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SPINE: an integrated tracking database and data mining approach for identifying feasible targets in high-throughput structural proteomics

机译:SPINE:一种集成的跟踪数据库和数据挖掘方法,用于识别高通量结构蛋白质组学中的可行目标

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High-throughput structural proteomics is expected to generate considerably amounts of data on the progress of structure determination for many proteins. For each protein this includes information about cloning, expression, purification, biophysical characterization and structure determination via NMR spectroscopy or X-ray crystallography. It will be essential to develop specifications and ontologies for standardizing this information to make it amenable to retrospective analysis. To this end we created the SPINE database and analysis system for the Northeast Structural Genomics Consortium. SPINE, which is available at bioinfo.mbb.yale.eduesg or nesg.org, is specifically designed to enable distributed scientific collaboration via the Internet. It was designed not just as an information repository but as an active vehicle to standardize proteomics data in a form that would enable systematic data mining. The system features an intuitive user interface for interactive retrieval and modification of expression construct data, query forms designed to track global project progress and external links to many other resources. Currently the database contains experimental data on 985 constructs, of which 740 are drawn from Methanobacterium thermoautotrophicum, 123 from Saccharomyces cerevisiae, 93 from Caenorhabditis elegans and the remainder from other organisms. We developed a comprehensive set of data mining features for each protein, including several related to experimental progress (e.g. expression level, solubility nd crystallization) and 42 based on the underlying protein sequence (e.g. amino acid composition, secondary structure and occurrence of low complexity regions). We demonstrate in detail the application of a particular machine learning approach, decision trees, to the tasks of predicting a protein's solubility and propensity to crystallize based on sequence features. We are able to extract a number of key rules from our trees, in particular that soluble proteins tend to have significantly more acidic residues and fewer hydrophobic stretches than insoluble ones. One of the characteristics of proteomics data sets, currently and in the foreseeable future, is their intermediate size (~50-5000 data points). This creates a number of issues in relation to error estimation. Initially we estimate the overall error in our trees based on standard cross-validation. However, this leaves out a significant fraction of the data in model construction and does not give error estimates on individual rules. Therefore, we present alternative methods to estimate the error in particular rules.
机译:预计高通量结构蛋白质组学会产生大量有关许多蛋白质的结构确定过程的数据。对于每种蛋白质,这包括有关克隆,表达,纯化,生物物理特征和通过NMR光谱或X射线晶体学确定结构的信息。开发规范和本体以标准化此信息以使其适合追溯分析将是必不可少的。为此,我们为东北结构基因组学联盟创建了SPINE数据库和分析系统。 SPINE可以通过bioinfo.mbb.yale.eduesg或nesg.org获得,其专门设计用于通过Internet进行分布式科学协作。它不仅被设计为信息存储库,还被设计为以能够进行系统数据挖掘的形式标准化蛋白质组学数据的主动工具。该系统具有直观的用户界面,用于交互式检索和修改表达结构数据,设计用于跟踪全局项目进度的查询表单以及与许多其他资源的外部链接。目前,该数据库包含有关985个构建体的实验数据,其中740个来自嗜热自甲烷甲烷杆菌,123个来自酿酒酵母,93个来自秀丽隐杆线虫,其余来自其他生物。我们为每种蛋白质开发了一套全面的数据挖掘功能,其中包括一些与实验进展有关的数据挖掘功能(例如表达水平,溶解度和结晶度)以及基于基础蛋白质序列的42种数据挖掘功能(例如氨基酸组成,二级结构和低复杂性区域的发生) )。我们详细演示了特定的机器学习方法,决策树在预测蛋白质溶解度和根据序列特征结晶的倾向性任务中的应用。我们能够从我们的树中提取出许多关键规则,特别是与不溶性蛋白质相比,可溶性蛋白质往往具有更多的酸性残基和更少的疏水性。当前和可预见的将来,蛋白质组学数据集的特征之一是它们的中间大小(约50-5000个数据点)。这就产生了许多与误差估计有关的问题。最初,我们根据标准的交叉验证来估计树中的总体误差。但是,这在模型构建中遗漏了很大一部分数据,并且没有给出单个规则的误差估计。因此,我们提出了替代方法来估计特定规则中的错误。

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