Department of Public Health Sciences, University of Virginia, Charlottesville, USA.
BMC Med Genomics. 2012 Jan 13;5:2. doi: 10.1186/1755-8794-5-2.
Diagnosing subclinical atherosclerosis is often difficult since patients are asymptomatic. In order to alleviate this limitation, we have developed a molecular prediction technique for predicting patients with atherogenic risks using multi-gene expression biomarkers on leukocytes.
We first discovered 356 expression biomarkers which showed significant differential expression between genome-wide microarray data of monocytes from patients with familial hyperlipidemia and increased risk of atherosclerosis compared to normal controls. These biomarkers were further triaged with 56 biomarkers known to be directly related to atherogenic risks. We also applied a COXEN algorithm to identify concordantly expressed biomarkers between monocytes and each of three different cell types of leukocytes. We then developed a multi-gene predictor using all or three subsets of these 56 biomarkers on the monocyte patient data. These predictors were then applied to multiple independent patient sets from three cell types of leukocytes (macrophages, circulating T cells, or whole white blood cells) to predict patients with atherogenic risks.
When the 56 predictor was applied to the three patient sets from different cell types of leukocytes, all significantly stratified patients with atherogenic risks from healthy people in these independent cohorts. Concordantly expressed biomarkers identified by the COXEN algorithm provided slightly better prediction results.
These results demonstrated the potential of molecular prediction of atherogenic risks across different cell types of leukocytes.
由于患者无症状,因此诊断亚临床动脉粥样硬化通常较为困难。为缓解这一局限性,我们开发了一种分子预测技术,利用白细胞的多基因表达生物标志物来预测动脉粥样硬化风险患者。
我们首先从家族性高脂血症患者单核细胞的全基因组微阵列数据中发现了 356 个表达生物标志物,这些生物标志物与正常对照组相比,在动脉粥样硬化风险增加的患者中表现出显著的差异表达。然后,我们使用与动脉粥样硬化风险直接相关的 56 个生物标志物对这些生物标志物进行了进一步的甄别。我们还应用 COXEN 算法在单核细胞和三种不同白细胞类型的每一种细胞中识别一致性表达的生物标志物。然后,我们使用这些 56 个生物标志物中的全部或三个子集在单核细胞患者数据上开发了一个多基因预测器。然后,我们将这些预测器应用于来自三种白细胞类型(巨噬细胞、循环 T 细胞或全白细胞)的多个独立患者组,以预测动脉粥样硬化风险患者。
当将 56 个预测器应用于来自不同白细胞类型的三个患者组时,所有预测器均在这些独立队列中显著地将动脉粥样硬化风险患者与健康人分层。COXEN 算法识别的一致性表达生物标志物提供了稍好的预测结果。
这些结果表明了跨不同白细胞类型进行动脉粥样硬化风险分子预测的潜力。