术中荧光多模态成像预测结直肠癌淋巴结转移

Xiaobo Zhu;He Sun;Yuhan Wang;Gang Hu;Lizhi Shao;Song Zhang;Fucheng Liu;Chongwei Chi;Kunshan He;Jianqiang Tang;Yu An;Jie Tian;Zhenyu Liu
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引用次数: 0

摘要

淋巴结转移(LNM)的诊断对结直肠癌(CRC)的治疗至关重要。确定LNM的主要方法是进行冷冻切片和病理分析,但这种方法是劳动密集型和耗时的。因此,将术中荧光成像与深度学习(DL)方法相结合可以提高效率。目前大多数研究只分析单模态荧光成像,提供的语义信息较少。在这项工作中,我们主要建立了一种结合白光、荧光和淋巴结伪彩色成像的多模态荧光成像特征融合预测(MFI-FFP)模型,用于LNM预测。首先,根据各种模态图像的特性,选择不同的特征提取网络进行特征提取,可以显著增强各种模态信息的互补性;其次,设计融合全局和局部信息的多模态特征融合模块,对提取的特征进行融合;此外,还制定了一个新的损失函数来解决样本不平衡的问题,以及在区分样本和增强样本多样性方面的挑战。最后,实验表明,该模型比单模态和双模态模型具有更高的接收者工作特征(ROC)曲线下面积(AUC)、精度(ACC)和F1分数,并且与其他高效的图像分类网络相比具有更好的性能。我们的研究表明,MFI-FFP模型具有帮助医生预测LNM的潜力,并在医学图像分析中显示出其前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Lymph Node Metastasis in Colorectal Cancer Using Intraoperative Fluorescence Multi-Modal Imaging
The diagnosis of lymph node metastasis (LNM) is essential for colorectal cancer (CRC) treatment. The primary method of identifying LNM is to perform frozen sections and pathologic analysis, but this method is labor-intensive and time-consuming. Therefore, combining intraoperative fluorescence imaging with deep learning (DL) methods can improve efficiency. The majority of recent studies only analyze uni-modal fluorescence imaging, which provides less semantic information. In this work, we mainly established a multi-modal fluorescence imaging feature fusion prediction (MFI-FFP) model combining white light, fluorescence, and pseudo-color imaging of lymph nodes for LNM prediction. Firstly, based on the properties of various modal imaging, distinct feature extraction networks are chosen for feature extraction, which could significantly enhance the complementarity of various modal information. Secondly, the multi-modal feature fusion (MFF) module, which combines global and local information, is designed to fuse the extracted features. Furthermore, a novel loss function is formulated to tackle the issue of imbalanced samples, challenges in differentiating samples, and enhancing sample variety. Lastly, the experiments show that the model has a higher area under the receiver operating characteristic (ROC) curve (AUC), accuracy (ACC), and F1 score than the uni-modal and bi-modal models and has a better performance compared to other efficient image classification networks. Our study demonstrates that the MFI-FFP model has the potential to help doctors predict LNM and shows its promise in medical image analysis.
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