Mass Spectrometry Platform, Cancer Biomarkers Facility, University of Pittsburgh Cancer Institute, Pittsburgh, PA 15213, USA.
J Thorac Oncol. 2011 Apr;6(4):725-34. doi: 10.1097/JTO.0b013e31820c312e.
Lung cancer remains the leading cause of cancer-related death with poor survival due to the late stage at which lung cancer is typically diagnosed. Given the clinical burden from lung cancer and the relatively favorable survival associated with early-stage lung cancer, biomarkers for early detection of lung cancer are of important potential clinical benefit.
We performed a global lung cancer serum biomarker discovery study using liquid chromatography-tandem mass spectrometry in a set of pooled non-small cell lung cancer case sera and matched controls. Immunoaffinity subtraction was used to deplete the top most abundant serum proteins; the remaining serum proteins were subjected to trypsin digestion and analyzed in triplicate by liquid chromatography-tandem mass spectrometry. The tandem mass spectrum data were searched against the human proteome database, and the resultant spectral counting data were used to estimate the relative abundance of proteins across the case/control serum pools. The spectral counting-derived abundances of some candidate biomarker proteins were confirmed with multiple reaction monitoring mass spectrometry assays.
A list of 49 differentially abundant candidate proteins was compiled by applying a negative binomial regression model to the spectral counting data (p < 0.01). Functional analysis with Ingenuity Pathway Analysis tools showed significant enrichment of inflammatory response proteins, key molecules in cell-cell signaling and interaction network, and differential physiological responses for the two common non-small cell lung cancer subtypes.
We identified a set of candidate serum biomarkers with statistically significant differential abundance across the lung cancer case/control pools, which, when validated, could improve lung cancer early detection.
肺癌仍然是癌症相关死亡的主要原因,由于肺癌通常在晚期诊断,因此生存率较差。鉴于肺癌的临床负担以及早期肺癌相关的相对较好的生存率,用于肺癌早期检测的生物标志物具有重要的潜在临床益处。
我们使用液相色谱-串联质谱法在一组非小细胞肺癌病例血清和匹配对照的混合血清中进行了全球肺癌血清生物标志物发现研究。免疫亲和素减法用于耗尽最丰富的血清蛋白;其余的血清蛋白进行胰蛋白酶消化,并通过液相色谱-串联质谱法进行三重复分析。串联质谱数据与人类蛋白质组数据库进行比对,并且通过谱计数数据估计病例/对照血清池之间蛋白质的相对丰度。使用多重反应监测质谱分析来验证一些候选生物标志物蛋白的谱计数衍生丰度。
通过对谱计数数据应用负二项回归模型,编制了一份 49 种差异丰富的候选蛋白列表(p <0.01)。利用 Ingenuity Pathway Analysis 工具进行功能分析显示,炎症反应蛋白、细胞间信号和相互作用网络中的关键分子以及两种常见的非小细胞肺癌亚型的差异生理反应明显富集。
我们鉴定了一组在肺癌病例/对照池之间具有统计学上显著差异丰度的候选血清生物标志物,如果得到验证,可能会提高肺癌的早期检测。