Detecting pathways transcriptionally correlated with clinical parameters.

Igor Ulitsky, Ron Shamir
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Abstract

The recent explosion in the number of clinical studies involving microarray data calls for novel computational methods for their dissection. Human protein interaction networks are rapidly growing and can assist in the extraction of functional modules from microarray data. We describe a novel methodology for extraction of connected network modules with coherent gene expression patterns that are correlated with a specific clinical parameter. Our approach suits both numerical (e.g., age or tumor size) and logical parameters (e.g., gender or mutation status). We demonstrate the method on a large breast cancer dataset, where we identify biologically-relevant modules related to nine clinical parameters including patient age, tumor size, and metastasis-free survival. Our method is capable of detecting disease-relevant pathways that could not be found using other methods. Our results support some previous hypotheses regarding the molecular pathways underlying diversity of breast tumors and suggest novel ones.

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检测途径转录与临床参数相关。
最近,涉及微阵列数据的临床研究数量激增,需要新的计算方法来解剖它们。人类蛋白质相互作用网络正在迅速发展,可以帮助从微阵列数据中提取功能模块。我们描述了一种新的方法,用于提取与特定临床参数相关的具有相干基因表达模式的连接网络模块。我们的方法既适用于数值(例如,年龄或肿瘤大小),也适用于逻辑参数(例如,性别或突变状态)。我们在一个大型乳腺癌数据集上演示了该方法,在那里我们确定了与九个临床参数相关的生物学相关模块,包括患者年龄、肿瘤大小和无转移生存期。我们的方法能够检测到其他方法无法发现的疾病相关途径。我们的研究结果支持了先前关于乳腺肿瘤多样性的分子途径的一些假设,并提出了新的假设。
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