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Machine learning identifies a profile of inadequate responder to methotrexate in rheumatoid arthritis

OBJECTIVES: Around 30% of patients with RA have an inadequate response to MTX. We aimed to use routine clinical and biological data to build machine learning models predicting EULAR inadequate response to MTX and to identify simple predictive biomarkers. METHODS: Models were trained on RA patients f...

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Autores principales: Duquesne, Julien, Bouget, Vincent, Cournède, Paul Henry, Fautrel, Bruno, Guillemin, Francis, de Jong, Pascal H P, Heutz, Judith W, Verstappen, Marloes, van der Helm-van Mil, Annette H M, Mariette, Xavier, Bitoun, Samuel
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10321123/
https://www.ncbi.nlm.nih.gov/pubmed/36416134
http://dx.doi.org/10.1093/rheumatology/keac645
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author Duquesne, Julien
Bouget, Vincent
Cournède, Paul Henry
Fautrel, Bruno
Guillemin, Francis
de Jong, Pascal H P
Heutz, Judith W
Verstappen, Marloes
van der Helm-van Mil, Annette H M
Mariette, Xavier
Bitoun, Samuel
author_facet Duquesne, Julien
Bouget, Vincent
Cournède, Paul Henry
Fautrel, Bruno
Guillemin, Francis
de Jong, Pascal H P
Heutz, Judith W
Verstappen, Marloes
van der Helm-van Mil, Annette H M
Mariette, Xavier
Bitoun, Samuel
author_sort Duquesne, Julien
collection PubMed
description OBJECTIVES: Around 30% of patients with RA have an inadequate response to MTX. We aimed to use routine clinical and biological data to build machine learning models predicting EULAR inadequate response to MTX and to identify simple predictive biomarkers. METHODS: Models were trained on RA patients fulfilling the 2010 ACR/EULAR criteria from the ESPOIR and Leiden EAC cohorts to predict the EULAR response at 9 months (± 6 months). Several models were compared on the training set using the AUROC. The best model was evaluated on an external validation cohort (tREACH). The model's predictions were explained using Shapley values to extract a biomarker of inadequate response. RESULTS: We included 493 therapeutic sequences from ESPOIR, 239 from EAC and 138 from tREACH. The model selected DAS28, Lymphocytes, Creatininemia, Leucocytes, AST, ALT, swollen joint count and corticosteroid co-treatment as predictors. The model reached an AUROC of 0.72 [95% CI (0.63, 0.80)] on the external validation set, where 70% of patients were responders to MTX. Patients predicted as inadequate responders had only 38% [95% CI (20%, 58%)] chance to respond and using the algorithm to decide to initiate MTX would decrease inadequate-response rate from 30% to 23% [95% CI: (17%, 29%)]. A biomarker was identified in patients with moderate or high activity (DAS28 > 3.2): patients with a lymphocyte count superior to 2000 cells/mm(3) are significantly less likely to respond. CONCLUSION: Our study highlights the usefulness of machine learning in unveiling subgroups of inadequate responders to MTX to guide new therapeutic strategies. Further work is needed to validate this approach.
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spelling pubmed-103211232023-07-06 Machine learning identifies a profile of inadequate responder to methotrexate in rheumatoid arthritis Duquesne, Julien Bouget, Vincent Cournède, Paul Henry Fautrel, Bruno Guillemin, Francis de Jong, Pascal H P Heutz, Judith W Verstappen, Marloes van der Helm-van Mil, Annette H M Mariette, Xavier Bitoun, Samuel Rheumatology (Oxford) Clinical Science OBJECTIVES: Around 30% of patients with RA have an inadequate response to MTX. We aimed to use routine clinical and biological data to build machine learning models predicting EULAR inadequate response to MTX and to identify simple predictive biomarkers. METHODS: Models were trained on RA patients fulfilling the 2010 ACR/EULAR criteria from the ESPOIR and Leiden EAC cohorts to predict the EULAR response at 9 months (± 6 months). Several models were compared on the training set using the AUROC. The best model was evaluated on an external validation cohort (tREACH). The model's predictions were explained using Shapley values to extract a biomarker of inadequate response. RESULTS: We included 493 therapeutic sequences from ESPOIR, 239 from EAC and 138 from tREACH. The model selected DAS28, Lymphocytes, Creatininemia, Leucocytes, AST, ALT, swollen joint count and corticosteroid co-treatment as predictors. The model reached an AUROC of 0.72 [95% CI (0.63, 0.80)] on the external validation set, where 70% of patients were responders to MTX. Patients predicted as inadequate responders had only 38% [95% CI (20%, 58%)] chance to respond and using the algorithm to decide to initiate MTX would decrease inadequate-response rate from 30% to 23% [95% CI: (17%, 29%)]. A biomarker was identified in patients with moderate or high activity (DAS28 > 3.2): patients with a lymphocyte count superior to 2000 cells/mm(3) are significantly less likely to respond. CONCLUSION: Our study highlights the usefulness of machine learning in unveiling subgroups of inadequate responders to MTX to guide new therapeutic strategies. Further work is needed to validate this approach. Oxford University Press 2022-11-23 /pmc/articles/PMC10321123/ /pubmed/36416134 http://dx.doi.org/10.1093/rheumatology/keac645 Text en © The Author(s) 2022. Published by Oxford University Press on behalf of the British Society for Rheumatology. https://creativecommons.org/licenses/by-nc/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution-NonCommercial License (https://creativecommons.org/licenses/by-nc/4.0/), which permits non-commercial re-use, distribution, and reproduction in any medium, provided the original work is properly cited. For commercial re-use, please contact journals.permissions@oup.com
spellingShingle Clinical Science
Duquesne, Julien
Bouget, Vincent
Cournède, Paul Henry
Fautrel, Bruno
Guillemin, Francis
de Jong, Pascal H P
Heutz, Judith W
Verstappen, Marloes
van der Helm-van Mil, Annette H M
Mariette, Xavier
Bitoun, Samuel
Machine learning identifies a profile of inadequate responder to methotrexate in rheumatoid arthritis
title Machine learning identifies a profile of inadequate responder to methotrexate in rheumatoid arthritis
title_full Machine learning identifies a profile of inadequate responder to methotrexate in rheumatoid arthritis
title_fullStr Machine learning identifies a profile of inadequate responder to methotrexate in rheumatoid arthritis
title_full_unstemmed Machine learning identifies a profile of inadequate responder to methotrexate in rheumatoid arthritis
title_short Machine learning identifies a profile of inadequate responder to methotrexate in rheumatoid arthritis
title_sort machine learning identifies a profile of inadequate responder to methotrexate in rheumatoid arthritis
topic Clinical Science
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10321123/
https://www.ncbi.nlm.nih.gov/pubmed/36416134
http://dx.doi.org/10.1093/rheumatology/keac645
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