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Cross-modal Memory Networks for Radiology Report Generation

About

Medical imaging plays a significant role in clinical practice of medical diagnosis, where the text reports of the images are essential in understanding them and facilitating later treatments. By generating the reports automatically, it is beneficial to help lighten the burden of radiologists and significantly promote clinical automation, which already attracts much attention in applying artificial intelligence to medical domain. Previous studies mainly follow the encoder-decoder paradigm and focus on the aspect of text generation, with few studies considering the importance of cross-modal mappings and explicitly exploit such mappings to facilitate radiology report generation. In this paper, we propose a cross-modal memory networks (CMN) to enhance the encoder-decoder framework for radiology report generation, where a shared memory is designed to record the alignment between images and texts so as to facilitate the interaction and generation across modalities. Experimental results illustrate the effectiveness of our proposed model, where state-of-the-art performance is achieved on two widely used benchmark datasets, i.e., IU X-Ray and MIMIC-CXR. Further analyses also prove that our model is able to better align information from radiology images and texts so as to help generating more accurate reports in terms of clinical indicators.

Zhihong Chen, Yaling Shen, Yan Song, Xiang Wan• 2022

Related benchmarks

TaskDatasetResultRank
Radiology Report GenerationMIMIC-CXR (test)
BLEU-40.106
172
Radiology Report GenerationCheXpert Plus (test)
Precision0.329
88
Radiology Report GenerationIU-Xray (test)
ROUGE-L0.375
77
Medical Report GenerationMIMIC-CXR (test)
ROUGE-L0.278
62
Radiology Report GenerationMIMIC-CXR
ROUGE-L27.8
57
Medical Report GenerationIU-Xray (test)
ROUGE-L0.375
56
Medical Report GenerationMIMIC-CXR
BLEU-40.106
43
Radiology Report GenerationCHEXPERT Plus
R-L0.256
37
Radiology Report GenerationCT-RATE (test)
BL-10.431
37
Pathology report generationPathText BRCA (test)
BLEU-10.396
32
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