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In vitro machine learning-based CAR T immunological synapse quality measurements correlate with patient clinical outcomes

The human immune system consists of a highly intelligent network of billions of independent, self-organized cells that interact with each other. Machine learning (ML) is an artificial intelligence (AI) tool that automatically processes huge amounts of image data. Immunotherapies have revolutionized...

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Autores principales: Naghizadeh, Alireza, Tsao, Wei-chung, Hyun Cho, Jong, Xu, Hongye, Mohamed, Mohab, Li, Dali, Xiong, Wei, Metaxas, Dimitri, Ramos, Carlos A., Liu, Dongfang
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8955962/
https://www.ncbi.nlm.nih.gov/pubmed/35303007
http://dx.doi.org/10.1371/journal.pcbi.1009883
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author Naghizadeh, Alireza
Tsao, Wei-chung
Hyun Cho, Jong
Xu, Hongye
Mohamed, Mohab
Li, Dali
Xiong, Wei
Metaxas, Dimitri
Ramos, Carlos A.
Liu, Dongfang
author_facet Naghizadeh, Alireza
Tsao, Wei-chung
Hyun Cho, Jong
Xu, Hongye
Mohamed, Mohab
Li, Dali
Xiong, Wei
Metaxas, Dimitri
Ramos, Carlos A.
Liu, Dongfang
author_sort Naghizadeh, Alireza
collection PubMed
description The human immune system consists of a highly intelligent network of billions of independent, self-organized cells that interact with each other. Machine learning (ML) is an artificial intelligence (AI) tool that automatically processes huge amounts of image data. Immunotherapies have revolutionized the treatment of blood cancer. Specifically, one such therapy involves engineering immune cells to express chimeric antigen receptors (CAR), which combine tumor antigen specificity with immune cell activation in a single receptor. To improve their efficacy and expand their applicability to solid tumors, scientists optimize different CARs with different modifications. However, predicting and ranking the efficacy of different "off-the-shelf" immune products (e.g., CAR or Bispecific T-cell Engager [BiTE]) and selection of clinical responders are challenging in clinical practice. Meanwhile, identifying the optimal CAR construct for a researcher to further develop a potential clinical application is limited by the current, time-consuming, costly, and labor-intensive conventional tools used to evaluate efficacy. Particularly, more than 30 years of immunological synapse (IS) research data demonstrate that T cell efficacy is not only controlled by the specificity and avidity of the tumor antigen and T cell interaction, but also it depends on a collective process, involving multiple adhesion and regulatory molecules, as well as tumor microenvironment, spatially and temporally organized at the IS formed by cytotoxic T lymphocytes (CTL) and natural killer (NK) cells. The optimal function of cytotoxic lymphocytes (including CTL and NK) depends on IS quality. Recognizing the inadequacy of conventional tools and the importance of IS in immune cell functions, we investigate a new strategy for assessing CAR-T efficacy by quantifying CAR IS quality using the glass-support planar lipid bilayer system combined with ML-based data analysis. Previous studies in our group show that CAR-T IS quality correlates with antitumor activities in vitro and in vivo. However, current manually quantified IS quality data analysis is time-consuming and labor-intensive with low accuracy, reproducibility, and repeatability. In this study, we develop a novel ML-based method to quantify thousands of CAR cell IS images with enhanced accuracy and speed. Specifically, we used artificial neural networks (ANN) to incorporate object detection into segmentation. The proposed ANN model extracts the most useful information to differentiate different IS datasets. The network output is flexible and produces bounding boxes, instance segmentation, contour outlines (borders), intensities of the borders, and segmentations without borders. Based on requirements, one or a combination of this information is used in statistical analysis. The ML-based automated algorithm quantified CAR-T IS data correlates with the clinical responder and non-responder treated with Kappa-CAR-T cells directly from patients. The results suggest that CAR cell IS quality can be used as a potential composite biomarker and correlates with antitumor activities in patients, which is sufficiently discriminative to further test the CAR IS quality as a clinical biomarker to predict response to CAR immunotherapy in cancer. For translational research, the method developed here can also provide guidelines for designing and optimizing numerous CAR constructs for potential clinical development. Trial Registration: ClinicalTrials.gov NCT00881920.
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spelling pubmed-89559622022-03-26 In vitro machine learning-based CAR T immunological synapse quality measurements correlate with patient clinical outcomes Naghizadeh, Alireza Tsao, Wei-chung Hyun Cho, Jong Xu, Hongye Mohamed, Mohab Li, Dali Xiong, Wei Metaxas, Dimitri Ramos, Carlos A. Liu, Dongfang PLoS Comput Biol Research Article The human immune system consists of a highly intelligent network of billions of independent, self-organized cells that interact with each other. Machine learning (ML) is an artificial intelligence (AI) tool that automatically processes huge amounts of image data. Immunotherapies have revolutionized the treatment of blood cancer. Specifically, one such therapy involves engineering immune cells to express chimeric antigen receptors (CAR), which combine tumor antigen specificity with immune cell activation in a single receptor. To improve their efficacy and expand their applicability to solid tumors, scientists optimize different CARs with different modifications. However, predicting and ranking the efficacy of different "off-the-shelf" immune products (e.g., CAR or Bispecific T-cell Engager [BiTE]) and selection of clinical responders are challenging in clinical practice. Meanwhile, identifying the optimal CAR construct for a researcher to further develop a potential clinical application is limited by the current, time-consuming, costly, and labor-intensive conventional tools used to evaluate efficacy. Particularly, more than 30 years of immunological synapse (IS) research data demonstrate that T cell efficacy is not only controlled by the specificity and avidity of the tumor antigen and T cell interaction, but also it depends on a collective process, involving multiple adhesion and regulatory molecules, as well as tumor microenvironment, spatially and temporally organized at the IS formed by cytotoxic T lymphocytes (CTL) and natural killer (NK) cells. The optimal function of cytotoxic lymphocytes (including CTL and NK) depends on IS quality. Recognizing the inadequacy of conventional tools and the importance of IS in immune cell functions, we investigate a new strategy for assessing CAR-T efficacy by quantifying CAR IS quality using the glass-support planar lipid bilayer system combined with ML-based data analysis. Previous studies in our group show that CAR-T IS quality correlates with antitumor activities in vitro and in vivo. However, current manually quantified IS quality data analysis is time-consuming and labor-intensive with low accuracy, reproducibility, and repeatability. In this study, we develop a novel ML-based method to quantify thousands of CAR cell IS images with enhanced accuracy and speed. Specifically, we used artificial neural networks (ANN) to incorporate object detection into segmentation. The proposed ANN model extracts the most useful information to differentiate different IS datasets. The network output is flexible and produces bounding boxes, instance segmentation, contour outlines (borders), intensities of the borders, and segmentations without borders. Based on requirements, one or a combination of this information is used in statistical analysis. The ML-based automated algorithm quantified CAR-T IS data correlates with the clinical responder and non-responder treated with Kappa-CAR-T cells directly from patients. The results suggest that CAR cell IS quality can be used as a potential composite biomarker and correlates with antitumor activities in patients, which is sufficiently discriminative to further test the CAR IS quality as a clinical biomarker to predict response to CAR immunotherapy in cancer. For translational research, the method developed here can also provide guidelines for designing and optimizing numerous CAR constructs for potential clinical development. Trial Registration: ClinicalTrials.gov NCT00881920. Public Library of Science 2022-03-18 /pmc/articles/PMC8955962/ /pubmed/35303007 http://dx.doi.org/10.1371/journal.pcbi.1009883 Text en © 2022 Naghizadeh et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Naghizadeh, Alireza
Tsao, Wei-chung
Hyun Cho, Jong
Xu, Hongye
Mohamed, Mohab
Li, Dali
Xiong, Wei
Metaxas, Dimitri
Ramos, Carlos A.
Liu, Dongfang
In vitro machine learning-based CAR T immunological synapse quality measurements correlate with patient clinical outcomes
title In vitro machine learning-based CAR T immunological synapse quality measurements correlate with patient clinical outcomes
title_full In vitro machine learning-based CAR T immunological synapse quality measurements correlate with patient clinical outcomes
title_fullStr In vitro machine learning-based CAR T immunological synapse quality measurements correlate with patient clinical outcomes
title_full_unstemmed In vitro machine learning-based CAR T immunological synapse quality measurements correlate with patient clinical outcomes
title_short In vitro machine learning-based CAR T immunological synapse quality measurements correlate with patient clinical outcomes
title_sort in vitro machine learning-based car t immunological synapse quality measurements correlate with patient clinical outcomes
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8955962/
https://www.ncbi.nlm.nih.gov/pubmed/35303007
http://dx.doi.org/10.1371/journal.pcbi.1009883
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