LGDec 3, 2021

Application of Machine Learning in understanding plant virus pathogenesis: Trends and perspectives on emergence, diagnosis, host-virus interplay and management

arXiv:2112.01998v124 citations
Originality Synthesis-oriented
AI Analysis

It addresses the challenge of transforming massive biological data into knowledge for researchers in computational biology and plant virology, but it is a review paper, so it is incremental by summarizing existing progress.

This review discusses the application of machine learning to analyze high-dimensional biological data in plant virology, focusing on trends and prospects for diagnosing viral diseases, understanding host-virus interactions, and managing virus emergence.

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.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes