Department of Surgery, Seoul National University College of Medicine, Seoul, Republic of Korea.
Colorectal Cancer Center, Seoul National University Cancer Hospital, Seoul, Republic of Korea.
J Cachexia Sarcopenia Muscle. 2024 Feb;15(1):281-291. doi: 10.1002/jcsm.13404. Epub 2023 Dec 20.
Parameters obtained from two-dimensional (2D) cross-sectional images have been used to determine body composition. However, data from three-dimensional (3D) volumetric body images reflect real body composition more accurately and may be better predictors of patient outcomes in cancer. This study aimed to assess the 3D parameters and determine the best predictive factors for patient prognosis.
Patients who underwent surgery for colorectal cancer (CRC) between 2010 and 2016 were included in this study. Preoperative computed tomography images were analysed using an automatic segmentation program. Body composition parameters for muscle, muscle adiposity, subcutaneous fat (SF) and abdominal visceral fat (AVF) were assessed using 2D images at the third lumbar (L3) level and 3D images of the abdominal waist (L1-L5). The cut-off points for each parameter were determined using X-tile software. A Cox proportional hazards regression model was used to identify the association between the parameters and the treatment outcomes, and the relative influence of each parameter was compared using a gradient boosting model.
Overall, 499 patients were included in the study. At a median follow-up of 59 months, higher 3D parameters of the abdominal muscles and SF from the abdominal waist were found to be associated with longer overall survival (OS) and disease-free survival (all P < 0.001). Although the 3D parameters of AVF were not related to survival outcomes, patients with a high AVF volume and mass experienced higher rate of postoperative complications than those with low AVF volume (27.4% vs. 18.7%, P = 0.021, for mass; 27.1% vs. 19.0%, P = 0.028, for volume). Low muscle mass and volume (hazard ratio [HR] 1.959, P = 0.016; HR 2.093, P = 0.036, respectively) and low SF mass and volume (HR 1.968, P = 0.008; HR 2.561, P = 0.003, respectively), both in the abdominal waist, were identified as independent prognostic factors for worse OS. Along with muscle mass and volume, SF mass and volume in the abdominal waist were negatively correlated with mortality (all P < 0.001). Both AVF mass and volume in the abdominal waist were positively correlated with postoperative complications (P < 0.05); 3D muscle volume and SF at the abdominal waist were the most influential factors for OS.
3D volumetric parameters generated using an automatic segmentation program showed higher correlations with the short- and long-term outcomes of patients with CRC than conventional 2D parameters.
二维(2D)横断图像获得的参数已用于确定身体成分。然而,三维(3D)容积体图像的数据更准确地反映了真实的身体成分,并且可能是癌症患者预后更好的预测因子。本研究旨在评估 3D 参数,并确定预测患者预后的最佳预测因素。
纳入 2010 年至 2016 年间接受结直肠癌(CRC)手术的患者。使用自动分割程序分析术前计算机断层扫描图像。使用 3D 腹部腰部(L1-L5)图像和 2D 图像在第三腰椎(L3)水平评估肌肉、肌肉脂肪、皮下脂肪(SF)和腹部内脏脂肪(AVF)的身体成分参数。使用 X-tile 软件确定每个参数的截止点。使用 Cox 比例风险回归模型来确定参数与治疗结果之间的关联,并使用梯度提升模型比较每个参数的相对影响。
总体而言,共有 499 名患者纳入研究。在中位随访 59 个月时,发现腹部肌肉和 SF 的 3D 参数较高与总生存期(OS)和无病生存期(DFS)延长有关(均 P<0.001)。尽管 AVF 的 3D 参数与生存结果无关,但 AVF 体积和质量较高的患者术后并发症发生率高于 AVF 体积较低的患者(27.4% vs. 18.7%,P=0.021,用于质量;27.1% vs. 19.0%,P=0.028,用于体积)。低肌肉质量和体积(风险比 [HR] 1.959,P=0.016;HR 2.093,P=0.036,分别)和低 SF 质量和体积(HR 1.968,P=0.008;HR 2.561,P=0.003,分别),均在腹部腰部,被确定为 OS 不良的独立预后因素。与肌肉质量和体积一样,腹部腰部的 SF 质量和体积与死亡率呈负相关(均 P<0.001)。腹部腰部的 AVF 质量和体积均与术后并发症呈正相关(P<0.05);腹部腰部的 3D 肌肉体积和 SF 是 OS 的最具影响力因素。
使用自动分割程序生成的 3D 容积参数与 CRC 患者的短期和长期结果相关性高于传统的 2D 参数。