Department of Biomedical Engineering, Boston University, Boston, Massachusetts, United States of America.
PLoS One. 2009 Nov 25;4(11):e7994. doi: 10.1371/journal.pone.0007994.
Aberrant activation of signaling pathways drives many of the fundamental biological processes that accompany tumor initiation and progression. Inappropriate phosphorylation of intermediates in these signaling pathways are a frequently observed molecular lesion that accompanies the undesirable activation or repression of pro- and anti-oncogenic pathways. Therefore, methods which directly query signaling pathway activation via phosphorylation assays in individual cancer biopsies are expected to provide important insights into the molecular "logic" that distinguishes cancer and normal tissue on one hand, and enables personalized intervention strategies on the other.
We first document the largest available set of tyrosine phosphorylation sites that are, individually, differentially phosphorylated in lung cancer, thus providing an immediate set of drug targets. Next, we develop a novel computational methodology to identify pathways whose phosphorylation activity is strongly correlated with the lung cancer phenotype. Finally, we demonstrate the feasibility of classifying lung cancers based on multi-variate phosphorylation signatures.
Highly predictive and biologically transparent phosphorylation signatures of lung cancer provide evidence for the existence of a robust set of phosphorylation mechanisms (captured by the signatures) present in the majority of lung cancers, and that reliably distinguish each lung cancer from normal. This approach should improve our understanding of cancer and help guide its treatment, since the phosphorylation signatures highlight proteins and pathways whose phosphorylation should be inhibited in order to prevent unregulated proliferation.
信号通路的异常激活驱动着许多伴随肿瘤发生和进展的基本生物学过程。这些信号通路中间产物的不适当磷酸化是一种常见的分子病变,伴随着原癌和抑癌途径的不当激活或抑制。因此,通过对个体癌症活检中的磷酸化测定直接查询信号通路激活的方法,有望为区分癌症和正常组织的分子“逻辑”提供重要的见解,同时为个性化干预策略提供支持。
我们首先记录了可获得的最大一组酪氨酸磷酸化位点,这些磷酸化位点在肺癌中单独存在差异磷酸化,从而提供了一组即时的药物靶点。接下来,我们开发了一种新的计算方法来识别磷酸化活性与肺癌表型强烈相关的途径。最后,我们证明了基于多变量磷酸化特征对肺癌进行分类的可行性。
具有高度预测性和生物学透明性的肺癌磷酸化特征为存在一组多数肺癌中存在的稳健磷酸化机制(由特征捕获)提供了证据,并且能够可靠地区分每个肺癌与正常组织。这种方法应该能够提高我们对癌症的理解,并有助于指导其治疗,因为磷酸化特征突出了那些磷酸化应该被抑制以防止不受控制的增殖的蛋白质和途径。