Department of Biomedical Engineering, School of Precision Instrument and Opto-Electronics Engineering, Tianjin University, Tianjin, China.
Department of Biomedical Engineering, School of Precision Instrument and Opto-Electronics Engineering, Tianjin University, Tianjin, China.
Comput Biol Med. 2022 Dec;151(Pt A):106230. doi: 10.1016/j.compbiomed.2022.106230. Epub 2022 Oct 19.
Accurate lymphoma segmentation in PET/CT images is important for evaluating Diffuse Large B-Cell Lymphoma (DLBCL) prognosis. As systemic multiple lymphomas, DLBCL lesions vary in number and size for different patients, which makes DLBCL labeling labor-intensive and time-consuming. To reduce the reliance on accurately labeled datasets, a weakly supervised deep learning method based on multi-scale feature similarity is proposed for automatic lymphoma segmentation. Weak labeling was performed by randomly dawning a small and salient lymphoma volume for the patient without accurate labels. A 3D V-Net is used as the backbone of the segmentation network and image features extracted in different convolutional layers are fused with the Atrous Spatial Pyramid Pooling (ASPP) module to generate multi-scale feature representations of input images. By imposing multi-scale feature consistency constraints on the predicted tumor regions as well as the labeled tumor regions, weakly labeled data can also be effectively used for network training. The cosine similarity, which has strong generalization, is exploited here to measure feature distances. The proposed method is evaluated with a PET/CT dataset of 147 lymphoma patients. Experimental results show that when using data, half of which have accurate labels and the other half have weak labels, the proposed method performed similarly to a fully supervised segmentation network and achieved an average Dice Similarity Coefficient (DSC) of 71.47%. The proposed method is able to reduce the requirement for expert annotations in deep learning-based lymphoma segmentation.
准确的淋巴瘤在 PET/CT 图像中的分割对于评估弥漫性大 B 细胞淋巴瘤(DLBCL)的预后非常重要。由于系统性多发性淋巴瘤,DLBCL 病变的数量和大小因患者而异,这使得 DLBCL 标记既费时又费力。为了减少对准确标记数据集的依赖,提出了一种基于多尺度特征相似性的弱监督深度学习方法,用于自动淋巴瘤分割。弱标记是通过随机为没有准确标签的患者勾画一个小而显著的淋巴瘤体积来完成的。使用 3D V-Net 作为分割网络的骨干,并融合不同卷积层中提取的图像特征与空洞空间金字塔池化(ASPP)模块,生成输入图像的多尺度特征表示。通过对预测的肿瘤区域和标记的肿瘤区域施加多尺度特征一致性约束,也可以有效地利用弱标记数据进行网络训练。这里利用具有强泛化能力的余弦相似度来衡量特征距离。使用 147 例淋巴瘤患者的 PET/CT 数据集对所提出的方法进行了评估。实验结果表明,当使用有一半具有准确标签,另一半具有弱标签的数据时,所提出的方法与完全监督的分割网络表现相当,平均 Dice 相似系数(DSC)为 71.47%。所提出的方法能够降低深度学习中淋巴瘤分割对专家注释的要求。