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MMedFD: A Real-World Healthcare Benchmark for Multi-Turn Full-Duplex Automatic Speech Recognition

๐Ÿ“„ Preprint: MMedFD โ€” For the complete benchmark construction pipeline, evaluation methodology, dataset specifications, and additional implementation details, please refer to the preprint.

โš ๏ธData Availability

Full access requires internal approval and a research-only data use agreement. ๐Ÿšซ Non-Commercial Use This dataset is provided for non-commercial research and education only. Commercial use is prohibited.
Researchers who wish to request full access may contact yangxiao.wxy@antgroup.com with a brief description of their affiliation, project goals, intended use, and data protection plan. Only de-identified data may be shared, and redistribution is prohibited.

๐Ÿ—‚๏ธ Data Release & Access

  • Public release (partial subset): We release only a portion of the data used for this benchmarkโ€™s training and evaluation. This Lite subset differs in amount and coverage from our internal full dataset and is not a drop-in replacement for the complete data.
  • Whatโ€™s included: A reduced selection of dialogues/audio/text sufficient to reproduce the reported benchmark protocol at a smaller scale.
  • Not included: Additional sessions, higher-fidelity artifacts, and full validation/test coverage remain internal.

๐Ÿ”’ Privacy, Safety & Redaction

  • Privacy-preserving audio: To protect speaker privacy, all audio has been re-synthesized via TTS (privacy-preserving re-encoding). This process obfuscates speaker identity and acoustic biomarkers while preserving task-relevant linguistic content for modeling.
  • Real-world dialogs: The dialogue content originates from real-world collections. However, sensitive spans (e.g., direct identifiers, highly specific personal details) are automatically redacted by an LLM-based filter before release.
  • Residual risk: Despite these protections, re-identification attempts are prohibited. Please do not try to recover original identities or link samples to outside sources.

๐Ÿ“‘ How to Cite

If this code or our benchmark is useful for your research, please consider citing our paper:

@misc{chen2025mmedfdrealworldhealthcarebenchmark,
      title={MMedFD: A Real-world Healthcare Benchmark for Multi-turn Full-Duplex Automatic Speech Recognition}, 
      author={Hongzhao Chen and XiaoYang Wang and Jing Lan and Hexiao Ding and Yufeng Jiang and MingHui Yang and DanHui Xu and Jun Luo and Nga-Chun Ng and Gerald W. Y. Cheng and Yunlin Mao and Jung Sun Yoo},
      year={2025},
      eprint={2509.19817},
      archivePrefix={arXiv},
      primaryClass={eess.AS},
      url={https://arxiv.org/abs/2509.19817}, 
}
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