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采用G因子补充的新分子分期对胃癌TNM分类进行补充:日本胃肠癌发生学会G项目委员会的多中心合作研究

New molecular staging with G-factor supplements TNM classification in gastric cancer: a multicenter collaborative research by the Japan Society for Gastroenterological Carcinogenesis G-Project committee.

作者信息

Sawada Tetsuji, Yashiro Masakazu, Sentani Kazuhiro, Oue Naohide, Yasui Wataru, Miyazaki Kohji, Kai Keita, Fushida Sachio, Fujimura Takashi, Ohira Masaichi, Kakeji Yoshihiro, Natsugoe Shoji, Shirabe Ken, Nomura Sachiyo, Shimada Yutaka, Tomita Naohiro, Hirakawa Kosei, Maehara Yoshihiko

机构信息

Department of Surgical Oncology, Osaka City University Graduate School of Medicine, 1-4-3 Asahimachi, Abeno-ku, Osaka, 545-8585, Japan,

出版信息

Gastric Cancer. 2015 Jan;18(1):119-28. doi: 10.1007/s10120-014-0338-2. Epub 2014 Feb 1.

Abstract

BACKGROUND

The G-Project committee was erected by the Japan Society for Gastroenterological Carcinogenesis with an aim of establishing a new classification scheme based on molecular biological characteristics that would supplement the conventional TNM classification to better predict outcome.

METHODS

In a literature search involving 822 articles on gastric cancer, eight molecules including p53, vascular endothelial growth factor (VEGF)-A, VEGF-C, matrix metalloproteinase-7 (MMP-7), human epidermal growth factor receptor 2, Regenerating islet-derived family, member 4, olfactomedin-4 and Claudin-18 were selected as candidates to be included in the new molecular classification scheme named G-factor. A total of 210 cases of gastric cancer who underwent curative R0 resection were registered from four independent facilities. Immunohistochemical staining for the aforementioned molecules was performed for the surgically resected specimens of the 210 cases to investigate the correlation between clinicopathological factors and expression of each molecule.

RESULTS

No significant correlation was observed between the immunostaining expression of any of the eight factors and postoperative recurrence. However, the expressions of p53 and MMP-7 were significantly correlated with overall survival (OS). When 210 gastric cancer patients were divided into three groups based on the expression of p53 and MMP-7 (G0 group: negative for both p53 and MMP-7, n = 69, G1 group: positive for either p53 or MMP-7, n = 97, G2 group: positive for both of the molecules, n = 44), G2 group demonstrated significantly higher recurrence rate (59%) compared to 38% in G0 (p = 0.047). The multivariate regression analysis revealed that G2 group was independently associated with a shorter disease-free survival (DFS) (hazard ratio 1.904, 95% CI 1.098-3.303; p = 0.022), although the association with OS was not significant. Stage II patients among the G2 group had significantly inferior prognosis both in terms of OS and DFS when compared with those among the G0/G1 group, with survival curves similar to those of Stage III cases.

CONCLUSIONS

G-factor based on the expression of p53 and MMP-7 was found to be a promising factor to predict outcome of Stage II/III gastric cancer, and possibly to help select the treatment for Stage II cancer, thus supplementing the conventional TNM system.

摘要

背景

日本胃肠癌发生学会设立了G-Project委员会,旨在基于分子生物学特征建立一种新的分类方案,以补充传统的TNM分类,从而更好地预测预后。

方法

在一项涉及822篇胃癌相关文章的文献检索中,选择了包括p53、血管内皮生长因子(VEGF)-A、VEGF-C、基质金属蛋白酶-7(MMP-7)、人表皮生长因子受体2、再生胰岛衍生家族成员4、嗅觉介质4和Claudin-18在内的8种分子作为新的分子分类方案(称为G因子)的候选分子。从四个独立机构登记了总共210例行根治性R0切除的胃癌病例。对这210例病例的手术切除标本进行上述分子的免疫组织化学染色,以研究临床病理因素与各分子表达之间的相关性。

结果

八个因子中任何一个的免疫染色表达与术后复发之间均未观察到显著相关性。然而,p53和MMP-7的表达与总生存期(OS)显著相关。当根据p53和MMP-7的表达将210例胃癌患者分为三组时(G0组:p53和MMP-7均为阴性,n = 69;G1组:p53或MMP-7为阳性,n = 97;G2组:两种分子均为阳性,n = 44),G2组的复发率(59%)显著高于G0组的38%(p = 0.047)。多因素回归分析显示,G2组与无病生存期(DFS)较短独立相关(风险比1.904,95%CI 1.098 - 3.303;p = 0.022),尽管与OS的相关性不显著。与G0/G1组相比,G2组中的II期患者在OS和DFS方面的预后均显著较差,生存曲线与III期病例相似。

结论

基于p53和MMP-7表达的G因子被发现是预测II/III期胃癌预后的一个有前景的因子,并且可能有助于选择II期癌症的治疗方法,从而补充传统的TNM系统。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f1f7/4257995/e0a3f41a7a67/10120_2014_338_Fig1_HTML.jpg

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