Department of Radiation Oncology, Cancer Hospital of Shantou University Medical College, 7 Raoping Road, Shantou, 515000, Guangdong, China.
Shantou University Medical College, 22 Xinling Road, Shantou 515000, 515041, Guangdong, China.
Eur Radiol. 2024 Feb;34(2):1302-1313. doi: 10.1007/s00330-023-09987-1. Epub 2023 Aug 18.
To develop a contrast-enhanced CT (CECT) radiomics-based model to identify locoregionally advanced nasopharyngeal carcinoma (LA-NPC) patients who would benefit from deintensified chemoradiotherapy.
LA-NPC patients who received low-dose concurrent cisplatin therapy (cumulative: 150 mg/m), were randomly divided into training and validation groups. 107 radiomics features based on the primary nasopharyngeal tumor were extracted from each pre-treatment CECT scan. Through Cox regression analysis, a radiomics model and patients' corresponding radiomics scores were created with predictive independent radiomics features. T stage (T) and radiomics score (R) were compared as predictive factors. Combining the N stage (N), a clinical model (T + N), and a substitution model (R + N) were constructed.
Training and validation groups consisted of 66 and 33 patients, respectively. Three significant independent radiomics features (flatness, mean, and gray level non-uniformity in gray level dependence matrix (GLDM-GLN)) were found. The radiomics score showed better predictive ability than the T stage (concordance index (C-index): 0.67 vs. 0.61, AUC: 0.75 vs. 0.60). The R + N model had better predictive performance and more effective risk stratification than the T + N model (C-index: 0.77 vs. 0.68, AUC: 0.80 vs. 0.70). The R + N model identified a low-risk group as deintensified chemoradiotherapy candidates in which no patient developed progression within 3 years, with 5-year progression-free survival (PFS) and overall survival (OS) both 90.7% (hazard ratio (HR) = 4.132, p = 0.018).
Our radiomics-based model combining radiomics score and N stage can identify specific LA-NPC candidates for whom de-escalation therapy can be performed without compromising therapeutic efficacy.
Our study shows that the radiomics-based model (R + N) can accurately stratify patients into different risk groups, with satisfactory prognosis in the low-risk group when treated with low-dose concurrent chemotherapy, providing new options for individualized de-escalation strategies.
• A radiomics score, consisting of 3 predictive radiomics features (flatness, mean, and GLDM-GLN) integrated with the N stage, can identify specific LA-NPC populations for deintensified treatment. • In the selection of LA-NPC candidates for de-intensified treatment, radiomics score extracted from primary nasopharyngeal tumors based on CECT can be superior to traditional T stage classification as a predictor.
开发一种基于增强 CT(CECT)的放射组学模型,以识别接受低剂量顺铂同期治疗(累积剂量:150mg/m)的局部晚期鼻咽癌(LA-NPC)患者,这些患者可能从减量化放化疗中获益。
将接受低剂量同期顺铂治疗(累积剂量:150mg/m)的 LA-NPC 患者随机分为训练组和验证组。从每个患者的初始鼻咽肿瘤的 CECT 扫描中提取了 107 个放射组学特征。通过 Cox 回归分析,利用具有预测性的独立放射组学特征,创建了放射组学模型和患者相应的放射组学评分。比较 T 期(T)和放射组学评分(R)作为预测因子。结合 N 期(N),构建了临床模型(T+N)和替代模型(R+N)。
训练组和验证组分别包含 66 例和 33 例患者。发现 3 个显著的独立放射组学特征(平坦度、均值和灰度共生矩阵(GLDM-GLN)中的灰度不均匀性)。放射组学评分的预测能力优于 T 期(一致性指数(C-index):0.67 比 0.61,AUC:0.75 比 0.60)。R+N 模型的预测性能优于 T+N 模型,且风险分层更有效(C-index:0.77 比 0.68,AUC:0.80 比 0.70)。R+N 模型确定了一个低危组作为减量化放化疗的候选者,该组在 3 年内没有患者发生进展,5 年无进展生存率(PFS)和总生存率(OS)均为 90.7%(风险比(HR)=4.132,p=0.018)。
我们的放射组学模型结合放射组学评分和 N 期可以识别特定的 LA-NPC 患者,对这些患者进行降阶梯治疗而不影响治疗效果。
本研究表明,放射组学模型(R+N)可以准确地对患者进行分层,低危组患者接受低剂量同期化疗后具有良好的预后,为个体化降阶梯策略提供了新的选择。
放射组学评分由 3 个具有预测性的放射组学特征(平坦度、均值和 GLDM-GLN)与 N 期组成,可识别特定的 LA-NPC 人群,以进行减量化治疗。
在选择 LA-NPC 患者进行减量化治疗时,基于 CECT 从初始鼻咽肿瘤提取的放射组学评分可作为预测因子,优于传统 T 期分类。