Generating Synthetic Doctor-Patient Conversations for Long-form Audio Summarization
Abstract
A synthetic data generation pipeline for long-context audio reasoning in doctor-patient conversations using open-weight models produces 8,800 conversations with 1.3k hours of audio and reference notes, revealing that cascaded approaches outperform end-to-end models in current open-weight systems.
Long-context audio reasoning is underserved in both training data and evaluation. Existing benchmarks target short-context tasks, and the open-ended generation tasks most relevant to long-context reasoning pose well-known challenges for automatic evaluation. We propose a synthetic data generation pipeline designed to serve both as a training resource and as a controlled evaluation environment, and instantiate it for first-visit doctor-patient conversations with SOAP note generation as the task. The pipeline has three stages, persona-driven dialogue generation, multi-speaker audio synthesis with overlap/pause modeling, room acoustics, and sound events, and LLM-based reference SOAP note production, built entirely on open-weight models. We release 8,800 synthetic conversations with 1.3k hours of corresponding audio and reference notes. Evaluating current open-weight systems, we find that cascaded approaches still substantially outperform end-to-end models.
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