Yurkovetsky Zoya, Ta'asan Shlomo, Skates Steve, Rand Alex, Lomakin Aleksey, Linkov Faina, Marrangoni Adele, Velikokhatnaya Lyudmila, Winans Matthew, Gorelik Elieser, Maxwell G Larry, Lu Karen, Lokshin Anna
University of Pittsburgh Cancer Institute, Hillman Cancer Center, 5117 Centre Ave., Pittsburgh, PA 15213, USA.
Gynecol Oncol. 2007 Oct;107(1):58-65. doi: 10.1016/j.ygyno.2007.05.041. Epub 2007 Jul 19.
Endometrial carcinoma is the most common gynecologic cancer. Although the prognosis for endometrial cancer is generally good, cancers identified at late stages are associated with high levels of morbidity and mortality. Therefore, prevention and early detection may further reduce the burden of this challenging disease.
A panel of 64 serum biomarkers was analyzed in sera of patients with stages I-III endometrial cancer and age-matched healthy women, utilizing a multiplex xMAP bead-based immunoassay. For multivariate analysis, four different statistical classification methods were used: logistic regression (LR), separating hyperplane (SHP), k nearest neighbors (KNN), and classification tree (CART). For each of these classifiers, a diagnostic model was created based on the cross-validation set consisting of sera from 115 patients with endometrial cancer and 135 healthy women.
Our data have demonstrated that patients with endometrial cancer have significantly different expression patterns of several serum biomarkers as compared to healthy controls. Prolactin was the strongest discriminative biomarker for endometrial cancer providing 98.3% sensitivity and 98.0% specificity alone. Our results have revealed that serum concentration of cancer antigens, including CA 125, CA 15-3, and CEA are higher in patients with Stage III endometrial cancer as compared to those with Stage I. In addition, we have shown that the expression of CA 125, AFP, and ACTH is elevated in women with tumor grade 3 vs. grade 1. Furthermore, five-biomarker panel (prolactin, GH, Eotaxin, E-selectin, and TSH) identified in this study was able to discriminate endometrial cancer from ovarian and breast cancers with high sensitivity and specificity.
The ability of prolactin to accurately discriminate between cancer and control groups indicates that this biomarker could potentially be used for development of blood-based test for the early detection of endometrial cancer in high-risk populations. Combining the information on multiple serum markers using flexible statistical methods allows for achieving high cancer selectivity.
子宫内膜癌是最常见的妇科癌症。尽管子宫内膜癌的预后总体良好,但晚期确诊的癌症与高发病率和死亡率相关。因此,预防和早期检测可能会进一步减轻这种具有挑战性疾病的负担。
利用基于多重xMAP磁珠的免疫测定法,对I - III期子宫内膜癌患者和年龄匹配的健康女性血清中的64种血清生物标志物进行分析。对于多变量分析,使用了四种不同的统计分类方法:逻辑回归(LR)、分离超平面(SHP)、k近邻(KNN)和分类树(CART)。对于这些分类器中的每一个,基于由115例子宫内膜癌患者和135名健康女性的血清组成的交叉验证集创建诊断模型。
我们的数据表明,与健康对照相比,子宫内膜癌患者的几种血清生物标志物具有显著不同的表达模式。催乳素是子宫内膜癌最强的鉴别生物标志物,单独使用时灵敏度为98.3%,特异性为98.0%。我们的结果显示,与I期患者相比,III期子宫内膜癌患者血清中癌抗原(包括CA 125、CA 15 - 3和CEA)的浓度更高。此外,我们还表明,肿瘤3级女性与1级女性相比,CA 125、甲胎蛋白(AFP)和促肾上腺皮质激素(ACTH)的表达升高。此外,本研究中鉴定的五生物标志物组合(催乳素、生长激素、嗜酸性粒细胞趋化因子、E - 选择素和促甲状腺激素)能够以高灵敏度和特异性区分子宫内膜癌与卵巢癌和乳腺癌。
催乳素准确区分癌症组和对照组的能力表明,这种生物标志物有可能用于开发基于血液的检测方法,以在高危人群中早期检测子宫内膜癌。使用灵活的统计方法结合多种血清标志物的信息可实现高癌症选择性。