InsightFlow: LLM-Driven Synthesis of Patient Narratives for Mental Health into Causal Models
arXiv cs.CL / 4/15/2026
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Key Points
- InsightFlow is an LLM-based method that automatically converts patient–therapist dialogue transcripts into 5P-aligned causal graphs for mental-health case formulation.
- The study evaluates the generated graphs against expert human formulations using structural (NetSimile) and semantic (embedding similarity) metrics, finding performance comparable to inter-annotator agreement and strong semantic alignment.
- Expert reviewers rated the outputs as moderately complete, consistent, and clinically useful, suggesting the approach fits within natural variability of clinician practice.
- The generated graphs often appear more interconnected than human “chain-like” patterns, but overall complexity and content coverage remain similar.
- The paper concludes that automated causal modeling could augment clinical workflows, while noting remaining challenges in temporal reasoning and reducing redundancy for future work.




