Personalized Early-Warning Signals during Progression of Human Coronary Atherosclerosis by Landscape Dynamic Network Biomarker.
Jing GeChenxi SongChengming ZhangXiaoping LiuJingzhou ChenKefei DouLuo-Nan ChenPublished in: Genes (2020)
Coronary atherosclerosis is one of the major factors causing cardiovascular diseases. However, identifying the tipping point (predisease state of disease) and detecting early-warning signals of human coronary atherosclerosis for individual patients are still great challenges. The landscape dynamic network biomarkers (l-DNB) methodology is based on the theory of dynamic network biomarkers (DNBs), and can use only one-sample omics data to identify the tipping point of complex diseases, such as coronary atherosclerosis. Based on the l-DNB methodology, by using the metabolomics data of plasma of patients with coronary atherosclerosis at different stages, we accurately detected the early-warning signals of each patient. Moreover, we also discovered a group of dynamic network biomarkers (DNBs) which play key roles in driving the progression of the disease. Our study provides a new insight into the individualized early diagnosis of coronary atherosclerosis and may contribute to the development of personalized medicine.
Keyphrases
- coronary artery disease
- coronary artery
- cardiovascular disease
- aortic stenosis
- endothelial cells
- ejection fraction
- single cell
- end stage renal disease
- mass spectrometry
- type diabetes
- electronic health record
- cardiovascular events
- heart failure
- newly diagnosed
- metabolic syndrome
- big data
- aortic valve
- cardiovascular risk factors
- prognostic factors
- deep learning
- data analysis