Database Commons
Database Commons

a catalog of worldwide biological databases

Database Profile

eSkip-Finder

General information

URL: https://eskip-finder.org
Full name:
Description: eSkip-Finder is the first web-based resource for helping researchers identify effective exon skipping ASOs.
Year founded: 2021
Last update:
Version:
Accessibility:
Accessible
Country/Region: Canada

Classification & Tag

Data type:
RNA
Data object:
Database category:
Major species:
Keywords:

Contact information

University/Institution: University of Alberta
Address: Department of Medical Genetics, University of Alberta Faculty of Medicine and Dentistry, 8613-114 St, Edmonton, AB, Canada
City:
Province/State:
Country/Region: Canada
Contact name (PI/Team): Toshifumi Yokota
Contact email (PI/Helpdesk): toshifum@ualberta.ca

Publications

34104972
eSkip-Finder: a machine learning-based web application and database to identify the optimal sequences of antisense oligonucleotides for exon skipping. [PMID: 34104972]
Shuntaro Chiba, Kenji Rowel Q Lim, Narin Sheri, Saeed Anwar, Esra Erkut, Md Nur Ahad Shah, Tejal Aslesh, Stanley Woo, Omar Sheikh, Rika Maruyama, Hiroaki Takano, Katsuhiko Kunitake, William Duddy, Yasushi Okuno, Yoshitsugu Aoki, Toshifumi Yokota

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.

Nucleic Acids Res. 2021:49(W1) | 34 Citations (from Europe PMC, 2026-04-11)

Ranking

All databases:
1860/6932 (73.182%)
Gene genome and annotation:
582/2039 (71.506%)
1860
Total Rank
32
Citations
6.4
z-index

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Record metadata

Created on: 2022-04-17
Curated by:
Pei Liu [2022-08-28]
Lin Liu [2022-07-31]
Lin Liu [2022-06-03]
Yuxin Qin [2022-05-13]
Jing Wei [2022-04-20]
Jing Wei [2022-04-17]