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Prognostic Prediction Models for Colorectal Cancer Patients After Curative Resection

机译:治疗切除后结直肠癌患者的预后预测模型

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摘要

To develop a prediction tool for recurrence and survival in colorectal cancer (CRC) patients following surgically curative resections. We developed a reliable prediction model for CRC patients after surgically curative resections. Using clinicopathologic factors, novel prediction models were constructed with the area under the curve (AUC) of 0.841 and 0.876 for DFS and CSS, respectively. Between January 2004 and December 2007, 376 CRC patients were investigated at the Osaka Medical Center for Cancer and Cardiovascular Diseases. Patients with at least 1 of the following criteria were excluded: preoperative treatment, synchronous distant metastasis, noncurative resection, and incomplete follow-up after operation. All patients were retrospectively analyzed. A Cox proportional hazards model was used to develop a prediction model for disease-free survival (DFS) and cancer-specific survival (CSS). In univariate and multivariate analyses of clinicopathologic factors, the following factors had significant correlation with DFS and CSS: tumor location, preoperative serum carcinoembryonic antigen (CEA), pathologically defined tumor invasion, and lymph node metastasis. Using these variables, novel prediction models were constructed by the logistic regression model with AUC of 0.840 and 0.876 for DFS and CSS, respectively. The prediction models were validated by external datasets in an independent patient group. This study showed novel and reliable personalized prognostic models, integrating not only TNM factors but also tumor location and preoperative serum CEA to predict patient prognosis. These individualized prediction models could help clinicians in the treatment of postoperative CRC patients.
机译:在手术治疗切除后,开发结肠直肠癌(CRC)患者复发和存活的预测工具。我们为手术治疗切除后CRC患者的可靠预测模型开发了一种可靠的预测模型。使用临床病理因素,分别用0.841和0.876的曲线(AUC)下的区域构建了新的预测模型,分别用于DFS和CSS。 2004年1月至2007年12月,376名CRC患者在大阪医疗中心进行了癌症和心血管疾病。患有以下标准中的至少1个的患者被排除在外:术前治疗,同步远离转移,非耐久切除和操作后不完全随访。回顾性地分析所有患者。使用COX比例危害模型来开发无病生存(DFS)和癌症特异性存活(CSS)的预测模型。在单性和多变量分析的临床病理因子中,以下因素与DFS和CSS具有显着的相关性:肿瘤位置,术前血清癌伯烯抗原(CEA),病理定义的肿瘤侵袭和淋巴结转移。使用这些变量,分别由0.840和0.876的Logistic回归模型为DFS和CSS构建了新的预测模型。通过独立患者组中的外部数据集验证预测模型。本研究显示了新颖且可靠的个性化预后模型,不仅整合TNM因子,而且整合肿瘤位置和术前血清CEA,以预测患者预后。这些个体化预测模型可以帮助临床医生治疗术后CRC患者。

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