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dc.contributor.authorLe, Duc-Hau-
dc.date.accessioned2020-02-18T04:37:16Z-
dc.date.available2020-02-18T04:37:16Z-
dc.date.issued2019-
dc.identifier.citationLe, 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.vi
dc.identifier.issn2588-1086-
dc.identifier.urihttp://repository.vnu.edu.vn/handle/VNU_123/70673-
dc.description.abstractSince 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.vi
dc.language.isoenvi
dc.publisherH. : ĐHQGHNvi
dc.relation.ispartofseriesComputer Science and Communication Engineering;-
dc.subjectMicroRNAvi
dc.subjectLong non-coding RNAvi
dc.subjectDisease-miRNA associationvi
dc.subjectDisease-lncRNA associationvi
dc.subjectNon-coding RNA similarityvi
dc.subjectDisease similarityvi
dc.subjectNetwork-based methodvi
dc.subjectMachine learning-based methodvi
dc.titleA general computational framework for prediction of disease-associated non-coding RNAsvi
dc.typeArticlevi
dc.identifier.doihttps://doi.org/10.25073/2588-1086/vnucsce.224-
Appears in Collections:Computer Science and Communication Engineering


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  • Full metadata record
    DC FieldValueLanguage
    dc.contributor.authorLe, Duc-Hau-
    dc.date.accessioned2020-02-18T04:37:16Z-
    dc.date.available2020-02-18T04:37:16Z-
    dc.date.issued2019-
    dc.identifier.citationLe, 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.vi
    dc.identifier.issn2588-1086-
    dc.identifier.urihttp://repository.vnu.edu.vn/handle/VNU_123/70673-
    dc.description.abstractSince 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.vi
    dc.language.isoenvi
    dc.publisherH. : ĐHQGHNvi
    dc.relation.ispartofseriesComputer Science and Communication Engineering;-
    dc.subjectMicroRNAvi
    dc.subjectLong non-coding RNAvi
    dc.subjectDisease-miRNA associationvi
    dc.subjectDisease-lncRNA associationvi
    dc.subjectNon-coding RNA similarityvi
    dc.subjectDisease similarityvi
    dc.subjectNetwork-based methodvi
    dc.subjectMachine learning-based methodvi
    dc.titleA general computational framework for prediction of disease-associated non-coding RNAsvi
    dc.typeArticlevi
    dc.identifier.doihttps://doi.org/10.25073/2588-1086/vnucsce.224-
    Appears in Collections:Computer Science and Communication Engineering


  • A General Computational Framework for Prediction.pdf
    • Size : 726,56 kB

    • Format : Adobe PDF

    • View : 
    • Download : 


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