Department of Computer Science, Brigham Young University, Provo, UT, USA.
BMC Genomics. 2010 Nov 2;11 Suppl 2(Suppl 2):S6. doi: 10.1186/1471-2164-11-S2-S6.
Modern approaches to treating genetic disorders, cancers and even epidemics rely on a detailed understanding of the underlying gene signaling network. Previous work has used time series microarray data to infer gene signaling networks given a large number of accurate time series samples. Microarray data available for many biological experiments is limited to a small number of arrays with little or no time series guarantees. When several samples are averaged to examine differences in mean value between a diseased and normal state, information from individual samples that could indicate a gene relationship can be lost.
Asynchronous Inference of Regulatory Networks (AIRnet) provides gene signaling network inference using more practical assumptions about the microarray data. By learning correlation patterns for the changes in microarray values from all pairs of samples, accurate network reconstructions can be performed with data that is normally available in microarray experiments.
By focussing on the changes between microarray samples, instead of absolute values, increased information can be gleaned from expression data.
现代治疗遗传疾病、癌症甚至流行病的方法都依赖于对底层基因信号网络的详细了解。以前的工作已经使用时间序列微阵列数据来推断基因信号网络,给定大量准确的时间序列样本。许多生物实验可用的微阵列数据仅限于少数几个几乎没有或根本没有时间序列保证的阵列。当对几个样本进行平均以检查疾病和正常状态之间的平均值差异时,可能表明基因关系的个别样本的信息可能会丢失。
异步推断调控网络 (AIRnet) 使用关于微阵列数据的更实际的假设来提供基因信号网络推断。通过从所有样本对学习微阵列值变化的相关模式,可以使用通常在微阵列实验中可用的数据进行准确的网络重建。
通过关注微阵列样本之间的变化,而不是绝对值,可以从表达数据中收集到更多信息。