Department of Computer Science and Engineering, Michigan State University, East Lansing, MI 48824, USA.
BMC Genomics. 2011 Nov 3;12:547. doi: 10.1186/1471-2164-12-547.
An important feature that emerges from analyzing gene regulatory networks is the "switch-like behavior" or "bistability", a dynamic feature of a particular gene to preferentially toggle between two steady-states. The state of gene switches plays pivotal roles in cell fate decision, but identifying switches has been difficult. Therefore a challenge confronting the field is to be able to systematically identify gene switches.
We propose a top-down mining approach to exploring gene switches on a genome-scale level. Theoretical analysis, proof-of-concept examples, and experimental studies demonstrate the ability of our mining approach to identify bistable genes by sampling across a variety of different conditions. Applying the approach to human breast cancer data identified genes that show bimodality within the cancer samples, such as estrogen receptor (ER) and ERBB2, as well as genes that show bimodality between cancer and non-cancer samples, where tumor-associated calcium signal transducer 2 (TACSTD2) is uncovered. We further suggest a likely transcription factor that regulates TACSTD2.
Our mining approach demonstrates that one can capitalize on genome-wide expression profiling to capture dynamic properties of a complex network. To the best of our knowledge, this is the first attempt in applying mining approaches to explore gene switches on a genome-scale, and the identification of TACSTD2 demonstrates that single cell-level bistability can be predicted from microarray data. Experimental confirmation of the computational results suggest TACSTD2 could be a potential biomarker and attractive candidate for drug therapy against both ER+ and ER- subtypes of breast cancer, including the triple negative subtype.
从分析基因调控网络中可以看出一个重要特征,即“开关样行为”或“双稳性”,这是特定基因的一种动态特征,使其能够在两种稳定状态之间优先切换。基因开关的状态在细胞命运决定中起着关键作用,但识别开关一直很困难。因此,该领域面临的一个挑战是能够系统地识别基因开关。
我们提出了一种自上而下的挖掘方法,以便在全基因组范围内探索基因开关。理论分析、概念验证示例和实验研究表明,我们的挖掘方法能够通过在各种不同条件下进行采样来识别双稳态基因。将该方法应用于人类乳腺癌数据,鉴定出了在癌症样本中表现出双峰性的基因,如雌激素受体(ER)和 ERBB2,以及在癌症和非癌症样本之间表现出双峰性的基因,其中肿瘤相关钙信号转导子 2(TACSTD2)被揭示出来。我们进一步提出了一种可能调节 TACSTD2 的转录因子。
我们的挖掘方法表明,可以利用全基因组表达谱来捕捉复杂网络的动态特性。据我们所知,这是首次应用挖掘方法在全基因组范围内探索基因开关,并鉴定出 TACSTD2 表明,可以从微阵列数据中预测单细胞水平的双稳性。对计算结果的实验验证表明,TACSTD2 可能是一种潜在的生物标志物,也是针对包括三阴性乳腺癌在内的 ER+和 ER-乳腺癌亚型的药物治疗的有吸引力的候选药物。