大规模神经元记录的分析方法

IF 44.7 1区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES
Science Pub Date : 2024-11-08 DOI:10.1126/science.adp7429
Carsen Stringer, Marius Pachitariu
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引用次数: 0

摘要

由于仪器、分子工具和数据处理软件的创新,同时记录成百上千个神经元的数据已成为家常便饭。这些记录可以用数据科学方法进行分析,但使用什么方法或如何将这些方法应用于神经科学领域并不十分明确。我们对神经群体记录的各种分析方法进行了回顾、分类和说明,并介绍了这些方法如何用于解决神经科学中的长期问题。我们回顾了各种方法,从数学上的简单到复杂,从探索到假设驱动,从新近开发的方法到更成熟的方法,不一而足。我们还说明了在分析大规模神经数据时常见的一些统计陷阱。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis methods for large-scale neuronal recordings
Simultaneous recordings from hundreds or thousands of neurons are becoming routine because of innovations in instrumentation, molecular tools, and data processing software. Such recordings can be analyzed with data science methods, but it is not immediately clear what methods to use or how to adapt them for neuroscience applications. We review, categorize, and illustrate diverse analysis methods for neural population recordings and describe how these methods have been used to make progress on longstanding questions in neuroscience. We review a variety of approaches, ranging from the mathematically simple to the complex, from exploratory to hypothesis-driven, and from recently developed to more established methods. We also illustrate some of the common statistical pitfalls in analyzing large-scale neural data.
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来源期刊
Science
Science 综合性期刊-综合性期刊
CiteScore
61.10
自引率
0.90%
发文量
0
审稿时长
2.1 months
期刊介绍: Science is a leading outlet for scientific news, commentary, and cutting-edge research. Through its print and online incarnations, Science reaches an estimated worldwide readership of more than one million. Science’s authorship is global too, and its articles consistently rank among the world's most cited research. Science serves as a forum for discussion of important issues related to the advancement of science by publishing material on which a consensus has been reached as well as including the presentation of minority or conflicting points of view. Accordingly, all articles published in Science—including editorials, news and comment, and book reviews—are signed and reflect the individual views of the authors and not official points of view adopted by AAAS or the institutions with which the authors are affiliated. Science seeks to publish those papers that are most influential in their fields or across fields and that will significantly advance scientific understanding. Selected papers should present novel and broadly important data, syntheses, or concepts. They should merit recognition by the wider scientific community and general public provided by publication in Science, beyond that provided by specialty journals. Science welcomes submissions from all fields of science and from any source. The editors are committed to the prompt evaluation and publication of submitted papers while upholding high standards that support reproducibility of published research. Science is published weekly; selected papers are published online ahead of print.
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