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Identifying cancer-associated leukocyte profiles using high-resolution flow cytometry screening and machine learning

BACKGROUND: Machine learning (ML) is a valuable tool with the potential to aid clinical decision making. Adoption of ML to this end requires data that reliably correlates with the clinical outcome of interest; the advantage of ML is that it can model these correlations from complex multiparameter da...

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Autores principales: Simon Davis, David A., Ritchie, Melissa, Hammill, Dillon, Garrett, Jessica, Slater, Robert O., Otoo, Naomi, Orlov, Anna, Gosling, Katharine, Price, Jason, Yip, Desmond, Jung, Kylie, Syed, Farhan M., Atmosukarto, Ines I., Quah, Ben J. C.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10435879/
https://www.ncbi.nlm.nih.gov/pubmed/37600768
http://dx.doi.org/10.3389/fimmu.2023.1211064
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author Simon Davis, David A.
Ritchie, Melissa
Hammill, Dillon
Garrett, Jessica
Slater, Robert O.
Otoo, Naomi
Orlov, Anna
Gosling, Katharine
Price, Jason
Yip, Desmond
Jung, Kylie
Syed, Farhan M.
Atmosukarto, Ines I.
Quah, Ben J. C.
author_facet Simon Davis, David A.
Ritchie, Melissa
Hammill, Dillon
Garrett, Jessica
Slater, Robert O.
Otoo, Naomi
Orlov, Anna
Gosling, Katharine
Price, Jason
Yip, Desmond
Jung, Kylie
Syed, Farhan M.
Atmosukarto, Ines I.
Quah, Ben J. C.
author_sort Simon Davis, David A.
collection PubMed
description BACKGROUND: Machine learning (ML) is a valuable tool with the potential to aid clinical decision making. Adoption of ML to this end requires data that reliably correlates with the clinical outcome of interest; the advantage of ML is that it can model these correlations from complex multiparameter data sets that can be difficult to interpret conventionally. While currently available clinical data can be used in ML for this purpose, there exists the potential to discover new “biomarkers” that will enhance the effectiveness of ML in clinical decision making. Since the interaction of the immune system and cancer is a hallmark of tumor establishment and progression, one potential area for cancer biomarker discovery is through the investigation of cancer-related immune cell signatures. Hence, we hypothesize that blood immune cell signatures can act as a biomarker for cancer progression. METHODS: To probe this, we have developed and tested a multiparameter cell-surface marker screening pipeline, using flow cytometry to obtain high-resolution systemic leukocyte population profiles that correlate with detection and characterization of several cancers in murine syngeneic tumor models. RESULTS: We discovered a signature of several blood leukocyte subsets, the most notable of which were monocyte subsets, that could be used to train CATboost ML models to predict the presence and type of cancer present in the animals. CONCLUSIONS: Our findings highlight the potential utility of a screening approach to identify robust leukocyte biomarkers for cancer detection and characterization. This pipeline can easily be adapted to screen for cancer specific leukocyte markers from the blood of cancer patient.
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spelling pubmed-104358792023-08-19 Identifying cancer-associated leukocyte profiles using high-resolution flow cytometry screening and machine learning Simon Davis, David A. Ritchie, Melissa Hammill, Dillon Garrett, Jessica Slater, Robert O. Otoo, Naomi Orlov, Anna Gosling, Katharine Price, Jason Yip, Desmond Jung, Kylie Syed, Farhan M. Atmosukarto, Ines I. Quah, Ben J. C. Front Immunol Immunology BACKGROUND: Machine learning (ML) is a valuable tool with the potential to aid clinical decision making. Adoption of ML to this end requires data that reliably correlates with the clinical outcome of interest; the advantage of ML is that it can model these correlations from complex multiparameter data sets that can be difficult to interpret conventionally. While currently available clinical data can be used in ML for this purpose, there exists the potential to discover new “biomarkers” that will enhance the effectiveness of ML in clinical decision making. Since the interaction of the immune system and cancer is a hallmark of tumor establishment and progression, one potential area for cancer biomarker discovery is through the investigation of cancer-related immune cell signatures. Hence, we hypothesize that blood immune cell signatures can act as a biomarker for cancer progression. METHODS: To probe this, we have developed and tested a multiparameter cell-surface marker screening pipeline, using flow cytometry to obtain high-resolution systemic leukocyte population profiles that correlate with detection and characterization of several cancers in murine syngeneic tumor models. RESULTS: We discovered a signature of several blood leukocyte subsets, the most notable of which were monocyte subsets, that could be used to train CATboost ML models to predict the presence and type of cancer present in the animals. CONCLUSIONS: Our findings highlight the potential utility of a screening approach to identify robust leukocyte biomarkers for cancer detection and characterization. This pipeline can easily be adapted to screen for cancer specific leukocyte markers from the blood of cancer patient. Frontiers Media S.A. 2023-08-03 /pmc/articles/PMC10435879/ /pubmed/37600768 http://dx.doi.org/10.3389/fimmu.2023.1211064 Text en Copyright © 2023 Simon Davis, Ritchie, Hammill, Garrett, Slater, Otoo, Orlov, Gosling, Price, Yip, Jung, Syed, Atmosukarto and Quah https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Immunology
Simon Davis, David A.
Ritchie, Melissa
Hammill, Dillon
Garrett, Jessica
Slater, Robert O.
Otoo, Naomi
Orlov, Anna
Gosling, Katharine
Price, Jason
Yip, Desmond
Jung, Kylie
Syed, Farhan M.
Atmosukarto, Ines I.
Quah, Ben J. C.
Identifying cancer-associated leukocyte profiles using high-resolution flow cytometry screening and machine learning
title Identifying cancer-associated leukocyte profiles using high-resolution flow cytometry screening and machine learning
title_full Identifying cancer-associated leukocyte profiles using high-resolution flow cytometry screening and machine learning
title_fullStr Identifying cancer-associated leukocyte profiles using high-resolution flow cytometry screening and machine learning
title_full_unstemmed Identifying cancer-associated leukocyte profiles using high-resolution flow cytometry screening and machine learning
title_short Identifying cancer-associated leukocyte profiles using high-resolution flow cytometry screening and machine learning
title_sort identifying cancer-associated leukocyte profiles using high-resolution flow cytometry screening and machine learning
topic Immunology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10435879/
https://www.ncbi.nlm.nih.gov/pubmed/37600768
http://dx.doi.org/10.3389/fimmu.2023.1211064
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