White Charlie, Jayaprakasam Vetri Sudar, Tenet Megan, Tang Laura H, Schattner Mark A, Janjigian Yelena Y, Maron Steven B, Schöder Heiko, Larson Steven M, Gönen Mithat, Datta Jashodeep, Coit Daniel G, Mauguen Audrey, Strong Vivian E, Vitiello Gerardo A
Department of Epidemiology and Biostatistics, Memorial Sloan Kettering Cancer Center, New York, NY, USA.
Department of Radiology, Memorial Sloan Kettering Cancer Center, New York, NY, USA.
Eur J Surg Oncol. 2025 May;51(5):109589. doi: 10.1016/j.ejso.2025.109589. Epub 2025 Jan 8.
F-FDG PET-CT-based host metabolic (PETMet) profiling of non-tumor tissue is a novel approach to incorporate the patient-specific response to cancer into clinical algorithms.
A prospectively maintained institutional database of gastroesophageal cancer patients was queried for pretreatment PET-CTs, demographics, and clinicopathologic variables. F-FDG PET avidity was measured in 9 non-tumor tissue types (liver, spleen, 4 muscles, 3 fat locations). Logistic and Cox regression were used to model pathologic response (PR) and overall survival (OS) respectively. Classification and regression tree (CART) and random forest modeling were employed to create decision trees and identify PETMet features associated with outcome.
Two-hundred and one patients with distal gastroesophageal (48 %) or gastric (52 %) adenocarcinoma were included. PET-CT-derived scores were independently associated with PR after adjusting for clinical variables. CART and Random Forest methods identified critical split points of non-tumor tissue F-FDG avidity that can classify patients and predict PR. PET-CT risk groups created from decision trees predicted PR significantly better than the clinical model (p < 0.001). Specifically, an elevated erector spinae-to-gluteal fat F-FDG avidity ratio (≥2.7) combined with low F-FDG avidity in the spleen (<2.9) and rectus femoris (<0.52) predict PR. No advantage of PET-CT risk groups was seen for predicting OS (p = 0.155).
Pretreatment host PETMet features may be useful for predicting PR after neoadjuvant therapy in gastroesophageal cancer. Unsupervised decision trees indicate that low F-FDG avidity in visceral fat, subcutaneous fat, and muscle result in the most favorable PR, suggesting that systemic hypermetabolism adversely impacts prognosis.
基于F-FDG PET-CT的非肿瘤组织宿主代谢(PETMet)分析是一种将患者对癌症的特异性反应纳入临床算法的新方法。
查询前瞻性维护的食管癌患者机构数据库,获取治疗前PET-CT、人口统计学和临床病理变量。在9种非肿瘤组织类型(肝脏、脾脏、4块肌肉、3个脂肪部位)中测量F-FDG摄取情况。分别使用逻辑回归和Cox回归对病理反应(PR)和总生存期(OS)进行建模。采用分类与回归树(CART)和随机森林建模创建决策树,并识别与预后相关的PETMet特征。
纳入201例远端食管癌(48%)或胃癌(52%)患者。调整临床变量后,PET-CT得出的评分与PR独立相关。CART和随机森林方法确定了非肿瘤组织F-FDG摄取的关键分割点,可对患者进行分类并预测PR。由决策树创建的PET-CT风险组预测PR的效果明显优于临床模型(p<0.001)。具体而言,竖脊肌与臀肌脂肪的F-FDG摄取率升高(≥2.7),同时脾脏(<2.9)和股直肌(<0.52)的F-FDG摄取率低,可预测PR。在预测OS方面,未发现PET-CT风险组有优势(p=0.155)。
治疗前宿主PETMet特征可能有助于预测食管癌新辅助治疗后的PR。无监督决策树表明,内脏脂肪、皮下脂肪和肌肉中F-FDG摄取率低会导致最有利的PR,提示全身代谢亢进会对预后产生不利影响。