Department of Oral and Maxillofacial Surgery, Peking University School and Hospital of Stomatology, Beijing, PR China.
Department of Physics, Beihang University, Beijing, PR China; Beijing Advanced Innovation Center for Big Data-based Precision Medicine, Beihang University, Beijing, PR China.
J Neuroradiol. 2022 Mar;49(2):213-218. doi: 10.1016/j.neurad.2021.07.006. Epub 2021 Aug 4.
To determine the neck management of tongue cancer, this study attempted to construct an artificial neural network (ANN)-assisted model based on computed tomography (CT) radiomics of primary tumors to predict neck lymph node (LN) status in patients with tongue squamous cell carcinoma (SCC).
Three hundred thirteen patients with tongue SCC were retrospectively included and randomly divided into training (60%), validation (20%) and internally independent test (20%) sets. In total, 1673 feature values were extracted after the semiautomatic segmentation of primary tumors and set as input layers of a classical 3-layer ANN incorporated with or without clinical LN (cN) status after dimension reduction. The receiver operating characteristic (ROC) curve, accuracy (ACC), sensitivity (SEN), specificity (SPE), area under curve (AUC) and Net Reclassification Index (NRI), were used to evaluate and compare the models.
Four models with different settings were constructed. The ACC, SEN, SPE and AUC reached 84.1%, 93.1%, 76.5% and 0.943 (95% confidence interval: 0.891-0.996, p<.001), respectively, in the test set. The NRI of models compared with radiologists reached 40% (p<.001). The occult nodal metastasis rate was reduced from 30.9% to a minimum of 12.7% in the T1-2 group.
ANN-based models that incorporated CT radiomics of primary tumors with traditional LN evaluation were constructed and validated to more precisely predict neck LN metastasis in patients with tongue SCC than with naked eyes, especially in early-stage cancer.
为了确定舌癌的颈部管理,本研究试图构建一个基于原发性肿瘤计算机断层扫描(CT)放射组学的人工神经网络(ANN)辅助模型,以预测舌鳞状细胞癌(SCC)患者的颈部淋巴结(LN)状态。
回顾性纳入 313 例舌 SCC 患者,随机分为训练(60%)、验证(20%)和内部独立测试(20%)集。对原发性肿瘤进行半自动分割后,共提取 1673 个特征值,并作为经典 3 层 ANN 的输入层,ANN 结合或不结合降维后的临床 LN(cN)状态。使用接收者操作特征(ROC)曲线、准确性(ACC)、敏感性(SEN)、特异性(SPE)、曲线下面积(AUC)和净重新分类指数(NRI)评估和比较模型。
构建了 4 种不同设置的模型。在测试集中,模型的 ACC、SEN、SPE 和 AUC 分别达到 84.1%、93.1%、76.5%和 0.943(95%置信区间:0.891-0.996,p<.001)。与放射科医生相比,模型的 NRI 达到 40%(p<.001)。T1-2 期隐匿性淋巴结转移率从 30.9%降至最低 12.7%。
与传统的 LN 评估相比,基于 ANN 的模型,结合了原发性肿瘤的 CT 放射组学,能够更准确地预测舌 SCC 患者的颈部 LN 转移,尤其是在早期癌症患者中。