The Role of Epigenetic and Biological Biomarkers in the Diagnosis of Periodontal Disease: A Systematic Review Approach
Abstract
:1. Introduction
2. Materials and Methods
2.1. PICO Modelling
2.2. Search Strategy and PRISMA Statement
2.3. Study Selection
2.4. Data Extraction
- Author;
- Year of publication;
- Location of publication;
- Study design;
- Number of participants;
- Fraction of participants both male and female;
- Mean age and standard deviation of participants;
- Classification of disease;
- Biomarker analyzed;
- Biofluid analyzed;
- Biomarker analysis method;
- Method of disease classification;
- Number of assessors of disease state;
- Method of sample collection;
- Outcome of studies.
2.5. Statistical Analysis
3. Results
3.1. Quality Assessment and Risk of Bias
3.2. Summary of Tables
- RNA biomarkers;
- Protein biomarkers;
- Metabolite biomarkers;
- Inflammatory biomarkers.
3.3. Age
3.4. Classification
3.5. Biofluid Samples
3.6. Order of Methods
3.7. Biomarkers
3.7.1. RNA
3.7.2. Proteins
- The two-phase study carried out by Bostanci et al. identified five proteins with significant distinction between health and disease. MMP9, RAP1A and ARPC5 were all upregulated in disease while CLUS and DBMT1 were downregulated in those with disease. The authors deduced that the combination of ARPC5 and CLUS when tested together produced the greatest predictive power of disease.
- Chatzopoulos et al. examined the levels of SOST, WNT-5A and TNF-α. All three biomarkers were increased in disease compared to health. The “strict” periodontitis subgroup produced median levels of SOST (140.00 pg), WNT-5a (2.4 pg) and TNF-α (44.7 pg) compared with the “strict” healthy group who exhibited levels of SOST (78.9 pg), WNT-5a (1.29 pg) and TNF-α (27.3 pg). SOST was the only biomarker to produce results which demonstrated significant difference between both groups (p = 0.002). Both WNT-5a and TNF-α had p = 0.075 and p = 0.226, respectively.
- Malondialdehyde (MDA) levels in H, G and P were examined in the study by Cherian et al. Mean levels of MDA were significantly different between H (89.45 µM/100 mL) compared to P (281.58 µM/100 mL) with a p < 0.001.
- Hartenbach et al. concluded levels of Histatin-1, salivary acidic proline-rich phosphoprotein and cystatin-SA were increased in those with periodontitis.
3.7.3. Metabolites
- Chen et al. identified 20 metabolites with p < 0.05 and Variability Importance Projection (VIP) >1. However, eight metabolites were established as having the greatest predictive power in distinguishing periodontal health from disease. Supplementary Table S2.1 illustrates the metabolites identified along with their corresponding Fold Change and VIP.
- Similar to Chen et al., Pei et al. found 17 metabolites associated with periodontal health and disease with p < 0.05 and VIP > 1. Supplementary Table S2.2 below depicts the most periodontally significant metabolites identified. Analysis of combinations of these metabolites revealed the pair of metabolites with the greatest predictive power for periodontal disease was n-carbamylglutamate and citramalic acid.
- The study by Romano et al. found nine significant metabolites to have discriminative capabilities between periodontal health and disease, analysis of which are outlined in Supplementary Table S2.3.
- Rzeznik et al. conducted a study which identified 11 metabolites with significant discrimination between periodontal health and disease. Five metabolites with p < 0.2 were analyzed and three metabolites, GABA, 1-Butyrate and Lactate, were concluded to be the main diagnostic biomarkers in the study. Supplementary Tables S2.4 and S2.5 outline the statistical relevance of these metabolites.
3.7.4. Inflammatory
- Hong et al. analyzed the relevance of eight different inflammatory biomarkers in both GCF and saliva. The study concluded that MMP-8, MMP-9, MPO and Cystatin C were the most significant biomarkers for the discrimination of periodontal health from disease with sensitivity of 87.0%, 73.9%, 87.0% and 72.5%, respectively. MMP-8 and MPO displayed the greatest sensitivity towards gingivitis.
- Del-1, IL-17 and LFA-1 levels in G, CP and GAP were analyzed by Inönü et al. Del-1 levels were seen to be increased in both H and G compared to CP and GAP, while the opposite was true for IL-17 and LFA-1 levels. When all three biomarkers were analyzed for discriminatory significance, and ROC value of 0.893 was produced along with sensitivity and specificity both reading 83.3%.
- It was determined by Nalmpantis et al. that azurocidin levels in pooled GCF samples were significantly increased in those with CP when compared to the participants with healthy tissue, p < 0.001.
- Tasdemir et al. reported the median levels of suPAR, Galectin-1 and TNF-α in both GCF and saliva. suPAR levels were significantly increased in both G and P compared to H in both GCF and saliva samples.
- CD163 levels in GCF were measured by Sai Karthikeyan et al. The mean levels of CD163 in H, G and p were 30.49 pg/mL, 38.93 pg/mL and 59.81 pg/mL, respectively. The study concluded that increased levels of CD163 positively correlate to progressive disease state.
3.8. Smoking Status
4. Discussion
4.1. Strengths and Weaknesses of Studies
4.1.1. Study Design
4.1.2. Study Size
4.1.3. Age
4.1.4. Classification
4.1.5. Order of Methods
4.2. Significant Evidence
4.2.1. RNA
4.2.2. Proteins
4.2.3. Metabolites
4.2.4. Inflammatory
4.3. Context for Practice
4.4. Review Limitations
4.5. Future Recommendations
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Inclusion Criteria | Exclusion Criteria |
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Author | Year | Location | Study Design | n (m/f) | Mean Age (SD) | Classification | Biomarker | Biofluid |
---|---|---|---|---|---|---|---|---|
Kaczor-Urbanowicz et al. | 2018 | USA | PRoBE | P1— H: 50 (27/23) G: 50 (22/28) P2— G: 30 (13/17) | P1— H: 27.1 (5.67) G: 26.4 (6.77) P2— G: 28.2 (7.77) | G | exRNA | Saliva |
Micó-Martínez et al. | 2018 | Spain | Cross-Sectional | H: 9 (4/5) CP: 9 (3/6) | H: 33.33 (12.05) CP: 50.44 (8.09) | CP | miRNA | GCF |
Author | Year | Location | Study Design | n (m/f) | Mean Age (SD) | Classification | Biomarker | Biofluid |
---|---|---|---|---|---|---|---|---|
Bostanci et al. | 2018 | Turkey | Cross-sectional, Case–control | P1— H: 16 (5/11) AP: 17 (6/11) CP: 17 (7/10) G: 17 (9/8) P2— H: 20 (8/12) AP: 21 (5/16) CP: 21 (8/13) G: 20 (8/12) | P1— H: 34.13 (9.91) AP: 33.41 (5.40) CP: 44.88 (8.17) G: 33 (11.25) P2— H: 33.45 (6.35) AP: 33.67 (6.11) CP: 47.19 (7.01) G: 36.55 (5.16) | AP, CP, G | In total, 486 proteins were identified. MMP9, RAP1A, ARPC5, CLUS and DBMT1 showed greatest logical regression performance. | Saliva |
Chatzopoulos et al. | 2019 | USA | Cross-sectional | H: 25 (6/19) CP: 25 (12/13) | H: 28.9 (10.2) CP: 57.9 (12.6) | CP | SOST, WNT-5a and TNF-α | GCF |
Cherian et al. | 2019 | India | Cross-sectional | H: 30 CP: 30 G: 25 | N/A (Range 18–45 years) | CP, G | Malondialdehyde | Salvia |
Hartenbach et al. | 2019 | Brazil | Case–control | H: 10 (3/7) CP: 30 (16/14) | H: 29.9 (4.4) CP: 42.0 (2.6) | CP | In total, 473 proteins were identified, 223 were analyzed as they had FDR <5%. | Saliva |
Author | Year | Location | Study Design | n (m/f) | Mean Age (SD) | Classification | Biomarkers | Biofluid |
---|---|---|---|---|---|---|---|---|
Chen et al. | 2018 | China | Cross-sectional | H: 20 (10/10) GAgP: 20 (9/11) | H: 25.7 (4.5) GAgP: 28.4 (4.3) | GAgP | In total, 349 metabolites were detected in GCF. | GCF |
Pei et al. | 2020 | China | Cross-sectional | H: 28 (9/19) GCP: 30 (13/17) | H: 35.7 (N/A) GCP: 39.0 (N/A) | GCP | In total, 147 metabolites were identified from samples obtained from both cases and controls. | GCF |
Romano et al. | 2018 | Italy | Cross-sectional | H: 39 (25/14) GCP: 33 (21/12) GAgP: 28 (18/10) | H: 46.6 (8.2) GCP: 50.5 (8.9) GAgP: 31.1 (4.6) | GCP, GAgP | Twenty-two metabolites were identified and analyzed. | Saliva |
Rzeznik et al. | 2017 | France | Cross-sectional | H: 25 (9/16) P: 26 (10/16) CP: 18 GAgP: 8 | H: 40.7 (12.4) P: 42.4 (12.8) | P (CP, GAgP) | Eleven metabolites were identified as being discriminatory between health and disease. | Saliva |
Author | Year | Location | Study Design | n (m/f) | Mean Age (SD) | Classification | Biomarker | Biofluid |
---|---|---|---|---|---|---|---|---|
Hong et al. | 2020 | South Korea | Cross-sectional | H: 15 (8/7) G: 85 (38/47) | H: 34.93 (15.79) G: 32.65 (12.21) | G | MMP-8, MMP-9, lactoferrin, cystatin C, MPO, platelet-activating factor, cathepsin B, pyridinoline cross-linked carboxterminal telopeptide of type 1 collagen | Saliva and GCF |
Inönü et al. | 2020 | Turkey | Cross-sectional | H: 45 (16/29) G: 50 (16/29) CP: 5 (26/24) GAgP: 40 (15/25) | H: 28.0 G: 24.5 CP: 43.5 GAgP: 28.0 * | G, CP, GAgP | Del-1, IL-17, LFA-1 | Saliva |
Nalmpantis et al. | 2020 | Greece | Cross-sectional | H: 48 (18/30) CP: 53 (33/20) | H: 50.8 (9) CP: 52.0 (8) | CP | Azurocidin | GCF |
Sai Karthikeyan et al. | 2020 | India | Cross-sectional | H: 10 G: 10 P: 10 (17/13) | H: 22.2 (3.46) G: 35.7 (8.12) P: 42.4 (6.84) | G, P | Soluble CD163 | GCF |
Taşdemir et al. | 2020 | Turkey | Cross-sectional | H: 20 (12/8) G: 20 (11/9) CP: 20 (10/10) | H: 29.40 (6.63) G: 29.30 (11.53) CP: 47.75 (9.88) | G, CP | suPAR, Galectin-1, TNF alpha | Saliva and GCF |
Author | Year | Classification | No. of Examiners | Sample Collection | Analysis | Outcome |
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Kaczor-Urbanowicz et al. | 2018 | P1— H: MBI < 5% and PPD < 4 mm G: MBI > 5% and PPD < 4 mm P2— ≥20 Natural Crowned teeth, GI ≥ 1.0 and PI ≥ 1.5 | 2. Change in examiner at week 6 which may affect clinical parameters | Unstimulated whole saliva samples were collected prior to clinical examination. Hygiene measures, eating and drinking were avoided 1 h before collection. All subjects rinsed with 10 mL tap water 10 min before sample collection. Approx. 5 mL saliva was collected in a 5–10 min period. The samples were stored in sterile tubes and held on ice until processing approx. 1 h after collection. | P1—Rneasy Micro Kit P2—RT-qPCR | Increase of four exRNAs and decrease of four exRNAs in gingivitis (exRNAs identified following the discovery phase), with four potentially discriminatory of health. |
Micó-Martínez et al. | 2018 | H: PPD < 3 mm, CAL < 3 mm and no radiographic evidence of bone deterioration. CP: At least 1 single rooted tooth with PPD ≥ 5 mm and CAL ≥ 6 mm. Classification based on the guidelines from The Classification of Periodontal Diseases and Conditions Armitage 1999. | 1 | Prior to collection, supragingival plaque was removed and cotton balls along with aspiration were used to prevent salvia contamination. GCF was sampled from a single-rooted tooth. PerioPaper® was placed in the gingival sulcus until resistance was noted and left for 30 s. Contaminated samples were discarded, and the procedure was repeated. Samples were stored in EP tubes at −80 °C. | miRNeasy Serum/Plasma Kit | miR-1226 identified as having potential diagnostic capabilities. |
Author | Year | Classification | No. of Examiners | Sample Collection | Analysis | Outcome |
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Bostanci et al. | 2018 | H: PPD > 3 mm, CAL > 2 mm, mean BOP < 15% and no detectable bone loss. AP: >16 teeth, PPD > 6 mm, CAL > 5 mm on 8 or more teeth and bone loss of >30% of root length affecting more than 3 teeth. CP: PPD > 6 mm, CAL > 5 mm, BOP > 63% and bone loss of >50% in at least 2 quadrants. G: Varying inflammation, CAL < 2 mm, mean BOP > 50% and no bone loss. Classification based on The Classification of Periodontal Diseases and Conditions Armitage 1999. | 1 | Whole saliva samples collected prior to clinical classification between 08:00 and 10:00. Participants asked not to undertake hygiene measures, eat or drink for 2 h prior to sample collection. The participants rinsed with water for 2 min, waited for 10 min then expectorated for 5 min into a sterile tube. The samples were held on ice until analysis. | P1—LC-MS P2—QTRAP 5500 and Nano-LC-2D HPLC | P1 of this study identified almost 200 proteins with diagnostic potential. P2 yielded a list of five proteins with both high sensitivity and specificity for periodontal disease diagnosis. |
Chatzopoulos et al. | 2019 | G1— H: PPD ≤ 4 mm, CAL ≤ 2 mm and no radiographic evidence of bone loss. CP: PPD ≥ 5 mm, CAL ≥ 4 mm and radiographic imagining presenting alveolar bone loss ≥40%. G2— H: PPD 1–3 mm, CAL ≤ 1 mm and BOP ≤ 15%. CP: PPD ≥ 4 mm, CAL ≥ 3 mm and presence of BOP. | 2 | Prior to GCF collection, supragingival plaque removed and a gentle stream of air applied for approx. 3–5 s to the interproximal surface. PerioPaper® was placed in the crevice until resistance was felt and left for 30 s. Contaminated samples were discarded, and the procedure was repeated. The papers were stored at −80 °C until processing. | ELISA | SOST and WNT-5a identified as having good diagnostic capabilities in generalized, moderate and severe periodontitis, but not localized periodontitis. |
Cherian et al. | 2019 | H: No history of periodontal disease. CP: At least 4 teeth exhibiting PPD ≥ 4 mm, CAL ≥ 4 mm and BOP evident. G: BOP evident. | N/A | Prior to clinical examination, whole saliva samples collected between 09:00 and 12:00. Samples collected approximately 2 h after food. Approx. 2 mL of salvia collected into disposable tubes and centrifuged immediately. Sample analysis was completed immediately after collection. | Spectrophotometry | This study concluded that malondialdehyde levels are significantly different between H and CP (p < 0.001), but not between H and G (p~0.089). |
Hartenbach et al. | 2019 | H: PPD 1.9 mm, CAL 2.0 mm, BOP 4.4%, GI 4.9%, PL 20.9% and SC 13.2%. CP: PPD 2.5 mm, CAL 2.7 mm, BOP 28.6%, GI 14.1%, PL 38.4% and SC 28.7%. ¹ | 1 | Saliva samples obtained in the morning period at least 2 h prior to dental hygiene measures. Participants were asked to rest for 15 min and saliva was stimulated using Parafilm M®. Approximately 1 mL of saliva was obtained from each participant in a sterile plastic tube. The samples were pooled in pairs of individuals with similar age. They were held on ice until centrifugation and then frozen at −80 °C until analyzed. | LC-MS | Few specific biomarkers were increased in CP compared to H. Therefore, diagnosis may be based on decreased levels of several proteins. |
Author | Year | Classification | No. of Examiners | Sample Collection | Analysis | Outcome |
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Chen et al. | 2018 | PPD, CAL and radiographic imaging were measured. H: PPD ≤ 3 mm CAL = 0 mm. GAgP: CAL ≥ 5 mm. Classification based on The Classification of Periodontal Diseases and Conditions Armitage 1999. | 1 | Prior to GCF sample collection, supragingival plaque was removed and the tooth was air-dried. PerioPaper® was inserted into the gingival sulcus for 30 s and stored in EP tubes at −80 °C. Contaminated strips were discarded. | Gas Chromatography Mass Spectrometry | Noradrenaline, uridine, dehydroascorbic acid, ribose and methionine levels were all elevated in those with GAgP. Levels of 2-ketobutyric acid, glycine-d5, thymidine and ribose-5-phosphate were all reduced in those with GAgP. |
Pei et al. | 2020 | H: PPD ≤ 3 mm, CAL < 1 mm. GCP: PPD ≥ 4 mm, CAL ≥ 3 mm, BOP present. | 1 | Before sampling, supragingival plaque was removed and the tooth was air-dried. Samples were collected using PerioPaper® which was gently inserted into the gingival sulcus and left for 30 s. The papers were stored in EP tubes and stored at −80 °C. | Gas Chromatography Mass Spectrometry | In total, 17 metabolites were analyzed. Glycine-d5, N-carbamylglutamate 2 and fructose were increased in GCP compared to H. Lactamide, O-phosphoserine and 1-monopalmitin were decreased in GCP compared to H. Pyrimide, d-glutamine and d-glutamate metabolism were increased in GCP compared to H. Combination of citramalic acid and N-carbamylglutamte produced the most accurate diagnostic measure of disease. |
Romano et al. | 2018 | H: PPD ≤ 3 mm, CAL ≤ 3 mm, no radiographic evidence of bone loss and <15% of BOP. GCP: PPD ≥ 30% sites, CAL > 5 mm and presence of BOP. GAgP: At least one site with PPD, CAL > 5 mm and at least one of PPD or CAL >5 mm. Classification based on the World Workshop in Periodontology 1999. | 2 | Unstimulated saliva samples were collected at least 24 h after clinical examination between 08:00 and 10:00. Participants were asked not to undertake hygiene measures 1 h prior to collection. Participants was asked not to force salvation and approx. 1 ml was collected in a sterile tube over 10 min and frozen immediately. | NMR Spectroscopy | Several metabolites were identified as being significantly different between H and disease. Lower levels of pyruvate, lactate and N-acetyl groups in GCP and lower levels of pyruvate, lactate, N-acetyl groups and sarcosine in GAgP versus H. Higher levels of phenylalanine and tyrosine in both GCP and GAgP compared to H. Phenylalanine metabolism and pyruvate metabolism pathways were identified as being most significant in discrimination between H and disease. |
Rzeznik et al. | 2017 | P: ≥ 2 sites with PPD ≥ 4 mm (not on the same tooth), CAL ≥ 3 mm or one site with PPD ≥ 5 mm. PPD 3.8 mm, CAL 4.1 mm, BOP 35.0%, PCR 61.2%, Affected sites 48.5%, DMF 8.23. ¹ Classification according to The Classification of Periodontal Diseases and Conditions Armitage 1999. | 1 | Saliva was collected prior to clinical examination between 09:00 and 11:00 and stimulated using paraffin wax. Participants were asked not to eat, drink, chew gum or brush teeth for 2 h prior to collection. Approx. 10 mL of saliva was collected for 5 min. The pH was recorded immediately, and the samples were stored at −25 °C until analysis. | HNMR Spectroscopy | HNMR analysis identified increases in Butyric acid in both CP and GAgP, while levels of both lactic acid and GABA were deceased in CP and GAgP compared with H. No metabolite discriminated against CP and GAgP. Combination of three aforementioned metabolites displayed good diagnostic capabilities. |
Author | Year | Classification | No. of Examiners | Sample Collection | Analysis | Outcome |
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Hong et al. | 2020 | PPD, CAL, BOP, PI and GI were measured. H: CAL 2.55 mm BOP 5.56% PI 0.13 GI 0.39 G: CAL 2.60 mm BOP 26.96% PI 0.53 GI 0.96. ¹ Those with >10% BOP were diagnosed with G. Classification according to the World Workshop on the Classification of Periodontal and Peri-Implant Diseases and Conditions 2017. | 1 | Participants were asked to fast for 8 h before GCF collection. Site of collection was air-dried and supragingival plaque was removed prior to collection. Paper points were inserted into the crevice and left for 30 s. Contaminated samples were discarded. Samples were stored at 4 °C overnight and centrifugation occurred for 5 min at 4 °C. Samples were then stored at −80 °C until analysis. Patients rinsed with pure water and whole saliva samples were obtained by holding a cotton roll in the mouth for 60 s. Samples were centrifuged immediately for 10 min and then stored at −80 °C until analysis. | ELISA | MMP-8 and MPO levels displayed significant differences between H and G, therefore suitable for disease diagnosis. Further research required to develop and chairside diagnostic test. |
Inönü et al. | 2020 | PPD, CAL, BOP, PI, GI and BMI were measured. H: PPD ≤ 3 mm BOP <10% of sites, no bone loss. G: PPD ≤ 3 mm, GI > 0, no bone loss. CP: PPD ≥ 5 mm CAL ≥ 4 mm, ≥50% bone loss. GAgP: Severe interproximal attachment loss impacting ≥3 permanent teeth and presented with symptoms <30 years old. Classification based The Classification of Periodontal Diseases and Conditions Armitage 1999. | N/A | Unstimulated whole saliva samples were collected prior to clinical examination. Participants were asked not to consume any food for 1 h before sampling. Samples were collected into a plastic tube during a 5 min period. The sample was aspirated from a 5 mL syringe and 3 mL was collected and stored at −80 °C until analysis. | ELISA | Del-1 levels were increased in both H and G compared to CP and GAP. IL-17 levels were lower in both H and G in comparison to CP and GAP; however, IL-17 levels were more elevated in G than H. LFA-1 levels were elevated in G, CP and GAP compared to H. Further studies required to determine the efficacy of these biomarkers in disease diagnosis. |
Nalmpantis et al. | 2020 | PPD, CAL, BOP, PL and REC were measured. H: PPD < 3 mm BOP <10% CP: ≥30% of teeth with CAL ≥ 5 mm. Classification based The Classification of Periodontal Diseases and Conditions Armitage 1999. | 3 | Cotton rolls were used to prevent saliva contamination. The site was air-dried and supragingival plaque was removed. PerioPaper® was inserted into the crevice at least 1–2 mm and left for 30 s. GCF samples were pooled (4 samples per participant). Samples were immediately frozen using liquid nitrogen at −196 °C and stored at –80 °C until analysis. | ELISA | Levels of azurocidin were significantly elevated in those with CP compared to H (AUC = 0.915). Further research required in order to determine the value of azurocidin as a biomarker for disease. |
Sai Karthikeyan et al. | 2020 | PPD, CAL, BOP and GI were measured. H: BOP (-), CAL (-) G: BOP (+) Inflammation, however CAL (-) P: CAL ≥ 3 mm bone loss evident | N/A | GCF samples were collected 1 day after clinical examination. Site was air-dried and cotton rolls were used to prevent salvia contamination. Supragingival plaque was removed. A 10 µL micropipette was inserted into the crevice and at least 5 µL of GCF was collected. Contaminated samples were discarded. The samples were stored in air-protected plastic vials and at −70 °C until analysis. | ELISA | Levels of CD163 were significantly increased in disease, both G and P compared to H. Further research into the development of a chairside test for CD163 is required in order to diagnose disease. |
Taşdemir et al. | 2020 | PPD, CAL, BOP, PI and GI were measured. H: PPD ≤ 3 mm, CAL = 0 < 20% BOP, GI < 1 and no bone loss. CP: PPD ≥ 5 mm CAL ≥ 4 mm, BOP (+), GI = 2 and bone loss of >40%. G: PPD ≤ 3 mm CAL = 0 BOP ≥ 20%, GI = 2 and no bone loss. Classification based on The Classification of Periodontal Diseases and Conditions Armitage 1999. | 1 | GCF samples were collected 1–2 days after clinical diagnosis. Dental aspirator and cotton rolls were used to avoid salvia contamination. Supragingival plaque was removed. PerioPaper® was inserted into the crevice and left for 30 s. Contaminated samples were discarded. Samples were pooled (4 samples per participant) and stored at −80 °C until analysis. Saliva samples were collected before 12:00. Participants were asked not to eat or drink for 1 h before collection. Unstimulated whole saliva was collected by expectorating into a plastic tube. Samples were transferred to a sterile syringe and centrifugated immediately for 10 min at room temp. In total, 0.5 mL of the sample was then added to PP tubes and stored at −80 °C until analysis. | ELISA | Increased GCF levels of suPAR and galectin-1 were identified between disease and health. Salvia levels of suPAR were higher in CP compared to G and H. This study concluded, suPAR may be a useful biomarker in disease diagnosis. |
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Faulkner, E.; Mensah, A.; Rodgers, A.M.; McMullan, L.R.; Courtenay, A.J. The Role of Epigenetic and Biological Biomarkers in the Diagnosis of Periodontal Disease: A Systematic Review Approach. Diagnostics 2022, 12, 919. https://doi.org/10.3390/diagnostics12040919
Faulkner E, Mensah A, Rodgers AM, McMullan LR, Courtenay AJ. The Role of Epigenetic and Biological Biomarkers in the Diagnosis of Periodontal Disease: A Systematic Review Approach. Diagnostics. 2022; 12(4):919. https://doi.org/10.3390/diagnostics12040919
Chicago/Turabian StyleFaulkner, Erin, Adelaide Mensah, Aoife M. Rodgers, Lyndsey R. McMullan, and Aaron J. Courtenay. 2022. "The Role of Epigenetic and Biological Biomarkers in the Diagnosis of Periodontal Disease: A Systematic Review Approach" Diagnostics 12, no. 4: 919. https://doi.org/10.3390/diagnostics12040919
APA StyleFaulkner, E., Mensah, A., Rodgers, A. M., McMullan, L. R., & Courtenay, A. J. (2022). The Role of Epigenetic and Biological Biomarkers in the Diagnosis of Periodontal Disease: A Systematic Review Approach. Diagnostics, 12(4), 919. https://doi.org/10.3390/diagnostics12040919