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利用基因表达数据预测患者生存情况的半监督方法。

Semi-supervised methods to predict patient survival from gene expression data.

作者信息

Bair Eric, Tibshirani Robert

机构信息

Department of Statistics, Stanford University, Palo Alto, USA.

出版信息

PLoS Biol. 2004 Apr;2(4):E108. doi: 10.1371/journal.pbio.0020108. Epub 2004 Apr 13.

Abstract

An important goal of DNA microarray research is to develop tools to diagnose cancer more accurately based on the genetic profile of a tumor. There are several existing techniques in the literature for performing this type of diagnosis. Unfortunately, most of these techniques assume that different subtypes of cancer are already known to exist. Their utility is limited when such subtypes have not been previously identified. Although methods for identifying such subtypes exist, these methods do not work well for all datasets. It would be desirable to develop a procedure to find such subtypes that is applicable in a wide variety of circumstances. Even if no information is known about possible subtypes of a certain form of cancer, clinical information about the patients, such as their survival time, is often available. In this study, we develop some procedures that utilize both the gene expression data and the clinical data to identify subtypes of cancer and use this knowledge to diagnose future patients. These procedures were successfully applied to several publicly available datasets. We present diagnostic procedures that accurately predict the survival of future patients based on the gene expression profile and survival times of previous patients. This has the potential to be a powerful tool for diagnosing and treating cancer.

摘要

DNA微阵列研究的一个重要目标是开发基于肿瘤基因图谱更准确诊断癌症的工具。文献中有几种现有技术可用于进行此类诊断。不幸的是,这些技术大多假定已知存在不同的癌症亚型。当此类亚型此前未被识别时,它们的效用就会受限。尽管存在识别此类亚型的方法,但这些方法并非对所有数据集都有效。开发一种适用于多种情况的寻找此类亚型的程序将是很有必要的。即使对某种癌症的可能亚型一无所知,关于患者的临床信息,比如他们的生存时间,通常也是可得的。在本研究中,我们开发了一些程序,利用基因表达数据和临床数据来识别癌症亚型,并利用这些知识诊断未来的患者。这些程序已成功应用于几个公开可用的数据集。我们提出了基于先前患者的基因表达谱和生存时间准确预测未来患者生存情况的诊断程序。这有可能成为诊断和治疗癌症的有力工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/013d/387275/ed502a10cc90/pbio.0020108.g001.jpg

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