Haq Mohammad Minhazul, Ma Hehuan, Huang Junzhou
Department of Computer Science and Engineering, University of Texas at Arlington, Arlington, TX, United States.
Front Big Data. 2023 Mar 2;6:1108659. doi: 10.3389/fdata.2023.1108659. eCollection 2023.
The accurate segmentation of nuclei is crucial for cancer diagnosis and further clinical treatments. To successfully train a nuclei segmentation network in a fully-supervised manner for a particular type of organ or cancer, we need the dataset with ground-truth annotations. However, such well-annotated nuclei segmentation datasets are highly rare, and manually labeling an unannotated dataset is an expensive, time-consuming, and tedious process. Consequently, we require to discover a way for training the nuclei segmentation network with unlabeled dataset. In this paper, we propose a model named NuSegUDA for nuclei segmentation on the unlabeled dataset (target domain). It is achieved by applying Unsupervised Domain Adaptation (UDA) technique with the help of another labeled dataset (source domain) that may come from different type of organ, cancer, or source. We apply UDA technique at both of feature space and output space. We additionally utilize a reconstruction network and incorporate adversarial learning into it so that the source-domain images can be accurately translated to the target-domain for further training of the segmentation network. We validate our proposed NuSegUDA on two public nuclei segmentation datasets, and obtain significant improvement as compared with the baseline methods. Extensive experiments also verify the contribution of newly proposed image reconstruction adversarial loss, and target-translated source supervised loss to the performance boost of NuSegUDA. Finally, considering the scenario when we have a small number of annotations available from the target domain, we extend our work and propose NuSegSSDA, a Semi-Supervised Domain Adaptation (SSDA) based approach.
细胞核的精确分割对于癌症诊断和进一步的临床治疗至关重要。要以完全监督的方式成功训练针对特定类型器官或癌症的细胞核分割网络,我们需要带有真实标注的数据集。然而,这种标注良好的细胞核分割数据集非常罕见,手动标注未标注的数据集是一个昂贵、耗时且繁琐的过程。因此,我们需要找到一种方法,用未标注的数据集来训练细胞核分割网络。在本文中,我们提出了一种名为NuSegUDA的模型,用于在未标注数据集(目标域)上进行细胞核分割。这是通过在另一个可能来自不同类型器官、癌症或来源的标注数据集(源域)的帮助下应用无监督域适应(UDA)技术来实现的。我们在特征空间和输出空间都应用了UDA技术。我们还额外使用了一个重建网络,并将对抗学习纳入其中,以便将源域图像准确地转换到目标域,用于进一步训练分割网络。我们在两个公开的细胞核分割数据集上验证了我们提出的NuSegUDA,与基线方法相比取得了显著改进。大量实验还验证了新提出的图像重建对抗损失和目标转换源监督损失对NuSegUDA性能提升的贡献。最后,考虑到我们从目标域获得少量标注的情况,我们扩展了我们的工作,提出了NuSegSSDA,一种基于半监督域适应(SSDA)的方法。