Improving Drug Discovery Decision Making using Machine Learning and Graph Theory in QSAR Modeling

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Title: Improving Drug Discovery Decision Making using Machine Learning and Graph Theory in QSAR Modeling
Authors: Ahlberg Helgee, Ernst
Email: ernst.ahlberghelgee@gmail.com
Issue Date: 2010
University: University of Gothenburg. Faculty of Science
Department: Department of Chemistry ; Institutionen för kemi
Parts: Paper I: Interpretation of Non-Linear QSAR Models Applied to Ames Mutagenicity Data Carlsson, Lars; Ahlberg Helgee, Ernst; Boyer, Scott J. Chem. Inf. Model. 2009, 49, pp. 2551 - 2558
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Paper II: A Method for Automated Molecular Optimization Applied to Ames Mutagenicity Data Ahlberg Helgee, Ernst; Carlsson, Lars; Boyer, Scott J. Chem. Inf. Model. 2009, 49, pp. 2559 - 2563
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Paper III: Mining Chemical Data for Significant Substructures using Signatures Ahlberg Helgee, Ernst; Carlsson, Lars; Boyer, Scott Unpublished

Paper IV: Evaluation of Quantitative Structure Activity Relationship Modeling Strategies: Local and Global Models Ahlberg Helgee, Ernst; Carlsson, Lars; Boyer, Scott; Norinder, Ulf Unpublished
Date for public defence: 2010-03-05
Public defence: Fredagen den 5 mars 2010, kl 10.00 Hörsal HA4, Hörsalsvägen 4
Examinationsnivå: Doctor of Philosophy
Publication type: Doctoral thesis
Keywords: machine learning
drug design
QSAR
descriptor importance
local and global models
method of manufactured solutions
automated compound optimization
Abstract: During the last decade non-linear machine-learning methods have gained popularity among QSAR modelers. The machine-learning algorithms generate highly accurate models at a cost of increased model complexity where simple interpretations, valid in the entire model domain, are rare. This thesis focuses on maximizing the amount of extracted knowledge from predictive QSAR models and data. This has been achieved by the development of a descriptor importance measure, a method for automated local o... more
ISBN: 978-91-628-8018-7
URI: http://hdl.handle.net/2077/21838

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