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RadFM

The official code for the paper "Towards Generalist Foundation Model for Radiology by Leveraging Web-scale 2D&3D Medical Data"

ArXiv

Website

Model checkpoint

In this project, we collect a large-scale medical multi-modal dataset, MedMD, with 16M 2D or 3D images. We train a new medical multi-modal generative model RadFM on it, enabling both 2D and 3D scans, multi-image input and visual-language interleaving cases.

Latest News:

All Datasets are released! We have updated the links in our dataset table. You can find all our text part data in https://huggingface.co/datasets/chaoyi-wu/RadFM_data_csv.

We also update the PMC-Figure links which contains all PMC-series datasets' figures, you can download it once and all dataset will use the figures.

For decompressing the splited compression files in most cases, please check the following code in linux:

cat zip.z* > myzip.zip
unzip myzip.zip

Quick Start:

For quick start, you can check the Quick_demo path.
We demonstrate a simple diagnosis case here to show how to inference with our model.
Feel free to modify it as you want.

  • S1. Download Model checkpoint or form baiduyun (No need for decompressing).

  • S2. Decompress the original zip file, you can get a pytorch_model.bin.

  • S3. put pytorch_model.bin under path Quick_demo/.

  • S4. python test.py and you can get a conversation as:

    Input: Can you identify any visible signs of Cardiomegaly in the image?
    Output: yes

By the way, never try to perform this in cpu and gpu is all you need :).

Pre-train:

For re-training a model on our dataset or large-scale testing our pre-train model, you can check src.

Simply, train.py for training and test.py for testing.

  • Check the data_csv to get how different datasets are processed and download them into src/Dataset/data_csv
  • Modify the path as you disire, and check src/train.py to pre-train or src/train.py to test.

Case Study:

Some cases produced by our final model:

Dataset-Links:

MedKD Dataset downloading URL:

Dataset Name Link Access
Rad3D-series https://pan.baidu.com/s/1E_uSoCLm5H66a7KkpRfi1g?pwd=urfg or https://onedrive.live.com/?id=FCA8CA4C877919CB!23996&resid=FCA8CA4C877919CB!23996&ithint=folder&authkey=!AN6taBTpTQ16xqA&cid=fca8ca4c877919cb Open Access
MPx-series https://pan.baidu.com/s/1tSn6OibIoMZLddagFoMRdw?pwd=mhxb or https://huggingface.co/datasets/chaoyi-wu/MedPix-Images/viewer/default/train?p=1 Open Access
PMC-Figures https://pan.baidu.com/s/1Src_rhXsaOFp8zJ_3zMFsQ?pwd=p3ne Open Access
PMC-Inline https://huggingface.co/datasets/chaoyi-wu/PMC-Inline Open Access
PMC-CaseReport Original version, Filtered version Open Access
VinDr-Mammo https://www.physionet.org/content/vindr-mammo/1.0.0/ Credentialed Access
VinDr-SpineXR https://www.physionet.org/content/vindr-spinexr/1.0.0/ Credentialed Access
VinDr-PCXR https://physionet.org/content/vindr-pcxr/1.0.0/ Credentialed Access
PMC-OA https://huggingface.co/datasets/axiong/pmc_oa_beta Open Access
PMC-VQA https://huggingface.co/datasets/xmcmic/PMC-VQA Open Access
VQA-RAD https://osf.io/89kps/ Open Access
SLAKE https://www.med-vqa.com/slake/ Open Access
MIMIC-CXR https://physionet.org/content/mimic-cxr/2.0.0 Credentialed Access
VinDr-CXR https://physionet.org/content/vindr-cxr/1.0.0/ Credentialed Access
NIH ChestXray14 https://nihcc.app.box.com/v/ChestXray-NIHCC/folder/36938765345 Open Access
CheXpert https://aimi.stanford.edu/chexpert-chest-x-rays Open Access
Covid-CXR2 https://www.kaggle.com/datasets/andyczhao/covidx-cxr2 Open Access
NLM-TB Montgomery, ChinaSet Open Access
Object-CXR https://web.archive.org/web/20201127235812/https://jfhealthcare.github.io/object-CXR/ Open Access
OpenI https://www.kaggle.com/datasets/raddar/chest-xrays-indiana-university Open Access
RSNA https://www.rsna.org/education/ai-resources-and-training/ai-image-challenge/rsna-pneumonia-detection-challenge-2018 Open Access
SIIM-ACR https://www.kaggle.com/datasets/jesperdramsch/siim-acr-pneumothorax-segmentation-data Open Access

Acknowledgment:

We sincerely thank all the contributors who uploaded the relevant data in our dataset online. We appreciate their willingness to make these valuable cases publicly available.

Contact

If you have any questions, please feel free to contact wtzxxxwcy02@sjtu.edu.cn.