Mathai Tejas Sudharshan, Lee Sungwon, Shen Thomas C, Lu Zhiyong, Summers Ronald M
Imaging Biomarkers and Computer-Aided Diagnosis Laboratory, Radiology and Imaging Sciences, Clinical Center, National Institutes of Health, Bethesda, MD, USA.
National Center for Biotechnology Information, National Library of Medicine, National Institutes of Health, Bethesda, MD, USA.
ArXiv. 2025 Apr 7:arXiv:2504.05196v1.
Robust localization of lymph nodes (LNs) in multiparametric MRI (mpMRI) is critical for the assessment of lymphadenopathy. Radiologists routinely measure the size of LN to distinguish benign from malignant nodes, which would require subsequent cancer staging. Sizing is a cumbersome task compounded by the diverse appearances of LNs in mpMRI, which renders their measurement difficult. Furthermore, smaller and potentially metastatic LNs could be missed during a busy clinical day. To alleviate these imaging and workflow problems, we propose a pipeline to universally detect both benign and metastatic nodes in the body for their ensuing measurement. The recently proposed VFNet neural network was employed to identify LN in T2 fat suppressed and diffusion weighted imaging (DWI) sequences acquired by various scanners with a variety of exam protocols. We also use a selective augmentation technique known as Intra-Label LISA (ILL) to diversify the input data samples the model sees during training, such that it improves its robustness during the evaluation phase. We achieved a sensitivity of ~83% with ILL vs. ~80% without ILL at 4 FP/vol. Compared with current LN detection approaches evaluated on mpMRI, we show a sensitivity improvement of ~9% at 4 FP/vol.
在多参数磁共振成像(mpMRI)中对淋巴结(LN)进行可靠定位对于评估淋巴结病至关重要。放射科医生通常通过测量LN的大小来区分良性和恶性淋巴结,这对于后续的癌症分期是必要的。测量大小是一项繁琐的任务,因为mpMRI中LN的表现多样,使得测量变得困难。此外,在繁忙的临床工作中,较小的、可能发生转移的LN可能会被遗漏。为了缓解这些成像和工作流程问题,我们提出了一种流程,用于普遍检测体内的良性和转移性淋巴结,以便进行后续测量。最近提出的VFNet神经网络被用于在通过各种扫描协议由各种扫描仪获取的T2脂肪抑制和扩散加权成像(DWI)序列中识别LN。我们还使用了一种称为标签内LISA(ILL)的选择性增强技术,以使模型在训练期间看到的输入数据样本多样化,从而在评估阶段提高其鲁棒性。在每体积4个假阳性(FP)的情况下,使用ILL时我们实现了约83%的灵敏度,而不使用ILL时灵敏度约为80%。与目前在mpMRI上评估的LN检测方法相比,我们在每体积4个FP的情况下显示出约9%的灵敏度提高。