--- license: cc-by-nc-4.0 language: - en - es - de task_categories: - automatic-speech-recognition - text-to-speech tags: - medical-speech - healthcare-ai - clinical-documentation - voice-ai - speech-data - asr pretty_name: "Medical Speech Dataset" dataset_info: features: - name: file_name dtype: string - name: id dtype: int64 - name: gender dtype: string - name: ethnicity dtype: string - name: occupation dtype: string - name: birth_place dtype: string - name: mother_tongue dtype: string - name: dialect dtype: string - name: year_of_birth dtype: int64 - name: years_at_birth_place dtype: int64 - name: languages_data dtype: string - name: os dtype: string - name: device dtype: string - name: browser dtype: string - name: duration dtype: float64 - name: emotions dtype: string - name: language dtype: string - name: location dtype: string - name: noise_sources dtype: string - name: script_id dtype: int64 - name: type_of_script dtype: string - name: script dtype: string - name: transcript dtype: string - name: speaker_id dtype: string configs: - config_name: english_medical data_files: - split: medical path: english_medical/medical/** - config_name: global_medical data_files: - split: medical path: global_medical/medical/** size_categories: - n<1K --- # Medical Speech Dataset **A specialized speech dataset for healthcare AI applications featuring real medical terminology, clinical conversations, and domain-specific vocabulary.** This dataset is curated from the [complete-voiceai-speech-dataset](https://huggingface.co/datasets/SilencioNetwork/complete-voiceai-speech-dataset) and focuses specifically on medical domain speech data collected from real healthcare contexts. ## Dataset Overview - **Total audio files**: 33 recordings - **Total duration**: ~42 minutes - **Languages**: English (native) + Global Medical (multilingual) - **Domain**: Medical terminology, clinical documentation, patient-provider conversations - **Audio format**: WAV files - **Sample rate**: 48 kHz - **License**: CC BY-NC 4.0 (free for research, non-commercial use) ## Target Applications This dataset is designed for: - **Medical ASR systems** (ambient clinical documentation, medical dictation) - **Healthcare AI assistants** (Abridge, Suki, Nabla, Ambience Healthcare) - **Medical voice note transcription** - **Clinical conversation analysis** - **Medical terminology recognition models** - **Healthcare dialogue systems** ## Dataset Structure ``` medical-speech-dataset/ ├── english_medical/ │ └── medical/ │ ├── data/ # 8 audio files │ └── metadata.csv # Speaker metadata └── global_medical/ └── medical/ ├── data/ # 25 audio files └── metadata.csv # Speaker metadata ``` ## Data Splits ### English Medical (Native Speakers) - **Files**: 8 recordings - **Context**: Native English speakers discussing medical topics - **Use case**: High-accuracy medical ASR training, US/UK clinical documentation ### Global Medical (Multilingual) - **Files**: 25 recordings - **Context**: Medical speech from diverse linguistic backgrounds - **Use case**: Accent-robust medical ASR, global telehealth applications ## Key Features ✅ **Real medical terminology** - Conditions, medications, procedures, anatomical terms ✅ **Natural speech patterns** - Disfluencies, hesitations, clinical conversation flow ✅ **Diverse accents** - Global medical professionals and patients ✅ **Domain-specific vocabulary** - Not available in general speech datasets ✅ **Ethical data collection** - Consent-based, privacy-preserving ## Use Cases ### 1. Ambient Clinical Documentation Train models to transcribe doctor-patient conversations in real-time (similar to Abridge, Suki, Nabla). ### 2. Medical Dictation Systems Improve accuracy for physicians dictating clinical notes, discharge summaries, and prescriptions. ### 3. Telehealth Transcription Build ASR systems for virtual healthcare consultations across diverse accents and languages. ### 4. Medical Voice Assistants Develop voice-enabled healthcare tools for symptom checking, medication reminders, and patient education. ### 5. Clinical Research Analyze speech patterns in medical contexts, study communication dynamics between providers and patients. ## Loading the Dataset ```python from datasets import load_dataset # Load full dataset dataset = load_dataset("SilencioNetwork/medical-speech-dataset") # Load specific split english_medical = load_dataset("SilencioNetwork/medical-speech-dataset", data_dir="english_medical") global_medical = load_dataset("SilencioNetwork/medical-speech-dataset", data_dir="global_medical") ``` ## Sample Metadata Each recording includes: - `file_name`: Audio file identifier - `birth_place`: Speaker's country/region of origin - `language`: Primary language spoken - `context`: Medical (clinical terminology, healthcare conversations) ## Medical Speech Characteristics This dataset captures real-world medical speech features: - **Medical jargon**: "hypertension", "myocardial infarction", "differential diagnosis" - **Clinical abbreviations**: Spoken medical shorthand (BP, HR, PRN, etc.) - **Provider-patient dynamics**: Turn-taking, clarification requests, empathy markers - **Multilingual medical contexts**: Healthcare delivery across linguistic boundaries ## Ethical Considerations All data was collected with explicit informed consent. No protected health information (PHI) is included - all recordings contain general medical terminology only, not patient-specific data. ## Need More Medical Speech Data? This is a sample dataset from Silencio's larger Off-the-Shelf (OTS) medical speech inventory: 📊 **Available in full inventory:** - 300+ hours of medical domain speech - 15+ languages - Specialized domains: cardiology, radiology, surgery, pharmacy, etc. - Provider + patient perspectives **Contact us for access**: [alex@silencioai.com](mailto:alex@silencioai.com) ## Citation If you use this dataset in your research or commercial product, please cite: ```bibtex @dataset{silencio_medical_speech_2026, title={Medical Speech Dataset}, author={Silencio Network}, year={2026}, publisher={HuggingFace}, url={https://huggingface.co/datasets/SilencioNetwork/medical-speech-dataset} } ``` ## Related Datasets - [Complete Voice AI Speech Dataset](https://huggingface.co/datasets/SilencioNetwork/complete-voiceai-speech-dataset) - 39 language/accent variants - [Indian Languages Speech](https://huggingface.co/datasets/SilencioNetwork/indian-languages-speech) - 9 Indian languages - [European Languages Speech](https://huggingface.co/datasets/SilencioNetwork/european-languages-speech) - 5 European languages - [Global English Accents Speech](https://huggingface.co/datasets/SilencioNetwork/global-english-accents-speech) - 20 English accent variants ## License **CC BY-NC 4.0** (Creative Commons Attribution-NonCommercial 4.0 International) ✅ Free for research and non-commercial use ❌ Commercial use requires licensing (contact us) ## About Silencio Silencio is a voice AI data sourcing company with 2M+ contributors across 180+ countries. We provide scaled sourcing of real-world audio and speech data for AI labs, robotics companies, and healthcare AI developers. 🌐 [silenciai.com](https://silencioai.com) 📧 [sofia@silencioai.com](mailto:sofia@silencioai.com) --- **Tags**: medical speech, healthcare AI, clinical documentation, medical ASR, medical dictation, ambient scribe, domain-specific speech, medical terminology, healthcare NLP, voice health