Optimizing a Diagnostic Model of Periodontitis by Using Targeted Proteomics

J Proteome Res. 2023 Jul 7;22(7):2509-2515. doi: 10.1021/acs.jproteome.3c00230. Epub 2023 Jun 3.

Abstract

Periodontitis (PD), a widespread chronic infectious disease, compromises oral health and is associated with various systemic conditions and hematological alterations. Yet, to date, it is not clear whether serum protein profiling improves the assessment of PD. We collected general health data, performed dental examinations, and generated serum protein profiles using novel Proximity Extension Assay technology for 654 participants of the Bialystok PLUS study. To evaluate the incremental benefit of proteomics, we constructed two logistic regression models assessing the risk of having PD according to the CDC/AAP definition; the first one contained established PD predictors, and in addition, the second one was enhanced by extensive protein information. We then compared both models in terms of overall fit, discrimination, and calibration. For internal model validation, we performed bootstrap resampling (n = 2000). We identified 14 proteins, which improved the global fit and discrimination of a model of established PD risk factors, while maintaining reasonable calibration (area under the curve 0.82 vs 0.86; P < 0.001). Our results suggest that proteomic technologies offer an interesting advancement in the goal of finding easy-to-use and scalable diagnostic applications for PD that do not require direct examination of the periodontium.

Keywords: periodontitis; prediction model; proteomics; serum biomarkers.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Blood Proteins
  • Humans
  • Periodontitis* / diagnosis
  • Proteomics* / methods
  • Risk Factors

Substances

  • Blood Proteins