Shanghai Institute of Medical Imaging, Shanghai, China.
Department of Radiology, Eye & ENT Hospital, Fudan University, Shanghai, China.
Acad Radiol. 2023 Oct;30(10):2201-2211. doi: 10.1016/j.acra.2022.11.013. Epub 2023 Mar 14.
Preoperative prediction of the recurrence risk in patients with advanced sinonasal squamous cell carcinoma (SNSCC) is critical for individualized treatment. To evaluate the predictive ability of radiomics signature (RS) based on deep learning and multiparametric MRI for the risk of 2-year recurrence in advanced SNSCC.
Preoperative MRI datasets were retrospectively collected from 265 SNSCC patients (145 recurrences) who underwent preoperative MRI, including T2-weighted (T2W), contrast-enhanced T1-weighted (T1c) sequences and diffusion-weighted (DW). All patients were divided into 165 training cohort and 70 test cohort. A deep learning segmentation model based on VB-Net was used to segment regions of interest (ROIs) for preoperative MRI and radiomics features were extracted from automatically segmented ROIs. Least absolute shrinkage and selection operator (LASSO) and logistic regression (LR) were applied for feature selection and radiomics score construction. Combined with meaningful clinicopathological predictors, a nomogram was developed and its performance was evaluated. In addition, X-title software was used to divide patients into high-risk or low-risk early relapse (ER) subgroups. Recurrence-free survival probability (RFS) was assessed for each subgroup.
The radiomics score, T stage, histological grade and Ki-67 predictors were independent predictors. The segmentation models of T2WI, T1c, and apparent diffusion coefficient (ADC) sequences achieved Dice coefficients of 0.720, 0.727, and 0.756, respectively, in the test cohort. RS-T2, RS-T1c and RS-ADC were derived from single-parameter MRI. RS-Combined (combined with T2WI, T1c, and ADC features) was derived from multiparametric MRI and reached area under curve (AUC) and accuracy of 0.854 (0.749-0.927) and 74.3% (0.624-0.840), respectively, in the test cohort. The calibration curve and decision curve analysis (DCA) illustrate its value in clinical practice. Kaplan-Meier analysis showed that the 2-year RFS rate for low-risk patients was significantly greater than that for high-risk patients in both the training and testing cohorts (p < 0.001).
Automated nomograms based on multi-sequence MRI help to predict ER in SNSCC patients preoperatively.
术前预测高级鼻窦鳞状细胞癌(SNSCC)患者的复发风险对于个体化治疗至关重要。本研究旨在评估基于深度学习和多参数 MRI 的放射组学特征(RS)预测高级 SNSCC 患者 2 年复发风险的能力。
回顾性收集了 265 例接受术前 MRI(包括 T2 加权成像[T2WI]、对比增强 T1 加权成像[T1c]和弥散加权成像[DWI])的 SNSCC 患者的 MRI 数据集,其中 145 例患者出现复发。所有患者被分为 165 例训练队列和 70 例测试队列。基于 VB-Net 的深度学习分割模型用于对术前 MRI 进行 ROI 分割,并从自动分割的 ROI 中提取放射组学特征。最小绝对值收缩和选择算子(LASSO)和逻辑回归(LR)用于特征选择和放射组学评分构建。结合有意义的临床病理预测因素,构建并评估了列线图。此外,使用 X-title 软件将患者分为高风险或低风险早期复发(ER)亚组,并评估每个亚组的无复发生存率(RFS)。
放射组学评分、T 分期、组织学分级和 Ki-67 预测因子是独立的预测因子。在测试队列中,T2WI、T1c 和表观扩散系数(ADC)序列的分割模型的 Dice 系数分别为 0.720、0.727 和 0.756。从单参数 MRI 中得到了 RS-T2、RS-T1c 和 RS-ADC,从多参数 MRI 中得到了 RS-Combined(结合了 T2WI、T1c 和 ADC 特征),其在测试队列中的 AUC 和准确性分别为 0.854(0.749-0.927)和 74.3%(0.624-0.840)。校准曲线和决策曲线分析(DCA)表明其在临床实践中有一定的价值。Kaplan-Meier 分析显示,在训练和测试队列中,低风险患者的 2 年 RFS 率均显著高于高风险患者(p < 0.001)。
基于多序列 MRI 的自动列线图有助于术前预测 SNSCC 患者的 ER。