Li Yang, Li Wen, Xiao Haotian, Chen Weizhong, Lu Jie, Huang Nengwen, Li Qingling, Zhou Kangwei, Kojima Ikuho, Liu Yiming, Ou Yanjing
Institute of Stomatology & Research Center of Dental and Craniofacial Implants, School and Hospital of Stomatology, Fujian Medical University, Fuzhou, China.
School and Hospital of Stomatology, Fujian Medical University, Fuzhou, China.
Clin Oral Investig. 2024 Dec 21;29(1):25. doi: 10.1007/s00784-024-06110-6.
This study aims to develop an automated radiomics-based model to grade the pathological differentiation of head and neck squamous cell carcinoma (HNSCC) and to assess the influence of various magnetic resonance imaging (MRI) sequences on the model's performance.
We retrospectively analyzed MRI data from 256 patients across two medical centers, including both contrast-enhanced T1-weighted images (CET1WI) and T2-weighted images (T2WI). Regions of interest were delineated for radiomics feature extraction, followed by dimensionality reduction. An XGBoost classifier was then employed to build the predictive model, with its classification efficiency assessed using receiver operating characteristic curves and the area under the curve (AUC).
In validation cohort, the AUC (macro/micro) values for models utilizing CET1WI, T2WI, and the combination of CET1WI and T2WI were 0.801/0.814, 0.741/0.798, and 0.885/0.895, respectively. The AUC for the three differentiations, ranging from well-differentiated to poorly differentiated, were 0.867, 0.909, and 0.837, respectively. The macro/micro precision, recall, and F1 scores of 0.688/0.736, 0.744/0.828, and 0.685/0.779 for the CET1WI + T2WI model.
This study demonstrates that constructing a radiomics model based on CET1WI and T2WI sequences can be used to predict the pathological differentiation grading of HNSCC patients.
This study suggests that a radiomics model integrating CET1WI and T2WI MRI sequences can effectively predict the pathological differentiation of HNSCC, providing an alternative diagnostic approach through non-invasive preoperative methods.
本研究旨在开发一种基于放射组学的自动化模型,对头颈部鳞状细胞癌(HNSCC)的病理分化程度进行分级,并评估各种磁共振成像(MRI)序列对该模型性能的影响。
我们回顾性分析了来自两个医疗中心的256例患者的MRI数据,包括对比增强T1加权图像(CET1WI)和T2加权图像(T2WI)。勾画感兴趣区域以进行放射组学特征提取,随后进行降维。然后使用XGBoost分类器构建预测模型,并使用受试者工作特征曲线和曲线下面积(AUC)评估其分类效率。
在验证队列中,利用CET1WI、T2WI以及CET1WI与T2WI组合构建的模型的AUC(宏观/微观)值分别为0.801/0.814、0.741/0.798和0.885/0.895。从高分化到低分化的三种分化程度的AUC分别为0.867、0.909和0.837。CET1WI + T2WI模型的宏观/微观精度、召回率和F1分数分别为0.688/0.736、0.744/0.828和0.685/0.779。
本研究表明,基于CET1WI和T2WI序列构建的放射组学模型可用于预测HNSCC患者的病理分化分级。
本研究表明,整合CET1WI和T2WI MRI序列的放射组学模型可有效预测HNSCC的病理分化,通过非侵入性术前方法提供了一种替代诊断方法。