期刊论文详细信息
BMC Veterinary Research
Developing diagnostic tools for canine periodontitis: combining molecular techniques and machine learning models
Research
Alison Colyer1  Stephen Harris1  Lucy J. Holcombe1  Corrin Wallis1  Avika Ruparell1  Matthew Gibbs1 
[1]Waltham Petcare Science Institute, Melton Mowbray, Leicestershire, UK
关键词: Canine;    Periodontal disease;    Periodontitis;    Diagnosis;    Quantitative polymerase chain reaction;    qPCR;    Microbiome;    Microbiota;    Biomarkers;   
DOI  :  10.1186/s12917-023-03668-3
 received in 2022-10-24, accepted in 2023-07-19,  发布年份 2023
来源: Springer
PDF
【 摘 要 】
BackgroundDental plaque microbes play a key role in the development of periodontal disease. Numerous high-throughput sequencing studies have generated understanding of the bacterial species associated with both canine periodontal health and disease. Opportunities therefore exist to utilise these bacterial biomarkers to improve disease diagnosis in conscious-based veterinary oral health checks. Here, we demonstrate that molecular techniques, specifically quantitative polymerase chain reaction (qPCR) can be utilised for the detection of microbial biomarkers associated with canine periodontal health and disease.ResultsOver 40 qPCR assays targeting single microbial species associated with canine periodontal health, gingivitis and early periodontitis were developed and validated. These were used to quantify levels of the respective taxa in canine subgingival plaque samples collected across periodontal health (PD0), gingivitis (PD1) and early periodontitis (PD2). When qPCR outputs were compared to the corresponding high-throughput sequencing data there were strong correlations, including a periodontal health associated taxa, Capnocytophaga sp. COT-339 (rs =0.805), and two periodontal disease associated taxa, Peptostreptococcaceae XI [G-4] sp. COT-019 (rs=0.902) and Clostridiales sp. COT-028 (rs=0.802). The best performing models, from five machine learning approaches applied to the qPCR data for these taxa, estimated 85.7% sensitivity and 27.5% specificity for Capnocytophaga sp. COT-339, 74.3% sensitivity and 67.5% specificity for Peptostreptococcaceae XI [G-4] sp. COT-019, and 60.0% sensitivity and 80.0% specificity for Clostridiales sp. COT-028.ConclusionsA qPCR-based approach is an accurate, sensitive, and cost-effective method for detection of microbial biomarkers associated with periodontal health and disease. Taken together, the correlation between qPCR and high-throughput sequencing outputs, and early accuracy insights, indicate the strategy offers a prospective route to the development of diagnostic tools for canine periodontal disease.
【 授权许可】

CC BY   
© BioMed Central Ltd., part of Springer Nature 2023

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