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Unsupervised learning approaches to characterizing heterogeneous samples using X-ray single-particle imaging

Authors :
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
Luebke, 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
Horke, Daniel A.
Küpper, Jochen
Loh, N. Duane
Mancuso, Adrian P.
Chapman, Henry N.
Ayyer, Kartik
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
Luebke, 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
Horke, Daniel A.
Küpper, Jochen
Loh, N. Duane
Mancuso, Adrian P.
Chapman, Henry N.
Ayyer, Kartik
Publication Year :
2022

Abstract

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-maximizecompress (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.

Details

Database :
OAIster
Notes :
application/pdf, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1337542378
Document Type :
Electronic Resource
Full Text :
https://doi.org/10.1107.S2052252521012707