@Article{Mautner-SHAKER-2019, author = {Stefan Mautner and Soheila Montaseri and Milad Miladi and Martin Raden and Fabrizio Costa and Rolf Backofen}, title = {ShaKer: RNA SHAPE prediction using graph kernel}, journal = {Bioinformatics}, year = {2019}, volume = {35}, number = {14}, pages = {i354-i359}, month = {07}, user = {mmann}, issn = {1367-4803}, doi = {10.1093/bioinformatics/btz395}, abstract = {SHAPE experiments are used to probe the structure of RNA molecules. We present ShaKer to predict SHAPE data for RNA using a graph-kernel-based machine learning approach that is trained on experimental SHAPE information. While other available methods require a manually curated reference structure, ShaKer predicts reactivity data based on sequence input only and by sampling the ensemble of possible structures. Thus, ShaKer is well placed to enable experiment-driven, transcriptome-wide SHAPE data prediction to enable the study of RNA structuredness and to improve RNA structure and RNA-RNA interaction prediction. For performance evaluation we use accuracy and accessibility comparing to experimental SHAPE data and competing methods. We can show that Shaker outperforms its competitors and is able to predict high quality SHAPE annotations even when no reference structure is provided. ShaKer is freely available at https://github.com/BackofenLab/ShaKer} }