通过无监督指导的跨模态特征对齐生成超声波报告

Jun Li, Tongkun Su, Baoliang Zhao, Faqin Lv, Qiong Wang, Nassir Navab, Ying Hu, Zhongliang Jiang
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引用次数: 0

摘要

自动报告生成已成为计算机辅助诊断的一个重要研究领域,其目的是通过根据医学图像自动生成报告来减轻临床医生的负担。在这项工作中,我们提出了一种新颖的超声报告自动生成框架,利用无监督和有监督学习方法的结合来辅助报告生成过程。我们的框架结合了无监督学习方法,从超声文本报告中提取潜在知识,作为先验信息指导模型对齐视觉和文本特征,从而解决特征差异带来的挑战。此外,我们还设计了一种全局语义比较机制,以提高生成更全面、更准确的医疗报告的性能。为实现超声报告生成,我们构建了三个来自不同器官的大规模超声图像-文本数据集,用于训练和验证。与其他最先进的方法进行的广泛评估表明,该方法在所有三个数据集上都具有卓越的性能。代码和数据集在此链接中提供。
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Ultrasound Report Generation with Cross-Modality Feature Alignment via Unsupervised Guidance.

Automatic report generation has arisen as a significant research area in computer-aided diagnosis, aiming to alleviate the burden on clinicians by generating reports automatically based on medical images. In this work, we propose a novel framework for automatic ultrasound report generation, leveraging a combination of unsupervised and supervised learning methods to aid the report generation process. Our framework incorporates unsupervised learning methods to extract potential knowledge from ultrasound text reports, serving as the prior information to guide the model in aligning visual and textual features, thereby addressing the challenge of feature discrepancy. Additionally, we design a global semantic comparison mechanism to enhance the performance of generating more comprehensive and accurate medical reports. To enable the implementation of ultrasound report generation, we constructed three large-scale ultrasound image-text datasets from different organs for training and validation purposes. Extensive evaluations with other state-of-the-art approaches exhibit its superior performance across all three datasets. Code and dataset are valuable at this link.

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