Inclusion of high throughput technologies in the field of biology has generated massive amounts of biological data in the recent years. Now, transforming these huge volumes of data into knowledge is the primary challenge in computational biology. The traditional methods of data analysis have failed to carry out the task. Hence, researchers are turning to machine learning based approaches for the analysis of high-dimensional big data. In machine learning, once a model is trained with a training dataset, it can be applied on a testing dataset which is independent. In current times, deep learning algorithms further promote the application of machine learning in several field of biology including plant virology. Considering a significant progress in the application of machine learning in understanding plant virology, this review highlights an introductory note on machine learning and comprehensively discusses the trends and prospects of machine learning in diagnosis of viral diseases, understanding host-virus interplay and emergence of plant viruses.
翻译:近年来,生物领域高载量技术的纳入产生了大量的生物数据。现在,将大量数据转化为知识是计算生物学的主要挑战。传统的数据分析方法未能完成这一任务。因此,研究人员正在转向基于机器的学习方法,以分析高维大数据。在机器学习中,一旦模型经过培训,就可应用于一个独立的测试数据集。在目前,深入的学习算法进一步促进在包括植物病毒学在内的若干生物学领域应用机器学习。考虑到在应用机器学习了解植物病毒学方面取得的重大进展,本审查突出介绍了关于机器学习的介绍性说明,并全面讨论了机器在诊断病毒疾病、了解宿主病毒与病毒的相互作用和植物病毒的出现方面学习的趋势和前景。