A Review of Super-Resolution Single-Molecule Localization Microscopy Cluster Analysis and Quantification Methods

Single-molecule localization microscopy (SMLM) is a relatively new imaging modality, winning the 2014 Nobel Prize in Chemistry, and considered as one of the key super-resolution techniques. SMLM resolution goes beyond the diffraction limit of light microscopy and achieves resolution on the order of...

Full description

Bibliographic Details
Main Authors: Ismail M. Khater, Ivan Robert Nabi, Ghassan Hamarneh
Format: Article
Language:English
Published: Elsevier 2020-06-01
Series:Patterns
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S266638992030043X
_version_ 1818550791238057984
author Ismail M. Khater
Ivan Robert Nabi
Ghassan Hamarneh
author_facet Ismail M. Khater
Ivan Robert Nabi
Ghassan Hamarneh
author_sort Ismail M. Khater
collection DOAJ
description Single-molecule localization microscopy (SMLM) is a relatively new imaging modality, winning the 2014 Nobel Prize in Chemistry, and considered as one of the key super-resolution techniques. SMLM resolution goes beyond the diffraction limit of light microscopy and achieves resolution on the order of 10–20 nm. SMLM thus enables imaging single molecules and study of the low-level molecular interactions at the subcellular level. In contrast to standard microscopy imaging that produces 2D pixel or 3D voxel grid data, SMLM generates big data of 2D or 3D point clouds with millions of localizations and associated uncertainties. This unprecedented breakthrough in imaging helps researchers employ SMLM in many fields within biology and medicine, such as studying cancerous cells and cell-mediated immunity and accelerating drug discovery. However, SMLM data quantification and interpretation methods have yet to keep pace with the rapid advancement of SMLM imaging. Researchers have been actively exploring new computational methods for SMLM data analysis to extract biosignatures of various biological structures and functions. In this survey, we describe the state-of-the-art clustering methods adopted to analyze and quantify SMLM data and examine the capabilities and shortcomings of the surveyed methods. We classify the methods according to (1) the biological application (i.e., the imaged molecules/structures), (2) the data acquisition (such as imaging modality, dimension, resolution, and number of localizations), and (3) the analysis details (2D versus 3D, field of view versus region of interest, use of machine-learning and multi-scale analysis, biosignature extraction, etc.). We observe that the majority of methods that are based on second-order statistics are sensitive to noise and imaging artifacts, have not been applied to 3D data, do not leverage machine-learning formulations, and are not scalable for big-data analysis. Finally, we summarize state-of-the-art methodology, discuss some key open challenges, and identify future opportunities for better modeling and design of an integrated computational pipeline to address the key challenges. The Bigger Picture: Recent developments in super-resolution SMLM imaging techniques enable researchers to study macromolecular structures at the nanometer scale. However, SMLM data quantification and interpretation methods have yet to keep pace with the rapid advancement of SMLM imaging. This article provides a balanced and comprehensive review of state-of-the-art SMLM image analysis methods and ties disparate approaches together in a cohesive manner. Researchers are actively exploring new computational methods to analyze SMLM data, including recent approaches to use data-driven and machine-learning approaches. However, the validation of the SMLM clustering methods remains an open challenge. Potential future directions using multi-modality imaging (e.g., SMLM and electron microscopy) might help validate quantitative SMLM image analysis methods.
first_indexed 2024-12-12T08:51:13Z
format Article
id doaj.art-6a0a48c7f02e46159652250ba7cf09d1
institution Directory Open Access Journal
issn 2666-3899
language English
last_indexed 2024-12-12T08:51:13Z
publishDate 2020-06-01
publisher Elsevier
record_format Article
series Patterns
spelling doaj.art-6a0a48c7f02e46159652250ba7cf09d12022-12-22T00:30:12ZengElsevierPatterns2666-38992020-06-0113100038A Review of Super-Resolution Single-Molecule Localization Microscopy Cluster Analysis and Quantification MethodsIsmail M. Khater0Ivan Robert Nabi1Ghassan Hamarneh2Medical Image Analysis Lab, School of Computing Science, Simon Fraser University, Burnaby, BC V5A 1S6, Canada; Corresponding authorDepartment of Cellular and Physiological Sciences, Life Sciences Institute, University of British Columbia, Vancouver, BC V6T 1Z3, Canada; Corresponding authorMedical Image Analysis Lab, School of Computing Science, Simon Fraser University, Burnaby, BC V5A 1S6, Canada; Corresponding authorSingle-molecule localization microscopy (SMLM) is a relatively new imaging modality, winning the 2014 Nobel Prize in Chemistry, and considered as one of the key super-resolution techniques. SMLM resolution goes beyond the diffraction limit of light microscopy and achieves resolution on the order of 10–20 nm. SMLM thus enables imaging single molecules and study of the low-level molecular interactions at the subcellular level. In contrast to standard microscopy imaging that produces 2D pixel or 3D voxel grid data, SMLM generates big data of 2D or 3D point clouds with millions of localizations and associated uncertainties. This unprecedented breakthrough in imaging helps researchers employ SMLM in many fields within biology and medicine, such as studying cancerous cells and cell-mediated immunity and accelerating drug discovery. However, SMLM data quantification and interpretation methods have yet to keep pace with the rapid advancement of SMLM imaging. Researchers have been actively exploring new computational methods for SMLM data analysis to extract biosignatures of various biological structures and functions. In this survey, we describe the state-of-the-art clustering methods adopted to analyze and quantify SMLM data and examine the capabilities and shortcomings of the surveyed methods. We classify the methods according to (1) the biological application (i.e., the imaged molecules/structures), (2) the data acquisition (such as imaging modality, dimension, resolution, and number of localizations), and (3) the analysis details (2D versus 3D, field of view versus region of interest, use of machine-learning and multi-scale analysis, biosignature extraction, etc.). We observe that the majority of methods that are based on second-order statistics are sensitive to noise and imaging artifacts, have not been applied to 3D data, do not leverage machine-learning formulations, and are not scalable for big-data analysis. Finally, we summarize state-of-the-art methodology, discuss some key open challenges, and identify future opportunities for better modeling and design of an integrated computational pipeline to address the key challenges. The Bigger Picture: Recent developments in super-resolution SMLM imaging techniques enable researchers to study macromolecular structures at the nanometer scale. However, SMLM data quantification and interpretation methods have yet to keep pace with the rapid advancement of SMLM imaging. This article provides a balanced and comprehensive review of state-of-the-art SMLM image analysis methods and ties disparate approaches together in a cohesive manner. Researchers are actively exploring new computational methods to analyze SMLM data, including recent approaches to use data-driven and machine-learning approaches. However, the validation of the SMLM clustering methods remains an open challenge. Potential future directions using multi-modality imaging (e.g., SMLM and electron microscopy) might help validate quantitative SMLM image analysis methods.http://www.sciencedirect.com/science/article/pii/S266638992030043Xsuper-resolution nanoscopysingle moleculelocalization microscopySMLMcluster analysisquantification of biological structures
spellingShingle Ismail M. Khater
Ivan Robert Nabi
Ghassan Hamarneh
A Review of Super-Resolution Single-Molecule Localization Microscopy Cluster Analysis and Quantification Methods
Patterns
super-resolution nanoscopy
single molecule
localization microscopy
SMLM
cluster analysis
quantification of biological structures
title A Review of Super-Resolution Single-Molecule Localization Microscopy Cluster Analysis and Quantification Methods
title_full A Review of Super-Resolution Single-Molecule Localization Microscopy Cluster Analysis and Quantification Methods
title_fullStr A Review of Super-Resolution Single-Molecule Localization Microscopy Cluster Analysis and Quantification Methods
title_full_unstemmed A Review of Super-Resolution Single-Molecule Localization Microscopy Cluster Analysis and Quantification Methods
title_short A Review of Super-Resolution Single-Molecule Localization Microscopy Cluster Analysis and Quantification Methods
title_sort review of super resolution single molecule localization microscopy cluster analysis and quantification methods
topic super-resolution nanoscopy
single molecule
localization microscopy
SMLM
cluster analysis
quantification of biological structures
url http://www.sciencedirect.com/science/article/pii/S266638992030043X
work_keys_str_mv AT ismailmkhater areviewofsuperresolutionsinglemoleculelocalizationmicroscopyclusteranalysisandquantificationmethods
AT ivanrobertnabi areviewofsuperresolutionsinglemoleculelocalizationmicroscopyclusteranalysisandquantificationmethods
AT ghassanhamarneh areviewofsuperresolutionsinglemoleculelocalizationmicroscopyclusteranalysisandquantificationmethods
AT ismailmkhater reviewofsuperresolutionsinglemoleculelocalizationmicroscopyclusteranalysisandquantificationmethods
AT ivanrobertnabi reviewofsuperresolutionsinglemoleculelocalizationmicroscopyclusteranalysisandquantificationmethods
AT ghassanhamarneh reviewofsuperresolutionsinglemoleculelocalizationmicroscopyclusteranalysisandquantificationmethods