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Deriving Quantitative Structure-Activity Relationship Models Using Genetic Programming for Drug Discovery
- Source :
- Proceedings of the IEEE/EMBS Region 8 International Conference on Information Technology Applications in Biomedicine, ITAB, 6th International Special Topic Conference on ITAB, 2007
- Publication Year :
- 2007
- Publisher :
- IEEE, 2007.
-
Abstract
- Genetic Programming is a heuristic search algorithm inspired by evolutionary techniques that has been shown to produce satisfactory solutions to problems related to several scientific domains [1]. Presented here is a methodology for the creation of Quantitative StructureActivity Relationship (QSAR) models for the prediction of chemical activity, using Genetic Programming, QSAR analysis is crucial for drug discovery since good QSAR models enable human experts to select compounds with increased chances of being active for further investigations. Our technique has been tested using the Selwood data set, a benchmark dataset for the QSAR field [2]. The results indicate that the QSAR models created are accurate, reliable and simple and can thus be used to identify molecular descriptors correlated with measured activity and for the prediction of the activity of untested molecules. The QSAR models we generated predict the activity of untested molecules with an error ranging between 0.46 - 0.8 on the scale [-1,1]. These results compare favourably with results sited in the literature for the same dataset [3], [4]. Our models are constructed using any combination of the arithmetic operators {+, -, /, *}, the descriptors available and constant values. ©2008 IEEE. 277 280 Conference code: 73030 Cited By :3
- Subjects :
- QSAR analysis
Selwood dataset
Quantitative structure–activity relationship
Heuristic search algorithms
Scale (ratio)
Molecular graphics
Computer science
Quantitative Structure-Activity Relationship
Genetic programming
Learning algorithms
Computer programming
Machine learning
computer.software_genre
Descriptors
Field (computer science)
Molecular descriptors
Chemical compounds
QSAR modeling
Constant (computer programming)
Chemical activities
Molecular descriptor
Arsenic compounds
Chemotherapy
Heuristic algorithms
Sulfur compounds
Benchmark dataset
QSAR
business.industry
Health care
Drug dosage
Genetic algorithms
Heuristic programming
Chlorine compounds
Human experts
Drug delivery
Benchmark (computing)
Drug discoveries
Data sets
Artificial intelligence
Evolutionary techniques
business
computer
Forecasting
Applicability domain
Subjects
Details
- Database :
- OpenAIRE
- Journal :
- 2007 6th International Special Topic Conference on Information Technology Applications in Biomedicine
- Accession number :
- edsair.doi.dedup.....8b5fee23e7fe96689a10fd82a9d22de4
- Full Text :
- https://doi.org/10.1109/itab.2007.4407401