首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Neural network based pattern matching and spike detection tools and services--in the CARMEN neuroinformatics project.
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Neural network based pattern matching and spike detection tools and services--in the CARMEN neuroinformatics project.

机译:在CARMEN神经信息学项目中基于神经网络的模式匹配和峰值检测工具和服务。

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In the study of information flow in the nervous system, component processes can be investigated using a range of electrophysiological and imaging techniques. Although data is difficult and expensive to produce, it is rarely shared and collaboratively exploited. The Code Analysis, Repository and Modelling for e-Neuroscience (CARMEN) project addresses this challenge through the provision of a virtual neuroscience laboratory: an infrastructure for sharing data, tools and services. Central to the CARMEN concept are federated CARMEN nodes, which provide: data and metadata storage, new, thirdparty and legacy services, and tools. In this paper, we describe the CARMEN project as well as the node infrastructure and an associated thick client tool for pattern visualisation and searching, the Signal Data Explorer (SDE). We also discuss new spike detection methods, which are central to the services provided by CARMEN. The SDE is a client application which can be used to explore data in the CARMEN repository, providing data visualization, signal processing and a pattern matching capability. It performs extremely fast pattern matching and can be used to search for complex conditions composed of many different patterns across the large datasets that are typical in neuroinformatics. Searches can also be constrained by specifying text based metadata filters. Spike detection services which use wavelet and morphology techniques are discussed, and have been shown to outperform traditional thresholding and template based systems. A number of different spike detection and sorting techniques will be deployed as services within the CARMEN infrastructure, to allow users to benchmark their performance against a wide range of reference datasets.
机译:在研究神经系统中的信息流时,可以使用一系列电生理和成像技术来研究组成过程。尽管数据难以生成且昂贵,但很少共享和协作利用。电子神经科学代码分析,存储库和建模(CARMEN)项目通过提供虚拟神经科学实验室解决了这一挑战:虚拟实验室共享数据,工具和服务。 CARMEN概念的核心是联邦CARMEN节点,该节点提供:数据和元数据存储,新的,第三方和旧式服务以及工具。在本文中,我们描述了CARMEN项目以及节点基础结构以及用于模式可视化和搜索的关联胖客户端工具Signal Data Explorer(SDE)。我们还将讨论新的峰值检测方法,这些方法对于CARMEN提供的服务至关重要。 SDE是一个客户端应用程序,可用于浏览CARMEN存储库中的数据,提供数据可视化,信号处理和模式匹配功能。它执行极其快速的模式匹配,可用于在神经信息学中典型的大型数据集中搜索由许多不同模式组成的复杂条件。还可以通过指定基于文本的元数据过滤器来限制搜索。讨论了使用小波和形态学技术的峰值检测服务,并已证明它们优于传统的基于阈值和模板的系统。 CARMEN基础架构内将部署多种不同的峰值检测和排序技术作为服务,以使用户能够针对各种参考数据集对性能进行基准测试。

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