The machine learning analysis function of the database can perform binary and multi-classification analysis based on 15 algorithms and survival analysis based on 11 algorithms.
The functional modules include "Model Generation", "Feature Browse", "Model Evaluation" and "Model Application", as illustrated in the left figure. And the specific steps are shown in the navigation bar. (The navigation bar is only used to display the current step and is not for page turning)
Click the "Next Step" and "Last Step" buttons at the bottom to turn pages. Click the other buttons here for analysis.
Each step and module offers multiple visualization approaches and free download services.
The "Model Application" module is an optional function. When drawing a nomogram, there is no need to upload the prediction set.
Users can upload the Training Set and Validation Set separately, or upload a comprehensive dataset in the "Step1: Data Input" and set a proportion for random division to obtain the Training Set and Validation Set.
Click the button on the right navigation bar to obtain the result window of the corresponding ML algorithm. The result window contains sub-pages including "Importance Scores" and other visualizations.
The numbers in the right navigation bar represent the number of top/all features in models.
The top feature will be displayed on the "Importance Score" subpage in the result window of each ML algorithm, and the number can be adjusted by user independently.
For some algorithms, it is necessary to select parameters in the result window based on the intermediate results, and the results can be obtained after submission.
In the subsequent steps, "Feature Browse" will display the intersection and union of top features.
In the "Model Evaluation" step, all features will be used to conduct an overall assessment of the model, and the top features will be evaluated at the feature level.