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A systems biological approach to identify key transcription factors and their genomic neighborhoods in human sarcomas

机译:一种系统生物学方法用于识别人肉瘤中的关键转录因子及其基因组邻域

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摘要

Identification of genetic signatures is the main objective for many computational oncology studies. The signature usually consists of numerous genes that are differentially expressed between two clinically distinct groups of samples, such as tumor subtypes. Prospectively, many signatures have been found to generalize poorly to other datasets and, thus, have rarely been accepted into clinical use. Recognizing the limited success of traditionally generated signatures, we developed a systems biology-based framework for robust identification of key transcription factors and their genomic regulatory neighborhoods. Application of the framework to study the differences between gastrointestinal stromal tumor (GIST) and leiomyosarcoma (LMS) resulted in the identification of nine transcription factors (SRF, NKX2-5, CCDC6, LEF1, VDR, ZNF250, TRIM63, MAF, and MYC). Functional annotations of the obtained neighborhoods identified the biological processes which the key transcription factors regulate differently between the tumor types. Analyzing the differences in the expression patterns using our approach resulted in a more robust genetic signature and more biological insight into the diseases compared to a traditional genetic signature.
机译:遗传特征的识别是许多计算肿瘤学研究的主要目标。签名通常由众多基因组成,这些基因在两个临床上不同的样本组(例如肿瘤亚型)之间差异表达。前瞻性地,已经发现许多签名不能很好地推广到其他数据集,因此很少被临床使用。认识到传统生成的签名取得的成功有限,我们开发了一种基于系统生物学的框架,用于可靠地识别关键转录因子及其基因组调控区。应用该框架研究胃肠道间质瘤(GIST)与平滑肌肉瘤(LMS)之间的差异可鉴定出九种转录因子(SRF,NKX2-5,CCDC6,LEF1,VDR,ZNF250,TRIM63,MAF和MYC) 。获得的邻域的功能注释确定了生物学过程,关键转录因子在肿瘤类型之间调节不同。与传统的遗传签名相比,使用我们的方法分析表达模式的差异导致了更强大的遗传签名和对疾病的更多生物学洞察力。

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