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基于机器学习算法的外泌体 miRNA 聚类和候选基序检测。

Clustering and Candidate Motif Detection in Exosomal miRNAs by Application of Machine Learning Algorithms.

机构信息

Center of Bioinformatics, Institute of Inter Disciplinary Studies, Nehru Science Center, Science Faculty, University of Allahabad, Allahabad, 211002, India.

Department of Statistics, Nehru Science Center, Science Faculty, University of Allahabad, Allahabad, 211002, India.

出版信息

Interdiscip Sci. 2019 Jun;11(2):206-214. doi: 10.1007/s12539-017-0253-4. Epub 2017 Jul 22.

Abstract

BACKGROUND

The clustering pattern and motifs give immense information about any biological data. An application of machine learning algorithms for clustering and candidate motif detection in miRNAs derived from exosomes is depicted in this paper. Recent progress in the field of exosome research and more particularly regarding exosomal miRNAs has led much bioinformatic-based research to come into existence. The information on clustering pattern and candidate motifs in miRNAs of exosomal origin would help in analyzing existing, as well as newly discovered miRNAs within exosomes. Along with obtaining clustering pattern and candidate motifs in exosomal miRNAs, this work also elaborates the usefulness of the machine learning algorithms that can be efficiently used and executed on various programming languages/platforms.

RESULT

Data were clustered and sequence candidate motifs were detected successfully. The results were compared and validated with some available web tools such as 'BLASTN' and 'MEME suite'.

CONCLUSION

The machine learning algorithms for aforementioned objectives were applied successfully. This work elaborated utility of machine learning algorithms and language platforms to achieve the tasks of clustering and candidate motif detection in exosomal miRNAs. With the information on mentioned objectives, deeper insight would be gained for analyses of newly discovered miRNAs in exosomes which are considered to be circulating biomarkers. In addition, the execution of machine learning algorithms on various language platforms gives more flexibility to users to try multiple iterations according to their requirements. This approach can be applied to other biological data-mining tasks as well.

摘要

背景

聚类模式和基序为任何生物数据提供了大量信息。本文描述了机器学习算法在从外泌体衍生的 miRNA 中进行聚类和候选基序检测的应用。外泌体研究领域的最新进展,特别是外泌体 miRNA 方面的进展,促使许多基于生物信息学的研究得以产生。外泌体来源的 miRNA 中聚类模式和候选基序的信息将有助于分析现有的以及新发现的外泌体 miRNA。除了获得外泌体 miRNA 的聚类模式和候选基序外,这项工作还阐述了机器学习算法的有用性,这些算法可以在各种编程语言/平台上高效地使用和执行。

结果

成功地对数据进行了聚类,并检测到了序列候选基序。将结果与一些可用的网络工具(如“BLASTN”和“MEME suite”)进行了比较和验证。

结论

成功地应用了上述目标的机器学习算法。这项工作阐述了机器学习算法和语言平台的实用性,以实现外泌体 miRNA 中的聚类和候选基序检测任务。有了这些目标的信息,就可以更深入地了解外泌体中新发现的 miRNA 的分析,这些 miRNA 被认为是循环生物标志物。此外,在各种语言平台上执行机器学习算法为用户提供了更多的灵活性,可以根据他们的需求进行多次迭代。这种方法也可以应用于其他生物数据挖掘任务。

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