通过计算机调节挖掘癌症的分子背景。

Seungchan Kim, Ina Sen, M. Bittner
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引用次数: 14

摘要

细胞通过各种调控机制对一组基因进行严密调控,从而维持其特定的状态。如果存在畸变,迫使细胞调整其调节机制,使其偏离正常状态,以可靠地提供增殖信号,并废除正常的保障措施,则必须实现不同于正常的新调节状态。由于这种紧密协调的调节,基因的表达应该在细胞环境中表现出一致的模式,例如,肿瘤的一种亚型,但这些基因在环境之外的行为宁愿变得不那么一致。基于这一假设,我们提出了一种方法来识别在特定生物环境中表达模式更为一致的基因,并提供了一种算法来识别新的细胞环境。该方法应用于先前发表的数据集,以结合可用的临床或药物敏感性数据找到可能的新生物学背景。该软件目前是用Java编写的,可根据相应作者的要求提供。
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Mining molecular contexts of cancer via in-silico conditioning.
Cell maintains its specific status by tightly regulating a set of genes through various regulatory mechanisms. If there are aberrations that force cell to adjust its regulatory machinery away from the normal state to reliably provide proliferative signals and abrogate normal safeguards, it must achieve a new regulatory state different from the normal. Due to this tightly coordinated regulation, the expression of genes should show consistent patterns within a cellular context, for example, a subtype of tumor, but the behaviour of those genes outside the context would rather become less consistent. Based on this hypothesis, we propose a method to identify genes whose expression pattern is significantly more consistent within a specific biological context, and also provide an algorithm to identify novel cellular contexts. The method was applied to previously published data sets to find possible novel biological contexts in conjunction with available clinical or drug sensitivity data. The software is currently written in Java and is available upon request from the corresponding author.
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