Department of Computer Science and Information Engineering, National Taiwan University, Taipei, Taiwan.
Department of Medical Imaging and Radiological Technology, Yuanpei University of Medical Technology, Hsinchu, Taiwan.
Comput Med Imaging Graph. 2021 Jul;91:101935. doi: 10.1016/j.compmedimag.2021.101935. Epub 2021 May 15.
Lymph node metastasis (LNM) identification is the most clinically important tasks related to survival and recurrence from lung cancer. However, the preoperative prediction of nodal metastasis remains a challenge to determine surgical plans and pretreatment decisions in patients with cancers. We proposed a novel deep prediction method with a size-related damper block for nodal metastasis (Nmet) identification from the primary tumor in lung cancer generated by gemstone spectral imaging (GSI) dual-energy computer tomography (CT). The best model is the proposed method trained by the 40 keV dataset achieves an accuracy of 86 % and a Kappa value of 72 % for Nmet prediction. In the experiment, we have 11 different monochromatic images from 40∼140 keV (the interval is 10 keV) for each patient. When we used the model of 40 keV dataset, there has significant difference in other energy levels (unit of keV). Therefore, we apply in 5-fold cross-validation to explain the lower keV is more efficient to predict Nmet of the primary tumor. The result shows that tumor heterogeneity and size contributed to the proposed model to estimate whether absence or presence of nodal metastasis from the primary tumor.
淋巴结转移(LNM)的识别是与肺癌患者生存和复发最相关的最重要的临床任务。然而,术前预测淋巴结转移仍然是确定癌症患者手术计划和术前决策的挑战。我们提出了一种新的深度预测方法,该方法具有与大小相关的阻尼块,用于从宝石能谱成像(GSI)双能计算机断层扫描(CT)生成的肺癌原发肿瘤中识别淋巴结转移(Nmet)。在实验中,我们为每位患者提供了 11 张不同的 40keV∼140keV(间隔为 10keV)单色图像。当我们使用 40keV 数据集的模型时,其他能级(keV 单位)存在显著差异。因此,我们应用 5 倍交叉验证来解释较低的 keV 更有效地预测原发肿瘤的 Nmet。结果表明,肿瘤异质性和大小有助于提出的模型来估计原发肿瘤是否存在或不存在淋巴结转移。