TMRGM:基于模板的x射线成像报告生成的多注意模型

Xuwen Wang, Yu Zhang, Zhen Guo, Jiao Li
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引用次数: 3

摘要

医学影像数据的快速增长给放射科医师带来了影像诊断和报告撰写的巨大压力。本文旨在从医学图像中自动提取有价值的信息,以辅助医生对胸部x线图像进行判读。针对不同人群报告中语言和视觉特征的差异,分别针对健康人群和异常人群提出了基于模板的多注意报告生成模型(TMRGM)。在本研究中,我们建立了一个基于IU x射线采集的实验数据集来验证TMRGM模型的有效性。具体而言,我们的方法实现了BLEU-1为0.419,METEOR为0.183,ROUGE得分为0.280,CIDEr得分为0.359,与SOTA模型相当。实验结果表明,提出的TMRGM模型能够模拟报告过程,在临床应用中仍有很大的改进空间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TMRGM: A Template-Based Multi-Attention Model for X-Ray Imaging Report Generation
The rapid growth of medical imaging data brings heavy pressure to radiologists for imaging diagnosis and report writing. This paper aims to extract valuable information automatically from medical images to assist doctors in chest X-ray image interpretation. Considering the different linguistic and visual characteristics in reports of different crowds, we proposed a template-based multi-attention report generation model (TMRGM) for the healthy individuals and abnormal ones respectively. In this study, we developed an experimental dataset based on the IU X-ray collection to validate the effectiveness of TMRGM model. Specifically, our method achieves the BLEU-1 of 0.419, the METEOR of 0.183, the ROUGE score of 0.280, and the CIDEr of 0.359, which are comparable with the SOTA models. The experimental results indicate that the proposed TMRGM model is able to simulate the reporting process, and there is still much room for improvement in clinical application.
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