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Comparison of Co-temporal Modeling Algorithms on Sparse Experimental Time Series Data Sets

机译:稀疏实验时间序列数据集的同时建模算法比较

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Multiple approaches for reverse-engineering bio-logical networks from time-series data have been proposed in the computational biology literature. These approaches can be classified by their underlying mathematical algorithms, such as Bayesian or algebraic techniques, as well as by their time paradigm, which includes next-state and co-temporal modeling. The types of biological relationships, such as parent-child or siblings, discovered by these algorithms are quite varied. It is important to understand the strengths and weaknesses of the various algorithms and time paradigms on actual experimental data. We assess how well the co-temporal implementations of three algorithms, continuous Bayesian, discrete Bayesian, and computational algebraic, can 1) identify two types of entity relationships, parent and sibling, between biological entities, 2) deal with experimental sparse time course data, and 3) handle experimental noise seen in replicate data sets. These algorithms are evaluated, using the shuffle index metric, for how well the resulting models match literature models in terms of siblings and parent relationships. Results indicate that all three co-temporal algorithms perform well, at a statistically significant level, at finding sibling relationships, but perform relatively poorly in finding parent relationships.
机译:在计算生物学文献中已经提出了从时序数据逆向工程生物网络的多种方法。这些方法可以通过其基础数学算法(例如贝叶斯或代数技术)以及它们的时间范式进行分类,其中时间范式包括下一状态建模和同时建模。这些算法发现的生物学关系的类型(例如亲子或兄弟姐妹)差异很大。重要的是要了解各种算法和时间范式在实际实验数据上的优缺点。我们评估连续贝叶斯,离散贝叶斯和计算代数这三种算法的同时实现如何能够1)识别生物实体之间的两种类型的实体关系(父级和同级),2)处理实验性稀疏时程数据和3)处理在重复数据集中看到的实验性噪声。使用改组索引度量标准对这些算法进行评估,以评估所得模型在同级和父级关系方面与文献模型的匹配程度。结果表明,三种同时算法在查找同胞关系方面在统计上显着水平上表现良好,但在查找父级关系上表现相对较差。

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