T.P.29 Categorization of 77 dystrophin exons into five groups by a decision tree using indexes of splicing regulatory factors

Abstract Duchenne muscular dystrophy (DMD), a fatal muscle-wasting disease, is characterized by dystrophin deficiency caused by mutations in the dystrophin gene. Skipping of a target dystrophin exon during splicing with antisense oligonucleotides is attracting much attention as the most plausible wa...

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Published in:Neuromuscular disorders : NMD Vol. 22; no. 9; p. 861
Main Authors: Malueka, R.G, Takaoka, Y, Yagi, M, Awano, H, Lee, T, Dwianingsih, E.K, Nishida, A, Takeshima, Y, Matsuo, M
Format: Journal Article
Language:English
Published: Elsevier B.V 01-10-2012
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Summary:Abstract Duchenne muscular dystrophy (DMD), a fatal muscle-wasting disease, is characterized by dystrophin deficiency caused by mutations in the dystrophin gene. Skipping of a target dystrophin exon during splicing with antisense oligonucleotides is attracting much attention as the most plausible way to express dystrophin in DMD. Antisense oligonucleotides (AOs) have been designed against splicing regulatory sequences such as splicing enhancer sequences of target exons. Recently, we reported that a chemical kinase inhibitor specifically enhances the skipping of mutated dystrophin exon 31, indicating the existence of exon-specific splicing regulatory systems. However, the basis for such individual regulatory systems is largely unknown. Here, we categorized the dystrophin exons in terms of their splicing regulatory factors. Using a computer-based machine learning system, we first constructed a decision tree separating 77 authentic from 14 known cryptic exons using 26 indexes of splicing regulatory factors as decision markers. We evaluated the classification accuracy of a novel cryptic exon (exon 11a) identified in this study. However, the tree mislabeled exon 11a as a true exon. Therefore, we re-constructed the decision tree to separate all 15 cryptic exons. The revised decision tree categorized the 77 authentic exons into five groups. Furthermore, all nine disease-associated novel exons were successfully categorized as exons, validating the decision tree. One group, consisting of 30 exons, was characterized by a high density of exonic splicing enhancer sequences. This suggests that AOs targeting splicing enhancer sequences would efficiently induce skipping of exons belonging to this group. Our classification may help to establish the strategy for exon skipping therapy for Duchenne muscular dystrophy.
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ISSN:0960-8966
1873-2364
DOI:10.1016/j.nmd.2012.06.194