Periodontitis continues to be a global health problem: combined with edentulism and severe tooth loss, it constitutes the 6th most prevalent long-term disease worldwide, accounting for 11 million years lived with disability and lost productivity of 117 billion USD. Currently, periodontitis is viewed as an immunological destruction of the periodontium, orchestrated by low abundance pathogens in an unbalanced subgingival microbial community--the so called microbial dysbiosis hypothesis. This entails that selectively targeting pathogens or/and stimulating growth of commensals to reverse subgingival microbial dysbiosis (or promote normobiosis) represents a promising strategy for prevention and adjunctive treatment of periodontitis. Such microbiome modulation can be achieved by using agents like prebiotics and probiotics. Remarkably, while a number of in vitro dental biofilm/microbiome models has been described in the literature, none has been developed for the purpose of exploring microbiome modulators. This two-year R03 has a single aim: to develop a robust, high- throughput, reproducible in vitro subgingival microbiome model specifically optimized for testing of microbiome modulators. The model will include a dysbiotic (experimental) microbiome grown from periodontitis-associated subgingival samples, and a normobiotic (reference) microbiome grown from health- associated subgingival plaques samples. The growth conditions will be fine-tuned to maximize similarity between the in vitro microbiomes and the original samples. We will also explore the possibility of reproducing the generated microbiomes by passaging or using frozen stocks, eliminating the need to obtain more patient samples. In addition, a novel subgingival microbial dysbiosis index (SMDI) as a measure of dysbiosis in the microbiomes will be developed. The microbial composition of the microbiomes as well as original samples will be assessed using 16S rRNA sequencing coupled with our BLASTN-based, species-level taxonomy assignment algorithm. Microbiomes will be compared using distance matrices, principle component analysis and a similarity index. The model characterized here will provide the scientific community with an important tool to screen large numbers of candidate modulators and quantitatively assess their effects on subgingival microbiome, before they can be considered for further testing in animals, and eventually, humans.

Public Health Relevance

Periodontitis continues to be a global oral health problem with an impact on systemic health and high economic burden. Modulation of the oral microbial community (microbiome) with probiotics and prebiotics is an emerging strategy for prevention and adjunctive treatment of periodontitis. However, testing prebiotic and probiotics requires availability of a reliable in vitro model of the oral microbiome resembling that associated with periodontitis. In this study we will develop such a model and optimize it for testing of microbiome modulators.

Agency
National Institute of Health (NIH)
Institute
National Institute of Dental & Craniofacial Research (NIDCR)
Type
Small Research Grants (R03)
Project #
1R03DE028379-01A1
Application #
9824924
Study Section
NIDR Special Grants Review Committee (DSR)
Program Officer
Melillo, Amanda A
Project Start
2019-07-05
Project End
2021-06-30
Budget Start
2019-07-05
Budget End
2020-06-30
Support Year
1
Fiscal Year
2019
Total Cost
Indirect Cost
Name
Temple University
Department
Dentistry
Type
Schools of Dentistry/Oral Hygn
DUNS #
057123192
City
Philadelphia
State
PA
Country
United States
Zip Code
19122