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XProNet

This is the official implementation of Cross-modal Prototype Driven Network for Radiology Report Generation accepted to ECCV2022.

Abstract

Radiology report generation (RRG) aims to describe automatically a radiology image with human-like language. As an alternative to expert diagnosis, RRG could potentially support the work of radiologists, reducing the burden of manual reporting. Previous approaches often adopt an encoder-decoder architecture and focus on single-modal feature learning, while few studies explore cross-modal feature interaction. Here we propose a Cross-modal PROtotype driven NETwork (XPRONET) to promote cross-modal pattern learning and exploit it to improve the task of radiology report generation. This is achieved by three well-designed, fully differentiable and complementary modules: a shared cross-modal prototype matrix to record the cross-modal proto- types; a cross-modal prototype network to learn the cross-modal prototypes and embed the cross-modal information into the visual and textual features; and an improved multi-label contrastive loss to enable and enhance multi-label prototype learning. Experimental results demonstrate that XPRONET obtains substantial improvements on two commonly used medical report generation benchmark datasets, i.e., IU-Xray and MIMIC-CXR, where its performance exceeds recent state-of-the-art approaches by a large margin on IU-Xray dataset and achieves the SOTA performance on MIMIC-CXR.

Citations

If you use or extend our work, please cite our paper.

@inproceedings{wang2022cross,
  title={Cross-modal prototype driven network for radiology report generation},
  author={Wang, Jun and Bhalerao, Abhir and He, Yulan},
  booktitle={Computer Vision--ECCV 2022: 17th European Conference, Tel Aviv, Israel, October 23--27, 2022, Proceedings, Part XXXV},
  pages={563--579},
  year={2022},
  organization={Springer}
}

Updates

12/22/2023

  1. XPRONet now supports Multi-GPU (Distributed) and Mixed Precision Training, to support the new features, please ensure Pytorch Version >= 1.8 (Note there may be slight difference for the test results between Multi-GPU test and Single GPU test due to the DDP sampler.
  2. We provide a separate test scripts to enable quick test in the trained dataset.
  3. We recommend to re-generate the initial prototype matrix if you have your own data-precessing on the dataset, e.g, different image resolution or downsampled images.
  4. We optimize and clean some parts of the code.

Prerequisites

The following packages are required to run the scripts:

  • [Python >= 3.6]
  • [PyTorch >= 1.6]
  • [Torchvision]
  • [Pycocoevalcap]
  • You can create the environment via conda:
conda env create --name [env_name] --file env.yml

Download Trained Models

You can download the trained models here.

Datasets

We use two datasets (IU X-Ray and MIMIC-CXR) in our paper.

For IU X-Ray, you can download the dataset from here.

For MIMIC-CXR, you can download the dataset from here.

After downloading the datasets, put them in the directory data.

Pseudo Label Generation

You can generate the pesudo label for each dataset by leveraging the automatic labeler ChexBert.

We also provide the generated labels in the files directory.

Cross-modal Prototypes Initialization

The processed cross-modal prototypes are provided in the files directory. For those who prefer to generate the prototype for initilization by their own, you should:

  • Leverage the pretrained visual extractor (imagenet-pretrained) and Bert (ChexBert) to extract the visual and texual features.
  • Concat the visual and texual features.
  • Utilize K-mean algorithm to cluster to cross-modal features to 14 clusters.

The above procedure is elobarately described in our paper.

Experiments on IU X-Ray

Our experiments on IU X-Ray were done on a machine with 1x2080Ti.

Run bash run_iu_xray.sh to train a model on the IU X-Ray data.

Run on MIMIC-CXR

Our experiments on MIMIC-CXR were done on a machine with 4x2080Ti.

Run bash run_mimic_cxr.sh to train a model on the MIMIC-CXR data.

  • A slightly better result can be seen on mimic-cxr when replacing the test labels in the dataset with the labels generated by a Densenet-121 visual extrator trained on the training set, attached in files directory.

Original test labels: {'BLEU_1': 0.34400243008496584, 'BLEU_2': 0.21477888645882087, 'BLEU_3': 0.14566940489219155, 'BLEU_4': 0.10548765498123501, 'METEOR': 0.13756509292234576, 'ROUGE_L': 0.2788686298013669, 'Cider': 0.1542425919149904}

Visual extractor labels: {'BLEU_1': 0.3439767902051841, 'BLEU_2': 0.21472182985678803, 'BLEU_3': 0.1456235087036771, 'BLEU_4': 0.10550268589574416, 'METEOR': 0.13761582328649768, 'ROUGE_L': 0.2789035755567323, 'Cider': 0.15611385337225203}

Acknowledgment

Our project references the codes in the following repos. Thanks for their works and sharing.