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首页> 外文期刊>Algorithms for Molecular Biology >An exact algorithm for finding cancer driver somatic genome alterations: the weighted mutually exclusive maximum set cover problem
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An exact algorithm for finding cancer driver somatic genome alterations: the weighted mutually exclusive maximum set cover problem

机译:查找癌症驾驶员体细胞基因组改变的精确算法:加权互斥最大集覆盖问题

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Background The mutual exclusivity of somatic genome alterations (SGAs), such as somatic mutations and copy number alterations, is an important observation of tumors and is widely used to search for cancer signaling pathways or SGAs related to tumor development. However, one problem with current methods that use mutual exclusivity is that they are not signal-based; another problem is that they use heuristic algorithms to handle the NP-hard problems, which cannot guarantee to find the optimal solutions of their models. Method In this study, we propose a novel signal-based method that utilizes the intrinsic relationship between SGAs on signaling pathways and expression changes of downstream genes regulated by pathways to identify cancer signaling pathways using the mutually exclusive property. We also present a relatively efficient exact algorithm that can guarantee to obtain the optimal solution of the new computational model. Results We have applied our new model and exact algorithm to the breast cancer data. The results reveal that our new approach increases the capability of finding better solutions in the application of cancer research. Our new exact algorithm has a time complexity of (O^{*}(1.325^{m})) ( Note: Following the recent convention, we use a star * to represent that the polynomial part of the time complexity is neglected), which has solved the NP-hard problem of our model efficiently. Conclusion Our new method and algorithm can discover the true causes behind the phenotypes, such as what SGA events lead to abnormality of the cell cycle or make the cell metastasis lose control in tumors; thus, it identifies the target candidates for precision (or target) therapeutics.
机译:背景技术体细胞基因组改变(SGA)(例如体细胞突变和拷贝数改变)的互斥性是对肿瘤的重要观察,并广泛用于寻找与肿瘤发展相关的癌症信号通路或SGA。然而,当前使用互斥的方法的一个问题是它们不是基于信号的。另一个问题是他们使用启发式算法来处理NP难题,这不能保证找到模型的最优解。方法在本研究中,我们提出了一种基于信号的新方法,该方法利用信号通路上的SGA与通路调节的下游基因表达变化之间的内在联系,利用互斥特性来识别癌症信号通路。我们还提出了一种相对有效的精确算法,可以保证获得新计算模型的最优解。结果我们将新模型和精确算法应用于乳腺癌数据。结果表明,我们的新方法提高了在癌症研究应用中寻找更好解决方案的能力。我们的新精确算法的时间复杂度为(O ^ {*}(1.325 ^ {m}))(注:根据最近的约定,我们使用星号*表示忽略了时间复杂度的多项式部分),有效解决了我们模型的NP-hard问题。结论我们的新方法和算法可以发现表型背后的真正原因,例如哪些SGA事件导致细胞周期异常或使细胞转移失去控制。因此,它确定了精确(或目标)疗法的目标候选人。

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