Symbolic Regression Modeling of Drug Responses
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- @InProceedings{Fitzsimmons:2018:AI4I,
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author = "Jake Fitzsimmons and Pablo Moscato",
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title = "Symbolic Regression Modeling of Drug Responses",
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booktitle = "2018 First International Conference on Artificial
Intelligence for Industries (AI4I)",
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year = "2018",
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pages = "52--59",
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address = "Laguna Hills, CA, USA",
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month = "26-28 " # sep,
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keywords = "genetic algorithms, genetic programming",
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isbn13 = "978-1-5386-9463-3",
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DOI = "doi:10.1109/AI4I.2018.8665684",
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abstract = "Big pharmaceutical companies require to innovate by
applying new machine learning and artificial
intelligence methods to understand the large datasets
produced by high-throughput technologies. In addition
to reduce development costs for these industries,
regression and classification models of drug response
are needed for the final quest of delivering
personalized treatment for cancer. An emphasis exists
in developing models that allow for both prediction and
ease of interpretation. In this contribution we present
results obtained by symbolic regression. We employ a
public domain dataset of drug responses on a large
cancer cell line panel and compare with a previous
method based on binarisation of the response data and
the use of integer linear programming to find logic
models. We present derived models of drug response for
the drugs Afatinib, Dactolisib (BEZ235), Cytarabine,
and Paclitaxel as well as for AZD6244, JQ12,
KIN001-102, and PLX4720. We provide indication of the
interpretability with a biological analysis of the
results for Afatnib and Dactolisib, showing that our
models introduce variables that point at known
mechanisms of action of these drugs.",
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notes = "Also known as \cite{8665684}",
- }
Genetic Programming entries for
Jake Fitzsimmons
Pablo Moscato
Citations