in dogs. Eur J Pharm Biopharm. 83-94. 76(1). 2010.arrow-up-right

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Y. Wu and F. Kesisoglou. Immediate Release Oral Dosage Forms: Formulation Screening in the Pharmaceutical Industry. in: Oral Drug Absorption: Prediction and Assessment. J. J. Dressman. C. Reppas. Informa Healthcare. New York, USA. pp. 323. 2009.

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H. Zischka, C. J. Gloeckner, C. Klein, S. Willmann, M. Swiatek-de Lange, and M. Ueffing. Improved mass spectrometric identification of gel- separated hydrophobic membrane proteins after sodium dodecyl sulfate removal by ion-pair extraction. Proteomics. 3776-82. 4(12). 2004.arrow-up-right

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