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In vitro and in silico analysis reveals an efficient algorithm to predict the splicing consequences of mutations at the 5′ splice sites

We have found that two previously reported exonic mutations in the PINK1 and PARK7 genes affect pre-mRNA splicing. To develop an algorithm to predict underestimated splicing consequences of exonic mutations at the 5′ splice site, we constructed and analyzed 31 minigenes carrying exonic splicing muta...

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Detalles Bibliográficos
Autores principales: Sahashi, Kentaro, Masuda, Akio, Matsuura, Tohru, Shinmi, Jun, Zhang, Zhujun, Takeshima, Yasuhiro, Matsuo, Masafumi, Sobue, Gen, Ohno, Kinji
Formato: Texto
Lenguaje:English
Publicado: Oxford University Press 2007
Materias:
RNA
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2094079/
https://www.ncbi.nlm.nih.gov/pubmed/17726045
http://dx.doi.org/10.1093/nar/gkm647
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author Sahashi, Kentaro
Masuda, Akio
Matsuura, Tohru
Shinmi, Jun
Zhang, Zhujun
Takeshima, Yasuhiro
Matsuo, Masafumi
Sobue, Gen
Ohno, Kinji
author_facet Sahashi, Kentaro
Masuda, Akio
Matsuura, Tohru
Shinmi, Jun
Zhang, Zhujun
Takeshima, Yasuhiro
Matsuo, Masafumi
Sobue, Gen
Ohno, Kinji
author_sort Sahashi, Kentaro
collection PubMed
description We have found that two previously reported exonic mutations in the PINK1 and PARK7 genes affect pre-mRNA splicing. To develop an algorithm to predict underestimated splicing consequences of exonic mutations at the 5′ splice site, we constructed and analyzed 31 minigenes carrying exonic splicing mutations and their derivatives. We also examined 189 249 U2-dependent 5′ splice sites of the entire human genome and found that a new variable, the SD-Score, which represents a common logarithm of the frequency of a specific 5′ splice site, efficiently predicts the splicing consequences of these minigenes. We also employed the information contents (R(i)) to improve the prediction accuracy. We validated our algorithm by analyzing 32 additional minigenes as well as 179 previously reported splicing mutations. The SD-Score algorithm predicted aberrant splicings in 198 of 204 sites (sensitivity = 97.1%) and normal splicings in 36 of 38 sites (specificity = 94.7%). Simulation of all possible exonic mutations at positions −3, −2 and −1 of the 189 249 sites predicts that 37.8, 88.8 and 96.8% of these mutations would affect pre-mRNA splicing, respectively. We propose that the SD-Score algorithm is a practical tool to predict splicing consequences of mutations affecting the 5′ splice site.
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spelling pubmed-20940792007-12-03 In vitro and in silico analysis reveals an efficient algorithm to predict the splicing consequences of mutations at the 5′ splice sites Sahashi, Kentaro Masuda, Akio Matsuura, Tohru Shinmi, Jun Zhang, Zhujun Takeshima, Yasuhiro Matsuo, Masafumi Sobue, Gen Ohno, Kinji Nucleic Acids Res RNA We have found that two previously reported exonic mutations in the PINK1 and PARK7 genes affect pre-mRNA splicing. To develop an algorithm to predict underestimated splicing consequences of exonic mutations at the 5′ splice site, we constructed and analyzed 31 minigenes carrying exonic splicing mutations and their derivatives. We also examined 189 249 U2-dependent 5′ splice sites of the entire human genome and found that a new variable, the SD-Score, which represents a common logarithm of the frequency of a specific 5′ splice site, efficiently predicts the splicing consequences of these minigenes. We also employed the information contents (R(i)) to improve the prediction accuracy. We validated our algorithm by analyzing 32 additional minigenes as well as 179 previously reported splicing mutations. The SD-Score algorithm predicted aberrant splicings in 198 of 204 sites (sensitivity = 97.1%) and normal splicings in 36 of 38 sites (specificity = 94.7%). Simulation of all possible exonic mutations at positions −3, −2 and −1 of the 189 249 sites predicts that 37.8, 88.8 and 96.8% of these mutations would affect pre-mRNA splicing, respectively. We propose that the SD-Score algorithm is a practical tool to predict splicing consequences of mutations affecting the 5′ splice site. Oxford University Press 2007-09 2007-08-28 /pmc/articles/PMC2094079/ /pubmed/17726045 http://dx.doi.org/10.1093/nar/gkm647 Text en © 2007 The Author(s) http://creativecommons.org/licenses/by-nc/2.0/uk/ This is an Open Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (http://creativecommons.org/licenses/by-nc/2.0/uk/) which permits unrestricted non-commercial use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle RNA
Sahashi, Kentaro
Masuda, Akio
Matsuura, Tohru
Shinmi, Jun
Zhang, Zhujun
Takeshima, Yasuhiro
Matsuo, Masafumi
Sobue, Gen
Ohno, Kinji
In vitro and in silico analysis reveals an efficient algorithm to predict the splicing consequences of mutations at the 5′ splice sites
title In vitro and in silico analysis reveals an efficient algorithm to predict the splicing consequences of mutations at the 5′ splice sites
title_full In vitro and in silico analysis reveals an efficient algorithm to predict the splicing consequences of mutations at the 5′ splice sites
title_fullStr In vitro and in silico analysis reveals an efficient algorithm to predict the splicing consequences of mutations at the 5′ splice sites
title_full_unstemmed In vitro and in silico analysis reveals an efficient algorithm to predict the splicing consequences of mutations at the 5′ splice sites
title_short In vitro and in silico analysis reveals an efficient algorithm to predict the splicing consequences of mutations at the 5′ splice sites
title_sort in vitro and in silico analysis reveals an efficient algorithm to predict the splicing consequences of mutations at the 5′ splice sites
topic RNA
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2094079/
https://www.ncbi.nlm.nih.gov/pubmed/17726045
http://dx.doi.org/10.1093/nar/gkm647
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