首页> 外文期刊>Journal of biomedical informatics. >Characteristic attributes in cancer microarrays.
【24h】

Characteristic attributes in cancer microarrays.

机译:癌症微阵列中的特征属性。

获取原文
获取原文并翻译 | 示例
       

摘要

Rapid advances in genome sequencing and gene expression microarray technologies are providing unprecedented opportunities to identify specific genes involved in complex biological processes, such as development, signal transduction, and disease. The vast amount of data generated by these technologies has presented new challenges in bioinformatics. To help organize and interpret microarray data, new and efficient computational methods are needed to: (1) distinguish accurately between different biological or clinical categories (e.g., malignant vs. benign), and (2) identify specific genes that play a role in determining those categories. Here we present a novel and simple method that exhaustively scans microarray data for unambiguous gene expression patterns. Such patterns of data can be used as the basis for classification into biological or clinical categories. The method, termed the Characteristic Attribute Organization System (CAOS), is derived from fundamental precepts in systematic biology. In CAOS we define two types of characteristic attributes ('pure' and 'private') that may exist in gene expression microarray data. We also consider additional attributes ('compound') that are composed of expression states of more than one gene that are not characteristic on their own. CAOS was tested on three well-known cancer DNA microarray data sets for its ability to classify new microarray samples. We found CAOS to be a highly accurate and robust class prediction technique. In addition, CAOS identified specific genes, not emphasized in other analyses, that may be crucial to the biology of certain types of cancer. The success of CAOS in this study has significant implications for basic research and the future development of reliable methods for clinical diagnostic tools.
机译:基因组测序和基因表达微阵列技术的飞速发展为鉴定参与复杂的生物过程(如发育,信号转导和疾病)的特定基因提供了前所未有的机会。这些技术产生的大量数据给生物信息学提出了新的挑战。为了帮助组织和解释微阵列数据,需要新的有效的计算方法来:(1)准确地区分不同的生物学或临床类别(例如,恶性与良性),以及(2)识别在确定特定基因中起特定作用的特定基因这些类别。在这里,我们提出了一种新颖而简单的方法,即彻底扫描微阵列数据以获得明确的基因表达模式。这样的数据模式可以用作分类为生物学或临床类别的基础。该方法称为特征属性组织系统(CAOS),是从系统生物学的基本戒律推导出来的。在CAOS中,我们定义了基因表达微阵列数据中可能存在的两种类型的特征属性(“纯”和“私有”)。我们还考虑了其​​他属性(“化合物”),这些属性由多个基因的表达状态组成,这些表达状态本身并不具有特征性。在三个著名的癌症DNA微阵列数据集上对CAOS进行了测试,以便对新的微阵列样品进行分类。我们发现CAOS是一种高度准确且强大的类预测技术。此外,CAOS还鉴定了某些其他基因未强调的特定基因,这些基因可能对某些类型癌症的生物学至关重要。 CAOS在这项研究中的成功对基础研究和临床诊断工具可靠方法的未来发展具有重要意义。

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