首页> 外文会议>Conference on Functional Monitoring and Drug-Tissue Interaction Jan 21-24, 2002 San Jose, USA >Interpreting microarray data to build models of microbial genetic regulation networks
【24h】

Interpreting microarray data to build models of microbial genetic regulation networks

机译:解释微阵列数据以建立微生物遗传调控网络模型

获取原文
获取原文并翻译 | 示例

摘要

Microarrays and DNA chips are an efficient, high-throughput technology for measuring temporal changes in the expression of message RNA (mRNA) from thousands of genes (often the entire genome of an organism) in a single experiment. A crucial drawback of microarray experiments is that results are inherently qualitative: data are generally neither quantatively repeatable, nor may microarray spot intensities be calibrated to in vivo mRNA concentrations. Nevertheless, microarrays represent by the far the cheapest and fastest way to obtain information about a cell s global genetic regulatory networks. Besides poor signal characteristics, the massive number of data produced by microarray experiments poses challenges for visualization, interpretation and model building. Towards initial model development, we have developed a Java tool for visualizing the spatial organization of gene expression in bacteria. We are also developing an approach to inferring and testing qualitative fuzzy logic models of gene regulation using microarray data. Because we are developing and testing qualitative hypotheses that do not require quantitative precision, our statistical evaluation of experimental data is limited to checking for validity and consistency. Our goals are to maximize the impact of inexpensive microarray technology, bearing in mind that biological models and hypotheses are typically qualitative.
机译:微阵列和DNA芯片是一种高效,高通量的技术,可在单个实验中测量数千种基因(通常是生物体的整个基因组)中消息RNA(mRNA)表达的时间变化。微阵列实验的一个关键缺点是结果本质上是定性的:数据通常既不能定量重复,也不能根据体内mRNA浓度校准微阵列斑点强度。尽管如此,微阵列是迄今为止获得细胞全球遗传调控网络信息的最便宜,最快的方法。除了信号特性差之外,微阵列实验产生的大量数据还给可视化,解释和模型构建带来了挑战。为了进行初始模型开发,我们开发了Java工具来可视化细菌中基因表达的空间组织。我们还在开发一种使用微阵列数据推断和测试基因调控的定性模糊逻辑模型的方法。因为我们正在开发和测试不需要定量精度的定性假设,所以我们对实验数据的统计评估仅限于检查有效性和一致性。考虑到生物学模型和假设通常是定性的,我们的目标是使廉价微阵列技术的影响最大化。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号