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Curt M Breneman

Showing results (11-20 of 34) with videos related to

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ACS Biomaterials Science & Engineering|January 13, 2021
Parallel Synthesis and Quantitative Structure-Activity Relationship (QSAR) Modeling of Aminoglycoside-Derived Lipopolymers for Transgene ExpressionBhavani Miryala, Zhuo Zhen, Thrimoorthy Potta, et al.
IEEE Transactions on Pattern Analysis and Machine Intelligence|October 12, 2011
Fast bundle algorithm for multiple-instance learningCharles Bergeron, Gregory Moore, Jed Zaretzki, et al.
Journal of Chromatography. A|April 10, 2004
Parallel screening of selective and high-affinity displacers for proteins in ion-exchange systemsKaushal Rege, Asif Ladiwala, Nihal Tugcu, et al.
Analytical Chemistry|March 27, 2010
Evaluation of chemically selective displacer analogues for protein purificationChristopher J Morrison, Curt M Breneman, J A Moore, et al.
Journal of Chemical Information and Modeling|October 18, 2011
Exploiting domain knowledge for improved quantitative high-throughput screening curve fittingCharles Bergeron, Gregory Moore, Michael Krein, et al.
Combinatorial Chemistry & High Throughput Screening|December 30, 2016
Development of a Web-Enabled SVR-Based Machine Learning Platform and its Application on Modeling Transgene Expression Activity of Aminoglycoside-Derived PolycationsZhuo Zhen, Thrimoorthy Potta, Nicholas A Lanzillo, et al.
Molecular Informatics|July 29, 2016
Modeling Choices for Virtual Screening Hit IdentificationCharles Bergeron, Michael Krein, Gregory Moore, et al.
Biotechnology and Bioengineering|November 9, 2005
Investigation of protein retention and selectivity in HIC systems using quantitative structure retention relationship modelsAsif Ladiwala, Fang Xia, Qiong Luo, et al.
Journal of Chemical Information and Modeling|November 23, 2013
DR-predictor: incorporating flexible docking with specialized electronic reactivity and machine learning techniques to predict CYP-mediated sites of metabolismTao-wei Huang, Jed Zaretzki, Charles Bergeron, et al.
Chemical Senses|July 25, 2012
Odor-structure relationship studies of tetralin and indan musksBarry K Lavine, Collin White, Nikhil Mirjankar, et al.
Pageof 4

Showing results (11-20 of 34) with videos related to

Sort By:
Pageof 4
ACS Biomaterials Science & Engineering|January 13, 2021
Parallel Synthesis and Quantitative Structure-Activity Relationship (QSAR) Modeling of Aminoglycoside-Derived Lipopolymers for Transgene ExpressionBhavani Miryala, Zhuo Zhen, Thrimoorthy Potta, et al.
IEEE Transactions on Pattern Analysis and Machine Intelligence|October 12, 2011
Fast bundle algorithm for multiple-instance learningCharles Bergeron, Gregory Moore, Jed Zaretzki, et al.
Journal of Chromatography. A|April 10, 2004
Parallel screening of selective and high-affinity displacers for proteins in ion-exchange systemsKaushal Rege, Asif Ladiwala, Nihal Tugcu, et al.
Analytical Chemistry|March 27, 2010
Evaluation of chemically selective displacer analogues for protein purificationChristopher J Morrison, Curt M Breneman, J A Moore, et al.
Journal of Chemical Information and Modeling|October 18, 2011
Exploiting domain knowledge for improved quantitative high-throughput screening curve fittingCharles Bergeron, Gregory Moore, Michael Krein, et al.
Combinatorial Chemistry & High Throughput Screening|December 30, 2016
Development of a Web-Enabled SVR-Based Machine Learning Platform and its Application on Modeling Transgene Expression Activity of Aminoglycoside-Derived PolycationsZhuo Zhen, Thrimoorthy Potta, Nicholas A Lanzillo, et al.
Molecular Informatics|July 29, 2016
Modeling Choices for Virtual Screening Hit IdentificationCharles Bergeron, Michael Krein, Gregory Moore, et al.
Biotechnology and Bioengineering|November 9, 2005
Investigation of protein retention and selectivity in HIC systems using quantitative structure retention relationship modelsAsif Ladiwala, Fang Xia, Qiong Luo, et al.
Journal of Chemical Information and Modeling|November 23, 2013
DR-predictor: incorporating flexible docking with specialized electronic reactivity and machine learning techniques to predict CYP-mediated sites of metabolismTao-wei Huang, Jed Zaretzki, Charles Bergeron, et al.
Chemical Senses|July 25, 2012
Odor-structure relationship studies of tetralin and indan musksBarry K Lavine, Collin White, Nikhil Mirjankar, et al.
Pageof 4