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Machine Learning for the Identification of a Common Signature for Anti–SSA/Ro 60 Antibody Expression Across Autoimmune Diseases

OBJECTIVE: Anti‐Ro autoantibodies are among the most frequently detected extractable nuclear antigen autoantibodies, mainly associated with primary Sjögren's syndrome (SS), systemic lupus erythematosus (SLE), and undifferentiated connective tissue disease (UCTD). This study was undertaken to de...

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Autores principales: Foulquier, Nathan, Le Dantec, Christelle, Bettacchioli, Eleonore, Jamin, Christophe, Alarcón‐Riquelme, Marta E., Pers, Jacques‐Olivier
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Wiley Periodicals, Inc. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9804576/
https://www.ncbi.nlm.nih.gov/pubmed/35635731
http://dx.doi.org/10.1002/art.42243
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author Foulquier, Nathan
Le Dantec, Christelle
Bettacchioli, Eleonore
Jamin, Christophe
Alarcón‐Riquelme, Marta E.
Pers, Jacques‐Olivier
author_facet Foulquier, Nathan
Le Dantec, Christelle
Bettacchioli, Eleonore
Jamin, Christophe
Alarcón‐Riquelme, Marta E.
Pers, Jacques‐Olivier
author_sort Foulquier, Nathan
collection PubMed
description OBJECTIVE: Anti‐Ro autoantibodies are among the most frequently detected extractable nuclear antigen autoantibodies, mainly associated with primary Sjögren's syndrome (SS), systemic lupus erythematosus (SLE), and undifferentiated connective tissue disease (UCTD). This study was undertaken to determine if there is a common signature for all patients expressing anti–Ro 60 autoantibodies regardless of their disease phenotype. METHODS: Using high‐throughput multiomics data collected from the cross‐sectional cohort in the PRECISE Systemic Autoimmune Diseases (PRECISESADS) study Innovative Medicines Initiative (IMI) project (genetic, epigenomic, and transcriptomic data, combined with flow cytometry data, multiplexed cytokines, classic serology, and clinical data), we used machine learning to assess the integrated molecular profiling of 520 anti–Ro 60+ patients compared to 511 anti–Ro 60– patients with primary SS, patients with SLE, and patients with UCTD, and 279 healthy controls. RESULTS: The selected clinical features for RNA‐Seq, DNA methylation, and genome‐wide association study data allowed for a clear distinction between anti–Ro 60+ and anti–Ro 60– patients. The different features selected using machine learning from the anti–Ro 60+ patients constituted specific signatures when compared to anti–Ro 60– patients and healthy controls. Remarkably, the transcript Z score of 3 genes (ATP10A, MX1, and PARP14), presenting with overexpression associated with hypomethylation and genetic variation and independently identified using the Boruta algorithm, was clearly higher in anti–Ro 60+ patients compared to anti–Ro 60– patients regardless of disease type. Our findings demonstrated that these signatures, enriched in interferon‐stimulated genes, were also found in anti–Ro 60+ patients with rheumatoid arthritis and those with systemic sclerosis and remained stable over time and were not affected by treatment. CONCLUSION: Anti–Ro 60+ patients present with a specific inflammatory signature regardless of their disease type, suggesting that a dual therapeutic approach targeting both Ro‐associated RNAs and anti–Ro 60 autoantibodies should be considered.
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spelling pubmed-98045762023-01-03 Machine Learning for the Identification of a Common Signature for Anti–SSA/Ro 60 Antibody Expression Across Autoimmune Diseases Foulquier, Nathan Le Dantec, Christelle Bettacchioli, Eleonore Jamin, Christophe Alarcón‐Riquelme, Marta E. Pers, Jacques‐Olivier Arthritis Rheumatol Autoimmunity OBJECTIVE: Anti‐Ro autoantibodies are among the most frequently detected extractable nuclear antigen autoantibodies, mainly associated with primary Sjögren's syndrome (SS), systemic lupus erythematosus (SLE), and undifferentiated connective tissue disease (UCTD). This study was undertaken to determine if there is a common signature for all patients expressing anti–Ro 60 autoantibodies regardless of their disease phenotype. METHODS: Using high‐throughput multiomics data collected from the cross‐sectional cohort in the PRECISE Systemic Autoimmune Diseases (PRECISESADS) study Innovative Medicines Initiative (IMI) project (genetic, epigenomic, and transcriptomic data, combined with flow cytometry data, multiplexed cytokines, classic serology, and clinical data), we used machine learning to assess the integrated molecular profiling of 520 anti–Ro 60+ patients compared to 511 anti–Ro 60– patients with primary SS, patients with SLE, and patients with UCTD, and 279 healthy controls. RESULTS: The selected clinical features for RNA‐Seq, DNA methylation, and genome‐wide association study data allowed for a clear distinction between anti–Ro 60+ and anti–Ro 60– patients. The different features selected using machine learning from the anti–Ro 60+ patients constituted specific signatures when compared to anti–Ro 60– patients and healthy controls. Remarkably, the transcript Z score of 3 genes (ATP10A, MX1, and PARP14), presenting with overexpression associated with hypomethylation and genetic variation and independently identified using the Boruta algorithm, was clearly higher in anti–Ro 60+ patients compared to anti–Ro 60– patients regardless of disease type. Our findings demonstrated that these signatures, enriched in interferon‐stimulated genes, were also found in anti–Ro 60+ patients with rheumatoid arthritis and those with systemic sclerosis and remained stable over time and were not affected by treatment. CONCLUSION: Anti–Ro 60+ patients present with a specific inflammatory signature regardless of their disease type, suggesting that a dual therapeutic approach targeting both Ro‐associated RNAs and anti–Ro 60 autoantibodies should be considered. Wiley Periodicals, Inc. 2022-08-25 2022-10 /pmc/articles/PMC9804576/ /pubmed/35635731 http://dx.doi.org/10.1002/art.42243 Text en © 2022 The Authors. Arthritis & Rheumatology published by Wiley Periodicals LLC on behalf of American College of Rheumatology. https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the terms of the http://creativecommons.org/licenses/by-nc-nd/4.0/ (https://creativecommons.org/licenses/by-nc-nd/4.0/) License, which permits use and distribution in any medium, provided the original work is properly cited, the use is non‐commercial and no modifications or adaptations are made.
spellingShingle Autoimmunity
Foulquier, Nathan
Le Dantec, Christelle
Bettacchioli, Eleonore
Jamin, Christophe
Alarcón‐Riquelme, Marta E.
Pers, Jacques‐Olivier
Machine Learning for the Identification of a Common Signature for Anti–SSA/Ro 60 Antibody Expression Across Autoimmune Diseases
title Machine Learning for the Identification of a Common Signature for Anti–SSA/Ro 60 Antibody Expression Across Autoimmune Diseases
title_full Machine Learning for the Identification of a Common Signature for Anti–SSA/Ro 60 Antibody Expression Across Autoimmune Diseases
title_fullStr Machine Learning for the Identification of a Common Signature for Anti–SSA/Ro 60 Antibody Expression Across Autoimmune Diseases
title_full_unstemmed Machine Learning for the Identification of a Common Signature for Anti–SSA/Ro 60 Antibody Expression Across Autoimmune Diseases
title_short Machine Learning for the Identification of a Common Signature for Anti–SSA/Ro 60 Antibody Expression Across Autoimmune Diseases
title_sort machine learning for the identification of a common signature for anti–ssa/ro 60 antibody expression across autoimmune diseases
topic Autoimmunity
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9804576/
https://www.ncbi.nlm.nih.gov/pubmed/35635731
http://dx.doi.org/10.1002/art.42243
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