利用多模态深度学习网络整合临床病史以优化注意力,增强胸部x线诊断。

Lian Yang, Yiliang Wan, Feng Pan
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引用次数: 0

摘要

深度学习技术的快速发展彻底改变了医学影像诊断。然而,训练这些模型经常受到标签不平衡和某些疾病的稀缺性的挑战。大多数模型不能识别多种共存的疾病,这在现实世界的临床场景中很常见。此外,大多数放射学模型仅依赖于图像数据,这与放射科医生的综合方法形成鲜明对比,即结合图像和其他临床信息,如临床病史和实验室结果。在这项研究中,我们介绍了一个多模态胸部x线网络(MCX-Net),该网络集成了胸部x线图像和临床病史文本,用于多标签疾病诊断。这种整合是通过结合一个预训练的文本编码器、一个预训练的图像编码器和一个预训练的图像-文本跨模态编码器来实现的,并在公共MIMIC-CXR-JPG数据集上进行微调,以在胸部x射线上诊断13种不同的肺部疾病。结果,MCX-Net在测试集中实现了最高的宏观AUROC,为0.816,显著优于viti -base和ResNet152等单峰基线,分别为0.747和0.749
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Chest X-ray Diagnosis with a Multimodal Deep Learning Network by Integrating Clinical History to Refine Attention.

The rapid advancements of deep learning technology have revolutionized medical imaging diagnosis. However, training these models is often challenged by label imbalance and the scarcity of certain diseases. Most models fail to recognize multiple coexisting diseases, which are common in real-world clinical scenarios. Moreover, most radiological models rely solely on image data, which contrasts with radiologists' comprehensive approach, incorporating both images and other clinical information such as clinical history and laboratory results. In this study, we introduce a Multimodal Chest X-ray Network (MCX-Net) that integrates chest X-ray images and clinical history texts for multi-label disease diagnosis. This integration is achieved by combining a pretrained text encoder, a pretrained image encoder, and a pretrained image-text cross-modal encoder, fine-tuned on the public MIMIC-CXR-JPG dataset, to diagnose 13 diverse lung diseases on chest X-rays. As a result, MCX-Net achieved the highest macro AUROC of 0.816 on the test set, significantly outperforming unimodal baselines such as ViT-base and ResNet152, which scored 0.747 and 0.749, respectively (p < 0.001). This multimodal approach represents a substantial advancement over existing image-based deep-learning diagnostic systems for chest X-rays.

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