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使用回归树方法确定胃癌的预后因素。

Determining prognostic factors for gastric cancer using the regression tree method.

作者信息

Yamamura Yoshitaka, Nakajima Toshifusa, Ohta Keiichiro, Nashimoto Atsushi, Arai Kuniyoshi, Hiratsuka Masahiro, Sasako Mitsuru, Kodera Yasuhiro, Goto Masashi

机构信息

Department of Gastroenterological Surgery, Aichi Cancer Center Hospital, 1-1 Kanokoden, Chikusa-ku, Nagoya 464-8681, Japan.

出版信息

Gastric Cancer. 2002;5(4):201-7. doi: 10.1007/s101200200035.

Abstract

BACKGROUND

The regression tree method is a useful statistical technique that has been little used in the analysis of prognosis.

METHODS

The prognostic factors of gastric cancer were investigated, using the regression tree method, in 555 patients who had undergone curative resection for serosa-negative gastric cancer and who were enrolled in a randomized controlled trial of postoperative adjuvant chemotherapy (JCOG [Japan Clinical Oncology Group] 8801 study).

RESULTS

By the regression tree method, the first divided prognostic factor (the most important factor) was lymph node metastasis; in particular, extent of lymphatic spread had the greatest impact on prognosis. In addition, age, tumor size, depth of invasion, and individual dose intensity were found to be significant prognostic factors, whereas sex, tumor location, macroscopic tumor type, and extent of lymph node dissection were not. The resulting tree structure consisted of nine terminal nodes with different prognostic factors, and four clusters were obtained by the merging of terminal nodes that showed a similar prognosis. The cluster which showed the best survival rate (5-year survival rate, 0.986) consisted of two terminal nodes: node 12, which contained N0T1 patients who were younger than 62 years and had a tumor size of less than 7.5 cm, and node 14, which contained N1 patients who were younger than 46 years.

CONCLUSION

In serosa-negative gastric cancer, lymph node metastasis was the most important prognostic factor. Utilization of the regression tree method enabled visual interpretation of the results of statistical analyses through the graphic representation of prognostic factors. It allowed the identification of the optimal combination of these prognostic factors that defined several groups of patients with distinct prognoses and may serve as a useful reference for the individualization of treatment strategy.

摘要

背景

回归树方法是一种有用的统计技术,在预后分析中很少使用。

方法

采用回归树方法,对555例接受了浆膜阴性胃癌根治性切除术且参加了术后辅助化疗随机对照试验(日本临床肿瘤学会[JCOG]8801研究)的患者的胃癌预后因素进行了研究。

结果

通过回归树方法,第一个划分的预后因素(最重要的因素)是淋巴结转移;特别是,淋巴扩散范围对预后影响最大。此外,年龄、肿瘤大小、浸润深度和个体剂量强度被发现是显著的预后因素,而性别、肿瘤位置、大体肿瘤类型和淋巴结清扫范围则不是。得到的树状结构由九个具有不同预后因素的终末节点组成,通过合并显示相似预后的终末节点获得了四个聚类。生存率最高(5年生存率,0.986)的聚类由两个终末节点组成:节点12,包含年龄小于62岁、肿瘤大小小于7.5 cm的N0T1患者;节点14,包含年龄小于46岁的N1患者。

结论

在浆膜阴性胃癌中,淋巴结转移是最重要的预后因素。回归树方法的应用通过预后因素的图形表示实现了对统计分析结果的直观解释。它能够识别这些预后因素的最佳组合,这些组合定义了几组预后不同的患者,可为治疗策略的个体化提供有用的参考。

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