Solutions
End-to-End Support from Discovery to Development
Solutions
End-to-End Support from Discovery to Development
ANALYTICAL SOLUTIONS
Seven Workflows for Every Research Question
BiRAGAS supports the full spectrum of translational research through intent-classified, modular workflows – from initial causal discovery to counterfactual simulation and regulatory-grade evidence dossiers.
From Discovery to Explanation
Each workflow is a coordinated sequence of validated analytical modules. Workflows can be composed and chained – a Causal Discovery result can feed directly into Intervention Ranking, or a Comparative study can be followed by Counterfactual simulation to test proposed interventions before wet-lab validation.
Find Causal Drivers of Disease
Discovers novel causal drivers of a disease or phenotype from multi-modal data. Ingests expression data, performs quality control and normalisation, constructs a causal graph, applies temporal and genetic constraints, and validates through Mendelian Randomization and perturbation evidence.
→ Ranked gene list · CCS scores · Validated causal graph · Full evidence dossier
Test “Does X Cause Y?”
Validates a specific causal hypothesis by applying targeted graph discovery, temporal validation, and Mendelian Randomization to the nominated relationship, generating a comprehensive evidence card with effect estimates and confidence metrics.
→ Edge evidence card · Effect estimate · Confidence metrics · Contradiction flags
Prioritise Therapeutic Targets
Ranks candidate interventions by actionability. Combines signature reversal scoring — identifying targets whose modulation most effectively shifts disease expression toward a healthy state — with dose-response modelling and causal confidence weighting.
→ Ranked target list · Intervention effects · CCS scores · Dose-response data
Compare Mechanisms Across Cohorts
→ Delta driver report · Shared/unique edge maps · Stratified causal graphs
Simulate “What If” Scenarios
Models predicted biological consequences of unseen perturbations before wet-lab validation. A trained counterfactual model estimates downstream effects of hypothetical genetic or pharmacological interventions, ranked by predicted effect size with uncertainty quantification.
→ Predicted deltas · Uncertainty estimates · Ranked what-if scenarios
Explain Any Causal Claim
Provides complete transparency into why any causal relationship was identified. Returns a full breakdown of supporting evidence streams, effect sizes, data sources, and any contradictions — supporting scientific review, regulatory submissions, and internal audit trails.
→ Evidence breakdown · Contradiction analysis · Provenance report
Four-Factor Arbitration Framework
When statistical methods detect bidirectional correlations, BiRAGAS applies a four-factor arbitration system integrating orthogonal evidence sources in a defined priority hierarchy to enforce biologically coherent directionality.

Genetic variants are immutable sources of causation. If Gene A has a GWAS association and Gene B does not, A → B is enforced. Highest priority — overrides all other factors.

Genes in different cell types cannot interact directly unless via secreted signals. Cell-type deconvolution provides a veto on physically impossible interactions.

Causes precede effects. If Gene A peaks before Gene B in pseudotime or time-series data, A → B is enforced using Granger causality and trajectory analysis.

Strong CRISPR interventional effects indicate causal drivers. Where Average Causal Effect of A substantially exceeds B, direction A → B is enforced.
