Department of Radiology, Eye & ENT Hospital, Fudan University, 83 Fenyang Road, Shanghai, 200031, China.
Scientific Marketing, Siemens Healthineers, Shanghai, 200336, China.
Eur Arch Otorhinolaryngol. 2023 Sep;280(9):4131-4140. doi: 10.1007/s00405-023-07989-9. Epub 2023 May 9.
Accurate histologic grade assessment is helpful for clinical decision making and prognostic assessment of sinonasal squamous cell carcinoma (SNSCC). This research aimed to explore whether whole-tumor histogram analysis of apparent diffusion coefficient (ADC) maps with machine learning algorithms can predict histologic grade of SNSCC.
One hundred and forty-seven patients with pathologically diagnosed SNSCC formed this retrospective study. Sixty-six patients were low-grade (grade I/II) and eighty-one patients were high-grade (grade III). Eighteen histogram features were obtained from quantitative ADC maps. Additionally, the mean ADC value and clinical features were analyzed for comparison with histogram features. Machine learning algorithms were applied to build the best diagnostic model for predicting histological grade. The receiver operating characteristic (ROC) curve was used to evaluate the performance of each model prediction, and the area under the ROC curve (AUC) were analyzed.
The histogram model based on three features (10th Percentile, Mean, and 90th Percentile) with support vector machine (SVM) classifier demonstrated excellent diagnostic performance, with an AUC of 0.947 on the testing dataset. The AUC of the histogram model was similar to that of the mean ADC value model (0.947 vs 0.957; P = 0.7029). The poor diagnostic performance of the clinical model (AUC = 0.692) was improved by the combined model incorporating histogram features or mean ADC value (P < 0.05).
ADC histogram analysis improved the projection of SNSCC histologic grade, compared with clinical model. The complex histogram model had comparable but not better performance than mean ADC value model.
准确的组织学分级评估有助于临床决策和预测鼻窦鳞状细胞癌(SNSCC)的预后。本研究旨在探讨基于机器学习算法的表观扩散系数(ADC)图全肿瘤直方图分析是否可以预测 SNSCC 的组织学分级。
本回顾性研究纳入了 147 例经病理诊断为 SNSCC 的患者。其中 66 例为低级别(I/II 级),81 例为高级别(III 级)。从定量 ADC 图中获取了 18 个直方图特征。此外,还分析了平均 ADC 值和临床特征,以与直方图特征进行比较。应用机器学习算法构建用于预测组织学分级的最佳诊断模型。使用接收者操作特征(ROC)曲线评估每个模型预测的性能,并分析 ROC 曲线下的面积(AUC)。
基于支持向量机(SVM)分类器的三个特征(10%分位数、均值和 90%分位数)的直方图模型在测试数据集上表现出出色的诊断性能,AUC 为 0.947。直方图模型的 AUC 与平均 ADC 值模型相似(0.947 与 0.957;P=0.7029)。包含直方图特征或平均 ADC 值的联合模型改善了临床模型(AUC=0.692)的诊断性能(P<0.05)。
与临床模型相比,ADC 直方图分析提高了 SNSCC 组织学分级的预测能力。复杂的直方图模型与平均 ADC 值模型的性能相当,但并不优于后者。