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NoiseMaker: simulated screens for statistical assessment

机译:NoiseMaker:用于统计评估的模拟屏幕

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摘要

>Summary: High-throughput screening (HTS) is a common technique for both drug discovery and basic research, but researchers often struggle with how best to derive hits from HTS data. While a wide range of hit identification techniques exist, little information is available about their sensitivity and specificity, especially in comparison to each other. To address this, we have developed the open-source NoiseMaker software tool for generation of realistically noisy virtual screens. By applying potential hit identification methods to NoiseMaker-simulated data and determining how many of the pre-defined true hits are recovered (as well as how many known non-hits are misidentified as hits), one can draw conclusions about the likely performance of these techniques on real data containing unknown true hits. Such simulations apply to a range of screens, such as those using small molecules, siRNAs, shRNAs, miRNA mimics or inhibitors, or gene over-expression; we demonstrate this utility by using it to explain apparently conflicting reports about the performance of the B score hit identification method.>Availability and implementation: NoiseMaker is written in C#, an ECMA and ISO standard language with compilers for multiple operating systems. Source code, a Windows installer and complete unit tests are available at . Full documentation and support are provided via an extensive help file and tool-tips, and the developers welcome user suggestions.>Contact: >Supplementary information: are available at Bioinformatics online.
机译:>摘要:高通量筛选(HTS)是用于药物发现和基础研究的常用技术,但是研究人员通常在如何最好地从HTS数据中获得匹配数据方面遇到困难。尽管存在各种各样的命中识别技术,但关于它们的敏感性和特异性的信息很少,尤其是相互之间的比较。为了解决这个问题,我们开发了开源的NoiseMaker软件工具来生成逼真的虚拟屏幕。通过将潜在的命中识别方法应用于NoiseMaker模拟的数据并确定恢复了多少个预定义的真实命中(以及将多少个已知非命中误识别为命中),可以得出关于这些命中可能的性能的结论。包含未知真实匹配的真实数据的技术。此类模拟适用于一系列筛选,例如使用小分子,siRNA,shRNA,miRNA模拟物或抑制剂或基因过表达的筛选。我们通过使用它来解释有关B得分匹配识别方法性能的明显矛盾的报告来演示该实用程序。>可用性和实现: NoiseMaker是用C#编写的,是一种ECMA和ISO标准语言,具有多个编译器操作系统。可以找到源代码,Windows安装程序和完整的单元测试。完整的文档和支持通过广泛的帮助文件和工具提示提供,开发人员欢迎用户提出建议。>联系方式: >补充信息:可从Bioinformatics在线获得。

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