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Combining imaging flow cytometry and machine learning for high-throughput schistocyte quantification: A SVM classifier development and external validation cohort

BACKGROUND: Schistocyte counts are a cornerstone of the diagnosis of thrombotic microangiopathy syndrome (TMA). Their manual quantification is complex and alternative automated methods suffer from pitfalls that limit their use. We report a method combining imaging flow cytometry (IFC) and artificial...

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Autores principales: Demagny, Julien, Roussel, Camille, Le Guyader, Maïlys, Guiheneuf, Eric, Harrivel, Véronique, Boyer, Thomas, Diouf, Momar, Dussiot, Michaël, Demont, Yohann, Garçon, Loïc
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9404284/
https://www.ncbi.nlm.nih.gov/pubmed/35986949
http://dx.doi.org/10.1016/j.ebiom.2022.104209
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author Demagny, Julien
Roussel, Camille
Le Guyader, Maïlys
Guiheneuf, Eric
Harrivel, Véronique
Boyer, Thomas
Diouf, Momar
Dussiot, Michaël
Demont, Yohann
Garçon, Loïc
author_facet Demagny, Julien
Roussel, Camille
Le Guyader, Maïlys
Guiheneuf, Eric
Harrivel, Véronique
Boyer, Thomas
Diouf, Momar
Dussiot, Michaël
Demont, Yohann
Garçon, Loïc
author_sort Demagny, Julien
collection PubMed
description BACKGROUND: Schistocyte counts are a cornerstone of the diagnosis of thrombotic microangiopathy syndrome (TMA). Their manual quantification is complex and alternative automated methods suffer from pitfalls that limit their use. We report a method combining imaging flow cytometry (IFC) and artificial intelligence for the direct label-free and operator-independent quantification of schistocytes in whole blood. METHODS: We used 135,045 IFC images from blood acquisition among 14 patients to extract 188 features with IDEAS® software and 128 features from a convolutional neural network (CNN) with Keras framework in order to train a support vector machine (SVM) blood elements’ classifier used for schistocytes quantification. FINDING: Keras features showed better accuracy (94.03%, CI: 93.75-94.31%) than ideas features (91.54%, CI: 91.21-91.87%) in recognising whole-blood elements, and together they showed the best accuracy (95.64%, CI: 95.39-95.88%). We obtained an excellent correlation (0.93, CI: 0.90-0.96) between three haematologists and our method on a cohort of 102 patient samples. All patients with schistocytosis (>1% schistocytes) were detected with excellent specificity (91.3%, CI: 82.0-96.7%) and sensitivity (100%, CI: 89.4-100.0%). We confirmed these results with a similar specificity (91.1%, CI: 78.8-97.5%) and sensitivity (100%, CI: 88.1-100.0%) on a validation cohort (n=74) analysed in an independent healthcare centre. Simultaneous analysis of 16 samples in both study centres showed a very good correlation between the 2 imaging flow cytometers (Y=1.001x). INTERPRETATION: We demonstrate that IFC can represent a reliable tool for operator-independent schistocyte quantification with no pre-analytical processing which is of most importance in emergency situations such as TMA. FUNDING: None.
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spelling pubmed-94042842022-08-26 Combining imaging flow cytometry and machine learning for high-throughput schistocyte quantification: A SVM classifier development and external validation cohort Demagny, Julien Roussel, Camille Le Guyader, Maïlys Guiheneuf, Eric Harrivel, Véronique Boyer, Thomas Diouf, Momar Dussiot, Michaël Demont, Yohann Garçon, Loïc eBioMedicine Articles BACKGROUND: Schistocyte counts are a cornerstone of the diagnosis of thrombotic microangiopathy syndrome (TMA). Their manual quantification is complex and alternative automated methods suffer from pitfalls that limit their use. We report a method combining imaging flow cytometry (IFC) and artificial intelligence for the direct label-free and operator-independent quantification of schistocytes in whole blood. METHODS: We used 135,045 IFC images from blood acquisition among 14 patients to extract 188 features with IDEAS® software and 128 features from a convolutional neural network (CNN) with Keras framework in order to train a support vector machine (SVM) blood elements’ classifier used for schistocytes quantification. FINDING: Keras features showed better accuracy (94.03%, CI: 93.75-94.31%) than ideas features (91.54%, CI: 91.21-91.87%) in recognising whole-blood elements, and together they showed the best accuracy (95.64%, CI: 95.39-95.88%). We obtained an excellent correlation (0.93, CI: 0.90-0.96) between three haematologists and our method on a cohort of 102 patient samples. All patients with schistocytosis (>1% schistocytes) were detected with excellent specificity (91.3%, CI: 82.0-96.7%) and sensitivity (100%, CI: 89.4-100.0%). We confirmed these results with a similar specificity (91.1%, CI: 78.8-97.5%) and sensitivity (100%, CI: 88.1-100.0%) on a validation cohort (n=74) analysed in an independent healthcare centre. Simultaneous analysis of 16 samples in both study centres showed a very good correlation between the 2 imaging flow cytometers (Y=1.001x). INTERPRETATION: We demonstrate that IFC can represent a reliable tool for operator-independent schistocyte quantification with no pre-analytical processing which is of most importance in emergency situations such as TMA. FUNDING: None. Elsevier 2022-08-17 /pmc/articles/PMC9404284/ /pubmed/35986949 http://dx.doi.org/10.1016/j.ebiom.2022.104209 Text en © 2022 The Author(s) https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Articles
Demagny, Julien
Roussel, Camille
Le Guyader, Maïlys
Guiheneuf, Eric
Harrivel, Véronique
Boyer, Thomas
Diouf, Momar
Dussiot, Michaël
Demont, Yohann
Garçon, Loïc
Combining imaging flow cytometry and machine learning for high-throughput schistocyte quantification: A SVM classifier development and external validation cohort
title Combining imaging flow cytometry and machine learning for high-throughput schistocyte quantification: A SVM classifier development and external validation cohort
title_full Combining imaging flow cytometry and machine learning for high-throughput schistocyte quantification: A SVM classifier development and external validation cohort
title_fullStr Combining imaging flow cytometry and machine learning for high-throughput schistocyte quantification: A SVM classifier development and external validation cohort
title_full_unstemmed Combining imaging flow cytometry and machine learning for high-throughput schistocyte quantification: A SVM classifier development and external validation cohort
title_short Combining imaging flow cytometry and machine learning for high-throughput schistocyte quantification: A SVM classifier development and external validation cohort
title_sort combining imaging flow cytometry and machine learning for high-throughput schistocyte quantification: a svm classifier development and external validation cohort
topic Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9404284/
https://www.ncbi.nlm.nih.gov/pubmed/35986949
http://dx.doi.org/10.1016/j.ebiom.2022.104209
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