Prediction of Drug Synergy by Ensemble Learning
- URL: http://arxiv.org/abs/2001.01997v1
- Date: Tue, 7 Jan 2020 12:21:37 GMT
- Title: Prediction of Drug Synergy by Ensemble Learning
- Authors: I\c{s}{\i}ksu Ek\c{s}io\u{g}lu, Mehmet Tan
- Abstract summary: We investigate the effectiveness of different compound representations in predicting the drug synergy.
On a large drug combination screen dataset, we first demonstrate the use of a promising representation that has not been used for this problem before.
We then propose an ensemble on representation-model combinations that outperform each of the baseline models.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: One of the promising methods for the treatment of complex diseases such as
cancer is combinational therapy. Due to the combinatorial complexity, machine
learning models can be useful in this field, where significant improvements
have recently been achieved in determination of synergistic combinations. In
this study, we investigate the effectiveness of different compound
representations in predicting the drug synergy. On a large drug combination
screen dataset, we first demonstrate the use of a promising representation that
has not been used for this problem before, then we propose an ensemble on
representation-model combinations that outperform each of the baseline models.
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