Computed tomography radiomics-based cross-sectional detection of mandibular osteoradionecrosis in head and neck cancer survivors

MD Anderson Head and Neck Cancer Symptom Working Group, Serageldin Kamel, Laia Humbert-Vidan, Zaphanlene Kaffey, Abdulrahman Abusaif, David T.A. Fuentes, Kareem A Wahid, Cem Dede, Mohamed A Naser, Renjie He, Ahmed W Moawad, Khaled M Elsayes, Melissa M Chen, Adegbenga O Otun, Jillian Rigert, Mark Chambers, Andrew Hope, Erin Watson, Kristy K Brock, Katherine A Hutcheson, Lisanne V van Dijk, Amy C Moreno, Stephen Y Lai, Clifton D Fuller, Abdallah SR Mohamed
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Abstract

Purpose. This study aims to identify radiomic features extracted from contrast-enhanced CT scans that differentiate osteoradionecrosis (ORN) from normal mandibular bone in patients with head and neck cancer (HNC) treated with radiotherapy (RT). Materials and Methods. Contrast-enhanced CT (CECT) images were collected for 150 patients (80% train, 20% test) with confirmed ORN diagnosis at The University of Texas MD Anderson Cancer Center between 2008 and 2018. Using PyRadiomics, radiomic features were extracted from manually segmented ORN regions and the corresponding automated control regions, the later defined as the contralateral healthy mandible region. A subset of pre-selected features was obtained based on correlation analysis (r > 0.95) and used to train a Random Forest (RF) classifier with Recursive Feature Elimination. Model explainability SHapley Additive exPlanations (SHAP) analysis was performed on the 20 most important features identified by the trained RF classifier. Results. From a total of 1316 radiomic features extracted, 810 features were excluded due to high collinearity. From a set of 506 pre-selected radiomic features, the optimal subset resulting on the best discriminative accuracy of the RF classifier consisted of 67 features. The RF classifier was well calibrated (Log Loss 0.296, ECE 0.125) and achieved an accuracy of 88% and a ROC AUC of 0.96. The SHAP analysis revealed that higher values of Wavelet-LLH First-order Mean and Median were associated with ORN of the jaw (ORNJ). Conversely, higher Exponential GLDM Dependence Entropy and lower Square First-order Kurtosis were more characteristic of normal mandibular tissue. Conclusion. This study successfully developed a CECT-based radiomics model for differentiating ORNJ from healthy mandibular tissue in HNC patients after RT. Future work will focus on the detection of subclinical ORNJ regions to guide earlier interventions.
基于计算机断层扫描放射组学的头颈部癌症幸存者下颌骨骨坏死横断面检测
研究目的本研究旨在确定从对比增强CT扫描中提取的放射学特征,以区分接受放疗(RT)的头颈部癌症(HNC)患者的骨坏死(ORN)和正常下颌骨。2008年至2018年期间,德克萨斯大学MD安德森癌症中心收集了150名确诊为ORN的患者(80%训练,20%测试)的对比增强CT(CECT)图像。使用 PyRadiomics,从人工分割的 ORN 区域和相应的自动对照区域(后者定义为对侧健康下颌骨区域)提取放射学特征。根据相关性分析(r >0.95)获得预选特征子集,并利用递归特征消除训练随机森林(RF)分类器。对训练好的 RF 分类器确定的 20 个最重要特征进行了模型可解释性--SHAPley Additive exPlanations(SHAP)分析。在总共提取的 1316 个放射学特征中,有 810 个特征因高度共线性而被排除。从一组 506 个预选的放射体特征中,RF 分类器判别准确率最高的最佳子集包括 67 个特征。射频分类器校准良好(Log Loss 0.296,ECE 0.125),准确率达到 88%,ROC AUC 为 0.96。SHAP分析显示,Wavelet-LLH一阶均值和中值越高,颌骨ORN(ORNJ)越大。相反,较高的指数 GLDM 依赖熵和较低的平方一阶峰度是正常下颌骨组织的特征。本研究成功建立了一个基于 CECT 的放射组学模型,用于区分 RT 后 HNC 患者的 ORNJ 和健康下颌骨组织。未来的工作重点是检测亚临床 ORNJ 区域,以指导早期干预。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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