Title of article
Utilizing Selected Di- and Trinucleotides of siRNA to Predict RNAi Activity
Author/Authors
Han, Ye Department of Computer Science and Technology - Jilin University - Changchun - Jilin, China , Liu, Yuanning Department of Computer Science and Technology - Jilin University - Changchun - Jilin, China , Zhang, Hao Department of Computer Science and Technology - Jilin University - Changchun - Jilin, China , He, Fei Department of Environment - Northeast Normal University - Changchun - Jilin, China , Shu, Chonghe Department of Computer Science and Technology - Jilin University - Changchun - Jilin, China , Dong, Liyan Department of Computer Science and Technology - Jilin University - Changchun - Jilin, China
Pages
12
From page
1
To page
12
Abstract
Small interfering RNAs (siRNAs) induce posttranscriptional gene silencing in various organisms. siRNAs targeted to different
positions of the same gene show different effectiveness; hence, predicting siRNA activity is a crucial step. In this paper, we developed
and evaluated a powerful tool named “siRNApred” with a new mixed feature set to predict siRNA activity. To improve the prediction
accuracy, we proposed 2-3NTs as our new features. A Random Forest siRNA activity prediction model was constructed using the
feature set selected by our proposed Binary Search Feature Selection (BSFS) algorithm. Experimental data demonstrated that the
binding site of the Argonaute protein correlates with siRNA activity. “siRNApred” is effective for selecting active siRNAs, and
the prediction results demonstrate that our method can outperform other current siRNA activity prediction methods in terms of
prediction accuracy.
Keywords
Di- and , RNAi , siRNA
Journal title
Computational and Mathematical Methods in Medicine
Serial Year
2017
Full Text URL
Record number
2609905
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