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Beyond Profiling: Using ADMET Models to Guide Decisions
Author(s) -
Segall Matthew,
Champness Edmund,
Obrezanova Olga,
Leeding Chris
Publication year - 2009
Publication title -
chemistry and biodiversity
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.427
H-Index - 70
eISSN - 1612-1880
pISSN - 1612-1872
DOI - 10.1002/cbdv.200900148
Subject(s) - profiling (computer programming) , in silico , computer science , drug discovery , data mining , property (philosophy) , encode , biochemical engineering , computational biology , risk analysis (engineering) , chemistry , engineering , medicine , biochemistry , philosophy , epistemology , biology , gene , operating system
ADMET Models, whether in silico or in vitro , are commonly used to ‘profile’ molecules, to identify potential liabilities or filter out molecules expected to have undesirable properties. While useful, this is the most basic application of such models. Here, we will show how models may be used to go ‘beyond profiling’ to guide key decisions in drug discovery. For example, selection of chemical series to focus resources with confidence or design of improved molecules targeting structural modifications to improve key properties. To prioritise molecules and chemical series, the success criteria for properties and their relative importance to a project's objective must be defined. Data from models (experimental or predicted) may then be used to assess each molecule's balance of properties against those requirements. However, to make decisions with confidence, the uncertainties in all of the data must also be considered. In silico models encode information regarding the relationship between molecular structure and properties. This is used to predict the property value of a novel molecule. However, further interpretation can yield information on the contributions of different groups in a molecule to the property and the sensitivity of the property to structural changes. Visualising this information can guide the redesign process. In this article, we describe methods to achieve these goals and drive drug‐discovery decisions and illustrate the results with practical examples.

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