Institute of Molecular Life Sciences, University of Zurich, Winterthurerstrasse 190, Zurich, Switzerland.
BMC Med Genomics. 2011 Mar 3;4:21. doi: 10.1186/1755-8794-4-21.
Copy number alterations (CNA) play a key role in cancer development and progression. Since more than one CNA can be detected in most tumors, frequently co-occurring genetic CNA may point to cooperating cancer related genes. Existing methods for co-occurrence evaluation so far have not considered the overall heterogeneity of CNA per tumor, resulting in a preferential detection of frequent changes with limited specificity for each association due to the high genetic instability of many samples.
We hypothesize that in cancer some linkage-independent CNA may display a non-random co-occurrence, and that these CNA could be of pathogenetic relevance for the respective cancer. We also hypothesize that the statistical relevance of co-occurring CNA may depend on the sample specific CNA complexity. We verify our hypotheses with a simulation based algorithm CDCOCA (complexity dependence of co-occurring chromosomal aberrations).
Application of CDCOCA to example data sets identified co-occurring CNA from low complex background which otherwise went unnoticed. Identification of cancer associated genes in these co-occurring changes can provide insights of cooperative genes involved in oncogenesis.
We have developed a method to detect associations of regional copy number abnormalities in cancer data. Along with finding statistically relevant CNA co-occurrences, our algorithm points towards a generally low specificity for co-occurrence of regional imbalances in CNA rich samples, which may have negative impact on pathway modeling approaches relying on frequent CNA events.
拷贝数改变(CNA)在癌症的发生和发展中起着关键作用。由于大多数肿瘤中可以检测到不止一种 CNA,因此经常同时发生的遗传 CNA 可能指向协同作用的癌症相关基因。迄今为止,用于共发生评估的现有方法尚未考虑每个肿瘤的 CNA 的整体异质性,导致由于许多样本的高遗传不稳定性,对频繁变化的检测具有有限的特异性,而对每个关联的特异性有限。
我们假设在癌症中,一些不依赖于连锁的 CNA 可能显示出非随机的共发生,并且这些 CNA 可能与各自的癌症具有发病相关性。我们还假设共发生的 CNA 的统计相关性可能取决于样本特定的 CNA 复杂性。我们使用基于模拟的算法 CDCOCA(共发生染色体异常的复杂性依赖性)验证我们的假设。
将 CDCOCA 应用于示例数据集,从低复杂背景中识别出否则未被注意到的共发生 CNA。在这些共发生的变化中识别出与癌症相关的基因,可以深入了解涉及致癌作用的协同基因。
我们开发了一种用于检测癌症数据中区域拷贝数异常关联的方法。除了发现具有统计学意义的 CNA 共发生外,我们的算法还指出,在 CNA 丰富的样本中,区域不平衡的共发生特异性通常较低,这可能会对依赖于频繁 CNA 事件的途径建模方法产生负面影响。