Tipping-Point Prediction Version 5.0 (Jan. 17, 2021) Chinese version
Contact us Email: scliurui@scut.edu.cn
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     What is TPD?

TPD: Tipping-Point Prediction.

The time evolution or dynamic change of many biological systems, such as disease progression and cell differentiation process, is not always smooth but occasionally abrupt, that is, there is a tipping-point or critical state during such a process at which the system state shifts irreversibly from one state (e.g.normal state) to another state (e.g. disease state), just before the critical transition. It is challenging and also important to predict such a critical state with the measured omics data, which is a key to achieve the predictive or preventive medicine. In this summary, we introduce a web service, the Tipping-Point Prediction (TPD), developed to effectively and rapidly identify the tipping point during the dynamical process of biological systems, and further its leading molecules or network. The web service is based on our computational method called sample-based local network entropy (SNE), which is a model-free data-driven approach with solid theoretical background, i.e., the dynamic network biomarker (DNB). Specifically, TPD is user-friendly and capable to explore the criticality of the dynamics from high-dimensional omics-data in terms of network entropy, thereby capturing not only the early-warning signals of the impending transition but also its leading network (DNB), which are intuitively a group of strong correlated and fluctuated molecules.

The details of the web service are as follows: The input of TPD should be the time-series or stage-course data (expression matrix) in CSV, XLS, TXT files. In the web tool, there is a flexible option for users to assign samples to certain time points. The web tool outputs multifarious visualized results including SNE scores and curves with suggested critical point, the identified key genes (or leading genes) and their information, DNB (the leading network that may drive the critical transition), the dynamical process of the leading network, the survival analysis based on SNE score that may help to identify dark genes (non-differential in terms of expression but differential in terms of network entropy, which may play important roles during the dynamic evolution). Thus, the web tool offers significantly enhanced display of the data and results.

Browser compatibility: TPD web tool is user-friendly for common browsers in operation systems including Linux, MacOS, Windows.

User terms: TPD is publicly accessible and non-commercial, and only provided for academic use. TPD does not reserve any uploaded data. It cleans the data and analysis results immediately the user closes the webpage. There is no user data retention time.

     TPD Release Notes

Current release: Release 5.0, Jan. 17, 2021

(a) Add 'Cell Fate Commitment' section.

(b) Real-time crawling the latest data and visualizing the results of TPD in COVID-19 Outbreak prediction.

(c) Add new demos and support one click to analysis and data download.

  1. Home
  2. COVID-19 monitoring

COVID-19 monitoring by rpLab at SCUT

Custom property

Default display of real-time monitoring of novel coronavirus

Epidemic Monitoring Map

LNE Map
Daily New Cases Map
With the dynamic evolution of network graph, critical points are monitored in real time. The color of each region corresponds to its LNE score;

Epidemic Monitoring Histogram


LNE Histogram

Daily New Cases Histogram
When LNE histogram sent out warning signals, hospitalized patients had not risen significantly. About a month later, regional influenza reached its outbreak point. Thus, LNE warning signals can provide CDC with at least four to five weeks of preparation time.

TPD is a data analysis website to identify the tipping point during disease progression.

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  • KEGG pathway
  • DAVID 6.8
  • Gene Ontology

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