Oxford Centre for Human Brain Activity, Wellcome Centre for Integrative Neuroimaging, Department of Psychiatry, University of Oxford, Oxford, United Kingdom.
Centre for Human Brain Health, School of Psychology, University of Birmingham, Birmingham, United Kingdom.
Elife. 2024 Jan 29;12:RP91949. doi: 10.7554/eLife.91949.
Neural activity contains rich spatiotemporal structure that corresponds to cognition. This includes oscillatory bursting and dynamic activity that span across networks of brain regions, all of which can occur on timescales of tens of milliseconds. While these processes can be accessed through brain recordings and imaging, modeling them presents methodological challenges due to their fast and transient nature. Furthermore, the exact timing and duration of interesting cognitive events are often a priori unknown. Here, we present the OHBA Software Library Dynamics Toolbox (osl-dynamics), a Python-based package that can identify and describe recurrent dynamics in functional neuroimaging data on timescales as fast as tens of milliseconds. At its core are machine learning generative models that are able to adapt to the data and learn the timing, as well as the spatial and spectral characteristics, of brain activity with few assumptions. osl-dynamics incorporates state-of-the-art approaches that can be, and have been, used to elucidate brain dynamics in a wide range of data types, including magneto/electroencephalography, functional magnetic resonance imaging, invasive local field potential recordings, and electrocorticography. It also provides novel summary measures of brain dynamics that can be used to inform our understanding of cognition, behavior, and disease. We hope osl-dynamics will further our understanding of brain function, through its ability to enhance the modeling of fast dynamic processes.
神经活动包含与认知相对应的丰富时空结构。这包括在脑区网络中跨越的爆发和动态活动,所有这些都可以在几十毫秒的时间尺度上发生。虽然这些过程可以通过脑记录和成像来访问,但由于它们的快速和瞬态性质,对它们进行建模存在方法学上的挑战。此外,有趣的认知事件的确切时间和持续时间通常是事先未知的。在这里,我们介绍了 OHBA 软件库动力学工具包(osl-dynamics),这是一个基于 Python 的软件包,可以在几十毫秒的时间尺度上识别和描述功能神经影像学数据中的重复动力学。其核心是机器学习生成模型,这些模型能够适应数据,并在很少假设的情况下学习大脑活动的时间、空间和频谱特征。osl-dynamics 结合了最先进的方法,可以用于阐明包括脑磁/脑电图、功能磁共振成像、侵入性局部场电位记录和脑电描记术在内的各种数据类型的大脑动力学。它还提供了新的大脑动力学综合指标,可以用于帮助我们理解认知、行为和疾病。我们希望通过增强对快速动态过程的建模,osl-dynamics 将进一步加深我们对大脑功能的理解。