Biomedical Journal

Biomedical Journal

Volume 45, Issue 3, June 2022, Pages 472-481
Biomedical Journal

Original Article
Novel approach by natural language processing for COVID-19 knowledge discovery

https://doi.org/10.1016/j.bj.2022.03.011Get rights and content
Under a Creative Commons license
open access

Abstract

Background

The impact of COVID-19 on public health has mandated an ‘all hands on deck’ scientific response. The current clinical study and basic research on COVID-19 are mainly based on existing publications or our knowledge of coronavirus. However, efficiently retrieval of accurate, relevant knowledge on COVID-19 can pose significant challenges for researchers.

Methods

To improve quality in accessing important literature findings, we developed a novel natural language processing (NLP) method to automatically recognize the associations among potential targeted host organ systems, associated clinical manifestations, and pathways. We further validated these associations through clinician experts' evaluations and prioritize candidate drug targets through bioinformatics network analysis.

Results

We found that the angiotensin-converting enzyme 2 (ACE2), a receptor that SARS-CoV-2 required for cell entry, is associated with cardiovascular and endocrine organ system and diseases. Furthermore, we found SARS-CoV-2 is associated with some important pathways such as IL-6, TNF-alpha, and IL-1 beta-induced dyslipidemia, which are related to inflammation, lipogenesis, and oxidative stress mechanisms, suggesting potential drug candidates.

Conclusion

We prioritized the list of therapeutic targets involved in antiviral and immune modulating drugs for experimental validation, rendering it valuable during public health crises marked by stresses on clinical and research capacity. Our automatic intelligence pipeline also contributes to other novel and emerging disease management and treatments in the future.

Keywords

SARS-COV-2
ACE2
TMPRSS2
COVID-19
Natural language processing

Cited by (0)

Peer review under responsibility of Chang Gung University.

1

Li Wang, Lei Jiang and Dongyan Pan contributed equally to this work.

2

Yunyun Zhou and Huji Xu contributed equally to this work and are co-corresponding authors.