Nature Communications (Mar 2020)
Machine learning for cluster analysis of localization microscopy data
Abstract
The characterization of clusters in single-molecule microscopy data is vital to reconstruct emerging spatial patterns. Here, the authors present a fast and accurate machine-learning approach to clustering, to address the issues related to the size of the data and to sample heterogeneity.