Medical Scientist Training Program, Stanford University School of Medicine, Stanford, California.
Department of Pediatrics, Stanford University School of Medicine, Stanford, California.
Cytometry A. 2020 Aug;97(8):782-799. doi: 10.1002/cyto.a.24158. Epub 2020 Jun 30.
The application of machine learning and artificial intelligence to high-dimensional cytometry data sets has increasingly become a staple of bioinformatic data analysis over the past decade. This is especially true in the field of cancer biology, where protocols for collecting multiparameter single-cell data in a high-throughput fashion are rapidly developed. As the use of machine learning methodology in cytometry becomes increasingly common, there is a need for cancer biologists to understand the basic theory and applications of a variety of algorithmic tools for analyzing and interpreting cytometry data. We introduce the reader to several keystone machine learning-based analytic approaches with an emphasis on defining key terms and introducing a conceptual framework for making translational or clinically relevant discoveries. The target audience consists of cancer cell biologists and physician-scientists interested in applying these tools to their own data, but who may have limited training in bioinformatics. © 2020 International Society for Advancement of Cytometry.
在过去十年中,机器学习和人工智能在高维细胞分析数据集的应用越来越成为生物信息数据分析的主要方法。在癌症生物学领域尤其如此,因为高通量收集多参数单细胞数据的方案正在迅速发展。随着机器学习方法在细胞术分析中的应用越来越普遍,癌症生物学家需要了解分析和解释细胞术数据的各种算法工具的基本理论和应用。我们向读者介绍了几种基于机器学习的关键分析方法,重点是定义关键术语并引入一个概念框架,以便进行转化或临床相关的发现。目标受众包括对将这些工具应用于自己数据感兴趣的癌症细胞生物学家和医师科学家,但他们可能在生物信息学方面的培训有限。© 2020 国际细胞分析学会。