解开神经密码:大规模双光子显微镜数据分析。

Yoshihito Saito, Yuma Osako, Masanori Murayama
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引用次数: 0

摘要

大脑是一个复杂的神经网络,它通过神经元之间的动态相互作用来协调我们的思想、情感和行动。如果我们能够同时详细记录所有神经元的活动,它将彻底改变我们对大脑功能的理解,并在治疗神经系统疾病方面取得突破。最近的技术革新,特别是大视场双光子显微镜,使得同时记录成千上万个神经元的活动成为可能。然而,数据集的规模和复杂性在提取可解释信息方面提出了重大挑战。传统的分析方法往往是不够的,需要发展新的理论框架和计算效率。在这篇综述中,我们描述了从先进的成像技术获得的数据的特点,并讨论了分析方法,以促进实验者和理论家之间的相互理解。这种跨学科的方法对于有效管理和解释大规模神经活动数据集至关重要,最终促进我们对大脑功能的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unraveling the Neural Code: Analysis of Large-Scale Two-Photon Microscopy Data.

The brain is an intricate neuronal network that orchestrates our thoughts, emotions, and actions through dynamic interactions between neurons. If we could record the activity of all neurons simultaneously in detail, it could revolutionize our understanding of brain function and lead to breakthroughs in treating neurological diseases. Recent technological innovations, particularly in large field-of-view two-photon microscopes, have made it possible to record the activity of tens of thousands of neurons simultaneously. However, the size and complexity of the datasets present significant challenges in extracting interpretable information. Conventional analysis methods are often insufficient, necessitating the development of new theoretical frameworks and computational efficiencies. In this review, we describe the characteristics of the data obtained from advanced imaging techniques and discuss analytical methods to facilitate mutual understanding between experimentalists and theorists. This interdisciplinary approach is crucial for effectively managing and interpreting large-scale neural activity datasets, ultimately advancing our understanding of brain function.

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