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Maintaining optimal state probabilities in biological systems

机译:维持生物系统中的最佳状态概率

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A biological problem is usually studied experimentally by reducing it into a number of modules. In contrast, the systems biology approach seeks to address the collective behavior of interacting molecules vis-a-vis the corresponding higher level behavior. Various attributes of a biological system are conditionally dependent on each other, and these conditionalities are usually represented through Bayesian networks for computing easily the joint probability for a state of an attribute. In this article, a genetic algorithm is investigated to a biological system, by representing it through a Bayesian network, for evaluating the optimum state probabilities of different attributes, in order to obtain a desired joint probability for a given state of an attribute. We believe that such a study would be helpful in achieving a desired health condition by maintaining various attributes of a system to their estimated optimum levels.
机译:通常通过将生物学问题简化为多个模块来进行实验研究。相反,系统生物学方法试图解决相互作用分子相对于相应较高水平行为的集体行为。生物系统的各种属性在条件上相互依赖,这些条件通常通过贝叶斯网络表示,以便轻松计算属性状态的联合概率。在本文中,通过使用贝叶斯网络表示遗传算法,研究了一种生物系统的遗传算法,用于评估不同属性的最佳状态概率,以便获得给定属性状态的期望联合概率。我们相信,通过将系统的各种属性保持在估计的最佳水平,这样的研究将有助于实现理想的健康状况。

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