Ecosyste.ms: Awesome
An open API service indexing awesome lists of open source software.
Awesome-Healthcare-Foundation-Models
https://github.com/Jianing-Qiu/Awesome-Healthcare-Foundation-Models
Last synced: 2 days ago
JSON representation
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Large-scale Datasets in Biomedical and Health Informatics
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Private or Upon Approval
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- Mount Sinai ECG Data
- Google DR Dev. Dataset
- UF Health IDR Clinical Note Database
- Clinical Practice Research Datalink
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
- Mount Sinai ECG Data
- UF Health IDR Clinical Note Database
- UF Health IDR Clinical Note Database
- Mount Sinai ECG Data
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Open Source
- Medical Meadow
- Endo-FM database
- SurgVLP database - text pairs from 1k surgical lecture videos |
- Big Fantastic Datasbase
- Observed Antibody Space
- RNAcentral
- ZINC20
- MIMIC-CXR - ray images and 227K radiology reports |
- MedMNIST v2
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Applications of Large AI Models in Healthcare
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Medical Informatics
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Bioinformatics
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- [Paper - smile/SMILES-BERT)
- [Paper - transformer)
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- [Paper - ailab/grover)
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- [Paper - bradshaw/molecule-chef)
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- [Paper - CSBL/DeepConv-DTI)
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- [Paper - ailab/DrugOOD)
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Medical Imaging
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Public Health
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Medical Diagnosis
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Medical Education
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Medical Robotics
- [Paper - transformer)
- [Paper - r3m/) [[Code]](https://github.com/facebookresearch/r3m)
- [Paper - play.github.io/)
- [Paper - e.github.io/) [[Blog]](https://ai.googleblog.com/2023/03/palm-e-embodied-multimodal-language.html)
- [Paper - generalist-agent)
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- [Paper - can.github.io/) [[Code]](https://github.com/google-research/google-research/tree/master/saycan)
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- [Paper - transformer.github.io/) [[Code]](https://github.com/google-research/robotics_transformer)
- [Paper - us/research/group/autonomous-systems-group-robotics/articles/chatgpt-for-robotics/) [[Code]](https://github.com/microsoft/PromptCraft-Robotics)
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Large Multi-modal Models
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Healthcare Domain
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- [Paper - pytorch)
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- [Paper - 7/fulltext)
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- [Paper - LLM)
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- [Paper - pytorch)
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- [Paper - public/SurgVLP)
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General Domain
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Large Language Models
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General Domain
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Healthcare Domain
- [Paper - GPT)
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- [Paper - GPT)
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- [paper - VA-health/RadBERT-RoBERTa-4m)
- [Paper - dna)
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- [Paper - AI-Summer/self-attention-cv)
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- [Paper - fm)
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Large Vision Models
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Healthcare Domain
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General Domain
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News
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Large Audio Models
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General Domain
- [Paper - 20-learning-the-structure-of-speech-from-raw-audio/)
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- [Paper - research.github.io/seanet/audiolm/examples/) [[Blog]](https://ai.googleblog.com/2022/10/audiolm-language-modeling-approach-to.html)
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- [Paper - r-self-supervised-speech-processing-for-128-languages/) [[HuggingFace]](https://huggingface.co/facebook/wav2vec2-xls-r-300m)
- [Paper - research.github.io/seanet/musiclm/examples/) [[Code]](https://github.com/lucidrains/musiclm-pytorch)
- [Paper - to-sound-synthesis-demo/) [[Code]](https://github.com/yangdongchao/Text-to-sound-Synthesis)
- [Paper
- [Paper - tiny.en)
- [Paper - speech-model-usm-state-of-art.html)
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