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Loop-based conic multivariate adaptive regression splines is a novel method for advanced construction of complex biological networks

机译:基于环路的圆锥多变量自适应回归样条是一种新的复杂生物网络建设的新方法

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摘要

The Gaussian Graphical Model (GGM) and its Bayesian alternative, called, the Gaussian copula graphical model (GCGM) are two widely used approaches to construct the undirected networks of biological systems. They define the interactions between species by using the conditional dependencies of the multivariate normality assumption. However, when the system's dimension is high, the performance of the model becomes computationally demanding, and, particularly, the accuracy of GGM decreases when the observations are far from normality. Here, we suggest a Conic Multivariate Adaptive Regression Splines (CMARS) as an alternative to GGM and GCGM to ameliorate both problems. CMARS is a modified version of the Multivariate Adaptive Regression Spline, a well-known modeling approaches used in Operational Research (OR) to represent biological, environmental, and economic data. The main benefit of this model is its compatibility with high-dimensional and correlated measurements of serious nonlinearity, which allows for a wide field of application. We adapted CMARS to describe biological systems and called it "LCMARS" due to its loop-based description. We then applied LCMARS to simulated and real datasets, and LCMARS produced more accurate results compared to GGM and GCGM. Hereby, the ability to use LCMARS in the description of biological networks has the potential to open up new avenues in the application of OR to computational biology and bioinformatics, and can thus help us better understanding complex diseases like cancer and hepatitis. (C) 2017 Elsevier B.V. All rights reserved.
机译:高斯图形模型(GGM)及其贝叶斯替代品,称为高斯Copula图形模型(GCGM)是两个广泛使用的方法来构建生物系统的无向网络。它们通过使用多变量正常假设的条件依赖性来定义物种之间的交互。然而,当系统的维度很高时,模型的性能变为计算要求,特别是,当观察到远离正常性时,GGM的准确性降低。在这里,我们建议将圆锥多变量自适应回归样条(CMARS)作为GGM和GCGM的替代方法来改善两个问题。 CMAR是多变量自适应回归样条的修改版本,是在操作研究中使用的知名建模方法(或)代表生物,环境和经济数据。该模型的主要好处是其与严重非线性的高维和相关测量的兼容性,这允许广泛的应用领域。我们改编了CMAR来描述生物系统,并且由于其基于循环的描述而被称为“LCMARS”。然后,我们应用LCMARS于模拟和真实数据集,并与GGM和GCGM LCMARS产生更精确的结果。因此,在生物网络描述中使用LCMAR的能力具有在应用或计算生物学和生物信息学的应用中开辟新的途径,因此可以帮助我们更好地了解癌症和肝炎等复杂疾病。 (c)2017年Elsevier B.V.保留所有权利。

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