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.

Abstract

Clinical case formulation organizes patient symptoms and psychosocial factors into causal models, often using the 5P framework. However, constructing such graphs from therapy transcripts is time consuming and varies across clinicians. We present InsightFlow, an LLM based approach that automatically generates 5P aligned causal graphs from patient-therapist dialogues. Using 46 psychotherapy intake transcripts annotated by clinical experts, we evaluate LLM generated graphs against human formulations using structural (NetSimile), semantic (embedding similarity), and expert rated clinical criteria. The generated graphs show structural similarity comparable to inter annotator agreement and high semantic alignment with human graphs. Expert evaluations rate the outputs as moderately complete, consistent, and clinically useful. While LLM graphs tend to form more interconnected structures compared to the chain like patterns of human graphs, overall complexity and content coverage are similar. These results suggest that LLMs can produce clinically meaningful case formulation graphs within the natural variability of expert practice. InsightFlow highlights the potential of automated causal modeling to augment clinical workflows, with future work needed to improve temporal reasoning and reduce redundancy.