Department of Laboratory Medicine, Shanghai Jiao Tong University Affiliated Sixth People's Hospital of Shanghai, Shanghai, 200233, P.R. China.
Department of Oncology, Shanghai Jiao Tong University Affiliated Sixth People's Hospital of Shanghai, Shanghai, 200233, China.
BMC Cancer. 2020 Jun 16;20(1):562. doi: 10.1186/s12885-020-07046-2.
The prognosis is very poor for lung cancer patients with bone metastasis. Unfortunately, a suitable method has yet to become available for the early diagnosis of bone metastasis in lung cancer patients. The present work describes an attempt to develop a novel model for the early identification of lung cancer patients with bone metastasis risk.
As the test group, 205 primary lung cancer patients were recruited, of which 127 patients had bone metastasis; the other 78 patients without bone metastasis were set as the negative control. Additionally, 106 healthy volunteers were enrolled as the normal control. Serum levels of several cytokines in the bone microenvironment (CaN, OPG, PTHrP, and IL-6) and bone turnover markers (tP1NP, β-CTx) were detected in all samples by ECLIA or ELISA assay. Receiver operating characteristic (ROC) curves and multivariate analyses were performed to evaluate diagnostic abilities and to assess the attributable risk of bone metastasis for each of these indicators; the diagnostic model was established via logistic regression analysis. The prospective validation group consisted of 44 patients with stage IV primary lung cancer on whom a follow-up of at least 2 years was conducted, during which serum bone biochemical marker concentrations were monitored.
The serological molecular model for the diagnosis of bone metastasis was logit (p). ROC analysis showed that when logit (p) > 0.452, the area under curve of the model was 0.939 (sensitivity: 85.8%, specificity: 89.7%). Model validation demonstrated accuracy with a high degree of consistency (specificity: 85.7%, specificity: 87.5%, Kappa: 0.770). The average predictive time for bone metastasis occurrence of the model was 9.46 months earlier than that of the bone scan diagnosis. Serum OPG, PTHrP, tP1NP, β-CTx, and the diagnostic model logit (p) were all positively correlated with bone metastasis progression (P < 0.05).
This diagnostic model has the potential to be a simple, non-invasive, and sensitive tool for diagnosing the occurrence and monitoring the progression of bone metastasis in patients with lung cancer.
肺癌伴骨转移患者的预后极差。不幸的是,目前尚无合适的方法用于早期诊断肺癌患者的骨转移。本研究旨在建立一种新的模型,以早期识别肺癌伴骨转移风险的患者。
选取 205 例原发性肺癌患者作为研究对象,其中 127 例患者发生骨转移,将其余 78 例无骨转移的患者作为阴性对照组,同时选取 106 例健康志愿者作为正常对照组。采用电化学发光免疫分析法或酶联免疫吸附法检测所有患者血清中骨微环境中的几种细胞因子(CaN、OPG、PTHrP 和 IL-6)和骨转换标志物(tP1NP、β-CTX)的水平。通过绘制受试者工作特征(ROC)曲线和多因素分析评估各指标对骨转移的诊断能力和归因风险,采用 Logistic 回归分析建立诊断模型。对 44 例Ⅳ期原发性肺癌患者进行前瞻性验证,对其进行至少 2 年的随访,监测血清骨生化标志物浓度。
骨转移诊断的血清分子模型为 logit(p)。ROC 分析显示,当 logit(p)>0.452 时,模型的曲线下面积为 0.939(灵敏度:85.8%,特异性:89.7%)。模型验证结果显示具有高度一致性(特异度:85.7%,灵敏度:87.5%,Kappa 值:0.770)。该模型预测骨转移发生的平均时间比骨扫描诊断提前 9.46 个月。血清 OPG、PTHrP、tP1NP、β-CTX 和诊断模型 logit(p)与骨转移进展均呈正相关(P<0.05)。
该诊断模型有望成为一种简单、无创、敏感的工具,用于诊断肺癌患者骨转移的发生和监测骨转移的进展。