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Unsupervised learning approaches to characterizing heterogeneous samples using X-ray single-particle imaging
One of the outstanding analytical problems in X-ray single-particle imaging (SPI) is the classification of structural heterogeneity, which is especially difficult given the low signal-to-noise ratios of individual patterns and the fact that even identical objects can yield patterns that vary greatly...
Autores principales: | , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , |
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Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
International Union of Crystallography
2022
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Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8895023/ https://www.ncbi.nlm.nih.gov/pubmed/35371510 http://dx.doi.org/10.1107/S2052252521012707 |
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author | Zhuang, Yulong Awel, Salah Barty, Anton Bean, Richard Bielecki, Johan Bergemann, Martin Daurer, Benedikt J. Ekeberg, Tomas Estillore, Armando D. Fangohr, Hans Giewekemeyer, Klaus Hunter, Mark S. Karnevskiy, Mikhail Kirian, Richard A. Kirkwood, Henry Kim, Yoonhee Koliyadu, Jayanath Lange, Holger Letrun, Romain Lübke, Jannik Mall, Abhishek Michelat, Thomas Morgan, Andrew J. Roth, Nils Samanta, Amit K. Sato, Tokushi Shen, Zhou Sikorski, Marcin Schulz, Florian Spence, John C. H. Vagovic, Patrik Wollweber, Tamme Worbs, Lena Xavier, P. Lourdu Yefanov, Oleksandr Maia, Filipe R. N. C. Horke, Daniel A. Küpper, Jochen Loh, N. Duane Mancuso, Adrian P. Chapman, Henry N. Ayyer, Kartik |
author_facet | Zhuang, Yulong Awel, Salah Barty, Anton Bean, Richard Bielecki, Johan Bergemann, Martin Daurer, Benedikt J. Ekeberg, Tomas Estillore, Armando D. Fangohr, Hans Giewekemeyer, Klaus Hunter, Mark S. Karnevskiy, Mikhail Kirian, Richard A. Kirkwood, Henry Kim, Yoonhee Koliyadu, Jayanath Lange, Holger Letrun, Romain Lübke, Jannik Mall, Abhishek Michelat, Thomas Morgan, Andrew J. Roth, Nils Samanta, Amit K. Sato, Tokushi Shen, Zhou Sikorski, Marcin Schulz, Florian Spence, John C. H. Vagovic, Patrik Wollweber, Tamme Worbs, Lena Xavier, P. Lourdu Yefanov, Oleksandr Maia, Filipe R. N. C. Horke, Daniel A. Küpper, Jochen Loh, N. Duane Mancuso, Adrian P. Chapman, Henry N. Ayyer, Kartik |
author_sort | Zhuang, Yulong |
collection | PubMed |
description | One of the outstanding analytical problems in X-ray single-particle imaging (SPI) is the classification of structural heterogeneity, which is especially difficult given the low signal-to-noise ratios of individual patterns and the fact that even identical objects can yield patterns that vary greatly when orientation is taken into consideration. Proposed here are two methods which explicitly account for this orientation-induced variation and can robustly determine the structural landscape of a sample ensemble. The first, termed common-line principal component analysis (PCA), provides a rough classification which is essentially parameter free and can be run automatically on any SPI dataset. The second method, utilizing variation auto-encoders (VAEs), can generate 3D structures of the objects at any point in the structural landscape. Both these methods are implemented in combination with the noise-tolerant expand–maximize–compress (EMC) algorithm and its utility is demonstrated by applying it to an experimental dataset from gold nanoparticles with only a few thousand photons per pattern. Both discrete structural classes and continuous deformations are recovered. These developments diverge from previous approaches of extracting reproducible subsets of patterns from a dataset and open up the possibility of moving beyond the study of homogeneous sample sets to addressing open questions on topics such as nanocrystal growth and dynamics, as well as phase transitions which have not been externally triggered. |
format | Online Article Text |
id | pubmed-8895023 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2022 |
publisher | International Union of Crystallography |
record_format | MEDLINE/PubMed |
spelling | pubmed-88950232022-03-31 Unsupervised learning approaches to characterizing heterogeneous samples using X-ray single-particle imaging Zhuang, Yulong Awel, Salah Barty, Anton Bean, Richard Bielecki, Johan Bergemann, Martin Daurer, Benedikt J. Ekeberg, Tomas Estillore, Armando D. Fangohr, Hans Giewekemeyer, Klaus Hunter, Mark S. Karnevskiy, Mikhail Kirian, Richard A. Kirkwood, Henry Kim, Yoonhee Koliyadu, Jayanath Lange, Holger Letrun, Romain Lübke, Jannik Mall, Abhishek Michelat, Thomas Morgan, Andrew J. Roth, Nils Samanta, Amit K. Sato, Tokushi Shen, Zhou Sikorski, Marcin Schulz, Florian Spence, John C. H. Vagovic, Patrik Wollweber, Tamme Worbs, Lena Xavier, P. Lourdu Yefanov, Oleksandr Maia, Filipe R. N. C. Horke, Daniel A. Küpper, Jochen Loh, N. Duane Mancuso, Adrian P. Chapman, Henry N. Ayyer, Kartik IUCrJ Research Papers One of the outstanding analytical problems in X-ray single-particle imaging (SPI) is the classification of structural heterogeneity, which is especially difficult given the low signal-to-noise ratios of individual patterns and the fact that even identical objects can yield patterns that vary greatly when orientation is taken into consideration. Proposed here are two methods which explicitly account for this orientation-induced variation and can robustly determine the structural landscape of a sample ensemble. The first, termed common-line principal component analysis (PCA), provides a rough classification which is essentially parameter free and can be run automatically on any SPI dataset. The second method, utilizing variation auto-encoders (VAEs), can generate 3D structures of the objects at any point in the structural landscape. Both these methods are implemented in combination with the noise-tolerant expand–maximize–compress (EMC) algorithm and its utility is demonstrated by applying it to an experimental dataset from gold nanoparticles with only a few thousand photons per pattern. Both discrete structural classes and continuous deformations are recovered. These developments diverge from previous approaches of extracting reproducible subsets of patterns from a dataset and open up the possibility of moving beyond the study of homogeneous sample sets to addressing open questions on topics such as nanocrystal growth and dynamics, as well as phase transitions which have not been externally triggered. International Union of Crystallography 2022-01-11 /pmc/articles/PMC8895023/ /pubmed/35371510 http://dx.doi.org/10.1107/S2052252521012707 Text en © Yulong Zhuang et al. 2022 https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution (CC-BY) Licence, which permits unrestricted use, distribution, and reproduction in any medium, provided the original authors and source are cited. |
spellingShingle | Research Papers Zhuang, Yulong Awel, Salah Barty, Anton Bean, Richard Bielecki, Johan Bergemann, Martin Daurer, Benedikt J. Ekeberg, Tomas Estillore, Armando D. Fangohr, Hans Giewekemeyer, Klaus Hunter, Mark S. Karnevskiy, Mikhail Kirian, Richard A. Kirkwood, Henry Kim, Yoonhee Koliyadu, Jayanath Lange, Holger Letrun, Romain Lübke, Jannik Mall, Abhishek Michelat, Thomas Morgan, Andrew J. Roth, Nils Samanta, Amit K. Sato, Tokushi Shen, Zhou Sikorski, Marcin Schulz, Florian Spence, John C. H. Vagovic, Patrik Wollweber, Tamme Worbs, Lena Xavier, P. Lourdu Yefanov, Oleksandr Maia, Filipe R. N. C. Horke, Daniel A. Küpper, Jochen Loh, N. Duane Mancuso, Adrian P. Chapman, Henry N. Ayyer, Kartik Unsupervised learning approaches to characterizing heterogeneous samples using X-ray single-particle imaging |
title | Unsupervised learning approaches to characterizing heterogeneous samples using X-ray single-particle imaging |
title_full | Unsupervised learning approaches to characterizing heterogeneous samples using X-ray single-particle imaging |
title_fullStr | Unsupervised learning approaches to characterizing heterogeneous samples using X-ray single-particle imaging |
title_full_unstemmed | Unsupervised learning approaches to characterizing heterogeneous samples using X-ray single-particle imaging |
title_short | Unsupervised learning approaches to characterizing heterogeneous samples using X-ray single-particle imaging |
title_sort | unsupervised learning approaches to characterizing heterogeneous samples using x-ray single-particle imaging |
topic | Research Papers |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8895023/ https://www.ncbi.nlm.nih.gov/pubmed/35371510 http://dx.doi.org/10.1107/S2052252521012707 |
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