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An integrated machine learning approach for predicting DosR-regulated genes in Mycobacterium tuberculosis

机译:一种用于预测结核分枝杆菌中DosR调控基因的集成机器学习方法

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摘要

BackgroundDosR is an important regulator of the response to stress such as limited oxygen availability in Mycobacterium tuberculosis. Time course gene expression data enable us to dissect this response on the gene regulatory level. The mRNA expression profile of a regulator, however, is not necessarily a direct reflection of its activity. Knowing the transcription factor activity (TFA) can be exploited to predict novel target genes regulated by the same transcription factor. Various approaches have been proposed to reconstruct TFAs from gene expression data. Most of them capture only a first-order approximation to the complex transcriptional processes by assuming linear gene responses and linear dynamics in TFA, or ignore the temporal information in data from such systems.
机译:背景DosR是对压力(例如结核分枝杆菌中有限的氧气供应)的反应的重要调节剂。时程基因表达数据使我们能够在基因调控水平上剖析这种反应。然而,调节剂的mRNA表达谱不一定是其活性的直接反映。已知转录因子活性(TFA)可用于预测受同一转录因子调控的新型靶基因。已经提出了各种方法来从基因表达数据重建TFA。通过假设TFA中的线性基因响应和线性动力学,它们中的大多数仅捕获了复杂转录过程的一阶近似值,或者忽略了此类系统数据中的时间信息。

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