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首页> 外文期刊>Journal of molecular cell biology >Gene dysregulation analysis builds a mechanistic signature for prognosis and therapeutic benefit in colorectal cancer
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Gene dysregulation analysis builds a mechanistic signature for prognosis and therapeutic benefit in colorectal cancer

机译:基因失调分析建立了成直肠癌预后和治疗益处的机制签名

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The implementation of cancer precision medicine requires biomarkers or signatures for predicting prognosis and therapeutic benefits. Most of current efforts in this field are paying much more attention to predictive accuracy than to molecular mechanistic interpretability. Mechanism-driven strategy has recently emerged, aiming to build signatures with both predictive power and explanatory power. Driven by this strategy, we developed a robust gene dysregulation analysis framework with machine learning algorithms, which is capable of exploring gene dysregulations underlying carcinogenesis from high-dimensional data with cooperativity and synergy between regulators and several other transcriptional regulation rules taken into consideration. We then applied the framework to a colorectal cancer (CRC) cohort from The Cancer Genome Atlas. The identified CRC-related dysregulations significantly covered known carcinogenic processes and exhibited good prognostic effect. By choosing dysregulations with greedy strategy, we built a four-dysregulation (4-DysReg) signature, which has the capability of predicting prognosis and adjuvant chemotherapy benefit. 4-DysReg has the potential to explain carcinogenesis in terms of dysfunctional transcriptional regulation. These results demonstrate that our gene dysregulation analysis framework could be used to develop predictive signature with mechanistic interpretability for cancer precision medicine, and furthermore, elucidate the mechanisms of carcinogenesis.
机译:癌症精确医学的实施需要生物标记物或特征来预测预后和治疗效果。目前在这一领域的大多数工作都更多地关注预测的准确性,而不是分子机制的可解释性。最近出现了机制驱动的策略,旨在构建具有预测能力和解释能力的签名。在这一策略的推动下,我们开发了一个具有机器学习算法的强大的基因调控异常分析框架,该框架能够从高维数据中探索致癌过程中的基因调控异常,并考虑到调控者之间的协同性和协同性以及其他几种转录调控规则。然后,我们将该框架应用于癌症基因组图谱中的结直肠癌(CRC)队列。确定的CRC相关失调显著涵盖了已知的致癌过程,并显示出良好的预后效果。通过贪婪策略选择失调,我们构建了一个四失调(4-DysReg)信号,该信号具有预测预后和辅助化疗益处的能力。4-DysReg有可能从功能失调的转录调控方面解释癌症的发生。这些结果表明,我们的基因失调分析框架可以用于开发癌症精确医学的具有机制解释性的预测性特征,并进一步阐明癌症发生的机制。

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