๐งฌ Breaking news in Clinical AI: Introducing the OpenMed NER Model Discovery App on Hugging Face ๐ฌ
OpenMed is back! ๐ฅ Finding the right biomedical NER model just became as precise as a PCR assay!
I'm thrilled to unveil my comprehensive OpenMed Named Entity Recognition Model Discovery App that puts 384 specialized biomedical AI models at your fingertips.
๐ฏ Why This Matters in Healthcare AI: Traditional clinical text mining required hours of manual model evaluation. My Discovery App instantly connects researchers, clinicians, and data scientists with the exact NER models they need for their biomedical entity extraction tasks.
๐ฌ What You Can Discover: โ Pharmacological Models - Extract "chemical compounds", "drug interactions", and "pharmaceutical" entities from clinical notes โ Genomics & Proteomics - Identify "DNA sequences", "RNA transcripts", "gene variants", "protein complexes", and "cell lines" โ Pathology & Disease Detection - Recognize "pathological formations", "cancer types", and "disease entities" in medical literature โ Anatomical Recognition - Map "anatomical systems", "tissue types", "organ structures", and "cellular components" โ Clinical Entity Extraction - Detect "organism species", "amino acids", 'protein families", and "multi-tissue structures"
๐ก Advanced Features: ๐ Intelligent Entity Search - Find models by specific biomedical entities (e.g., "Show me models detecting CHEM + DNA + Protein") ๐ฅ Domain-Specific Filtering - Browse by Oncology, Pharmacology, Genomics, Pathology, Hematology, and more ๐ Model Architecture Insights - Compare BERT, RoBERTa, and DeBERTa implementations โก Real-Time Search - Auto-filtering as you type, no search buttons needed ๐จ Clinical-Grade UI - Beautiful, intuitive interface designed for medical professionals
Ready to revolutionize your biomedical NLP pipeline?
๐ Try it now: OpenMed/openmed-ner-models ๐งฌ Built with: Gradio, Transformers, Advanced Entity Mapping
Hello Hugging Face Community! I'm excited to share a project I've been working on: SkinCancerViT, a multimodal Vision Transformer model for skin lesion analysis ethicalabs/SkinCancerViT
This app is a research demonstration that combines dermatoscopic images with patient age and lesion localization to assist in classifying skin lesions. You can either upload your own image and patient data for a prediction, or explore how the model performs on random samples from the marmal88/skin_cancer dataset.
I firmly believe that the only final, trustworthy diagnosis comes from medical professionals, and I am actively seeking medical institutions and researchers who might be interested in partnering with me to further explore the usage of this methodology, conducting further training with diverse datasets (ethically sourced and anonymized), performing extensive validation tests, and explore the possibility of running a federated fine-tuning simulation with https://flower.ai/
As a software engineer, I do not possess medical expertise and I am seeking collaboration with medical professionals and AI/ML researchers. You can find the project source code, which includes data preprocessing, model training and testing, at the following url: https://github.com/ethicalabs-ai/SkinCancerViT/tree/main