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应用共识评分和主成分分析进行β-分泌酶(BACE-1)虚拟筛选。

Application of consensus scoring and principal component analysis for virtual screening against β-secretase (BACE-1).

机构信息

Department of Anatomy, Zhong Shan School of Medicine, Sun Yat-Sen University, Guangzhou, People's Republic of China.

出版信息

PLoS One. 2012;7(6):e38086. doi: 10.1371/journal.pone.0038086. Epub 2012 Jun 11.

Abstract

BACKGROUND

In order to identify novel chemical classes of β-secretase (BACE-1) inhibitors, an alternative scoring protocol, Principal Component Analysis (PCA), was proposed to summarize most of the information from the original scoring functions and re-rank the results from the virtual screening against BACE-1.

METHOD

Given a training set (50 BACE-1 inhibitors and 9950 inactive diverse compounds), three rank-based virtual screening methods, individual scoring, conventional consensus scoring and PCA, were judged by the hit number in the top 1% of the ranked list. The docking poses were generated by Surflex, five scoring functions (Surflex_Score, D_Score, G_Score, ChemScore, and PMF_Score) were used for pose extraction. For each pose group, twelve scoring functions (Surflex_Score, D_Score, G_Score, ChemScore, PMF_Score, LigScore1, LigScore2, PLP1, PLP2, jain, Ludi_1, and Ludi_2) were used for the pose rank. For a test set, 113,228 chemical compounds (Sigma-Aldrich® corporate chemical directory) were docked by Surflex, then ranked by the same three ranking methods motioned above to select the potential active compounds for experimental test.

RESULTS

For the training set, the PCA approach yielded consistently superior rankings compared to conventional consensus scoring and single scoring. For the test set, the top 20 compounds according to conventional consensus scoring were experimentally tested, no inhibitor was found. Then, we relied on PCA scoring protocol to test another different top 20 compounds and two low micromolar inhibitors (S450588 and 276065) were emerged through the BACE-1 fluorescence resonance energy transfer (FRET) assay.

CONCLUSION

The PCA method extends the conventional consensus scoring in a quantitative statistical manner and would appear to have considerable potential for chemical screening applications.

摘要

背景

为了鉴定新型β-分泌酶(BACE-1)抑制剂的化学结构,本文提出了一种替代评分方案,主成分分析(PCA),以总结原始评分函数的大部分信息,并对针对 BACE-1 的虚拟筛选结果进行重新排序。

方法

给定一个训练集(50 个 BACE-1 抑制剂和 9950 个不同的非活性化合物),使用三种基于排名的虚拟筛选方法,即单个评分、传统共识评分和 PCA,根据排名列表前 1%的命中数进行判断。通过 Surflex 生成对接构象,使用 5 种评分函数(Surflex_Score、D_Score、G_Score、ChemScore 和 PMF_Score)进行构象提取。对于每个构象组,使用 12 种评分函数(Surflex_Score、D_Score、G_Score、ChemScore、PMF_Score、LigScore1、LigScore2、PLP1、PLP2、jain、Ludi_1 和 Ludi_2)对构象进行排名。对于测试集,通过 Surflex 对接了 113228 种化学化合物(Sigma-Aldrich®公司的化学目录),然后通过上述三种排名方法对其进行排名,以选择潜在的活性化合物进行实验测试。

结果

对于训练集,与传统共识评分和单个评分相比,PCA 方法的排名始终更优。对于测试集,对传统共识评分排名前 20 的化合物进行了实验测试,未发现抑制剂。然后,我们依赖 PCA 评分方案对另一个不同的前 20 个化合物进行了测试,通过 BACE-1 荧光共振能量转移(FRET)测定法发现了两种低微摩尔抑制剂(S450588 和 276065)。

结论

PCA 方法以定量统计的方式扩展了传统共识评分,并且在化学筛选应用中似乎具有相当大的潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e2cf/3372491/0b215a10bce2/pone.0038086.g001.jpg

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