Correlation Between Computed Equilibrium Secondary Structure Free Energy and siRNA Efficiency
We have explored correlations between the measured efficiency of the RNAi process and several computed signatures that characterize equilibrium secondary structure of the partic- ipating mRNA, siRNA, and their complexes. A previously published data set of 609 exper- imental points was used for the a...
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ndltd-VTETD-oai-vtechworks.lib.vt.edu-10919-346432020-09-26T05:35:38Z Correlation Between Computed Equilibrium Secondary Structure Free Energy and siRNA Efficiency Bhattacharjee, Puranjoy Computer Science Onufriev, Alexey V. Heath, Lenwood S. Ramakrishnan, Naren RNAi efficiency RNA interference(RNAi) RNAi equilibrium thermodynamics Support Vector Machine RNA secondary structure We have explored correlations between the measured efficiency of the RNAi process and several computed signatures that characterize equilibrium secondary structure of the partic- ipating mRNA, siRNA, and their complexes. A previously published data set of 609 exper- imental points was used for the analysis. While virtually no correlation with the computed structural signatures are observed for individual data points, several clear trends emerge when the data is averaged over 10 bins of N â ¼ 60 data points per bin.<p> The strongest trend is a positive linear (r 2 = 0.87) correlation between ln(remaining mRNA) and â Gms , the combined free energy cost of unraveling the siRNA and creating the break in the mRNA secondary structure at the complementary target strand region. At the same time, the free energy change â Gtotal of the entire process mRNA + siRNA â (mRNA â siRNA)complex is not correlated with RNAi efficiency, even after averaging. These general findings appear to be robust to details of the computational protocols. The correlation be- tween computed â Gms and experimentally observed RNAi efficiency can be used to enhance the ability of a machine learning algorithm based on a support vector machine (SVM) to predict effective siRNA sequences for a given target mRNA. Specifically, we observe modest, 3 to 7%, but consistent improvement in the positive predictive value (PPV) when the SVM training set is pre- or post-filtered according to a â Gms threshold. Master of Science 2014-03-14T20:43:47Z 2014-03-14T20:43:47Z 2009-08-06 2009-08-19 2012-05-08 2009-10-13 Thesis etd-08192009-013737 http://hdl.handle.net/10919/34643 http://scholar.lib.vt.edu/theses/available/etd-08192009-013737/ Puranjoy_ETD_Revised2.pdf In Copyright http://rightsstatements.org/vocab/InC/1.0/ application/pdf Virginia Tech |
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RNAi efficiency RNA interference(RNAi) RNAi equilibrium thermodynamics Support Vector Machine RNA secondary structure |
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RNAi efficiency RNA interference(RNAi) RNAi equilibrium thermodynamics Support Vector Machine RNA secondary structure Bhattacharjee, Puranjoy Correlation Between Computed Equilibrium Secondary Structure Free Energy and siRNA Efficiency |
description |
We have explored correlations between the measured efficiency of the RNAi process and
several computed signatures that characterize equilibrium secondary structure of the partic-
ipating mRNA, siRNA, and their complexes. A previously published data set of 609 exper-
imental points was used for the analysis. While virtually no correlation with the computed
structural signatures are observed for individual data points, several clear trends emerge
when the data is averaged over 10 bins of N â ¼ 60 data points per bin.<p>
The strongest trend is a positive linear (r 2 = 0.87) correlation between ln(remaining mRNA)
and â Gms , the combined free energy cost of unraveling the siRNA and creating the break
in the mRNA secondary structure at the complementary target strand region. At the same
time, the free energy change â Gtotal of the entire process mRNA + siRNA â (mRNA â
siRNA)complex is not correlated with RNAi efficiency, even after averaging. These general
findings appear to be robust to details of the computational protocols. The correlation be-
tween computed â Gms and experimentally observed RNAi efficiency can be used to enhance
the ability of a machine learning algorithm based on a support vector machine (SVM) to
predict effective siRNA sequences for a given target mRNA. Specifically, we observe modest,
3 to 7%, but consistent improvement in the positive predictive value (PPV) when the SVM
training set is pre- or post-filtered according to a â Gms threshold. === Master of Science |
author2 |
Computer Science |
author_facet |
Computer Science Bhattacharjee, Puranjoy |
author |
Bhattacharjee, Puranjoy |
author_sort |
Bhattacharjee, Puranjoy |
title |
Correlation Between Computed Equilibrium Secondary Structure Free Energy and siRNA Efficiency |
title_short |
Correlation Between Computed Equilibrium Secondary Structure Free Energy and siRNA Efficiency |
title_full |
Correlation Between Computed Equilibrium Secondary Structure Free Energy and siRNA Efficiency |
title_fullStr |
Correlation Between Computed Equilibrium Secondary Structure Free Energy and siRNA Efficiency |
title_full_unstemmed |
Correlation Between Computed Equilibrium Secondary Structure Free Energy and siRNA Efficiency |
title_sort |
correlation between computed equilibrium secondary structure free energy and sirna efficiency |
publisher |
Virginia Tech |
publishDate |
2014 |
url |
http://hdl.handle.net/10919/34643 http://scholar.lib.vt.edu/theses/available/etd-08192009-013737/ |
work_keys_str_mv |
AT bhattacharjeepuranjoy correlationbetweencomputedequilibriumsecondarystructurefreeenergyandsirnaefficiency |
_version_ |
1719342015276122112 |