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      eSkip-Finder: a machine learning-based web application and database to identify the optimal sequences of antisense oligonucleotides for exon skipping

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          Abstract

          Exon skipping using antisense oligonucleotides (ASOs) has recently proven to be a powerful tool for mRNA splicing modulation. Several exon-skipping ASOs have been approved to treat genetic diseases worldwide. However, a significant challenge is the difficulty in selecting an optimal sequence for exon skipping. The efficacy of ASOs is often unpredictable, because of the numerous factors involved in exon skipping. To address this gap, we have developed a computational method using machine-learning algorithms that factors in many parameters as well as experimental data to design highly effective ASOs for exon skipping. eSkip-Finder ( https://eskip-finder.org) is the first web-based resource for helping researchers identify effective exon skipping ASOs. eSkip-Finder features two sections: (i) a predictor of the exon skipping efficacy of novel ASOs and (ii) a database of exon skipping ASOs. The predictor facilitates rapid analysis of a given set of exon/intron sequences and ASO lengths to identify effective ASOs for exon skipping based on a machine learning model trained by experimental data. We confirmed that predictions correlated well with in vitro skipping efficacy of sequences that were not included in the training data. The database enables users to search for ASOs using queries such as gene name, species, and exon number.

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          Graphical Abstract

          eSkip-Finder uses information on exon skipping antisense oligonucleotides from the literature to produce a database and a skipping efficacy predictive tool to aid researchers in designing effective exon skipping therapies.

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          Most cited references25

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          ViennaRNA Package 2.0

          Background Secondary structure forms an important intermediate level of description of nucleic acids that encapsulates the dominating part of the folding energy, is often well conserved in evolution, and is routinely used as a basis to explain experimental findings. Based on carefully measured thermodynamic parameters, exact dynamic programming algorithms can be used to compute ground states, base pairing probabilities, as well as thermodynamic properties. Results The ViennaRNA Package has been a widely used compilation of RNA secondary structure related computer programs for nearly two decades. Major changes in the structure of the standard energy model, the Turner 2004 parameters, the pervasive use of multi-core CPUs, and an increasing number of algorithmic variants prompted a major technical overhaul of both the underlying RNAlib and the interactive user programs. New features include an expanded repertoire of tools to assess RNA-RNA interactions and restricted ensembles of structures, additional output information such as centroid structures and maximum expected accuracy structures derived from base pairing probabilities, or z-scores for locally stable secondary structures, and support for input in fasta format. Updates were implemented without compromising the computational efficiency of the core algorithms and ensuring compatibility with earlier versions. Conclusions The ViennaRNA Package 2.0, supporting concurrent computations via OpenMP, can be downloaded from http://www.tbi.univie.ac.at/RNA.
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            Permutation importance: a corrected feature importance measure.

            In life sciences, interpretability of machine learning models is as important as their prediction accuracy. Linear models are probably the most frequently used methods for assessing feature relevance, despite their relative inflexibility. However, in the past years effective estimators of feature relevance have been derived for highly complex or non-parametric models such as support vector machines and RandomForest (RF) models. Recently, it has been observed that RF models are biased in such a way that categorical variables with a large number of categories are preferred. In this work, we introduce a heuristic for normalizing feature importance measures that can correct the feature importance bias. The method is based on repeated permutations of the outcome vector for estimating the distribution of measured importance for each variable in a non-informative setting. The P-value of the observed importance provides a corrected measure of feature importance. We apply our method to simulated data and demonstrate that (i) non-informative predictors do not receive significant P-values, (ii) informative variables can successfully be recovered among non-informative variables and (iii) P-values computed with permutation importance (PIMP) are very helpful for deciding the significance of variables, and therefore improve model interpretability. Furthermore, PIMP was used to correct RF-based importance measures for two real-world case studies. We propose an improved RF model that uses the significant variables with respect to the PIMP measure and show that its prediction accuracy is superior to that of other existing models. R code for the method presented in this article is available at http://www.mpi-inf.mpg.de/ approximately altmann/download/PIMP.R CONTACT: altmann@mpi-inf.mpg.de, laura.tolosi@mpi-inf.mpg.de Supplementary data are available at Bioinformatics online.
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              RNAstructure: software for RNA secondary structure prediction and analysis

              Background To understand an RNA sequence's mechanism of action, the structure must be known. Furthermore, target RNA structure is an important consideration in the design of small interfering RNAs and antisense DNA oligonucleotides. RNA secondary structure prediction, using thermodynamics, can be used to develop hypotheses about the structure of an RNA sequence. Results RNAstructure is a software package for RNA secondary structure prediction and analysis. It uses thermodynamics and utilizes the most recent set of nearest neighbor parameters from the Turner group. It includes methods for secondary structure prediction (using several algorithms), prediction of base pair probabilities, bimolecular structure prediction, and prediction of a structure common to two sequences. This contribution describes new extensions to the package, including a library of C++ classes for incorporation into other programs, a user-friendly graphical user interface written in JAVA, and new Unix-style text interfaces. The original graphical user interface for Microsoft Windows is still maintained. Conclusion The extensions to RNAstructure serve to make RNA secondary structure prediction user-friendly. The package is available for download from the Mathews lab homepage at http://rna.urmc.rochester.edu/RNAstructure.html.
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                Author and article information

                Contributors
                Journal
                Nucleic Acids Res
                Nucleic Acids Res
                nar
                Nucleic Acids Research
                Oxford University Press
                0305-1048
                1362-4962
                02 July 2021
                09 June 2021
                09 June 2021
                : 49
                : W1
                : W193-W198
                Affiliations
                HPC- and AI-driven Drug Development Platform Division, RIKEN Center for Computational Science , Yokohama 230-0045, Japan
                Department of Medical Genetics, University of Alberta Faculty of Medicine and Dentistry , 8613-114 St, Edmonton, AB, Canada
                Department of Medical Genetics, University of Alberta Faculty of Medicine and Dentistry , 8613-114 St, Edmonton, AB, Canada
                Department of Medical Genetics, University of Alberta Faculty of Medicine and Dentistry , 8613-114 St, Edmonton, AB, Canada
                Department of Medical Genetics, University of Alberta Faculty of Medicine and Dentistry , 8613-114 St, Edmonton, AB, Canada
                Department of Medical Genetics, University of Alberta Faculty of Medicine and Dentistry , 8613-114 St, Edmonton, AB, Canada
                Department of Medical Genetics, University of Alberta Faculty of Medicine and Dentistry , 8613-114 St, Edmonton, AB, Canada
                Department of Medical Genetics, University of Alberta Faculty of Medicine and Dentistry , 8613-114 St, Edmonton, AB, Canada
                Department of Medical Genetics, University of Alberta Faculty of Medicine and Dentistry , 8613-114 St, Edmonton, AB, Canada
                Department of Medical Genetics, University of Alberta Faculty of Medicine and Dentistry , 8613-114 St, Edmonton, AB, Canada
                HPC- and AI-driven Drug Development Platform Division, RIKEN Center for Computational Science , Yokohama 230-0045, Japan
                Department of Molecular Therapy, National Institute of Neuroscience, National Center of Neurology and Psychiatry (NCNP) , Kodaira, Tokyo 187-8551, Japan
                Northern Ireland Center for Stratified Medicine, Biomedical Sciences Research Institute, C-TRIC, Altnagelvin Hospital Campus, Ulster University , Londonderry BT47 6SB, UK
                HPC- and AI-driven Drug Development Platform Division, RIKEN Center for Computational Science , Yokohama 230-0045, Japan
                Department of Biomedical Data Intelligence, Graduate School of Medicine, Kyoto University , Kyoto 606-8507, Japan
                Department of Molecular Therapy, National Institute of Neuroscience, National Center of Neurology and Psychiatry (NCNP) , Kodaira, Tokyo 187-8551, Japan
                Department of Medical Genetics, University of Alberta Faculty of Medicine and Dentistry , 8613-114 St, Edmonton, AB, Canada
                Author notes
                To whom correspondence should be addressed. Tel: +1 780 492 1102; Fax: +1 780 492 1998; Email: toshifum@ 123456ualberta.ca
                Correspondence may also be addressed to Yoshitsugu Aoki. Tel: +81 42 346 1720; Fax: +81 42 346 1750; Email: tsugu56@ 123456ncnp.go.jp
                Correspondence may also be addressed to Yasushi Okuno. Tel: +81 75 751 3920; Fax: +81 75 751 3920; Email: okuno.yasushi.4c@ 123456kyoto-u.ac.jp
                Author information
                https://orcid.org/0000-0001-7316-3546
                Article
                gkab442
                10.1093/nar/gkab442
                8265194
                34104972
                91c2fa75-c5d9-43cb-88fe-b88aa805ccc1
                © The Author(s) 2021. Published by Oxford University Press on behalf of Nucleic Acids Research.

                This is an Open Access article distributed under the terms of the Creative Commons Attribution License ( http://creativecommons.org/licenses/by/4.0/), which permits unrestricted reuse, distribution, and reproduction in any medium, provided the original work is properly cited.

                History
                : 12 May 2021
                : 18 April 2021
                : 05 March 2021
                Page count
                Pages: 6
                Funding
                Funded by: Grants-in-Aid for Research on Nervous and Mental Disorders;
                Award ID: 2–6
                Funded by: Muscular Dystrophy Canada, DOI 10.13039/501100000223;
                Funded by: Friends of Garrett Cumming Research Fund;
                Funded by: HM Toupin Neurological Science Research Fund;
                Funded by: Canadian Institutes of Health Research, DOI 10.13039/501100000024;
                Funded by: Women and Children's Health Research Institute, DOI 10.13039/100010090;
                Funded by: HOKUSAI BigWaterfall;
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                AcademicSubjects/SCI00010
                Web Server Issue

                Genetics
                Genetics

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