HealthProcessAI: A Technical Framework and Proof-of-Concept for LLM-Enhanced Healthcare Process Mining
Eduardo Illueca-Fernandez, Kaile Chen, Fernando Seoane, Farhad Abtahi

TL;DR
HealthProcessAI is a framework that simplifies healthcare process mining by integrating LLMs for automated interpretation and reporting, making complex analyses more accessible to diverse users.
Contribution
It introduces a novel framework combining process mining tools with multiple LLMs for automated interpretation and reporting in healthcare workflows.
Findings
Successfully processed sepsis data in multiple scenarios.
LLMs like Claude Sonnet-4 and Gemini 2.5-Pro showed high consistency.
Framework enhances accessibility of complex process mining outputs.
Abstract
Process mining has emerged as a powerful analytical technique for understanding complex healthcare workflows. However, its application faces significant barriers, including technical complexity, a lack of standardized approaches, and limited access to practical training resources. We introduce HealthProcessAI, a GenAI framework designed to simplify process mining applications in healthcare and epidemiology by providing a comprehensive wrapper around existing Python (PM4PY) and R (bupaR) libraries. To address unfamiliarity and improve accessibility, the framework integrates multiple Large Language Models (LLMs) for automated process map interpretation and report generation, helping translate technical analyses into outputs that diverse users can readily understand. We validated the framework using sepsis progression data as a proof-of-concept example and compared the outputs of five…
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