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首页> 外文期刊>Cancer letters >Isolation and characterization of human lung cancer antigens by serological screening with autologous antibodies.
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Isolation and characterization of human lung cancer antigens by serological screening with autologous antibodies.

机译:通过自体抗体的血清学筛选来分离和表征人肺癌抗原。

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摘要

Serological analysis of a recombinant cDNA expression library (SEREX) derived from two lung adenocarcinoma cancer cell lines using autologous sera led to the isolation of 41 positive cDNA clones comprising 28 different antigens. They coded for a variety of nuclear and cytoplasmic proteins. Among the antigens, nucleoporin 107 (NUP107) was isolated most frequently (5 of 41 clones). The second most frequently isolated antigen was coded for by C21orf58 (4 of 41 clones). During serological analysis of selected antigens based on their reactivity to sera from normal individuals and lung cancer patients, none of the antigens showed a cancer-restricted recognition pattern. However, five genes including NUP107 showed higher expression when we examined the changes in gene expression in five different adenocarcinoma cell lines, including those used in SEREX, compared with their levels in normal lung tissues by cDNA microarray analysis. On the other hand, the expression levels of five genes including C21orf58 were down regulated in all adenocarcinoma cell lines. This SEREX study combining comprehensive gene expression assays has added to the growing list of lung cancer antigens, which may aid the development of diagnostic and immunotherapeutic reagents for patients with lung cancer.
机译:使用自体血清对源自两个肺腺癌癌细胞系的重组cDNA表达文库(SEREX)进行血清学分析,导致分离出包含28种不同抗原的41个阳性cDNA克隆。他们编码了各种核蛋白和胞质蛋白。在抗原中,核孔蛋白107(NUP107)分离最频繁(41个克隆中的5个)。第二个最常分离的抗原由C21orf58(41个克隆中的4个)编码。在根据选定抗原对正常个体和肺癌患者血清的反应性进行血清学分析时,没有一种抗原显示出癌症限制性的识别模式。但是,当我们通过cDNA芯片分析分析了五种不同的腺癌细胞系(包括SEREX中使用的那些)与正常肺组织中的表达水平相比,包括NUP107在内的五个基因显示出更高的表达。另一方面,在所有腺癌细胞系中包括C21orf58在内的五个基因的表达水平均被下调。这项结合了全面基因表达分析的SEREX研究增加了越来越多的肺癌抗原,这可能有助于开发肺癌患者的诊断和免疫治疗剂。

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