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Comparison of MLP NN Approach with PCA and ICA for Extraction of Hidden Regulatory Signals in Biological Networks

机译:MLP NN方法与PCA和ICA在生物网络中提取隐藏调节信号的比较

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摘要

The biologists now face with the masses of high dimensional datasets generated from various high-throughput technologies, which are outputs of complex inter-connected biological networks at different levels driven by a number of hidden regulatory signals. So far, many computational and statistical methods such as PCA and ICA have been employed for computing low-dimensional or hidden representations of these datasets, but in most cases the results are inconsistent with underlying real network. In this paper we have employed and compared three linear (PCA and ICA) and non-linear (MLP neural network) dimensionality reduction techniques to uncover these regulatory signals, from outputs of such networks. The three approaches were verified experimentally using the absorbance spectra of a network of seven hemoglobin solutions, and the results revealed the superiority of the MLP NN to PCA and ICA. This study shows the capability of the MLP NN approach to efficiently determine the regulatory components in biological networked systems.
机译:现在,生物学家面临着由各种高通量技术产生的大量高维数据集,这些数据集是由许多隐藏的调节信号驱动​​的,处于不同级别的复杂互连生物网络的输出。到目前为止,已经采用了许多计算和统计方法(例如PCA和ICA)来计算这些数据集的低维或隐藏表示形式,但在大多数情况下,结果与底层实际网络不一致。在本文中,我们采用并比较了三种线性(PCA和ICA)和非线性(MLP神经网络)降维技术,以从此类网络的输出中发现这些调节信号。使用七个血红蛋白溶液网络的吸收光谱对这三种方法进行了实验验证,结果表明MLP NN优于PCA和ICA。这项研究表明,MLP NN方法能够有效地确定生物网络系统中的调节成分。

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