SOTAVerified

Medical Report Generation

Medical report generation (MRG) is a task which focus on training AI to automatically generate professional report according the input image data. This can help clinicians make faster and more accurate decision since the task itself is both time consuming and error prone even for experienced doctors.

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Deep neural network and transformer based architecture are currently the most popular methods for this certain task, however, when we try to transfer out pre-trained model into this certain domain, their performance always degrade.

The following are some of the reasons why RSG is hard for pre-trained models:

  • Language datasets in a particular domain can sometimes be quite different from the large number of datasets available on the Internet
  • During the fine-tuning phase, datasets in the medical field are often unevenly distributed

More recently, multi-modal learning and contrastive learning have shown some inspiring results in this field, but it's still challenging and requires further attention.

Here are some additional readings to go deeper on the task:

https://arxiv.org/abs/2004.12150

(Image credit : Transformers in Medical Imaging: A Survey)

Papers

Showing 3140 of 110 papers

TitleStatusHype
Automated radiology report generation using conditioned transformersCode1
FFA-IR: Towards an Explainable and Reliable Medical Report Generation BenchmarkCode1
A Benchmark for Automatic Medical Consultation System: Frameworks, Tasks and DatasetsCode1
DeltaNet:Conditional Medical Report Generation for COVID-19 DiagnosisCode1
Inspecting state of the art performance and NLP metrics in image-based medical report generationCode1
Automated Medical Report Generation for ECG Data: Bridging Medical Text and Signal Processing with Deep LearningCode0
CXPMRG-Bench: Pre-training and Benchmarking for X-ray Medical Report Generation on CheXpert Plus DatasetCode0
S4G: Amodal Single-view Single-Shot SE(3) Grasp Detection in Cluttered ScenesCode0
Activating Associative Disease-Aware Vision Token Memory for LLM-Based X-ray Report GenerationCode0
R2GenCSR: Retrieving Context Samples for Large Language Model based X-ray Medical Report GenerationCode0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1RGRGBLEU-137.3Unverified
2SEI-1BLEU-20.25Unverified
#ModelMetricClaimedVerifiedStatus
1HistGenBLEU-40.18Unverified
#ModelMetricClaimedVerifiedStatus
1X-RGenBLEU-40.18Unverified