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Dive into the research topics where Olga V. Matveeva is active.

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Featured researches published by Olga V. Matveeva.


Nucleic Acids Research | 2007

Comparison of approaches for rational siRNA design leading to a new efficient and transparent method

Olga V. Matveeva; Yury D. Nechipurenko; Leo Rossi; Barry Moore; Pål Sætrom; Aleksey Y. Ogurtsov; John F. Atkins; Svetlana A. Shabalina

Current literature describes several methods for the design of efficient siRNAs with 19 perfectly matched base pairs and 2 nt overhangs. Using four independent databases totaling 3336 experimentally verified siRNAs, we compared how well several of these methods predict siRNA cleavage efficiency. According to receiver operating characteristics (ROC) and correlation analyses, the best programs were BioPredsi, ThermoComposition and DSIR. We also studied individual parameters that significantly and consistently correlated with siRNA efficacy in different databases. As a result of this work we developed a new method which utilizes linear regression fitting with local duplex stability, nucleotide position-dependent preferences and total G/C content of siRNA duplexes as input parameters. The new methods discrimination ability of efficient and inefficient siRNAs is comparable with that of the best methods identified, but its parameters are more obviously related to the mechanisms of siRNA action in comparison with BioPredsi. This permits insight to the underlying physical features and relative importance of the parameters. The new method of predicting siRNA efficiency is faster than that of ThermoComposition because it does not employ time-consuming RNA secondary structure calculations and has much less parameters than DSIR. It is available as a web tool called ‘siRNA scales’.


Nature Biotechnology | 1998

Prediction of antisense oligonucleotide efficacy by in vitro methods

Olga V. Matveeva; Brice Felden; Alex Tsodikov; Joseph F. Johnston; Brett P. Monia; John F. Atkins; Raymond F. Gesteland; Susan M. Freier

Many problems related to antisense oligonucleotide therapy, such as oligonucleotide stability or efficient delivery, are gradually being overcome through advances in oligonucleotide chemistry. One remaining challenge, however, is the apparent paucity of mRNA sites that can be targeted efficiently. Even though oligonucleotides that are complementary to translation initiation regions sometimes are responsible for decreasing the levels of particular mRNAs or proteins, there is increasing evidence that other parts of mRNAs might be better candidates. Screening of multiple oligonucleotides (often 30–50) in cells is usually required for the discovery of a few active antisense sequences. This approach has been shown to be efficient for a number of mRNAs of potential therapeutic interest. If complicated mRNA structures with internal base pairings are responsible for the problem, then a rapid, inexpensive, and reliable in vitro method for the prediction of accessible mRNA regions would be valuable. This would allow efficient targeting by complementary oligonucleotides and could increase the speed of antisense drug discovery. Several in vitro techniques designed to test the accessibility of oligonucleotides to complementary regions in mRNA have been described. One approach involves producing a pool of random oligonucleotides or DNA fragments that direct RNase H cleavage of accessible mRNA regions. Other approaches include gel-mobility shift assays or oligonucleotide arrays. A correlation between in vitro accessibility data and oligonucleotide intracellular activity has previously been reported for several RNAs. However, a statistical analysis of the correlation has never been performed for a large number of oligonucleotides.


PLOS ONE | 2010

Optimization of Duplex Stability and Terminal Asymmetry for shRNA Design

Olga V. Matveeva; Yibin Kang; Alexey N. Spiridonov; Pål Sætrom; Vladimir A. Nemtsov; Aleksey Y. Ogurtsov; Yury D. Nechipurenko; Svetlana A. Shabalina

Prediction of efficient oligonucleotides for RNA interference presents a serious challenge, especially for the development of genome-wide RNAi libraries which encounter difficulties and limitations due to ambiguities in the results and the requirement for significant computational resources. Here we present a fast and practical algorithm for shRNA design based on the thermodynamic parameters. In order to identify shRNA and siRNA features universally associated with high silencing efficiency, we analyzed structure-activity relationships in thousands of individual RNAi experiments from publicly available databases (ftp://ftp.ncbi.nlm.nih.gov/pub/shabalin/siRNA/si_shRNA_selector/). Using this statistical analysis, we found free energy ranges for the terminal duplex asymmetry and for fully paired duplex stability, such that shRNAs or siRNAs falling in both ranges have a high probability of being efficient. When combined, these two parameters yield a ∼72% success rate on shRNAs from the siRecords database, with the target RNA levels reduced to below 20% of the control. Two other parameters correlate well with silencing efficiency: the stability of target RNA and the antisense strand secondary structure. Both parameters also correlate with the short RNA duplex stability; as a consequence, adding these parameters to our prediction scheme did not substantially improve classification accuracy. To test the validity of our predictions, we designed 83 shRNAs with optimal terminal asymmetry, and experimentally verified that small shifts in duplex stability strongly affected silencing efficiency. We showed that shRNAs with short fully paired stems could be successfully selected by optimizing only two parameters: terminal duplex asymmetry and duplex stability of the hypothetical cleavage product, which also relates to the specificity of mRNA target recognition. Our approach performs at the level of the best currently utilized algorithms that take into account prediction of the secondary structure of the target and antisense RNAs, but at significantly lower computational costs. Based on this study, we created the si-shRNA Selector program that predicts both highly efficient shRNAs and functional siRNAs (ftp://ftp.ncbi.nlm.nih.gov/pub/shabalin/siRNA/si_shRNA_selector/).


Frontiers in Genetics | 2012

Optimized models for design of efficient miR30-based shRNAs

Olga V. Matveeva; Nafisa N. Nazipova; Aleksey Y. Ogurtsov; Svetlana A. Shabalina

Small hairpin RNAs (shRNAs) became an important research tool in cell biology. Reliable design of these molecules is essential for the needs of large functional genomics projects. To optimize the design of efficient shRNAs, we performed comparative, thermodynamic, and correlation analyses of ~18,000 miR30-based shRNAs with known functional efficiencies, derived from the Sensor Assay project (Fellmann et al., 2011). We identified features of the shRNA guide strand that significantly correlate with the silencing efficiency and performed multiple regression analysis, using 4/5 of the data for training purposes and 1/5 for cross validation. A model that included the position-dependent nucleotide preferences was predictive in the cross-validation data subset (R = 0.39). However, a model, which in addition to the nucleotide preferences included thermodynamic shRNA features such as a thermodynamic duplex stability and position-dependent thermodynamic profile (dinucleotide free energy) was performing better (R = 0.53). Software “miR_Scan” was developed based upon the optimized models. Calculated mRNA target secondary structure stability showed correlation with shRNA silencing efficiency but failed to improve the model. Correlation analysis demonstrates that our algorithm for identification of efficient miR30-based shRNA molecules performs better than approaches that were developed for design of chemically synthesized siRNAs (Rmax = 0.36).


Methods of Molecular Biology | 2013

What Parameters to Consider and Which Software Tools to Use for Target Selection and Molecular Design of Small Interfering RNAs

Olga V. Matveeva

The design of small gene silencing RNAs with a high probability of being efficient still has some elements of an art, especially when the lowest concentration of small molecules needs to be utilized. The design of highly target-specific small interfering RNAs or short hairpin RNAs is even a greater challenging task. Some logical schemes and software tools that can be used for simplifying both tasks are presented here. In addition, sequence motifs and sequence composition biases of small interfering RNAs that have to be avoided because of specificity concerns are also detailed.


PLOS ONE | 2018

Sequence characteristics define trade-offs between on-target and genome-wide off-target hybridization of oligoprobes

Olga V. Matveeva; Aleksey Y. Ogurtsov; Nafisa N. Nazipova; Svetlana A. Shabalina

Off-target oligoprobe’s interaction with partially complementary nucleotide sequences represents a problem for many bio-techniques. The goal of the study was to identify oligoprobe sequence characteristics that control the ratio between on-target and off-target hybridization. To understand the complex interplay between specific and genome-wide off-target (cross-hybridization) signals, we analyzed a database derived from genomic comparison hybridization experiments performed with an Affymetrix tiling array. The database included two types of probes with signals derived from (i) a combination of specific signal and cross-hybridization and (ii) genomic cross-hybridization only. All probes from the database were grouped into bins according to their sequence characteristics, where both hybridization signals were averaged separately. For selection of specific probes, we analyzed the following sequence characteristics: vulnerability to self-folding, nucleotide composition bias, numbers of G nucleotides and GGG-blocks, and occurrence of probe’s k-mers in the human genome. Increases in bin ranges for these characteristics are simultaneously accompanied by a decrease in hybridization specificity—the ratio between specific and cross-hybridization signals. However, both averaged hybridization signals exhibit growing trends along with an increase of probes’ binding energy, where the hybridization specific signal increases significantly faster in comparison to the cross-hybridization. The same trend is evident for the S function, which serves as a combined evaluation of probe binding energy and occurrence of probe’s k-mers in the genome. Application of S allows extracting a larger number of specific probes, as compared to using only binding energy. Thus, we showed that high values of specific and cross-hybridization signals are not mutually exclusive for probes with high values of binding energy and S. In this study, the application of a new set of sequence characteristics allows detection of probes that are highly specific to their targets for array design and other bio-techniques that require selection of specific probes.


Nucleic Acids Research | 1997

A Rapid in vitro Method for Obtaining RNA Accessibility Patterns for Complementary DNA Probes: Correlation with an Intracellular Pattern and Known RNA Structures

Olga V. Matveeva; Brice Felden; Scott Audlin; Raymond F. Gesteland; John F. Atkins


Nucleic Acids Research | 2002

Artificial neural network prediction of antisense oligodeoxynucleotide activity

Michael C. Giddings; Atul A. Shah; Sue Freier; John F. Atkins; Raymond F. Gesteland; Olga V. Matveeva


german conference on bioinformatics | 2000

ODNBase—a web database for antisense oligonucleotide effectiveness studies

Michael C. Giddings; Olga V. Matveeva; John F. Atkins; Raymond F. Gesteland


BMC Bioinformatics | 2004

Identification of regions in multiple sequence alignments thermodynamically suitable for targeting by consensus oligonucleotides: application to HIV genome

Olga V. Matveeva; Brian T. Foley; Vladimir A. Nemtsov; Raymond F. Gesteland; Senya Matsufuji; John F. Atkins; Aleksey Y. Ogurtsov; Svetlana A. Shabalina

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Aleksey Y. Ogurtsov

National Institutes of Health

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Svetlana A. Shabalina

National Institutes of Health

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Pål Sætrom

Norwegian University of Science and Technology

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Nafisa N. Nazipova

Russian Academy of Sciences

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