Abstract
Single-molecule localization microscopy has enabled scientists to visualize cellular structures at the nanometer scale. However, researchers are facing great challenges in analyzing images presented by point clouds. Existing algorithms for cluster identification are coordinate-based analyses requiring users to input cutoff thresholds based on the distance or density of the point cloud. These thresholds are often one’s best guess with repeated visual inspections, making the cluster assignment user-dependent. Here, we present a cluster identification algorithm mimicking the modulation transfer function of human vision. This approach does not require any input parameters and produces visually satisfactory cluster assignments. We tested this algorithm by identifying the clusters of the fusion proteins of the Nipah virus on its host cells. This algorithm was further extended to analyze three-dimensional point clouds using virus-like particles as an example.
Funder
Canada Foundation for Innovation
Natural Sciences and Engineering Research Council of Canada
Basic and Applied Basic Research Foundation of Guangdong Province
Fundamental Research Funds for the Central Universities
CIHR Coronavirus Variants Rapid Response Network
Subject
Atomic and Molecular Physics, and Optics