一种高通量串联质谱实时数据采集和在线信号处理的体系结构

A. Shah, N. Jaitly, Nino Zuljevic, M. Monroe, A. Liyu, A. Polpitiya, J. Adkins, M. Belov, G. Anderson, Richard D. Smith, I. Gorton
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引用次数: 3

摘要

使用简单的启发式方法独立、贪婪地收集数据事件会导致大规模研究中突出数据特征的大量过度采样,而不是通过“智能”在线获取这些数据。因此,将生成的数据描述为大量小型实验的集合而不是真正的大规模实验更为恰当。然而,实现“智能”在线控制需要最先进的数据密集型计算基础设施发展与分析算法之间的紧密相互作用。在本文中,我们提出了一种基于质谱的蛋白质组学与液相色谱实验(SAMPLE)相结合的软件架构,以开发一个“智能”在线控制和分析系统,以显着增强来自每个传感器(在本例中为质谱仪)的信息内容。利用在线分析收集的数据事件和决策理论来优化实验过程中的事件收集,我们的目标是通过使用预先存在的知识来优化事件的动态收集,从而最大化实验过程中产生的信息内容。
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An Architecture for Real Time Data Acquisition and Online Signal Processing for High Throughput Tandem Mass Spectrometry
Independent, greedy collection of data events using simple heuristics results in massive over-sampling of the prominent data features in large-scale studies over what should be achievable through “intelligent,” online acquisition of such data. As a result, data generated are more aptly described as a collection of a large number of small experiments rather than a true large-scale experiment. Nevertheless, achieving “intelligent,” online control requires tight interplay between state-of-the-art, data-intensive computing infrastructure developments and analytical algorithms. In this paper, we propose a Software Architecture for Mass spectrometry-based Proteomics coupled with Liquid chromatography Experiments (SAMPLE) to develop an “intelligent” online control and analysis system to significantly enhance the information content from each sensor (in this case, a mass spectrometer). Using online analysis of data events as they are collected and decision theory to optimize the collection of events during an experiment, we aim to maximize the information content generated during an experiment by the use of pre-existing knowledge to optimize the dynamic collection of events.
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