Matches in SemOpenAlex for { <https://semopenalex.org/work/W4386414611> ?p ?o ?g. }
- W4386414611 endingPage "104769" @default.
- W4386414611 startingPage "104769" @default.
- W4386414611 abstract "Efficient biomarker discovery and clinical translation depend on the fast and accurate analytical output from crucial technologies such as multiplex imaging. However, reliable cell classification often requires extensive annotations. Label-efficient strategies are urgently needed to reveal diverse cell distribution and spatial interactions in large-scale multiplex datasets.This study proposed Self-supervised Learning for Antigen Detection (SANDI) for accurate cell phenotyping while mitigating the annotation burden. The model first learns intrinsic pairwise similarities in unlabelled cell images, followed by a classification step to map learnt features to cell labels using a small set of annotated references. We acquired four multiplex immunohistochemistry datasets and one imaging mass cytometry dataset, comprising 2825 to 15,258 single-cell images to train and test the model.With 1% annotations (18-114 cells), SANDI achieved weighted F1-scores ranging from 0.82 to 0.98 across the five datasets, which was comparable to the fully supervised classifier trained on 1828-11,459 annotated cells (-0.002 to -0.053 of averaged weighted F1-score, Wilcoxon rank-sum test, P = 0.31). Leveraging the immune checkpoint markers stained in ovarian cancer slides, SANDI-based cell identification reveals spatial expulsion between PD1-expressing T helper cells and T regulatory cells, suggesting an interplay between PD1 expression and T regulatory cell-mediated immunosuppression.By striking a fine balance between minimal expert guidance and the power of deep learning to learn similarity within abundant data, SANDI presents new opportunities for efficient, large-scale learning for histology multiplex imaging data.This study was funded by the Royal Marsden/ICR National Institute of Health Research Biomedical Research Centre." @default.
- W4386414611 created "2023-09-05" @default.
- W4386414611 creator A5001737873 @default.
- W4386414611 creator A5001939997 @default.
- W4386414611 creator A5011340913 @default.
- W4386414611 creator A5011555338 @default.
- W4386414611 creator A5017089200 @default.
- W4386414611 creator A5021363349 @default.
- W4386414611 creator A5033775457 @default.
- W4386414611 creator A5041348003 @default.
- W4386414611 creator A5043284368 @default.
- W4386414611 creator A5045712447 @default.
- W4386414611 creator A5053962426 @default.
- W4386414611 creator A5067431043 @default.
- W4386414611 creator A5068293508 @default.
- W4386414611 creator A5068505111 @default.
- W4386414611 creator A5079383798 @default.
- W4386414611 creator A5089455737 @default.
- W4386414611 date "2023-09-01" @default.
- W4386414611 modified "2023-10-18" @default.
- W4386414611 title "Self-supervised deep learning for highly efficient spatial immunophenotyping" @default.
- W4386414611 cites W1915043848 @default.
- W4386414611 cites W2014789164 @default.
- W4386414611 cites W2050490796 @default.
- W4386414611 cites W2086335524 @default.
- W4386414611 cites W2153635508 @default.
- W4386414611 cites W2167460663 @default.
- W4386414611 cites W2312404985 @default.
- W4386414611 cites W2618943818 @default.
- W4386414611 cites W2782485997 @default.
- W4386414611 cites W2801309958 @default.
- W4386414611 cites W2890156321 @default.
- W4386414611 cites W2900936384 @default.
- W4386414611 cites W2913671661 @default.
- W4386414611 cites W2949238013 @default.
- W4386414611 cites W2952481429 @default.
- W4386414611 cites W2965481926 @default.
- W4386414611 cites W2972222924 @default.
- W4386414611 cites W3017374234 @default.
- W4386414611 cites W3031256816 @default.
- W4386414611 cites W3046129945 @default.
- W4386414611 cites W3128210037 @default.
- W4386414611 cites W3200707343 @default.
- W4386414611 cites W3214596602 @default.
- W4386414611 cites W4220865815 @default.
- W4386414611 cites W4226075589 @default.
- W4386414611 cites W4287510106 @default.
- W4386414611 cites W4291023040 @default.
- W4386414611 cites W4295350464 @default.
- W4386414611 cites W4296036534 @default.
- W4386414611 doi "https://doi.org/10.1016/j.ebiom.2023.104769" @default.
- W4386414611 hasPubMedId "https://pubmed.ncbi.nlm.nih.gov/37672979" @default.
- W4386414611 hasPublicationYear "2023" @default.
- W4386414611 type Work @default.
- W4386414611 citedByCount "0" @default.
- W4386414611 crossrefType "journal-article" @default.
- W4386414611 hasAuthorship W4386414611A5001737873 @default.
- W4386414611 hasAuthorship W4386414611A5001939997 @default.
- W4386414611 hasAuthorship W4386414611A5011340913 @default.
- W4386414611 hasAuthorship W4386414611A5011555338 @default.
- W4386414611 hasAuthorship W4386414611A5017089200 @default.
- W4386414611 hasAuthorship W4386414611A5021363349 @default.
- W4386414611 hasAuthorship W4386414611A5033775457 @default.
- W4386414611 hasAuthorship W4386414611A5041348003 @default.
- W4386414611 hasAuthorship W4386414611A5043284368 @default.
- W4386414611 hasAuthorship W4386414611A5045712447 @default.
- W4386414611 hasAuthorship W4386414611A5053962426 @default.
- W4386414611 hasAuthorship W4386414611A5067431043 @default.
- W4386414611 hasAuthorship W4386414611A5068293508 @default.
- W4386414611 hasAuthorship W4386414611A5068505111 @default.
- W4386414611 hasAuthorship W4386414611A5079383798 @default.
- W4386414611 hasAuthorship W4386414611A5089455737 @default.
- W4386414611 hasConcept C104317684 @default.
- W4386414611 hasConcept C108583219 @default.
- W4386414611 hasConcept C119857082 @default.
- W4386414611 hasConcept C127716648 @default.
- W4386414611 hasConcept C153180895 @default.
- W4386414611 hasConcept C154945302 @default.
- W4386414611 hasConcept C184898388 @default.
- W4386414611 hasConcept C2778015335 @default.
- W4386414611 hasConcept C2781188995 @default.
- W4386414611 hasConcept C41008148 @default.
- W4386414611 hasConcept C55493867 @default.
- W4386414611 hasConcept C60644358 @default.
- W4386414611 hasConcept C70721500 @default.
- W4386414611 hasConcept C86803240 @default.
- W4386414611 hasConceptScore W4386414611C104317684 @default.
- W4386414611 hasConceptScore W4386414611C108583219 @default.
- W4386414611 hasConceptScore W4386414611C119857082 @default.
- W4386414611 hasConceptScore W4386414611C127716648 @default.
- W4386414611 hasConceptScore W4386414611C153180895 @default.
- W4386414611 hasConceptScore W4386414611C154945302 @default.
- W4386414611 hasConceptScore W4386414611C184898388 @default.
- W4386414611 hasConceptScore W4386414611C2778015335 @default.
- W4386414611 hasConceptScore W4386414611C2781188995 @default.
- W4386414611 hasConceptScore W4386414611C41008148 @default.
- W4386414611 hasConceptScore W4386414611C55493867 @default.
- W4386414611 hasConceptScore W4386414611C60644358 @default.