Artigo Acesso aberto Revisado por pares

A framework for evaluating the performance of SMLM cluster analysis algorithms

2023; Nature Portfolio; Volume: 20; Issue: 2 Linguagem: Inglês

10.1038/s41592-022-01750-6

ISSN

1548-7105

Autores

Daniel J. Nieves, Jeremy A. Pike, Florian Levet, David J. Williamson, Mohammed Baragilly, Sandra Oloketuyi, Ario de Marco, Juliette Griffié, Daniel Sage, Edward A. K. Cohen, Jean‐Baptiste Sibarita, Mike Heilemann, Dylan M. Owen,

Tópico(s)

Cell Image Analysis Techniques

Resumo

Single-molecule localization microscopy (SMLM) generates data in the form of coordinates of localized fluorophores. Cluster analysis is an attractive route for extracting biologically meaningful information from such data and has been widely applied. Despite a range of cluster analysis algorithms, there exists no consensus framework for the evaluation of their performance. Here, we use a systematic approach based on two metrics to score the success of clustering algorithms in simulated conditions mimicking experimental data. We demonstrate the framework using seven diverse analysis algorithms: DBSCAN, ToMATo, KDE, FOCAL, CAML, ClusterViSu and SR-Tesseler. Given that the best performer depended on the underlying distribution of localizations, we demonstrate an analysis pipeline based on statistical similarity measures that enables the selection of the most appropriate algorithm, and the optimized analysis parameters for real SMLM data. We propose that these standard simulated conditions, metrics and analysis pipeline become the basis for future analysis algorithm development and evaluation.

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