# Causal knowledge graph analysis identifies adverse drug effects

**Authors:** Sumyyah Toonsi, Paul N Schofield, Robert Hoehndorf

PMC · DOI: 10.1093/bioinformatics/btaf661 · Bioinformatics · 2025-12-12

## TL;DR

This paper introduces causal knowledge graphs to identify adverse drug effects by combining biomedical knowledge with causal inference methods.

## Contribution

The novel Causal Knowledge Graph (CKG) framework integrates deductive reasoning with formal causal semantics for scalable causal inference.

## Key findings

- The CKG approach successfully reproduced known adverse drug reactions with high precision.
- It identified previously undocumented significant candidate adverse effects.
- Combining predicted drug effects with established databases improved prediction of shared drug indications.

## Abstract

Knowledge graphs and structural causal models have each proven valuable for organizing biomedical knowledge and estimating causal effects, but remain largely disconnected: knowledge graphs encode qualitative relationships focusing on facts and deductive reasoning without formal probabilistic semantics, while causal models lack integration with background knowledge in knowledge graphs and have no access to the deductive reasoning capabilities that knowledge graphs provide.

To bridge this gap, we introduce a novel formulation of Causal Knowledge Graphs (CKGs) which extend knowledge graphs with formal causal semantics, preserving their deductive capabilities while enabling principled causal inference. CKGs support deconfounding via explicitly marked causal edges and facilitate hypothesis formulation aligned with both encoded and entailed background knowledge. We constructed a Drug–Disease CKG (DD-CKG) integrating disease progression pathways, drug indications, side-effects, and hierarchical disease classification to enable automated large-scale mediation analysis. Applied to UK Biobank and MIMIC-IV cohorts, we tested whether drugs mediate effects between indications and downstream disease progression, adjusting for confounders inferred from the DD-CKG. Our approach successfully reproduced known adverse drug reactions with high precision while identifying previously undocumented significant candidate adverse effects. Further validation through side effect similarity analysis demonstrated that combining our predicted drug effects with established databases significantly improves the prediction of shared drug indications, supporting the clinical relevance of our novel findings. These results demonstrate that our methodology provides a generalizable, knowledge-driven framework for scalable causal inference.

The data is available through https://github.com/bio-ontology-research-group/Mediation-Analysis-using-Causal-Knowledge-Graph.

## Full-text entities

- **Diseases:** Disorder of kidney and ureter (MESH:D007674), Fatty liver (MESH:D005234), myocardial infarction (MESH:D009203), GERD (MESH:D005764), DD (MESH:C536170), diseases (MESH:D004194), COPD (MESH:D029424), Non-Hodgkin lymphoma (MESH:D008228), ADRs (MESH:D064420), Type 2 diabetes mellitus (MESH:D003924), Malignant renal neoplasm (MESH:D009369), renal failure (MESH:D051437), Hyperglycemia (MESH:D006943), interstitial lung disease (MESH:D017563), hypertension (MESH:D006973), Alcohol dependence (MESH:D000437), Hyperlipidemia (MESH:D006949), Tumor Lysis Syndrome (MESH:D015275)
- **Chemicals:** lansoprazole (MESH:D064747), alcohol (MESH:D000438), T (MESH:D014316), ramipril (MESH:D017257), Vincristine (MESH:D014750), lisinopril (MESH:D017706), perindopril (MESH:D020913), Simvastatin (MESH:D019821), enalapril (MESH:D004656), ACEs (MESH:C024789), omeprazole (MESH:D009853)
- **Species:** Homo sapiens (human, species) [taxon 9606]

## Full text

_Full body text omitted from this summary view._ Fetch the complete paper as Markdown: https://tomesphere.com/paper/PMC12790815/full.md

## Figures

1 figure with captions in the complete paper: https://tomesphere.com/paper/PMC12790815/full.md

## References

59 references — full list in the complete paper: https://tomesphere.com/paper/PMC12790815/full.md

---
Source: https://tomesphere.com/paper/PMC12790815