Zhong Li, Ge Kun, Zu Jin-chi, Zhao Long-hua, Shen Wei-ke, Wang Jian-fei, Zhang Xiao-gang, Gao Xu, Hu Wanping, Yen Yun, Kernstine Kemp H
Department of Molecular Biology, Hebei University College of Life Sciences, 180 Wusi Road, Baoding 071002, China.
Breast Cancer Res. 2008;10(3):R40. doi: 10.1186/bcr2091. Epub 2008 May 7.
Only a limited number of tumor markers for breast cancer are currently available. Antibodies to tumor-associated proteins may expand the number of available tumor markers for breast cancer and may be used together in a serum profile to enhance sensitivity and specificity.
In the present study, we interrogated a breast cancer cDNA T7 phage library for tumor-associated proteins using biopan enrichment techniques with sera from normal individuals and from breast cancer patients. The enrichment of tumor-associated proteins after biopanning was tested using a plaque-lift assay and immunochemical detection. The putative tumor-associated phage clones were collected for PCR and sequencing analysis. Unique and open reading frame phage-expressed proteins were then used to develop phage protein ELISAs to measure corresponding autoantibodies using 87 breast cancer patients and 87 normal serum samples. A logistic regression model and leave-one-out validation were used to evaluate predictive accuracies with a single marker as well as with combined markers. Identities of those selected proteins were revealed through the sequence BLAST program.
We harvested 100 putative tumor-associated phage clones after biopan enrichment. Sequencing analysis revealed that six phage proteins were inframe and unique. Antibodies to these six phage-expressed proteins were measured by ELISAs, and the results showed that three of the phage clones had statistical significance in discriminating patients from normal individuals. BLAST results of the three proteins showed great matches to ASB-9, SERAC1, and RELT. Measurements of the three predictive phage proteins were combined in a logistic regression model that achieved 80% sensitivity and 100% specificity in prediction of sample status, whereas leave-one-out validation achieved 77.0% sensitivity and 82.8% specificity among 87 patient samples and 87 control samples. Receiver operating characteristic curve analysis and the leave-one-out method both showed that combined measurements of the three antibodies were more predictive of disease than any of the single antibodies studied, underscoring the importance of identifying multiple potential markers.
Serum autoantibody profiling is a promising approach for early detection and diagnosis of breast cancer. Rather than one autoantibody, a panel of autoantibodies appears preferable to achieve superior accuracy. Further refinements will need to be made to further improve the accuracy. Once refined, the assay must be applied to a prospective patient population to demonstrate applicability.
目前可用于乳腺癌的肿瘤标志物数量有限。针对肿瘤相关蛋白的抗体可能会增加可用于乳腺癌的肿瘤标志物数量,并且可在血清分析中联合使用以提高敏感性和特异性。
在本研究中,我们使用生物淘选富集技术,利用正常个体和乳腺癌患者的血清,从乳腺癌cDNA T7噬菌体文库中筛选肿瘤相关蛋白。使用噬菌斑转移检测和免疫化学检测来测试生物淘选后肿瘤相关蛋白的富集情况。收集推定的肿瘤相关噬菌体克隆进行PCR和测序分析。然后使用独特的开放阅读框噬菌体表达蛋白开发噬菌体蛋白ELISA,以检测87例乳腺癌患者和87份正常血清样本中的相应自身抗体。使用逻辑回归模型和留一法验证来评估单个标志物以及联合标志物的预测准确性。通过序列BLAST程序揭示所选蛋白的身份。
生物淘选富集后,我们收获了100个推定的肿瘤相关噬菌体克隆。测序分析表明,六种噬菌体蛋白符合读框且具有独特性。通过ELISA检测了针对这六种噬菌体表达蛋白的抗体,结果表明其中三个噬菌体克隆在区分患者和正常个体方面具有统计学意义。这三种蛋白的BLAST结果显示与ASB-9、SERAC1和RELT高度匹配。在逻辑回归模型中结合测量这三种预测性噬菌体蛋白,对样本状态预测的敏感性达到80%,特异性达到100%,而在87例患者样本和87例对照样本中,留一法验证的敏感性为77.0%,特异性为82.8%。受试者工作特征曲线分析和留一法均表明,与所研究的任何一种单一抗体相比,这三种抗体的联合测量对疾病的预测性更强,突出了识别多种潜在标志物的重要性。
血清自身抗体分析是一种很有前景的乳腺癌早期检测和诊断方法。一组自身抗体似乎比单一自身抗体更可取,以实现更高的准确性。需要进一步改进以进一步提高准确性。一旦改进,该检测方法必须应用于前瞻性患者群体以证明其适用性。