与网络筛选和推理一起确定主调节器的程序

Shigeru Saito, Xinrong Zhou, Taejeong Bae, Sunghoon Kim, K. Horimoto
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引用次数: 4

摘要

我们开发了一种程序,用于识别与特殊生物现象(如疾病)相关的转录主调控因子(MRs),并结合网络筛选和推理。网络筛选是一种在特定条件下检测激活的转录调控网络的系统,基于对图结构与测量数据一致性的估计。由于网络筛选利用已知的转录因子(TF)-基因关系作为分子关系的实验证据,因此其性能取决于用于分析的已知TF网络的集合。为了弥补其局限性,同时利用网络推理方法,即路径一致性算法,来识别MRs。通过计算推断和实验验证的脑肿瘤中已知的MRs来说明性能。结果,与之前的实验验证的计算选择相比,本程序在识别MRs方面工作得很好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A procedure for identifying master regulators in conjunction with network screening and inference
We developed a procedure for indentifying transcriptional master regulators (MRs) related to special biological phenomena, such as diseases, in conjunction with network screening and inference. Network screening is a system for detecting activated transcriptional regulatory networks under particular conditions, based on the estimation of the graph structure consistency with the measured data. Since the network screening utilizes the known transcriptional factor (TF)-gene relationships as the experimental evidence for the molecular relationships, its performance depends on the ensemble of known TF networks used for its analysis. To compensate for its restrictions, a network inference method, the path consistency algorithm, is concomitantly utilized to identify MRs. The performance is illustrated by means of the known MRs in brain tumors that were computationally inferred and experimentally verified. As a result, the present procedure worked well for identifying MRs, in comparison to the previous computational selection for experimental verification.
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