| Literature DB >> 32602650 |
Timothy J Keyes1,2, Pablo Domizi2, Yu-Chen Lo2, Garry P Nolan3, Kara L Davis2.
Abstract
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.Entities:
Keywords: cancer; computational cytometry; data science; machine learning; mass cytometry
Year: 2020 PMID: 32602650 PMCID: PMC7416435 DOI: 10.1002/cyto.a.24158
Source DB: PubMed Journal: Cytometry A ISSN: 1552-4922 Impact factor: 4.355