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3D-MEDNEs:毒理学化学研究的一种替代性“计算机模拟”技术。2. 基于质谱螺旋熵的定量蛋白质组-毒性关系(QPTR)

3D-MEDNEs: an alternative "in silico" technique for chemical research in toxicology. 2. quantitative proteome-toxicity relationships (QPTR) based on mass spectrum spiral entropy.

作者信息

Cruz-Monteagudo Maykel, González-Díaz Humberto, Borges Fernanda, Dominguez Elena Rosa, Cordeiro M Natália D S

机构信息

Physico-Chemical Molecular Research Unit, Department of Organic Chemistry, Faculty of Pharmacy, University of Porto, 4150-047 Porto, Portugal.

出版信息

Chem Res Toxicol. 2008 Mar;21(3):619-32. doi: 10.1021/tx700296t. Epub 2008 Feb 8.

Abstract

Low range mass spectra (MS) characterization of serum proteome offers the best chance of discovering proteome-(early drug-induced cardiac toxicity) relationships, called here Pro-EDICToRs. However, due to the thousands of proteins involved, finding the single disease-related protein could be a hard task. The search for a model based on general MS patterns becomes a more realistic choice. In our previous work ( González-Díaz, H. , et al. Chem. Res. Toxicol. 2003, 16, 1318- 1327 ), we introduced the molecular structure information indices called 3D-Markovian electronic delocalization entropies (3D-MEDNEs). In this previous work, quantitative structure-toxicity relationship (QSTR) techniques allowed us to link 3D-MEDNEs with blood toxicological properties of drugs. In this second part, we extend 3D-MEDNEs to numerically encode biologically relevant information present in MS of the serum proteome for the first time. Using the same idea behind QSTR techniques, we can seek now by analogy a quantitative proteome-toxicity relationship (QPTR). The new QPTR models link MS 3D-MEDNEs with drug-induced toxicological properties from blood proteome information. We first generalized Randic's spiral graph and lattice networks of protein sequences to represent the MS of 62 serum proteome samples with more than 370 100 intensity ( I i ) signals with m/ z bandwidth above 700-12000 each. Next, we calculated the 3D-MEDNEs for each MS using the software MARCH-INSIDE. After that, we developed several QPTR models using different machine learning and MS representation algorithms to classify samples as control or positive Pro-EDICToRs samples. The best QPTR proposed showed accuracy values ranging from 83.8% to 87.1% and leave-one-out (LOO) predictive ability of 77.4-85.5%. This work demonstrated that the idea behind classic drug QSTR models may be extended to construct QPTRs with proteome MS data.

摘要

血清蛋白质组的低范围质谱(MS)表征为发现蛋白质组与早期药物诱导心脏毒性(在此称为Pro - EDICToRs)之间的关系提供了最佳机会。然而,由于涉及数千种蛋白质,找到单一的疾病相关蛋白质可能是一项艰巨的任务。寻找基于一般MS模式的模型成为更现实的选择。在我们之前的工作(González - Díaz,H.等人,《化学研究毒理学》,2003年,第16卷,第1318 - 1327页)中,我们引入了称为3D - 马尔可夫电子离域熵(3D - MEDNEs)的分子结构信息指数。在之前的这项工作中,定量结构 - 毒性关系(QSTR)技术使我们能够将3D - MEDNEs与药物的血液毒理学特性联系起来。在这第二部分中,我们首次将3D - MEDNEs扩展到对血清蛋白质组MS中存在的生物学相关信息进行数值编码。利用QSTR技术背后的相同理念,我们现在可以类推寻找定量蛋白质组 - 毒性关系(QPTR)。新的QPTR模型将MS 3D - MEDNEs与来自血液蛋白质组信息的药物诱导毒理学特性联系起来。我们首先对蛋白质序列的Randic螺旋图和晶格网络进行了推广,以表示62个血清蛋白质组样本的MS,每个样本具有超过370100个强度(Ii)信号,m/z带宽在700 - 12000以上。接下来,我们使用MARCH - INSIDE软件为每个MS计算3D - MEDNEs。之后,我们使用不同的机器学习和MS表示算法开发了几个QPTR模型,以将样本分类为对照或阳性Pro - EDICToRs样本。提出的最佳QPTR显示准确率值在83.8%至87.1%之间,留一法(LOO)预测能力为77.4 - 85.5%。这项工作表明,经典药物QSTR模型背后理念可扩展用于构建基于蛋白质组MS数据的QPTR。

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