Department of General Surgery, Affiliated Zhongshan Hospital of Dalian University, Dalian, China.
Department of Pathology, Affiliated Zhongshan Hospital of Dalian University, Dalian, China.
World J Surg Oncol. 2024 Jul 16;22(1):184. doi: 10.1186/s12957-024-03466-7.
The prognosis of advanced gastric cancer (AGC) is relatively poor, and long-term survival depends on timely intervention. Currently, predicting survival rates remains a hot topic. The application of radiomics and immunohistochemistry-related techniques in cancer research is increasingly widespread. However, their integration for predicting long-term survival in AGC patients has not been fully explored.
We Collected 150 patients diagnosed with AGC at the Affiliated Zhongshan Hospital of Dalian University who underwent radical surgery between 2015 and 2019. Following strict inclusion and exclusion criteria, 90 patients were included in the analysis. We Collected postoperative pathological specimens from enrolled patients, analyzed the expression levels of MAOA using immunohistochemical techniques, and quantified these levels as the MAOAHScore. Obtained plain abdominal CT images from patients, delineated the region of interest at the L3 vertebral body level, and extracted radiomics features. Lasso Cox regression was used to select significant features to establish a radionics risk score, convert it into a categorical variable named risk, and use Cox regression to identify independent predictive factors for constructing a clinical prediction model. ROC, DCA, and calibration curves validated the model's performance.
The enrolled patients had an average age of 65.71 years, including 70 males and 20 females. Multivariate Cox regression analysis revealed that risk (P = 0.001, HR = 3.303), MAOAHScore (P = 0.043, HR = 2.055), and TNM stage (P = 0.047, HR = 2.273) emerged as independent prognostic risk factors for 3-year overall survival (OS) and The Similar results were found in the analysis of 3-year disease-specific survival (DSS). The nomogram developed could predict 3-year OS and DSS rates, with areas under the ROC curve (AUCs) of 0.81 and 0.797, respectively. Joint calibration and decision curve analyses (DCA) confirmed the nomogram's good predictive performance and clinical utility.
Integrating immunohistochemistry and muscle fat features provides a more accurate prediction of long-term survival in gastric cancer patients. This study offers new perspectives and methods for a deeper understanding of survival prediction in AGC.
晚期胃癌(AGC)的预后相对较差,长期生存取决于及时干预。目前,预测生存率仍然是一个热门话题。放射组学和免疫组织化学相关技术在癌症研究中的应用越来越广泛。然而,它们在预测 AGC 患者的长期生存中的综合应用尚未得到充分探索。
我们收集了 2015 年至 2019 年在大连大学附属中山医院接受根治性手术的 150 例 AGC 患者。经过严格的纳入和排除标准,90 例患者纳入分析。我们从入组患者中收集术后病理标本,采用免疫组织化学技术分析 MAOA 的表达水平,并将其量化为 MAOAHScore。从患者获得平扫腹部 CT 图像,在 L3 椎体水平勾画感兴趣区,提取放射组学特征。使用 Lasso Cox 回归选择显著特征来建立放射组学风险评分,将其转换为名为风险的分类变量,并使用 Cox 回归识别独立的预测因素来构建临床预测模型。ROC、DCA 和校准曲线验证了模型的性能。
入组患者的平均年龄为 65.71 岁,其中男性 70 例,女性 20 例。多变量 Cox 回归分析显示,风险(P=0.001,HR=3.303)、MAOAHScore(P=0.043,HR=2.055)和 TNM 分期(P=0.047,HR=2.273)是 3 年总生存(OS)的独立预后危险因素,3 年疾病特异性生存(DSS)的分析也得到了类似的结果。开发的列线图可以预测 3 年 OS 和 DSS 率,ROC 曲线下面积(AUCs)分别为 0.81 和 0.797。联合校准和决策曲线分析(DCA)证实了列线图的良好预测性能和临床实用性。
整合免疫组织化学和肌肉脂肪特征可更准确地预测胃癌患者的长期生存。本研究为深入了解 AGC 的生存预测提供了新的视角和方法。