Development of a clinical algorithm to predict phenotypic switches between atopic dermatitis and psoriasis (the “Flip‐Flop” phenomenon)

Author:

Müller Svenja12ORCID,Welchowski Thomas23ORCID,Schmid Matthias3,Maintz Laura12ORCID,Herrmann Nadine12ORCID,Wilsmann‐Theis Dagmar1,Royeck Thorben1,Havenith Regina12,Bieber Thomas12ORCID

Affiliation:

1. Department of Dermatology and Allergy University Hospital Bonn Bonn Germany

2. Christine Kühne‐Center for Allergy Research and Education Davos (CK‐CARE) Davos Switzerland

3. Department of Medical Biometry, Informatics and Epidemiology University Hospital Bonn Bonn Germany

Abstract

AbstractBackgroundAtopic dermatitis (AD) and psoriasis vulgaris (PV) are almost mutually exclusive diseases with different immune polarizations, mechanisms and therapeutic targets. Switches to the other disease (“Flip‐Flop” [FF] phenomenon) can occur with or without systemic treatment and are often referred to as paradoxical reactions under biological therapy.MethodsThe objective was to develop a diagnostic algorithm by combining clinical criteria of AD and PV to identify FF patients. The algorithm was prospectively validated in patients enrolled in the CK‐CARE registry in Bonn, Germany. Afterward, algorithm refinements were implemented based on machine learning.ResultsThree hundred adult Caucasian patients were included in the validation study (n = 238 with AD, n = 49 with PV, n = 13 with FF; mean age 41.2 years; n = 161 [53.7%] female). The total FF scores of the PV and AD groups differed significantly from the FF group in the validation data (p < .001). The predictive mean generalized Youden‐Index of the initial model was 78.9% [95% confidence interval 72.0%–85.6%] and the accuracy was 89.7%. Disease group‐specific sensitivity was 100% (FF), 95.0% (AD), and 61.2% (PV). The specificity was 89.2% (FF), 100% (AD), and 100% (PV), respectively.ConclusionThe FF algorithm represents the first validated tool to identify FF patients.

Funder

Lilly Deutschland

Publisher

Wiley

Subject

Immunology,Immunology and Allergy

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