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. 2020 Feb;91(2):232-243.
doi: 10.1002/JPER.19-0173. Epub 2019 Aug 25.

Developing a periodontal disease antibody array for the prediction of severe periodontal disease using machine learning classifiers

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Developing a periodontal disease antibody array for the prediction of severe periodontal disease using machine learning classifiers

Wei Huang et al. J Periodontol. 2020 Feb.

Abstract

Background: The aim of this study was to simultaneously and quantitatively assess the expression levels of 20 periodontal disease-related proteins in gingival crevicular fluid (GCF) from normal controls (NOR) and severe periodontitis (SP) patients with an antibody array.

Methods: Antibodies against 20 periodontal disease-related proteins were spotted onto a glass slide to create a periodontal disease antibody array (PDD). The array was then incubated with GCF samples collected from 25 NOR and 25 SP patients. Differentially expressed proteins between NOR and SP patients were then used to build receiver operator characteristic (ROC) curves and compare five classification models, including support vector machine, random forest, k nearest neighbor, linear discriminant analysis, and Classification and Regression Trees.

Results: Seven proteins (C-reactive protein, interleukin [IL]-1α, interleukin-1β, interleukin-8, matrix metalloproteinase-13, osteoprotegerin, and osteoactivin) were significantly upregulated in SP patients compared with NOR, while receptor activator of nuclear factor-kappa was significantly downregulated. The highest diagnostic accuracy using a ROC curve was observed for IL-1β with an area under the curve of 0.984. Five of the proteins (IL-1β, IL-8, MMP-13, osteoprotegerin, and osteoactivin) were identified as important features for classification. Linear discriminant analysis had the highest classification accuracy across the five classification models that were tested.

Conclusion: This study highlights the potential of antibody arrays to diagnose periodontal disease.

Keywords: ROC curve; gingival crevicular fluid; machine learning; microarray analysis; periodontitis.

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REFERENCES

    1. Schroeder H, Listgarten MA. The gingival tissues: the architecture of periodontal protection. Periodontology 2000. 1997;13:91-120.
    1. Becerik S, Öztürk VÖ, Atmaca H, Atilla G, Emingil G. Gingival crevicular fluid and plasma acute-phase cytokine levels in different periodontal diseases. J Periodontol. 2012;83:1304-1313.
    1. Sorsa T, Gursoy UK, Nwhator S, et al. Analysis of matrix metalloproteinases, especially MMP-8, in gingival crevicular fluid, mouthrinse and saliva for monitoring periodontal diseases. Periodontology 2000. 2016;70:142-163.
    1. Taylor JJ, Preshaw PM, Lalla E. A review of the evidence for pathogenic mechanisms that may link periodontitis and diabetes. J Periodontol. 2013;84:S113-S134.
    1. Palm F, Lahdentausta L, Sorsa T, et al. Biomarkers of periodontitis and inflammation in ischemic stroke: a case-control study. Innate Immun. 2014;20:511-518.

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