Stop choosing between accuracy and interpretability.
Most multi-omics signal comes from combinations of features. Predictive Modeling lets you build models that surface those combinations: which transcripts, mutations, cell types, and clinical variables together predict the outcome.
Every trained model is interactively explorable — feature contributions, SHAP-style importances, and the underlying KG evidence that supports each predictor.