Department of Neurology, Mayo Clinic, Rochester, Minnesota, USA.
Department of Neurosurgery, Medical Center of the University of Munich, Munich, Germany.
J Neuropathol Exp Neurol. 2023 Jun 20;82(7):595-610. doi: 10.1093/jnen/nlad040.
Machine learning is a powerful tool that is increasingly being used in many research areas, including neuroscience. The recent development of new algorithms and network architectures, especially in the field of deep learning, has made machine learning models more reliable and accurate and useful for the biomedical research sector. By minimizing the effort necessary to extract valuable features from datasets, they can be used to find trends in data automatically and make predictions about future data, thereby improving the reproducibility and efficiency of research. One application is the automatic evaluation of micrograph images, which is of great value in neuroscience research. While the development of novel models has enabled numerous new research applications, the barrier to use these new algorithms has also decreased by the integration of deep learning models into known applications such as microscopy image viewers. For researchers unfamiliar with machine learning algorithms, the steep learning curve can hinder the successful implementation of these methods into their workflows. This review explores the use of machine learning in neuroscience, including its potential applications and limitations, and provides some guidance on how to select a fitting framework to use in real-life research projects.
机器学习是一种强大的工具,越来越多地被应用于许多研究领域,包括神经科学。最近新算法和网络架构的发展,特别是在深度学习领域,使得机器学习模型更加可靠、准确和有助于生物医学研究领域。通过最小化从数据集中提取有价值特征所需的工作量,可以自动发现数据中的趋势并对未来数据进行预测,从而提高研究的可重复性和效率。一个应用是自动评估显微镜图像,这在神经科学研究中非常有价值。虽然新型模型的发展使得许多新的研究应用成为可能,但通过将深度学习模型集成到已知的应用程序(如显微镜图像查看器)中,使用这些新算法的障碍也降低了。对于不熟悉机器学习算法的研究人员来说,陡峭的学习曲线可能会阻碍他们成功地将这些方法应用到他们的工作流程中。本文综述了机器学习在神经科学中的应用,包括其潜在的应用和局限性,并提供了一些关于如何在实际研究项目中选择合适框架的指导。