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开发用于预测 I 期非小细胞肺癌患者复发的血清生物标志物组合。

Development of a serum biomarker panel predicting recurrence in stage I non-small cell lung cancer patients.

机构信息

Department of Thoracic Surgery, Rush University Medical Center, Chicago, Ill 60612, USA.

出版信息

J Thorac Cardiovasc Surg. 2012 Dec;144(6):1344-50; discussion 1350-1. doi: 10.1016/j.jtcvs.2012.08.033. Epub 2012 Sep 13.

Abstract

OBJECTIVE

Molecular diagnostics capable of prognosticating disease recurrence in stage I non-small cell lung cancer (NSCLC) patients have implications for improving survival. The objective of the present study was to develop a multianalyte serum algorithm predictive of disease recurrence in stage I NSCLC patients.

METHODS

The Luminex immunobead platform was used to evaluate 43 biomarkers against 79 patients with resectable NSCLC, with the following cohorts represented: stage I (T(1)-T(2)N(0)M(0)) NSCLC without recurrence (n = 37), stage I (T(1)-T(2)N(0)M(0)) NSCLC with recurrence (n = 15), and node-positive (T(1)-T(2)N(1)-N(2)M(0)) NSCLC (n = 27). Peripheral blood was collected before surgery, with all patients undergoing anatomic resection. Univariate statistical methods (receiver operating characteristics curves and log-rank test) were used to evaluate each biomarker with respect to recurrence and outcome. Multivariate statistical methods were used to develop a prognostic classification panel for disease recurrence.

RESULTS

No relationship was found between recurrence and age, gender, smoking history, or histologic type. Analysis for all stage I patients revealed 28 biomarkers significant for recurrence. Of these, the log-rank test identified 10 biomarkers that were strongly (P < .01) prognostic for recurrence. The Random Forest algorithm created a 6-analyte panel for preoperative classification that accurately predicted recurrence in 77% of stage I patients tested, with a sensitivity of 74% and specificity of 79%.

CONCLUSIONS

We report the development of a serum biomarker algorithm capable of preoperatively predicting disease recurrence in stage I NSCLC patients. Refinement of this panel might stratify patients for adjuvant therapy or aggressive recurrence monitoring to improve survival.

摘要

目的

能够预测 I 期非小细胞肺癌(NSCLC)患者疾病复发的分子诊断对改善生存具有重要意义。本研究的目的是开发一种多分析物血清算法,以预测 I 期 NSCLC 患者的疾病复发。

方法

使用 Luminex 免疫珠平台评估了针对 79 例可切除 NSCLC 患者的 43 种生物标志物,其中包括以下队列:无复发的 I 期(T(1)-T(2)N(0)M(0))NSCLC(n=37)、复发的 I 期(T(1)-T(2)N(0)M(0))NSCLC(n=15)和淋巴结阳性(T(1)-T(2)N(1)-N(2)M(0))NSCLC(n=27)。所有患者均接受解剖性切除,在手术前采集外周血。使用单变量统计方法(受试者工作特征曲线和对数秩检验)评估每种生物标志物与复发和结局的关系。使用多变量统计方法开发用于疾病复发的预后分类面板。

结果

未发现复发与年龄、性别、吸烟史或组织学类型之间存在关系。对所有 I 期患者的分析显示,有 28 种生物标志物与复发相关。在这些标志物中,对数秩检验确定了 10 种对复发具有强烈预测作用的生物标志物(P<.01)。随机森林算法创建了一个 6 种分析物的术前分类面板,可准确预测 77%的 I 期患者的复发,其敏感性为 74%,特异性为 79%。

结论

我们报告了一种能够术前预测 I 期 NSCLC 患者疾病复发的血清生物标志物算法的开发。对该面板的进一步优化可能会对辅助治疗或积极的复发监测进行分层,以提高生存率。

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