Wang Xu, Monkam Patrice, Zhao Bonan, Qi Shouliang, Ma He, Huang Long, Qian Wei
College of Medicine and Biological Information Engineering, Northeastern University, Shenyang, Liaoning, China.
Key Laboratory of Intelligent Computing in Medical Image, Ministry of Education, Northeastern University, Shenyang, Liaoning, China.
Int J Biomed Imaging. 2025 Aug 11;2025:3309822. doi: 10.1155/ijbi/3309822. eCollection 2025.
Automated lesion segmentation in ultrasound (US) images based on deep learning (DL) approaches plays a crucial role in disease diagnosis and treatment. However, the successful implementation of these approaches is conditioned by large-scale and diverse annotated datasets whose obtention is tedious and expertise demanding. Although methods like generative adversarial networks (GANs) can help address sample scarcity, they are often associated with complex training processes and high computational demands, which can limit their practicality and feasibility, especially in resource-constrained scenarios. Therefore, this study is aimed at exploring new solutions to address the challenge of limited annotated samples in automated lesion delineation in US images. Specifically, we propose five distinct mixed sample augmentation strategies and assess their effectiveness using four deep segmentation models for the delineation of two lesion types: breast and thyroid lesions. Extensive experimental analyses indicate that the effectiveness of these augmentation strategies is strongly influenced by both the lesion type and the model architecture. When appropriately selected, these strategies result in substantial performance improvements, with the Dice and Jaccard indices increasing by up to 37.95% and 36.32% for breast lesions and 14.59% and 13.01% for thyroid lesions, respectively. These improvements highlight the potential of the proposed strategies as a reliable solution to address data scarcity in automated lesion segmentation tasks. Furthermore, the study emphasizes the critical importance of carefully selecting data augmentation approaches, offering valuable insights into how their strategic application can significantly enhance the performance of DL models.
基于深度学习(DL)方法的超声(US)图像自动病变分割在疾病诊断和治疗中起着至关重要的作用。然而,这些方法的成功实施取决于大规模且多样的带注释数据集,而获取这些数据集既繁琐又需要专业知识。尽管生成对抗网络(GANs)等方法有助于解决样本稀缺问题,但它们通常与复杂的训练过程和高计算需求相关联,这可能会限制其实用性和可行性,尤其是在资源受限的情况下。因此,本研究旨在探索新的解决方案,以应对超声图像自动病变描绘中注释样本有限的挑战。具体而言,我们提出了五种不同的混合样本增强策略,并使用四种深度分割模型来评估它们对两种病变类型(乳腺和甲状腺病变)的分割效果。广泛的实验分析表明,这些增强策略的有效性受到病变类型和模型架构的强烈影响。如果选择得当,这些策略会带来显著的性能提升,对于乳腺病变,Dice和Jaccard指数分别提高了37.95%和36.32%,对于甲状腺病变则分别提高了14.59%和13.01%。这些提升凸显了所提出策略作为解决自动病变分割任务中数据稀缺问题的可靠解决方案的潜力。此外,该研究强调了仔细选择数据增强方法的至关重要性,为如何通过其策略性应用显著提高深度学习模型的性能提供了有价值的见解。