Identification of Transcriptome Biomarkers for Severe COVID-19 with Machine Learning Methods.
Xiaohong LiXianchao ZhouShijian DingLei ChenKaiyan FengHao LiTao HuangYu-Dong CaiPublished in: Biomolecules (2022)
The rapid spread of COVID-19 has become a major concern for people's lives and health all around the world. COVID-19 patients in various phases and severity require individualized treatment given that different patients may develop different symptoms. We employed machine learning methods to discover biomarkers that may accurately classify COVID-19 in various disease states and severities in this study. The blood gene expression profiles from 50 COVID-19 patients without intensive care, 50 COVID-19 patients with intensive care, 10 non-COVID-19 individuals without intensive care, and 16 non-COVID-19 individuals with intensive care were analyzed. Boruta was first used to remove irrelevant gene features in the expression profiles, and then, the minimum redundancy maximum relevance was applied to sort the remaining features. The generated feature-ranked list was fed into the incremental feature selection method to discover the essential genes and build powerful classifiers. The molecular mechanism of some biomarker genes was addressed using recent studies, and biological functions enriched by essential genes were examined. Our findings imply that genes including UBE2C, PCLAF, CDK1, CCNB1, MND1, APOBEC3G, TRAF3IP3, CD48, and GZMA play key roles in defining the different states and severity of COVID-19. Thus, a new point of reference is provided for understanding the disease's etiology and facilitating a precise therapy.
Keyphrases
- sars cov
- coronavirus disease
- machine learning
- genome wide
- genome wide identification
- respiratory syndrome coronavirus
- bioinformatics analysis
- newly diagnosed
- deep learning
- healthcare
- public health
- stem cells
- mental health
- chronic kidney disease
- bone marrow
- artificial intelligence
- social media
- ejection fraction
- cell proliferation
- early onset
- transcription factor
- quantum dots
- combination therapy
- drug induced