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非编码 RNA 与疾病关联预测的计算方法综述

A comprehensive survey on computational methods of non-coding RNA and disease association prediction.

机构信息

School of Computer Science, Shaanxi Normal University, Xi'an, China.

Department of Computer Science, Georgia State University, Atlanta, GA 30302, USA.

出版信息

Brief Bioinform. 2021 Jul 20;22(4). doi: 10.1093/bib/bbaa350.

Abstract

The studies on relationships between non-coding RNAs and diseases are widely carried out in recent years. A large number of experimental methods and technologies of producing biological data have also been developed. However, due to their high labor cost and production time, nowadays, calculation-based methods, especially machine learning and deep learning methods, have received a lot of attention and been used commonly to solve these problems. From a computational point of view, this survey mainly introduces three common non-coding RNAs, i.e. miRNAs, lncRNAs and circRNAs, and the related computational methods for predicting their association with diseases. First, the mainstream databases of above three non-coding RNAs are introduced in detail. Then, we present several methods for RNA similarity and disease similarity calculations. Later, we investigate ncRNA-disease prediction methods in details and classify these methods into five types: network propagating, recommend system, matrix completion, machine learning and deep learning. Furthermore, we provide a summary of the applications of these five types of computational methods in predicting the associations between diseases and miRNAs, lncRNAs and circRNAs, respectively. Finally, the advantages and limitations of various methods are identified, and future researches and challenges are also discussed.

摘要

近年来,非编码 RNA 与疾病关系的研究广泛开展,大量产生生物数据的实验方法和技术也得到了发展。然而,由于其劳动力成本和生产时间高,如今,基于计算的方法,特别是机器学习和深度学习方法,受到了广泛关注并被普遍用于解决这些问题。从计算的角度来看,本调查主要介绍了三种常见的非编码 RNA,即 miRNA、lncRNA 和 circRNA,以及用于预测它们与疾病关联的相关计算方法。首先,详细介绍了上述三种非编码 RNA 的主流数据库。然后,我们提出了几种用于计算 RNA 相似性和疾病相似性的方法。接着,我们详细研究了 ncRNA-疾病预测方法,并将这些方法分为五类:网络传播、推荐系统、矩阵补全、机器学习和深度学习。此外,我们分别对这五类计算方法在预测疾病与 miRNAs、lncRNAs 和 circRNAs 之间的关联中的应用进行了总结。最后,确定了各种方法的优缺点,并讨论了未来的研究和挑战。

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