Improving Drug Discovery Decision Making using Machine Learning and Graph Theory in QSAR Modeling
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 optimization of compounds and a method for automated extraction of substructural
alerts. Furthermore different QSAR modeling strategies have been evaluated with respect to predictivity,
risks and information content.
To test hypotheses and theories large scale simulations of known relations between activities and de-
scriptors have been conducted. With the simulations it has been possible to study properties of methods,
risks, implementations and errors in a controlled manner since the correct answer has been known. Sim-
ulation studies have been used in the development of the generally applicable descriptor importance
measure and in the analysis of QSAR modeling strategies. The use of simulations is spread in many
areas, but not that common in the computational chemistry community. The descriptor importance mea-
sure developed can be applied to any machine-learning method and validations using both real data and
simulated data show that the descriptor importance measure is very accurate for non-linear methods.
An automated method for local optimization of compounds was developed to partly replace manual
searches made to optimize compounds. The local optimization of compounds make use of the informa-
tion in available data and deterministically enumerates new compounds in a space spanned close to the
compound of interest. This can be used as a starting point for further compound optimization and aids
the chemist in finding new compounds. An other approach to guide chemists in the process of optimiz-
ing compounds is through substructural warnings. A fast method for significant substructure extraction
has been developed that extracts significant substructures from data with respect to the activity of the
compound. The method is at least on par with existing methods in terms of accuracy but is significantly
less time consuming.
Non-linear machine-learning methods have opened up new possibilities for QSAR modeling that
changes the way chemical data can be handled by model algorithms. Therefore properties of Local
and Global QSAR modeling strategies have been studied. The results show that Local models come with
high risks and are less accurate compared to Global models.
In summary this thesis shows that Global QSAR modeling strategies should be applied preferably
using methods that are able to handle non-linear relationships. The developed methods can be interpreted
easily and an extensive amount of information can be retrieved. For the methods to become easily
available to a broader group of users packaging with an open-source chemical platform is needed.
Parts of work
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
::doi::10.1021/ci9002206 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
::doi::10.1021/ci900221r 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
Degree
Doctor of Philosophy
University
University of Gothenburg. Faculty of Science
Institution
Department of Chemistry ; Institutionen för kemi
Disputation
Fredagen den 5 mars 2010, kl 10.00 Hörsal HA4, Hörsalsvägen 4
Date of defence
2010-03-05
ernst.ahlberghelgee@gmail.com
Date
2010-02-12Author
Ahlberg Helgee, Ernst
Keywords
machine learning
drug design
QSAR
descriptor importance
local and global models
method of manufactured solutions
automated compound optimization
Publication type
Doctoral thesis
ISBN
978-91-628-8018-7
Language
eng