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首页> 外文期刊>Journal of Bioinformatics and Computational Biology >Observation conflict resolution in steady-state metabolic network dynamics analysis
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Observation conflict resolution in steady-state metabolic network dynamics analysis

机译:稳态代谢网络动力学分析中的观察冲突解决

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Steady state metabolic network dynamics analysis (SMDA) is a recently proposed computational metabolomics tool that (i) captures a metabolic network and its rules via a metabolic network database, (ii) mimics the reasoning of a biochemist, given a set of metabolic observations, and (iii) locates efficiently all possible metabolic activation/inactivation (flux) alternatives. However, a number of factors may cause the SMDA algorithm to eliminate feasible flux scenarios. These factors include (i) inherent error margins in observations (measurements), (ii) lack of knowledge to classify measurements as normal versus abnormal, and (iii) choosing a highly constrained metabolic subnetwork to query against. In this work, we first present and formalize these obstacles. Then, we propose techniques to eliminate them and present an experimental evaluation of our proposed techniques.
机译:稳态代谢网络动力学分析(SMDA)是最近提出的一种计算代谢组学工具,该工具(i)通过代谢网络数据库捕获代谢网络及其规则,(ii)在给出一组代谢观察结果的情况下模仿生物化学家的推理, (iii)有效地定位所有可能的代谢激活/灭活(通量)替代方法。但是,许多因素可能导致SMDA算法消除可行的通量方案。这些因素包括:(i)观测值(测量值)中的固有误差幅度;(ii)缺乏将测量值分类为正常还是异常的知识;(iii)选择要查询的高度受限的代谢子网。在这项工作中,我们首先提出并正式确定这些障碍。然后,我们提出了消除它们的技术,并提出了对我们提出的技术的实验评估。

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