Quantifying the multi-scale performance of network inference algorithms.

Pub Date : 2014-10-01 DOI:10.1515/sagmb-2014-0012
Chris J Oates, Richard Amos, Simon E F Spencer
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引用次数: 10

Abstract

Graphical models are widely used to study complex multivariate biological systems. Network inference algorithms aim to reverse-engineer such models from noisy experimental data. It is common to assess such algorithms using techniques from classifier analysis. These metrics, based on ability to correctly infer individual edges, possess a number of appealing features including invariance to rank-preserving transformation. However, regulation in biological systems occurs on multiple scales and existing metrics do not take into account the correctness of higher-order network structure. In this paper novel performance scores are presented that share the appealing properties of existing scores, whilst capturing ability to uncover regulation on multiple scales. Theoretical results confirm that performance of a network inference algorithm depends crucially on the scale at which inferences are to be made; in particular strong local performance does not guarantee accurate reconstruction of higher-order topology. Applying these scores to a large corpus of data from the DREAM5 challenge, we undertake a data-driven assessment of estimator performance. We find that the "wisdom of crowds" network, that demonstrated superior local performance in the DREAM5 challenge, is also among the best performing methodologies for inference of regulation on multiple length scales.

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量化网络推理算法的多尺度性能。
图形模型被广泛用于研究复杂的多元生物系统。网络推理算法旨在从有噪声的实验数据中逆向工程这些模型。通常使用分类器分析的技术来评估这种算法。这些指标基于正确推断单个边缘的能力,具有许多吸引人的特征,包括对秩保持变换的不变性。然而,生物系统中的调节发生在多个尺度上,现有的指标没有考虑到高阶网络结构的正确性。在本文中,提出了新颖的性能分数,它们共享现有分数的吸引人的属性,同时捕获了在多个尺度上发现规则的能力。理论结果证实,网络推理算法的性能主要取决于要进行推理的规模;特别是强局部性能并不能保证高阶拓扑的精确重构。将这些分数应用到来自DREAM5挑战的大量数据语料库中,我们对估计器的性能进行数据驱动的评估。我们发现,在DREAM5挑战中表现优异的“群体智慧”网络,也是在多长度尺度上进行监管推理的最佳方法之一。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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