| Literature DB >> 33318199 |
Vittorio Fortino1, Lukas Wisgrill2,3, Paulina Werner3, Sari Suomela4, Nina Linder5,6, Erja Jalonen7, Alina Suomalainen8, Veer Marwah9, Mia Kero10, Maria Pesonen4, Johan Lundin5, Antti Lauerma7, Kristiina Aalto-Korte4, Dario Greco9,11,12, Harri Alenius3,8, Nanna Fyhrquist13,8.
Abstract
Contact dermatitis tremendously impacts the quality of life of suffering patients. Currently, diagnostic regimes rely on allergy testing, exposure specification, and follow-up visits; however, distinguishing the clinical phenotype of irritant and allergic contact dermatitis remains challenging. Employing integrative transcriptomic analysis and machine-learning approaches, we aimed to decipher disease-related signature genes to find suitable sets of biomarkers. A total of 89 positive patch-test reaction biopsies against four contact allergens and two irritants were analyzed via microarray. Coexpression network analysis and Random Forest classification were used to discover potential biomarkers and selected biomarker models were validated in an independent patient group. Differential gene-expression analysis identified major gene-expression changes depending on the stimulus. Random Forest classification identified CD47, BATF, FASLG, RGS16, SYNPO, SELE, PTPN7, WARS, PRC1, EXO1, RRM2, PBK, RAD54L, KIFC1, SPC25, PKMYT, HISTH1A, TPX2, DLGAP5, TPX2, CH25H, and IL37 as potential biomarkers to distinguish allergic and irritant contact dermatitis in human skin. Validation experiments and prediction performances on external testing datasets demonstrated potential applicability of the identified biomarker models in the clinic. Capitalizing on this knowledge, novel diagnostic tools can be developed to guide clinical diagnosis of contact allergies.Entities:
Keywords: allergic contact dermatitis; artificial intelligence; biomarker; irritant contact dermatitis; machine learning
Year: 2020 PMID: 33318199 DOI: 10.1073/pnas.2009192117
Source DB: PubMed Journal: Proc Natl Acad Sci U S A ISSN: 0027-8424 Impact factor: 11.205