基于机器学习方法的USP1/UAF1拮抗剂设计的化学信息学模型。

Systems and Synthetic Biology Pub Date : 2015-06-01 Epub Date: 2015-01-30 DOI:10.1007/s11693-015-9162-1
Divya Wahi, Salma Jamal, Sukriti Goyal, Aditi Singh, Ritu Jain, Preeti Rana, Abhinav Grover
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引用次数: 15

摘要

癌细胞具有上调的DNA修复机制,使它们能够在重复快速细胞分裂和靶向化疗治疗中诱导的DNA损伤中存活。通过抑制DNA修复途径靶向癌细胞增殖和生存是目前一种非常混杂的抗肿瘤方法。众所周知,去泛素化酶USP1通过与UAF1络合促进DNA修复。USP1/UAF1复合体负责调节DNA断裂修复途径,如跨病变合成途径、Fanconi贫血途径和同源重组。因此,抑制USP1/UAF1是一种有效的抗癌策略。最近获得的抗USP1/UAF1活性的高通量筛选数据促使我们计算生物活性预测模型,以帮助筛选具有抗癌特性的潜在USP1/UAF1抑制剂。目前的研究利用公开可用的高通量筛选数据集来评估其潜在的USP1/UAF1抑制作用。设计了一种机器学习方法来生成计算模型,该模型可以预测新型抗癌化合物的潜在抗USP1/UAF1生物活性。通过SMARTS过滤器去除具有非药物样特征的分子来筛选活性化合物的其他功效。进一步进行结构片段分析,探索分子的结构性质。我们证明了现代机器学习方法可以有效地用于构建预测计算模型,并且它们的预测性能在统计上是准确的。结构片段分析揭示了可能在USP1/UAF1抑制剂鉴定中发挥重要作用的结构。
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Cheminformatics models based on machine learning approaches for design of USP1/UAF1 abrogators as anticancer agents.

Cancer cells have upregulated DNA repair mechanisms, enabling them survive DNA damage induced during repeated rapid cell divisions and targeted chemotherapeutic treatments. Cancer cell proliferation and survival targeting via inhibition of DNA repair pathways is currently a very promiscuous anti-tumor approach. The deubiquitinating enzyme, USP1 is known to promote DNA repair via complexing with UAF1. The USP1/UAF1 complex is responsible for regulating DNA break repair pathways such as trans-lesion synthesis pathway, Fanconi anemia pathway and homologous recombination. Thus, USP1/UAF1 inhibition poses as an efficient anti-cancer strategy. The recently made available high throughput screen data for anti USP1/UAF1 activity prompted us to compute bioactivity predictive models that could help in screening for potential USP1/UAF1 inhibitors having anti-cancer properties. The current study utilizes publicly available high throughput screen data set of chemical compounds evaluated for their potential USP1/UAF1 inhibitory effect. A machine learning approach was devised for generation of computational models that could predict for potential anti USP1/UAF1 biological activity of novel anticancer compounds. Additional efficacy of active compounds was screened by applying SMARTS filter to eliminate molecules with non-drug like features. The structural fragment analysis was further performed to explore structural properties of the molecules. We demonstrated that modern machine learning approaches could be efficiently employed in building predictive computational models and their predictive performance is statistically accurate. The structure fragment analysis revealed the structures that could play an important role in identification of USP1/UAF1 inhibitors.

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