Inference of gene regulatory networks: validation and uncertainty

Xiaoning Qian, Byung-Jun Yoon, E. Dougherty
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Abstract

A fundamental problem of biology is to construct gene regulatory networks that characterize the operational interaction among genes. The term “gene” is used generically because such networks could involve gene products. Numerous inference algorithms have been proposed. The validity, or accuracy, of such algorithms is of central concern. Given data generated by a ground-truth network, how well does a model network inferred from the data match the data-generating network? This chapter discusses a general paradigm for inference validation based on defining a distance between networks and judging validity according to the distance between the original network and the inferred network. Such a distance will typically be based on some network characteristics, such as connectivity, rule structure, or steady-state distribution. It can also be based on some objective for which the model network is being employed, such as deriving an intervention strategy to apply to the original network with the aim of correcting aberrant behavior. Rather than assuming that a single network is inferred, one can take the perspective that the inference procedure leads to an “uncertainty class” of networks, to which belongs the ground-truth network. In this case, we define a measure of uncertainty in terms of the cost that uncertainty imposes on the objective, for which the model network is to be employed, the example discussed in the current chapter involving intervention in the yeast cell cycle network.
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基因调控网络的推断:验证和不确定性
生物学的一个基本问题是构建基因调控网络,表征基因之间的操作相互作用。“基因”一词被广泛使用,因为这种网络可能涉及基因产物。已经提出了许多推理算法。这种算法的有效性或准确性是人们关注的中心问题。给定由基础事实网络生成的数据,从数据推断出的模型网络与数据生成网络的匹配程度如何?本章讨论了基于定义网络之间的距离并根据原始网络和推断网络之间的距离判断有效性的一般推理验证范式。这种距离通常基于某些网络特征,例如连通性、规则结构或稳态分布。它也可以基于模型网络所要实现的某些目标,例如推导出一种干预策略,应用于原始网络,目的是纠正异常行为。而不是假设一个单一的网络被推断出来,我们可以采取的观点是,推理过程导致网络的“不确定性类”,这属于基础真理网络。在这种情况下,我们根据不确定性对目标施加的成本来定义不确定性的度量,模型网络将被使用,本章讨论的例子涉及酵母细胞周期网络的干预。
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