Suppr超能文献

基于知识图谱的医学影像报告标签少样本学习

Knowledge Graph-Based Few-Shot Learning for Label of Medical Imaging Reports.

作者信息

Li Tiancheng, Zhang Yuxuan, Su Deyu, Liu Ming, Ge Mingxin, Chen Linyu, Li Chuanfu, Tang Jin

机构信息

The First Affiliated Hospital of Anhui Medical University, Anhui Medical University, Hefei 230032, China (T.L., D.S., J.T.); Institute of Artificial Intelligence, Hefei Comprehensive National Science Center, Hefei, China (T.L., D.S., C.L., J.T.).

College of Medical Information Engineering, Anhui University of Traditional Chinese Medicine, Hefei, China (Y.Z., M.G., L.C., C.L.).

出版信息

Acad Radiol. 2025 Jul;32(7):4206-4220. doi: 10.1016/j.acra.2025.02.045. Epub 2025 Mar 25.

Abstract

BACKGROUND

The application of artificial intelligence (AI) in the field of automatic imaging report labeling faces the challenge of manually labeling large datasets.

PURPOSE

To propose a data augmentation method by using knowledge graph (KG) and few-shot learning.

METHODS

A KG of lumbar spine X-ray images was constructed, and 2000 data were annotated based on the KG, which were divided into training, validation, and test sets in a ratio of 7:2:1. The training dataset was augmented based on the synonym/replacement attributes of the KG and was the augmented data was input into the BERT (Bidirectional Encoder Representations from Transformers) model for automatic annotation training. The performance of the model under different augmentation ratios (1:10, 1:100, 1:1000) and augmentation methods (synonyms only, replacements only, combination of synonyms and replacements) was evaluated using the precision and F1 scores. In addition, with the augmentation ratio was fixed, iterative experiments were performed by supplementing the data of nodes that perform poorly in the validation set to further improve model's performance.

RESULTS

Prior to data augmentation, the precision was 0.728 and the F1 score was 0.666. By adjusting the augmentation ratio, the precision increased from 0.912 at a 1:10 augmentation ratio to 0.932 at a 1:100 augmentation ratio (P<.05), while F1 score improved from 0.853 at a 1:10 augmentation ratio to 0.881 at a 1:100 augmentation ratio (P<.05). Additionally, the effectiveness of various augmentation methods was compared at a 1:100 augmentation ratio. The augmentation method that combined synonyms and replacements (F1=0.881) was superior to the methods that only used synonyms (F1=0.815) and only used replacements (F1=0.753) (P<.05). For nodes that exhibited suboptimal performance on the validation set, supplementing the training set with target data improved model performance, increasing the average F1 score to 0.979 (P<.05).

CONCLUSION

Based on the KG, this study trained an automatic labeling model of radiology reports using a few-shot data set. This method effectively reduces the workload of manual labeling, improves the efficiency and accuracy of image data labeling, and provides an important research strategy for the application of AI in the domain of automatic labeling of image reports.

摘要

背景

人工智能(AI)在自动影像报告标注领域的应用面临着手动标注大型数据集的挑战。

目的

提出一种利用知识图谱(KG)和少样本学习的数据增强方法。

方法

构建腰椎X线图像的知识图谱,并基于该知识图谱标注2000条数据,按照7:2:1的比例分为训练集、验证集和测试集。基于知识图谱的同义词/替换属性对训练数据集进行增强,并将增强后的数据输入到BERT(来自Transformer的双向编码器表征)模型中进行自动标注训练。使用精确率和F1分数评估模型在不同增强比例(1:10、1:100、1:1000)和增强方法(仅同义词、仅替换词、同义词和替换词组合)下的性能。此外,在固定增强比例的情况下,通过补充验证集中表现不佳的节点数据进行迭代实验,以进一步提高模型性能。

结果

在数据增强之前,精确率为0.728,F1分数为0.666。通过调整增强比例,精确率从1:10增强比例时的0.912提高到1:100增强比例时的0.932(P<0.05),而F1分数从1:10增强比例时的0.853提高到1:100增强比例时的0.881(P<0.05)。此外,在1:100增强比例下比较了各种增强方法的有效性。同义词和替换词组合的增强方法(F1=0.881)优于仅使用同义词的方法(F1=0.815)和仅使用替换词的方法(F1=0.753)(P<0.05)。对于在验证集上表现欠佳的节点,用目标数据补充训练集可提高模型性能,将平均F1分数提高到0.979(P<0.05)。

结论

本研究基于知识图谱,使用少样本数据集训练了放射学报告的自动标注模型。该方法有效减少了手动标注的工作量,提高了图像数据标注的效率和准确性,并为AI在图像报告自动标注领域的应用提供了重要的研究策略。

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验