Drug design by machine learning: Modelling drug activity
This paper describes an approach to modelling drug activity using
machine learning tools. Some experiments in modelling
the quantitative structure-activity relationship (QSAR) using
a standard, Hansch, method and a machine learning system Golem
were already reported in the literature. The paper describes the results
of applying two other machine learning systems, Magnus Assistant
and Retis, on the same data. The results achieved
by the machine learning systems, are better then the results of the
Hansch method; therefore, machine learning tools can be considered as
very promising for solving that kind of problems. The given results
also illustrate the variations of performance of the different machine
learning systems applied to this drug design problem.