Confirmation of multiple endotypes in atopic dermatitis based on serum biomarkers

Publication date

2021-01

Authors

Bakker, Daphne S
Nierkens, StefanORCID 0000-0003-3406-817XISNI 0000000395421272
Knol, Edward F.ORCID 0000-0001-7368-9820ISNI 0000000390631879
Giovannone, Barbara
Delemarre, Eveline MISNI 0000000387375042
van der Schaft, Jorien
van Wijk, FemkeORCID 0000-0001-8343-1356ISNI 0000000391770491
de Bruin-Weller, MarjoleinORCID 0000-0002-1249-6993ISNI 0000000396350234
Drylewicz, JuliaORCID 0000-0002-9434-8459ISNI 0000000357090505
Thijs, Judith L.

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Article

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cc_by_nc_nd

Abstract

Background: Atopic dermatitis (AD) is a highly heterogeneous disease, both clinically and biologically, whereas patients are still being treated according to a “one-size-fits-all” approach. Stratification of patients into biomarker-based endotypes is important for future development of personalized therapies. Objective: Our aim was to confirm previously defined serum biomarker-based patient clusters in a new cohort of patients with AD. Methods: A panel of 143 biomarkers was measured by using Luminex technology in serum samples from 146 patients with severe AD (median Eczema Area and Severity Index = 28.3; interquartile range = 25.2-35.3). Principal components analysis followed by unsupervised k-means cluster analysis of the biomarker data was used to identify patient clusters. A prediction model was built on the basis of a previous cohort to predict the 1 of the 4 previously identified clusters to which the patients of our new cohort would belong. Results: Cluster analysis identified 4 serum biomarker–based clusters, 3 of which (clusters B, C, and D) were comparable to the previously identified clusters. Cluster A (33.6%) could be distinguished from the other clusters as being a “skin-homing chemokines/IL-1R1–dominant” cluster, whereas cluster B (18.5%) was a “T H1/T H2/T H17-dominant” cluster, cluster C (18.5%) was a “T H2/T H22/PARC-dominant” cluster, and cluster D (29.5%) was a “T H2/eosinophil-inferior” cluster. Additionally, by using a prediction model based on our previous cohort we accurately assigned the new cohort to the 4 previously identified clusters by including only 10 selected serum biomarkers. Conclusion: We confirmed that AD is heterogeneous at the immunopathologic level and identified 4 distinct biomarker-based clusters, 3 of which were comparable with previously identified clusters. Cluster membership could be predicted with a model including 10 serum biomarkers.

Keywords

Atopic dermatitis, biomarkers, clusters, endotypes, personalized medicine, prediction, principal components analysis, Immunology and Allergy, Immunology, Journal Article

Citation

Bakker, D S, Nierkens, S, Knol, E F, Giovannone, B, Delemarre, E M, van der Schaft, J, van Wijk, F, de Bruin-Weller, M S, Drylewicz, J & Thijs, J L 2021, 'Confirmation of multiple endotypes in atopic dermatitis based on serum biomarkers', The Journal of Allergy and Clinical Immunology, vol. 147, no. 1, pp. 189-198. https://doi.org/10.1016/j.jaci.2020.04.062