Department of Oncology, Helsinki University Hospital Comprehensive Cancer Center, University of Helsinki, P.O. Box 180, Helsinki, FI-00029, Finland.
Department of Oncology and Radiotherapy, Medical Research Center Oulu, Oulu University Hospital and University of Oulu, Oulu, Finland.
Breast Cancer Res. 2024 Apr 9;26(1):61. doi: 10.1186/s13058-024-01812-x.
Breast cancers exhibit considerable heterogeneity in their biology, immunology, and prognosis. Currently, no validated, serum protein-based tools are available to evaluate the prognosis of patients with early breast cancer.
The study population consisted of 521 early-stage breast cancer patients with a median follow-up of 8.9 years. Additionally, 61 patients with breast fibroadenoma or atypical ductal hyperplasia were included as controls. We used a proximity extension assay to measure the preoperative serum levels of 92 proteins associated with inflammatory and immune response processes. The invasive cancers were randomly split into discovery (n = 413) and validation (n = 108) cohorts for the statistical analyses.
Using LASSO regression, we identified a nine-protein signature (CCL8, CCL23, CCL28, CSCL10, S100A12, IL10, IL10RB, STAMPB2, and TNFβ) that predicted various survival endpoints more accurately than traditional prognostic factors. In the time-dependent analyses, the prognostic power of the model remained rather stable over time. We also developed and validated a 17-protein model with the potential to differentiate benign breast lesions from malignant lesions (Wilcoxon p < 2.2*10; AUC 0.94).
Inflammation and immunity-related serum proteins have the potential to rise above the classical prognostic factors of early-stage breast cancer. They may also help to distinguish benign from malignant breast lesions.
乳腺癌在生物学、免疫学和预后方面表现出相当大的异质性。目前,尚无经过验证的基于血清蛋白的工具可用于评估早期乳腺癌患者的预后。
研究人群包括 521 例早期乳腺癌患者,中位随访时间为 8.9 年。此外,还纳入了 61 例乳腺纤维腺瘤或不典型导管增生患者作为对照。我们使用邻近延伸分析测定了 92 种与炎症和免疫反应过程相关的术前血清蛋白水平。侵袭性癌症被随机分为发现(n=413)和验证(n=108)队列进行统计分析。
使用 LASSO 回归,我们确定了一个由 9 种蛋白组成的特征(CCL8、CCL23、CCL28、CSCL10、S100A12、IL10、IL10RB、STAMPB2 和 TNFβ),该特征比传统预后因素更准确地预测了各种生存终点。在时间依赖性分析中,该模型的预后能力在相当长的一段时间内保持相对稳定。我们还开发并验证了一个具有潜在能力的 17 种蛋白模型,可将良性乳腺病变与恶性病变区分开来(Wilcoxon p<2.2*10;AUC 0.94)。
炎症和免疫相关的血清蛋白有可能超越早期乳腺癌的经典预后因素。它们也可能有助于区分良性和恶性乳腺病变。