Three-dimensional (3D) images, such as CT, MRI, and PET, are common in medical imaging applications and important in clinical diagnosis. Semantic ambiguity is a typical feature of many medical image labels. It can be caused by many factors, such as the imaging properties, pathological anatomy, and the weak representation of the binary masks, which brings challenges to accurate 3D segmentation. In 2D medical images, using soft masks instead of binary masks generated by image matting to characterize lesions can provide rich semantic information, describe the structural characteristics of lesions more comprehensively, and thus benefit the subsequent diagnoses and analyses. In this work, we introduce image matting into the 3D scenes to describe the lesions in 3D medical images. The study of image matting in 3D modality is limited, and there is no high-quality annotated dataset related to 3D matting, therefore slowing down the development of data-driven deep-learning-based methods. To address this issue, we constructed the first 3D medical matting dataset and convincingly verified the validity of the dataset through quality control and downstream experiments in lung nodules classification. We then adapt the four selected state-of-the-art 2D image matting algorithms to 3D scenes and further customize the methods for CT images. Also, we propose the first end-to-end deep 3D matting network and implement a solid 3D medical image matting benchmark, which will be released to encourage further research.
翻译:三维(3D)图像,如CT、MRI和PET,在医学成像应用中很常见,在临床诊断中也很重要。语义模糊性是许多医学成像标签的一个典型特征。它可以由许多因素造成,如成像特性、病理解剖和二维面罩的微弱表现,这给准确的 3D 分解带来挑战。在2D 医学图像中,使用软面罩,而不是通过图像配对确定损害特征产生的二维面罩,可以提供丰富的语义信息,更全面地描述腐蚀物的结构特征,从而有利于随后的诊断和分析。在这项工作中,我们将图像配对立于3D 图像的3D 图像的3D 描述成一个典型的特征。对3D 3D 3D 图像的配对配制研究是有限的,没有高品质的附加说明的数据集,因此减缓数据驱动深学习方法的开发。为了解决这一问题,我们建立了第一个3D医学配方数据组,并令人信服地验证数据组的有效性,通过3D的立式质量控制和下层实验,在3D 将3D 升级的立式模型进行进一步升级。我们再将3D 3D 将第4次的基底图像转换为3D 。我们再调整为3D 将第3D 将第3D 升级为3D 将第3D 的基底的基路的基 将进一步调整为3D 。