Department of Neurobiology and Anatomy, Kochi University Faculty of Medicine, Kochi, Japan.
Clinical & Medical Affairs, Ziemer Ophthalmic Systems AG, Port, Switzerland.
Curr Protoc Cell Biol. 2020 Mar;86(1):e101. doi: 10.1002/cpcb.101.
The explosive growth of machine learning has provided scientists with insights into data in ways unattainable using prior research techniques. It has allowed the detection of biological features that were previously unrecognized and overlooked. However, because machine-learning methodology originates from informatics, many cell biology labs have experienced difficulties in implementing this approach. In this article, we target the rapidly expanding audience of cell and molecular biologists interested in exploiting machine learning for analysis of their research. We discuss the advantages of employing machine learning with microscopy approaches and describe the machine-learning pipeline. We also give practical guidelines for building models of cell behavior using machine learning. We conclude with an overview of the tools required for model creation, and share advice on their use. © 2020 by John Wiley & Sons, Inc.
机器学习的爆炸式增长为科学家提供了以前使用传统研究技术无法获得的对数据的深入了解。它使得以前未被识别和忽视的生物特征得以被检测到。然而,由于机器学习方法源于信息学,许多细胞生物学实验室在实施这种方法方面遇到了困难。在本文中,我们针对对利用机器学习分析研究感兴趣的快速增长的细胞和分子生物学家群体。我们讨论了将机器学习与显微镜方法结合使用的优势,并描述了机器学习的流程。我们还为使用机器学习构建细胞行为模型提供了实用指南。最后,我们概述了创建模型所需的工具,并分享了使用这些工具的建议。© 2020 年由 John Wiley & Sons, Inc. 出版