Center for Biotechnology and Genomic Medicine, Medical College of Georgia, Augusta University, United States of America; Department of Obstetrics and Gynecology, Medical College of Georgia, Augusta University, United States of America.
Center for Biotechnology and Genomic Medicine, Medical College of Georgia, Augusta University, United States of America; Department of Medical Laboratory, Imaging, & Radiologic Sciences, College of Allied Health Sciences, Augusta University, United States of America.
Gynecol Oncol. 2019 Mar;152(3):574-580. doi: 10.1016/j.ygyno.2018.12.015. Epub 2018 Dec 18.
To investigate the utility of a combined panel of protein biomarkers and clinical factors to predict recurrence in serous ovarian cancer patients.
Women at Augusta University diagnosed with ovarian cancer were enrolled between 2005 and 2015 (n = 71). Blood was drawn at enrollment and follow-up visits. Patient serum collected at remission was analyzed using the SOMAscan array (n = 35) to measure levels of 1129 proteins. The best 26 proteins were confirmed using Luminex assays in the same 35 patients and in an additional 36 patients (n = 71) as orthogonal validation. The data from these 26 proteins was combined with clinical factors using an elastic net multivariate model to find an optimized combination predictive of progression-free survival (PFS).
Of the 26 proteins, Brain Derived Neurotrophic Factor and Platelet Derived Growth Factor molecules were significant for predicting PFS on both univariate and multivariate analyses. All 26 proteins were combined with clinical factors using the elastic net algorithm. Ten components were determined to predict PFS (HR of 6.55, p-value 1.12 × 10, CI 2.57-16.71). This model was named the serous high grade ovarian cancer (SHOC) score.
The SHOC score can predict patient prognosis in remission. This tool will hopefully lead to early intervention and consolidation therapy strategies in remission patients destined to recur.
探究蛋白生物标志物与临床因素联合检测在预测浆液性卵巢癌患者复发中的作用。
2005 年至 2015 年间,奥古斯塔大学的女性卵巢癌患者被纳入研究(n=71)。在入组时和随访期间采集血液样本。对缓解期患者的血清样本采用 SOMAscan 阵列(n=35)进行分析,以测量 1129 种蛋白的水平。使用 Luminex 检测在同一 35 例患者和另外 36 例患者(n=71)中对最佳的 26 种蛋白进行了验证。将这些 26 种蛋白的数据与临床因素结合起来,利用弹性网络多元模型来寻找一种能优化预测无进展生存期(PFS)的组合。
在这 26 种蛋白中,脑源性神经营养因子和血小板衍生生长因子分子在单变量和多变量分析中均为预测 PFS 的重要标志物。使用弹性网络算法将所有 26 种蛋白与临床因素结合。确定了 10 个成分来预测 PFS(HR 为 6.55,p 值为 1.12×10,CI 为 2.57-16.71)。该模型被命名为浆液性高级别卵巢癌(SHOC)评分。
SHOC 评分可预测缓解期患者的预后。该工具有望为缓解期有复发倾向的患者提供早期干预和巩固治疗策略。