Detecting early-warning signals for sudden deterioration of complex diseases by dynamical network biomarkers
The University of Tokyo · Tokyo University of Science · +2 more institutions
Abstract
Considerable evidence suggests that during the progression of complex diseases, the deteriorations are not necessarily smooth but are abrupt, and may cause a critical transition from one state to another at a tipping point. Here, we develop a model-free method to detect early-warning signals of such critical transitions, even with only a small number of samples. Specifically, we theoretically derive an index based on a dynamical network biomarker (DNB) that serves as a general early-warning signal indicating an imminent bifurcation or sudden deterioration before the critical transition occurs. Based on theoretical analyses, we show that predicting a sudden transition from small samples is achievable provided…
Citation impact
- FWCI
- 26.60
- Percentile
- 100%
- References
- 36
Authors
5- LCLuonan ChenCorresponding
The University of Tokyo, Tokyo University of Science, Chinese Academy of Sciences, Shanghai Institutes for Biological Sciences
- RLRui Liu
The University of Tokyo, Tokyo University of Science
- ZLZhi‐Ping Liu
Chinese Academy of Sciences, Shanghai Institutes for Biological Sciences
- MLMeiyi Li
Chinese Academy of Sciences, Shanghai Institutes for Biological Sciences
- KAKazuyuki Aihara
Tokyo University of Science, The University of Tokyo
Topics & keywords
- Warning system
- Computer science
- Relevance (law)
- Data mining
- Tipping point (physics)
- Biomarker
- SIGNAL (programming language)
- Complex network