| Literature DB >> 27703238 |
Sebastian Malkusch1, Mike Heilemann1.
Abstract
Super-resolution fluorescence microscopy revolutionizes cell biology research and provides novel insights on how proteins are organized at the nanoscale and in the cellular context. In order to extract a maximum of information, specialized tools for image analysis are necessary. Here, we introduce the LocAlization Microscopy Analyzer (LAMA), a comprehensive software tool that extracts quantitative information from single-molecule super-resolution imaging data. LAMA allows characterizing cellular structures by their size, shape, intensity, distribution, as well as the degree of colocalization with other structures. LAMA is freely available, platform-independent and designed to provide direct access to individual analysis of super-resolution data.Entities:
Year: 2016 PMID: 27703238 PMCID: PMC5050494 DOI: 10.1038/srep34486
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Quantitative analysis of SMLM data with LAMA.
A list of single-molecule localizations serves as input data (top) for LAMA and is post-processed for clustering (Ripley functions, DBSCAN, OPTICS), single-molecule counting, colocalization analysis and localization precision determination.
Figure 2Quantitative analysis of SMLM data with LAMA.
Exemplary two-color SMLM data set8 (a) before and (b) after color channel registration. LAMA includes algorithms for (c) determining the theoretical and experimental localization precision, (d) cluster analysis, (e) colocalization analysis and (f) a combination of colocalization and cluster analysis which reports on areas of molecular interaction (scale bars: 500 nm).