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Machine learning links T cell function and spatial localization to neoadjuvant immunotherapy and clinical outcome in pancreatic cancer

Tumor molecular datasets are becoming increasingly complex, making it nearly impossible for humans alone to effectively analyze them. Here, we demonstrate the power of using machine learning to analyze a single-cell, spatial, and highly multiplexed proteomic dataset from human pancreatic cancer and...

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Autores principales: Blise, Katie E., Sivagnanam, Shamilene, Betts, Courtney B., Betre, Konjit, Kirchberger, Nell, Tate, Benjamin, Furth, Emma E., Dias Costa, Andressa, Nowak, Jonathan A., Wolpin, Brian M., Vonderheide, Robert H., Goecks, Jeremy, Coussens, Lisa M., Byrne, Katelyn T.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cold Spring Harbor Laboratory 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10634700/
https://www.ncbi.nlm.nih.gov/pubmed/37961410
http://dx.doi.org/10.1101/2023.10.20.563335
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author Blise, Katie E.
Sivagnanam, Shamilene
Betts, Courtney B.
Betre, Konjit
Kirchberger, Nell
Tate, Benjamin
Furth, Emma E.
Dias Costa, Andressa
Nowak, Jonathan A.
Wolpin, Brian M.
Vonderheide, Robert H.
Goecks, Jeremy
Coussens, Lisa M.
Byrne, Katelyn T.
author_facet Blise, Katie E.
Sivagnanam, Shamilene
Betts, Courtney B.
Betre, Konjit
Kirchberger, Nell
Tate, Benjamin
Furth, Emma E.
Dias Costa, Andressa
Nowak, Jonathan A.
Wolpin, Brian M.
Vonderheide, Robert H.
Goecks, Jeremy
Coussens, Lisa M.
Byrne, Katelyn T.
author_sort Blise, Katie E.
collection PubMed
description Tumor molecular datasets are becoming increasingly complex, making it nearly impossible for humans alone to effectively analyze them. Here, we demonstrate the power of using machine learning to analyze a single-cell, spatial, and highly multiplexed proteomic dataset from human pancreatic cancer and reveal underlying biological mechanisms that may contribute to clinical outcome. A novel multiplex immunohistochemistry antibody panel was used to audit T cell functionality and spatial localization in resected tumors from treatment-naive patients with localized pancreatic ductal adenocarcinoma (PDAC) compared to a second cohort of patients treated with neoadjuvant agonistic CD40 (αCD40) monoclonal antibody therapy. In total, nearly 2.5 million cells from 306 tissue regions collected from 29 patients across both treatment cohorts were assayed, and more than 1,000 tumor microenvironment (TME) features were quantified. We then trained machine learning models to accurately predict αCD40 treatment status and disease-free survival (DFS) following αCD40 therapy based upon TME features. Through downstream interpretation of the machine learning models’ predictions, we found αCD40 therapy to reduce canonical aspects of T cell exhaustion within the TME, as compared to treatment-naive TMEs. Using automated clustering approaches, we found improved DFS following αCD40 therapy to correlate with the increased presence of CD44(+) CD4(+) Th1 cells located specifically within cellular spatial neighborhoods characterized by increased T cell proliferation, antigen-experience, and cytotoxicity in immune aggregates. Overall, our results demonstrate the utility of machine learning in molecular cancer immunology applications, highlight the impact of αCD40 therapy on T cells within the TME, and identify potential candidate biomarkers of DFS for αCD40-treated patients with PDAC.
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spelling pubmed-106347002023-11-13 Machine learning links T cell function and spatial localization to neoadjuvant immunotherapy and clinical outcome in pancreatic cancer Blise, Katie E. Sivagnanam, Shamilene Betts, Courtney B. Betre, Konjit Kirchberger, Nell Tate, Benjamin Furth, Emma E. Dias Costa, Andressa Nowak, Jonathan A. Wolpin, Brian M. Vonderheide, Robert H. Goecks, Jeremy Coussens, Lisa M. Byrne, Katelyn T. bioRxiv Article Tumor molecular datasets are becoming increasingly complex, making it nearly impossible for humans alone to effectively analyze them. Here, we demonstrate the power of using machine learning to analyze a single-cell, spatial, and highly multiplexed proteomic dataset from human pancreatic cancer and reveal underlying biological mechanisms that may contribute to clinical outcome. A novel multiplex immunohistochemistry antibody panel was used to audit T cell functionality and spatial localization in resected tumors from treatment-naive patients with localized pancreatic ductal adenocarcinoma (PDAC) compared to a second cohort of patients treated with neoadjuvant agonistic CD40 (αCD40) monoclonal antibody therapy. In total, nearly 2.5 million cells from 306 tissue regions collected from 29 patients across both treatment cohorts were assayed, and more than 1,000 tumor microenvironment (TME) features were quantified. We then trained machine learning models to accurately predict αCD40 treatment status and disease-free survival (DFS) following αCD40 therapy based upon TME features. Through downstream interpretation of the machine learning models’ predictions, we found αCD40 therapy to reduce canonical aspects of T cell exhaustion within the TME, as compared to treatment-naive TMEs. Using automated clustering approaches, we found improved DFS following αCD40 therapy to correlate with the increased presence of CD44(+) CD4(+) Th1 cells located specifically within cellular spatial neighborhoods characterized by increased T cell proliferation, antigen-experience, and cytotoxicity in immune aggregates. Overall, our results demonstrate the utility of machine learning in molecular cancer immunology applications, highlight the impact of αCD40 therapy on T cells within the TME, and identify potential candidate biomarkers of DFS for αCD40-treated patients with PDAC. Cold Spring Harbor Laboratory 2023-10-23 /pmc/articles/PMC10634700/ /pubmed/37961410 http://dx.doi.org/10.1101/2023.10.20.563335 Text en https://creativecommons.org/licenses/by/4.0/This work is licensed under a Creative Commons Attribution 4.0 International License (https://creativecommons.org/licenses/by/4.0/) , which allows reusers to distribute, remix, adapt, and build upon the material in any medium or format, so long as attribution is given to the creator. The license allows for commercial use.
spellingShingle Article
Blise, Katie E.
Sivagnanam, Shamilene
Betts, Courtney B.
Betre, Konjit
Kirchberger, Nell
Tate, Benjamin
Furth, Emma E.
Dias Costa, Andressa
Nowak, Jonathan A.
Wolpin, Brian M.
Vonderheide, Robert H.
Goecks, Jeremy
Coussens, Lisa M.
Byrne, Katelyn T.
Machine learning links T cell function and spatial localization to neoadjuvant immunotherapy and clinical outcome in pancreatic cancer
title Machine learning links T cell function and spatial localization to neoadjuvant immunotherapy and clinical outcome in pancreatic cancer
title_full Machine learning links T cell function and spatial localization to neoadjuvant immunotherapy and clinical outcome in pancreatic cancer
title_fullStr Machine learning links T cell function and spatial localization to neoadjuvant immunotherapy and clinical outcome in pancreatic cancer
title_full_unstemmed Machine learning links T cell function and spatial localization to neoadjuvant immunotherapy and clinical outcome in pancreatic cancer
title_short Machine learning links T cell function and spatial localization to neoadjuvant immunotherapy and clinical outcome in pancreatic cancer
title_sort machine learning links t cell function and spatial localization to neoadjuvant immunotherapy and clinical outcome in pancreatic cancer
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10634700/
https://www.ncbi.nlm.nih.gov/pubmed/37961410
http://dx.doi.org/10.1101/2023.10.20.563335
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