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Multiple Linear Regression for Reconstruction of Gene Regulatory Networks in Solving Cascade Error Problems

机译:对基因监管网络重建求解级联误差问题的多线性回归

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摘要

Gene regulatory network (GRN) reconstruction is the process of identifying regulatory gene interactions from experimental data through computational analysis. One of the main reasons for the reduced performance of previous GRN methods had been inaccurate prediction of cascade motifs. Cascade error is defined as the wrong prediction of cascade motifs, where an indirect interaction is misinterpreted as a direct interaction. Despite the active research on various GRN prediction methods, the discussion on specific methods to solve problems related to cascade errors is still lacking. In fact, the experiments conducted by the past studies were not specifically geared towards proving the ability of GRN prediction methods in avoiding the occurrences of cascade errors. Hence, this research aims to propose Multiple Linear Regression (MLR) to infer GRN from gene expression data and to avoid wrongly inferring of an indirect interaction (A → B → C) as a direct interaction (A → C). Since the number of observations of the real experiment datasets was far less than the number of predictors, some predictors were eliminated by extracting the random subnetworks from global interaction networks via an established extraction method. In addition, the experiment was extended to assess the effectiveness of MLR in dealing with cascade error by using a novel experimental procedure that had been proposed in this work. The experiment revealed that the number of cascade errors had been very minimal. Apart from that, the Belsley collinearity test proved that multicollinearity did affect the datasets used in this experiment greatly. All the tested subnetworks obtained satisfactory results, with AUROC values above 0.5.
机译:基因调节网络(GRN)重建是通过计算分析鉴定从实验数据的调节基因相互作用的过程。先前GRN方法性能降低的主要原因之一是对级联图案的预测不准确。级联错误被定义为级联图案的错误预测,其中间接交互被误解为直接交互。尽管对各种GRN预测方法进行了积极的研究,但仍然缺乏关于解决与级联误差相关问题的具体方法的讨论。实际上,通过过去研究进行的实验没有专门旨在证明GRN预测方法在避免级联误差的发生方面的能力。因此,该研究旨在提出多元的回归(MLR)从基因表达数据推断出来,避免错误地推断间接相互作用(A→B→C)作为直接交互(A→C)。由于实验数据集的观察的数量远小于预测器的数量,因此通过通过建立的提取方法从全局交互网络中提取随机子网来消除一些预测因子。此外,实验延长以评估通过使用本工作中提出的新型实验程序处理级联误差的MLR的有效性。实验表明,级联误差的数量非常小。除此之外,Belsley Conlinearity测试证明,多型性确实影响了本实验中使用的数据集。所有测试的子网都获得了令人满意的结果,具有高于0.5的氧化氢值。

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