Rondi Paolo, Tomasoni Michele, Cunha Bruno, Rampinelli Vittorio, Bossi Paolo, Guerini Andrea, Lombardi Davide, Borghesi Andrea, Magrini Stefano Maria, Buglione Michela, Mattavelli Davide, Piazza Cesare, Vezzoli Marika, Farina Davide, Ravanelli Marco
Radiology Unit, Department of Medical and Surgical Specialties, Radiological Sciences and Public Health, University of Brescia, Spedali Civili, Piazzale Spedali Civili 1, 25123 Brescia, Italy.
Otolaryngology Unit, Department of Medical and Surgical Specialties, Radiological Sciences and Public Health, University of Brescia, Spedali Civili, Piazzale Spedali Civili 1, 25123 Brescia, Italy.
Cancers (Basel). 2024 Nov 23;16(23):3926. doi: 10.3390/cancers16233926.
BACKGROUND/OBJECTIVES: Adenoid Cystic Carcinoma (AdCC) is a rare malignant salivary gland tumor, with high rates of recurrence and distant metastasis. This study aims to stratify patients Relapse-Free Survival (RFS) using a combined model of clinical and radiomic features from preoperative MRI.
This retrospective study included patients with primary AdCC who underwent surgery and adjuvant radiotherapy. Segmentations were manually performed by two head and neck radiologists. Radiomic features were extracted using the 3D Slicer software. Descriptive statistics was performed. A Survival Random Forest model was employed to select which radiological feature predict RFS. Cox proportional hazards models were constructed using clinical, radiological variables or both. Synthetic data augmentation was applied to address the small sample size and improve model robustness. Models were validated on real data and compared using the C-index and Prediction Error Curves (PEC).
Three Cox models were developed: one with clinical features (C-index = 0.67), one with radiomic features (C-index = 0.68), and one combining both (C-index = 0.77). The combined clinical-radiomic model had the highest predictive accuracy and outperformed models based on clinical or radiomic features. The combined model also exhibited the lowest mean Brier score in PEC analysis, indicating better predictive performance.
This study demonstrate that a combined radiomic-clinical model can predict RFS in AdCC patients. This model may provide clinicians a valuable tool in patient's management and may aid in personalized treatment planning.
背景/目的:腺样囊性癌(AdCC)是一种罕见的恶性唾液腺肿瘤,复发率和远处转移率较高。本研究旨在使用术前MRI的临床和影像组学特征的联合模型对患者的无复发生存期(RFS)进行分层。
这项回顾性研究纳入了接受手术和辅助放疗的原发性AdCC患者。由两名头颈放射科医生手动进行分割。使用3D Slicer软件提取影像组学特征。进行描述性统计。采用生存随机森林模型来选择可预测RFS的放射学特征。使用临床、放射学变量或两者构建Cox比例风险模型。应用合成数据增强来解决样本量小的问题并提高模型稳健性。在真实数据上对模型进行验证,并使用C指数和预测误差曲线(PEC)进行比较。
开发了三个Cox模型:一个包含临床特征(C指数 = 0.67),一个包含影像组学特征(C指数 = 0.68),一个结合了两者(C指数 = 0.77)。临床-影像组学联合模型具有最高的预测准确性,优于基于临床或影像组学特征的模型。联合模型在PEC分析中也表现出最低的平均Brier评分,表明具有更好的预测性能。
本研究表明,影像组学-临床联合模型可预测AdCC患者的RFS。该模型可为临床医生在患者管理中提供有价值的工具,并可能有助于个性化治疗计划。