[Cross-modal hash retrieval of medical images based on Transformer semantic alignment].

Q4 Medicine
Qianlin Wu, Lun Tang, Qinghai Liu, Liming Xu, Qianbin Chen
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引用次数: 0

Abstract

Medical cross-modal retrieval aims to achieve semantic similarity search between different modalities of medical cases, such as quickly locating relevant ultrasound images through ultrasound reports, or using ultrasound images to retrieve matching reports. However, existing medical cross-modal hash retrieval methods face significant challenges, including semantic and visual differences between modalities and the scalability issues of hash algorithms in handling large-scale data. To address these challenges, this paper proposes a Medical image Semantic Alignment Cross-modal Hashing based on Transformer (MSACH). The algorithm employed a segmented training strategy, combining modality feature extraction and hash function learning, effectively extracting low-dimensional features containing important semantic information. A Transformer encoder was used for cross-modal semantic learning. By introducing manifold similarity constraints, balance constraints, and a linear classification network constraint, the algorithm enhanced the discriminability of the hash codes. Experimental results demonstrated that the MSACH algorithm improved the mean average precision (MAP) by 11.8% and 12.8% on two datasets compared to traditional methods. The algorithm exhibits outstanding performance in enhancing retrieval accuracy and handling large-scale medical data, showing promising potential for practical applications.

基于Transformer语义对齐的医学图像跨模态哈希检索。
医学跨模态检索旨在实现医学病例不同模态之间的语义相似性搜索,如通过超声报告快速定位相关超声图像,或利用超声图像检索匹配报告。然而,现有的医学跨模态哈希检索方法面临着重大挑战,包括模态之间的语义和视觉差异以及处理大规模数据时哈希算法的可扩展性问题。为了解决这些问题,本文提出了一种基于Transformer的医学图像语义对齐跨模态哈希算法(MSACH)。该算法采用分段训练策略,将模态特征提取与哈希函数学习相结合,有效地提取了包含重要语义信息的低维特征。使用Transformer编码器进行跨模态语义学习。该算法通过引入流形相似约束、平衡约束和线性分类网络约束,增强了哈希码的可判别性。实验结果表明,与传统方法相比,MSACH算法在两个数据集上的平均精度分别提高了11.8%和12.8%。该算法在提高检索精度和处理大规模医疗数据方面表现出色,具有广阔的应用前景。
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来源期刊
生物医学工程学杂志
生物医学工程学杂志 Medicine-Medicine (all)
CiteScore
0.80
自引率
0.00%
发文量
4868
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