对表型改变的折衷干预政策

Mohammadmahdi R. Yousefi
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引用次数: 0

摘要

我们采用马尔可夫方法来建模基因调控网络,并假设表型是由这种网络的稳态概率分布表征的。我们希望干预政策能够最大限度地将概率质量从不受欢迎的状态转移到理想的状态。在这样做的过程中,我们可能还会关注一些“模糊”状态的稳态质量,这些状态与感兴趣的病理没有直接关系,但可能与一些预期的风险有关。我们提出了一个约束优化问题的直接表述,而不是假设一个主观的成本函数,并提供了最优的干预策略。在这个框架内,我们研究了“妥协”策略的性能,这些策略我们接受一些模糊质量的增加,以实现更多的减少不希望的质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Compromised intervention policies for phenotype alteration
We take a Markovian approach to modeling gene regulatory networks and assume that phenotypes are characterized by the steady-state probability distribution of such networks. We desire intervention policies that maximally shift the probability mass from undesirable states to desirable ones. In doing so, we might also be concerned about the steady-state mass of some “ambiguous” states, which are not directly related to the pathology of interest but could be associated with some anticipated risks. We propose a direct formulation of this constrained optimization problem, rather than assuming a subjective cost function, and provide optimal intervention policies. Within this framework, we investigate the performance of “compromised” policies, these being policies for which we accept some increase of the ambiguous mass to achieve more decrease in the undesirable mass.
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