Bioinformatics and Computational Biology Program, Iowa State University, Ames, IA 50011, USA.
Int J Mol Sci. 2020 Aug 8;21(16):5686. doi: 10.3390/ijms21165686.
Multiple mRNA isoforms of the same gene are produced via alternative splicing, a biological mechanism that regulates protein diversity while maintaining genome size. Alternatively spliced mRNA isoforms of the same gene may sometimes have very similar sequence, but they can have significantly diverse effects on cellular function and regulation. The products of alternative splicing have important and diverse functional roles, such as response to environmental stress, regulation of gene expression, human heritable, and plant diseases. The mRNA isoforms of the same gene can have dramatically different functions. Despite the functional importance of mRNA isoforms, very little has been done to annotate their functions. The recent years have however seen the development of several computational methods aimed at predicting mRNA isoform level biological functions. These methods use a wide array of proteo-genomic data to develop machine learning-based mRNA isoform function prediction tools. In this review, we discuss the computational methods developed for predicting the biological function at the individual mRNA isoform level.
同一基因的多个 mRNA 异构体通过选择性剪接产生,这是一种调节蛋白质多样性同时保持基因组大小的生物学机制。同一基因的选择性剪接 mRNA 异构体有时具有非常相似的序列,但它们可能对细胞功能和调节有显著不同的影响。选择性剪接的产物具有重要且多样的功能作用,例如对环境压力的反应、基因表达的调节、人类遗传和植物疾病。同一基因的 mRNA 异构体可能具有截然不同的功能。尽管 mRNA 异构体具有重要的功能,但对其功能的注释却很少。然而,近年来已经开发了几种旨在预测 mRNA 异构体水平生物学功能的计算方法。这些方法使用广泛的蛋白质基因组数据来开发基于机器学习的 mRNA 异构体功能预测工具。在这篇综述中,我们讨论了为预测单个 mRNA 异构体水平的生物学功能而开发的计算方法。