Molecular Imaging, Medical Biophysics, Princess Margaret Cancer Centre, University Health Network, Toronto, Ontario, Canada.
CAE Group, Hardware Solution Team, Health and Medical Equipment Business, Samsung Electronics Co. Ltd., Seoul, South Korea.
J Surg Oncol. 2021 Dec;124(8):1347-1355. doi: 10.1002/jso.26668. Epub 2021 Sep 7.
Previous studies evaluating the prognostic value of computed tomography (CT)-derived body composition data have included few patients. Thus, we assessed the prevalence and prognostic value of sarcopenic obesity in a large population of gastric cancer patients using preoperative CT, as nutritional status is a predictor of long-term survival after gastric cancer surgery.
Preoperative CT images were analyzed for 840 gastric cancer patients who underwent gastrectomy between March 2009 and June 2018. Machine learning algorithms were used to automatically detect the third lumbar (L3) vertebral level and segment the body composition. Visceral fat area and skeletal muscle index at L3 were determined and used to classify patients into obesity, sarcopenia, or sarcopenic obesity groups.
Out of 840 patients (mean age = 60.4 years; 526 [62.6%] men), 534 (63.5%) had visceral obesity, 119 (14.2%) had sarcopenia, and 48 (5.7%) patients had sarcopenic obesity. Patients with sarcopenic obesity had a poorer prognosis than those without sarcopenia (hazard ratio [HR] = 3.325; 95% confidence interval [CI] = 1.698-6.508). Multivariate analysis identified sarcopenic obesity as an independent risk factor for increased mortality (HR = 2.608; 95% CI = 1.313-5.179). Other risk factors were greater extent of gastrectomy (HR = 1.928; 95% CI = 1.260-2.950), lower prognostic nutritional index (HR = 0.934; 95% CI = 0.901-0.969), higher neutrophil count (HR = 1.101; 95% CI = 1.031-1.176), lymph node metastasis (HR = 6.291; 95% CI = 3.498-11.314), and R1/2 resection (HR = 4.817; 95% CI = 1.518-9.179).
Body composition analysis automated by machine learning predicted long-term survival in patients with gastric cancer.
先前评估计算机断层扫描(CT)衍生的人体成分数据预后价值的研究纳入的患者较少。因此,我们使用术前 CT 评估了大量胃癌患者中肌少症性肥胖的患病率和预后价值,因为营养状况是胃癌手术后长期生存的预测因素。
对 2009 年 3 月至 2018 年 6 月间接受胃切除术的 840 例胃癌患者的术前 CT 图像进行了分析。使用机器学习算法自动检测第三腰椎(L3)水平并对人体成分进行分段。确定 L3 处的内脏脂肪面积和骨骼肌指数,并将患者分为肥胖、肌少症或肌少症性肥胖组。
840 例患者(平均年龄 60.4 岁;526 例[62.6%]为男性)中,534 例(63.5%)有内脏肥胖,119 例(14.2%)有肌少症,48 例(5.7%)有肌少症性肥胖。肌少症性肥胖患者的预后较无肌少症患者差(风险比[HR] = 3.325;95%置信区间[CI] = 1.698-6.508)。多变量分析确定肌少症性肥胖是增加死亡率的独立危险因素(HR = 2.608;95%CI = 1.313-5.179)。其他危险因素包括胃切除术范围更大(HR = 1.928;95%CI = 1.260-2.950)、预后营养指数较低(HR = 0.934;95%CI = 0.901-0.969)、中性粒细胞计数较高(HR = 1.101;95%CI = 1.031-1.176)、淋巴结转移(HR = 6.291;95%CI = 3.498-11.314)和 R1/2 切除术(HR = 4.817;95%CI = 1.518-9.179)。
机器学习自动进行的人体成分分析预测了胃癌患者的长期生存。