Cargando…

Multiomics and Machine Learning Accurately Predict Clinical Response to Adalimumab and Etanercept Therapy in Patients With Rheumatoid Arthritis

OBJECTIVE: To predict response to anti–tumor necrosis factor (anti‐TNF) prior to treatment in patients with rheumatoid arthritis (RA), and to comprehensively understand the mechanism of how different RA patients respond differently to anti‐TNF treatment. METHODS: Gene expression and/or DNA methylati...

Descripción completa

Detalles Bibliográficos
Autores principales: Tao, Weiyang, Concepcion, Arno N., Vianen, Marieke, Marijnissen, Anne C. A., Lafeber, Floris P. G. J., Radstake, Timothy R. D. J., Pandit, Aridaman
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7898388/
https://www.ncbi.nlm.nih.gov/pubmed/32909363
http://dx.doi.org/10.1002/art.41516
_version_ 1783653854457364480
author Tao, Weiyang
Concepcion, Arno N.
Vianen, Marieke
Marijnissen, Anne C. A.
Lafeber, Floris P. G. J.
Radstake, Timothy R. D. J.
Pandit, Aridaman
author_facet Tao, Weiyang
Concepcion, Arno N.
Vianen, Marieke
Marijnissen, Anne C. A.
Lafeber, Floris P. G. J.
Radstake, Timothy R. D. J.
Pandit, Aridaman
author_sort Tao, Weiyang
collection PubMed
description OBJECTIVE: To predict response to anti–tumor necrosis factor (anti‐TNF) prior to treatment in patients with rheumatoid arthritis (RA), and to comprehensively understand the mechanism of how different RA patients respond differently to anti‐TNF treatment. METHODS: Gene expression and/or DNA methylation profiling on peripheral blood mononuclear cells (PBMCs), monocytes, and CD4+ T cells obtained from 80 RA patients before they began either adalimumab (ADA) or etanercept (ETN) therapy was studied. After 6 months, treatment response was evaluated according to the European League Against Rheumatism criteria for disease response. Differential expression and methylation analyses were performed to identify the response‐associated transcription and epigenetic signatures. Using these signatures, machine learning models were built by random forest algorithm to predict response prior to anti‐TNF treatment, and were further validated by a follow‐up study. RESULTS: Transcription signatures in ADA and ETN responders were divergent in PBMCs, and this phenomenon was reproduced in monocytes and CD4+ T cells. The genes up‐regulated in CD4+ T cells from ADA responders were enriched in the TNF signaling pathway, while very few pathways were differential in monocytes. Differentially methylated positions (DMPs) were strongly hypermethylated in responders to ETN but not to ADA. The machine learning models for the prediction of response to ADA and ETN using differential genes reached an overall accuracy of 85.9% and 79%, respectively. The models using DMPs reached an overall accuracy of 84.7% and 88% for ADA and ETN, respectively. A follow‐up study validated the high performance of these models. CONCLUSION: Our findings indicate that machine learning models based on molecular signatures accurately predict response before ADA and ETN treatment, paving the path toward personalized anti‐TNF treatment.
format Online
Article
Text
id pubmed-7898388
institution National Center for Biotechnology Information
language English
publishDate 2020
publisher John Wiley and Sons Inc.
record_format MEDLINE/PubMed
spelling pubmed-78983882021-03-03 Multiomics and Machine Learning Accurately Predict Clinical Response to Adalimumab and Etanercept Therapy in Patients With Rheumatoid Arthritis Tao, Weiyang Concepcion, Arno N. Vianen, Marieke Marijnissen, Anne C. A. Lafeber, Floris P. G. J. Radstake, Timothy R. D. J. Pandit, Aridaman Arthritis Rheumatol Rheumatoid Arthritis OBJECTIVE: To predict response to anti–tumor necrosis factor (anti‐TNF) prior to treatment in patients with rheumatoid arthritis (RA), and to comprehensively understand the mechanism of how different RA patients respond differently to anti‐TNF treatment. METHODS: Gene expression and/or DNA methylation profiling on peripheral blood mononuclear cells (PBMCs), monocytes, and CD4+ T cells obtained from 80 RA patients before they began either adalimumab (ADA) or etanercept (ETN) therapy was studied. After 6 months, treatment response was evaluated according to the European League Against Rheumatism criteria for disease response. Differential expression and methylation analyses were performed to identify the response‐associated transcription and epigenetic signatures. Using these signatures, machine learning models were built by random forest algorithm to predict response prior to anti‐TNF treatment, and were further validated by a follow‐up study. RESULTS: Transcription signatures in ADA and ETN responders were divergent in PBMCs, and this phenomenon was reproduced in monocytes and CD4+ T cells. The genes up‐regulated in CD4+ T cells from ADA responders were enriched in the TNF signaling pathway, while very few pathways were differential in monocytes. Differentially methylated positions (DMPs) were strongly hypermethylated in responders to ETN but not to ADA. The machine learning models for the prediction of response to ADA and ETN using differential genes reached an overall accuracy of 85.9% and 79%, respectively. The models using DMPs reached an overall accuracy of 84.7% and 88% for ADA and ETN, respectively. A follow‐up study validated the high performance of these models. CONCLUSION: Our findings indicate that machine learning models based on molecular signatures accurately predict response before ADA and ETN treatment, paving the path toward personalized anti‐TNF treatment. John Wiley and Sons Inc. 2020-12-26 2021-02 /pmc/articles/PMC7898388/ /pubmed/32909363 http://dx.doi.org/10.1002/art.41516 Text en © 2020 The Authors. Arthritis & Rheumatology published by Wiley Periodicals LLC on behalf of American College of Rheumatology. This is an open access article under the terms of the http://creativecommons.org/licenses/by-nc/4.0/ License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited and is not used for commercial purposes.
spellingShingle Rheumatoid Arthritis
Tao, Weiyang
Concepcion, Arno N.
Vianen, Marieke
Marijnissen, Anne C. A.
Lafeber, Floris P. G. J.
Radstake, Timothy R. D. J.
Pandit, Aridaman
Multiomics and Machine Learning Accurately Predict Clinical Response to Adalimumab and Etanercept Therapy in Patients With Rheumatoid Arthritis
title Multiomics and Machine Learning Accurately Predict Clinical Response to Adalimumab and Etanercept Therapy in Patients With Rheumatoid Arthritis
title_full Multiomics and Machine Learning Accurately Predict Clinical Response to Adalimumab and Etanercept Therapy in Patients With Rheumatoid Arthritis
title_fullStr Multiomics and Machine Learning Accurately Predict Clinical Response to Adalimumab and Etanercept Therapy in Patients With Rheumatoid Arthritis
title_full_unstemmed Multiomics and Machine Learning Accurately Predict Clinical Response to Adalimumab and Etanercept Therapy in Patients With Rheumatoid Arthritis
title_short Multiomics and Machine Learning Accurately Predict Clinical Response to Adalimumab and Etanercept Therapy in Patients With Rheumatoid Arthritis
title_sort multiomics and machine learning accurately predict clinical response to adalimumab and etanercept therapy in patients with rheumatoid arthritis
topic Rheumatoid Arthritis
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7898388/
https://www.ncbi.nlm.nih.gov/pubmed/32909363
http://dx.doi.org/10.1002/art.41516
work_keys_str_mv AT taoweiyang multiomicsandmachinelearningaccuratelypredictclinicalresponsetoadalimumabandetanercepttherapyinpatientswithrheumatoidarthritis
AT concepcionarnon multiomicsandmachinelearningaccuratelypredictclinicalresponsetoadalimumabandetanercepttherapyinpatientswithrheumatoidarthritis
AT vianenmarieke multiomicsandmachinelearningaccuratelypredictclinicalresponsetoadalimumabandetanercepttherapyinpatientswithrheumatoidarthritis
AT marijnissenanneca multiomicsandmachinelearningaccuratelypredictclinicalresponsetoadalimumabandetanercepttherapyinpatientswithrheumatoidarthritis
AT lafeberflorispgj multiomicsandmachinelearningaccuratelypredictclinicalresponsetoadalimumabandetanercepttherapyinpatientswithrheumatoidarthritis
AT radstaketimothyrdj multiomicsandmachinelearningaccuratelypredictclinicalresponsetoadalimumabandetanercepttherapyinpatientswithrheumatoidarthritis
AT panditaridaman multiomicsandmachinelearningaccuratelypredictclinicalresponsetoadalimumabandetanercepttherapyinpatientswithrheumatoidarthritis