A general computational framework for prediction of disease-associated non-coding RNAs

Since last decade, we have been witnessing the raise of non-coding RNAs (ncRNAs) in biomedical research. Many ncRNAs have been identified and classified into different classes based on their length in number of base pairs (bp). In parallel, our understanding about functions of ncRNAs is gradually in...

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Main Author: Le, Duc-Hau
Format: Article
Language:English
Published: H. : ĐHQGHN 2020
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Online Access:http://repository.vnu.edu.vn/handle/VNU_123/70673
https://doi.org/10.25073/2588-1086/vnucsce.224
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Institution: Vietnam National University, Hanoi
Language: English
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spelling oai:112.137.131.14:VNU_123-706732020-02-18T04:37:16Z A general computational framework for prediction of disease-associated non-coding RNAs Le, Duc-Hau MicroRNA Long non-coding RNA Disease-miRNA association Disease-lncRNA association Non-coding RNA similarity Disease similarity Network-based method Machine learning-based method Since last decade, we have been witnessing the raise of non-coding RNAs (ncRNAs) in biomedical research. Many ncRNAs have been identified and classified into different classes based on their length in number of base pairs (bp). In parallel, our understanding about functions of ncRNAs is gradually increased. However, only small set among tens of thousands of ncRNAs have been well studied about their functions and their roles in development of diseases. This raises a pressing need to develop computational methods to associate diseases and ncRNAs. Two most widely studied ncRNAs are microRNA (miRNA) and long non-coding RNA (lncRNA), since miRNAs are the regulators of most protein-coding genes and lncRNAs are the most ubiquitously found in mammalian. To date, many computational methods have been also proposed for prediction of disease-associated miRNAs and lncRNAs, and recently comprehensively reviewed. However, in the previous reviews, these computational methods were described separately, thus this limits our understanding about their underlying computational aspects. Therefore, in this study, we propose a general computational framework for prediction of disease-associated ncRNAs. The framework demonstrates a whole computational process from data preparation to computational models. 2020-02-18T04:37:16Z 2020-02-18T04:37:16Z 2019 Article Le, D-H. (2019). A general computational framework for prediction of disease-associated non-coding RNAs. VNU Journal of Science: Comp. Science & Com. Eng., Vol. 35, No. 2 (2019) 31-39. 2588-1086 http://repository.vnu.edu.vn/handle/VNU_123/70673 https://doi.org/10.25073/2588-1086/vnucsce.224 en Computer Science and Communication Engineering; application/pdf H. : ĐHQGHN
institution Vietnam National University, Hanoi
building VNU Library & Information Center
country Vietnam
collection VNU Digital Repository
language English
topic MicroRNA
Long non-coding RNA
Disease-miRNA association
Disease-lncRNA association
Non-coding RNA similarity
Disease similarity
Network-based method
Machine learning-based method
spellingShingle MicroRNA
Long non-coding RNA
Disease-miRNA association
Disease-lncRNA association
Non-coding RNA similarity
Disease similarity
Network-based method
Machine learning-based method
Le, Duc-Hau
A general computational framework for prediction of disease-associated non-coding RNAs
description Since last decade, we have been witnessing the raise of non-coding RNAs (ncRNAs) in biomedical research. Many ncRNAs have been identified and classified into different classes based on their length in number of base pairs (bp). In parallel, our understanding about functions of ncRNAs is gradually increased. However, only small set among tens of thousands of ncRNAs have been well studied about their functions and their roles in development of diseases. This raises a pressing need to develop computational methods to associate diseases and ncRNAs. Two most widely studied ncRNAs are microRNA (miRNA) and long non-coding RNA (lncRNA), since miRNAs are the regulators of most protein-coding genes and lncRNAs are the most ubiquitously found in mammalian. To date, many computational methods have been also proposed for prediction of disease-associated miRNAs and lncRNAs, and recently comprehensively reviewed. However, in the previous reviews, these computational methods were described separately, thus this limits our understanding about their underlying computational aspects. Therefore, in this study, we propose a general computational framework for prediction of disease-associated ncRNAs. The framework demonstrates a whole computational process from data preparation to computational models.
format Article
author Le, Duc-Hau
author_facet Le, Duc-Hau
author_sort Le, Duc-Hau
title A general computational framework for prediction of disease-associated non-coding RNAs
title_short A general computational framework for prediction of disease-associated non-coding RNAs
title_full A general computational framework for prediction of disease-associated non-coding RNAs
title_fullStr A general computational framework for prediction of disease-associated non-coding RNAs
title_full_unstemmed A general computational framework for prediction of disease-associated non-coding RNAs
title_sort general computational framework for prediction of disease-associated non-coding rnas
publisher H. : ĐHQGHN
publishDate 2020
url http://repository.vnu.edu.vn/handle/VNU_123/70673
https://doi.org/10.25073/2588-1086/vnucsce.224
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