Cai Zongyou, Zhong Zhangnan, Lin Haiwei, Huang Bingsheng, Xu Ziyue, Huang Bin, Deng Wei, Wu Qiting, Lei Kaixin, Lyu Jiegeng, Ye Yufeng, Chen Hanwei, Zhang Jian
Medical AI Lab, School of Biomedical Engineering, Medical School, Shenzhen University, Shenzhen, China.
NVIDIA Corporation, Bethesda, MD, USA.
Comput Med Imaging Graph. 2024 Dec;118:102471. doi: 10.1016/j.compmedimag.2024.102471. Epub 2024 Nov 22.
Automating the segmentation of nasopharyngeal carcinoma (NPC) is crucial for therapeutic procedures but presents challenges given the hurdles in amassing extensively annotated datasets. Although previous studies have applied self-supervised learning to capitalize on unlabeled data to improve segmentation performance, these methods often overlooked the benefits of dual-sequence magnetic resonance imaging (MRI). In the present study, we incorporated self-supervised learning with a saliency transformation module using unlabeled dual-sequence MRI for accurate NPC segmentation. 44 labeled and 72 unlabeled patients were collected to develop and evaluate our network. Impressively, our network achieved a mean Dice similarity coefficient (DSC) of 0.77, which is consistent with a previous study that relied on a training set of 4,100 annotated cases. The results further revealed that our approach required minimal adjustments, primarily < 20% tweak in the DSC, to meet clinical standards. By enhancing the automatic segmentation of NPC, our method alleviates the annotation burden on oncologists, curbs subjectivity, and ensures reliable NPC delineation.
鼻咽癌(NPC)分割的自动化对于治疗程序至关重要,但鉴于收集大量标注数据集存在困难,这一过程面临挑战。尽管先前的研究已应用自监督学习来利用未标注数据提高分割性能,但这些方法往往忽略了双序列磁共振成像(MRI)的优势。在本研究中,我们将自监督学习与显著性变换模块相结合,使用未标注的双序列MRI进行准确的NPC分割。我们收集了44例有标注和72例无标注的患者来开发和评估我们的网络。令人印象深刻的是,我们的网络实现了平均骰子相似系数(DSC)为0.77,这与之前一项依赖4100例标注病例训练集的研究结果一致。结果进一步表明,我们的方法只需进行最小调整,主要是DSC调整小于20%,就能达到临床标准。通过加强NPC的自动分割,我们的方法减轻了肿瘤学家的标注负担,抑制了主观性,并确保了可靠的NPC轮廓描绘。