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Deep learning-based annotation transfer ...
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Document type :
Article dans une revue scientifique: Article original
DOI :
10.1021/acs.analchem.0c02726
PMID :
33534548
Permalink :
http://hdl.handle.net/20.500.12210/75034
Title :
Deep learning-based annotation transfer between molecular imaging modalities: an automated workflow for multimodal data integration
Author(s) :
Race, Alan M. [Auteur]
Sutton, Daniel [Auteur]
Hamm, Gregory [Auteur]
Maglennon, Gareth [Auteur]
Morton, Jennifer P. [Auteur]
Strittmatter, Nicole [Auteur]
Campbell, Andrew D. [Auteur]
Sansom, Owen J. [Auteur]
Wang, Yinhai [Auteur]
Barry, Simon T. [Auteur]
Takats, Zoltan [Auteur]
Protéomique, Réponse Inflammatoire, Spectrométrie de Masse (PRISM) - U1192
Goodwin, Richard J. A. [Auteur]
Bunch, Josephine [Auteur]
Journal title :
Analytical Chemistry
Abbreviated title :
Anal. Chem.
Volume number :
93
Pages :
-
Publication date :
2021-02-16
ISSN :
0003-2700
HAL domain(s) :
Sciences du Vivant [q-bio]
English abstract : [en]
An ever-increasing array of imaging technologies are being used in the study of complex biological samples, each of which provides complementary, occasionally overlapping information at different length scales and spatial ...
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An ever-increasing array of imaging technologies are being used in the study of complex biological samples, each of which provides complementary, occasionally overlapping information at different length scales and spatial resolutions. It is important to understand the information provided by one technique in the context of the other to achieve a more holistic overview of such complex samples. One way to achieve this is to use annotations from one modality to investigate additional modalities. For microscopy-based techniques, these annotations could be manually generated using digital pathology software or automatically generated by machine learning (including deep learning) methods. Here, we present a generic method for using annotations from one microscopy modality to extract information from complementary modalities. We also present a fast, general, multimodal registration workflow [evaluated on multiple mass spectrometry imaging (MSI) modalities, matrix-assisted laser desorption/ionization, desorption electrospray ionization, and rapid evaporative ionization mass spectrometry] for automatic alignment of complex data sets, demonstrating an order of magnitude speed-up compared to previously published work. To demonstrate the power of the annotation transfer and multimodal registration workflows, we combine MSI, histological staining (such as hematoxylin and eosin), and deep learning (automatic annotation of histology images) to investigate a pancreatic cancer mouse model. Neoplastic pancreatic tissue regions, which were histologically indistinguishable from one another, were observed to be metabolically different. We demonstrate the use of the proposed methods to better understand tumor heterogeneity and the tumor microenvironment by transferring machine learning results freely between the two modalities.Show less >
Language :
Anglais
Audience :
Internationale
Popular science :
Non
Administrative institution(s) :
INSERM
Université de Lille
Collections :
  • Protéomique, Réponse Inflammatoire, Spectrométrie de Masse (PRISM) - U1192
Submission date :
2022-06-15T13:58:07Z
Université de Lille

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