A 2-Protein Signature Predicting Clinical Outcome in High-Grade Serous Ovarian Cancer

作者:Jin, Chengjuan; Xue, Yingfeng; Li, Yingwei; Bu, Hualei; Yu, Hongfeng; Zhang, Tao; Zhang, Zhiwei; Yan, Shi; Lu, Nan*; Kong, Beihua*
来源:International Journal of Gynecological Cancer, 2018, 28(1): 51-58.
DOI:10.1097/IGC.0000000000001141

摘要

Objective High-grade serous ovarian cancer (HGSOC) accounts for approximately 70% deaths in ovarian cancer. The overall survival (OS) of HGSOC is poor and still remains a clinical challenge. High-grade serous ovarian cancer can be divided into 4 molecular subtypes. The prognosis of different molecular subtypes is still unclear. We aimed to investigate the prognostic values of immunohistochemistry-based different molecular subtypes in patients with HGSOC. @@@ Methods We analyzed the protein expression of representative biomarkers (CXCL11, HMGA2, and MUC16) of 3 different molecular subtypes in 110 formalin-fixed, paraffin-embedded HGSOC by tissue microarrays. @@@ Results High CXCL11 expression predicted worse OS, not disease-free survival (DFS; P = 0.028 for OS, P = 0.191 for DFS). High HMGA2 expression predicted worse OS and DFS (P = 0.037 for OS, P = 0.021 for DFS). MUC16 expression was not associated with OS or DFS (P = 0.919 for OS, P = 0.517 for DFS). Multivariate regression analysis showed that CXCL11 combined with HMGA2 signature was an independent predictor for OS and DFS in patients with HGSOC. @@@ Conclusions CXCL11 combined with HMGA2 signature was a clinically applicable prognostic model that could precisely predict an HGSOC patient's OS and tumor recurrence. This model could serve as an important tool for risk assessment of HGSOC prognosis.

  • 出版日期2018-1
  • 单位山东大学; 浙江省疾病预防控制中心