探索大型实验空间的自适应组合设计:方法与验证。

L V Lejay, D E Shasha, P M Palenchar, A Y Kouranov, A A Cruikshank, M F Chou, G M Coruzzi
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引用次数: 15

摘要

系统生物学不仅需要数学工具来分析大型基因组数据集,而且还需要以系统而经济的方式探索大型实验空间。我们证明了双因素组合设计(CD)在软件测试中是有用的,可以用来设计一个小的实验集,这将允许生物学家探索更大的实验空间。此外,一组初始实验的结果可用于播种进一步的“适应性”CD实验设计。作为原理证明,我们通过分析六种二元输入对拟南芥n同化途径中基因调控的影响数据,证明了这种自适应CD方法的有效性。这种CD方法通过较少的实验确定了以前通过传统实验发现的更重要的调节信号,并且还确定了以前未知的输入相互作用的例子。使用模拟数据进行的测试表明,在确定决定性输入方面,自适应CD比传统实验设计出现的假阳性更少,而且在确定基因何时受输入相互作用的调节方面,比传统或随机实验设计成功得多。我们得出结论,适应性CD提供了一个经济框架,用于发现影响基因组输出和生物体反应不同方面的主导输入和相互作用。
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Adaptive combinatorial design to explore large experimental spaces: approach and validation.

Systems biology requires mathematical tools not only to analyse large genomic datasets, but also to explore large experimental spaces in a systematic yet economical way. We demonstrate that two-factor combinatorial design (CD), shown to be useful in software testing, can be used to design a small set of experiments that would allow biologists to explore larger experimental spaces. Further, the results of an initial set of experiments can be used to seed further 'Adaptive' CD experimental designs. As a proof of principle, we demonstrate the usefulness of this Adaptive CD approach by analysing data from the effects of six binary inputs on the regulation of genes in the N-assimilation pathway of Arabidopsis. This CD approach identified the more important regulatory signals previously discovered by traditional experiments using far fewer experiments, and also identified examples of input interactions previously unknown. Tests using simulated data show that Adaptive CD suffers from fewer false positives than traditional experimental designs in determining decisive inputs, and succeeds far more often than traditional or random experimental designs in determining when genes are regulated by input interactions. We conclude that Adaptive CD offers an economical framework for discovering dominant inputs and interactions that affect different aspects of genomic outputs and organismal responses.

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