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  • Predicting full thickness skin sensitization using a support vector machine.

Predicting full thickness skin sensitization using a support vector machine.

Toxicology in vitro : an international journal published in association with BIBRA (2014-07-16)
Serom Lee, David Xu Dong, Rohit Jindal, Tim Maguire, Bhaskar Mitra, Rene Schloss, Martin Yarmush
ABSTRACT

To assess the public's propensity for allergic contact dermatitis (ACD), many alternatives to in vivo chemical screening have been developed which generally incorporate a small panel of cell surface and secreted dendritic cell biomarkers. However, given the underlying complexity of ACD, one cell type and limited cellular metrics may be insufficient to predict contact sensitizers accurately. To identify a molecular signature that can further characterize sensitization, we developed a novel system using RealSkin, a full thickness skin equivalent, in co-culture with MUTZ-3 derived Langerhan's cells. This system was used to distinguish a model moderate pro-hapten isoeugenol (IE) and a model strong pre-hapten p-phenylenediamine (PPD) from irritant, salicylic acid (SA). Commonly evaluated metrics such as CD86, CD54, and IL-8 secretion were assessed, in concert with a 27-cytokine multi-plex screen and a functional chemotaxis assay. Data were analyzed with feature selection methods using ANOVA, hierarchical cluster analysis, and a support vector machine to identify the best molecular signature for sensitization. A panel consisting of IL-12, IL-9, VEGF, and IFN-γ predicted sensitization with over 90% accuracy using this co-culture system analysis. Thus, a multi-metric approach that has the potential to identify a molecular signature may be more predictive of contact sensitization.

MATERIALS
Product Number
Brand
Product Description

Sigma-Aldrich
p-Phenylenediamine, 98% (GC)
Sigma-Aldrich
p-Phenylenediamine, sublimed, ≥99%
Sigma-Aldrich
p-Phenylenediamine, ≥99.0% (GC/NT)