MVRM A Hybrid Approach to Predict siRNA Efficacy
The discovery of RNA interference (RNAi) leads to design novel drugs for
different diseases. Selecting short interfering RNAs (siRNAs) that can
knockdown target genes efficiently is one of the key tasks in studying
RNAi. A number of predictive models have been proposed to predict
knockdown efficacy of siRNAs, however, their performance is still far
from the expectation. This work aims to develop a predictive model to
enhance siRNA knockdown efficacy prediction. The key idea is to combine
both the rule - based and the model - based approaches. To this end,
views of siRNAs that integrate available siRNA design rules are first
learned using an adaptive Fuzzy C Means (FCM) algorithm. The learned
views and other properties of siRNAs are combined to final
representations of siRNAs. The elastic net regression method is employed
to learn a predictive model from these final representations.
Experiments on benchmark datasets showed that the proposed method
achieved stable and accurate results in comparison with other methods.
Title: | MVRM A Hybrid Approach to Predict siRNA Efficacy |
Authors: | Thang, B.N. Vinh, L.S. Bao, H.T. |
Keywords: | Forecasting;Nucleic acids;Regression analysis;Systems engineering |
Issue Date: | 2016 |
Publisher: | Institute of Electrical and Electronics Engineers Inc. |
Citation: | Scopus |
Abstract: | The discovery of RNA interference (RNAi) leads to design novel drugs for different diseases. Selecting short interfering RNAs (siRNAs) that can knockdown target genes efficiently is one of the key tasks in studying RNAi. A number of predictive models have been proposed to predict knockdown efficacy of siRNAs, however, their performance is still far from the expectation. This work aims to develop a predictive model to enhance siRNA knockdown efficacy prediction. The key idea is to combine both the rule - based and the model - based approaches. To this end, views of siRNAs that integrate available siRNA design rules are first learned using an adaptive Fuzzy C Means (FCM) algorithm. The learned views and other properties of siRNAs are combined to final representations of siRNAs. The elastic net regression method is employed to learn a predictive model from these final representations. Experiments on benchmark datasets showed that the proposed method achieved stable and accurate results in comparison with other methods. |
Description: | Proceedings - 2015 IEEE International Conference on Knowledge and Systems Engineering, KSE 2015 4 January 2016, Article number 7371769, Pages 120-125 |
URI: | http://ieeexplore.ieee.org/document/7371769/ http://repository.vnu.edu.vn/handle/VNU_123/33176 |
ISBN: | 978-146738013-3 |
Appears in Collections: | Bài báo của ĐHQGHN trong Scopus |
Nhận xét
Đăng nhận xét